{"id":11228,"date":"2023-10-25T09:35:37","date_gmt":"2023-10-25T07:35:37","guid":{"rendered":"https:\/\/smart-pro.org\/en\/?page_id=11228"},"modified":"2025-02-17T09:52:28","modified_gmt":"2025-02-17T08:52:28","slug":"machine-learning-3","status":"publish","type":"page","link":"https:\/\/smart-pro.org\/en\/machine-learning-3\/","title":{"rendered":"Machine Learning"},"content":{"rendered":"<p>[et_pb_section fb_built=&#8221;1&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; background_color=&#8221;#dbe0f2&#8243; background_image=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2019\/02\/square-layer-4.png&#8221; background_size=&#8221;initial&#8221; background_position=&#8221;bottom_right&#8221; custom_padding=&#8221;15px||15px||false|false&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_row _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; width=&#8221;90%&#8221; max_width=&#8221;1920px&#8221; custom_margin=&#8221;||||false|false&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_column type=&#8221;4_4&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_text _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; text_line_height=&#8221;2em&#8221; header_font_size=&#8221;44px&#8221; header_letter_spacing=&#8221;1px&#8221; header_line_height=&#8221;1.2em&#8221; header_2_line_height=&#8221;2em&#8221; header_3_line_height=&#8221;2em&#8221; custom_margin=&#8221;||0px||false|false&#8221; header_font_size_tablet=&#8221;&#8221; header_font_size_phone=&#8221;38px&#8221; header_font_size_last_edited=&#8221;on|phone&#8221; global_colors_info=&#8221;{}&#8221;]<\/p>\n<h1 class=\"contentr-headline-h2-paragraph blue\"><span style=\"color: #333333\">Research \/\/ Machine Learning \u2013 Artificial Intelligence<\/span><\/h1>\n<p>[\/et_pb_text][et_pb_text _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; header_line_height=&#8221;2em&#8221; header_3_font_size=&#8221;24px&#8221; global_colors_info=&#8221;{}&#8221;]<\/p>\n<h3 class=\"contentr-headline-h2-paragraph blue\">SmartPro \u2013 Key to Smart Products!<\/h3>\n<p>[\/et_pb_text][\/et_pb_column][\/et_pb_row][\/et_pb_section][et_pb_section fb_built=&#8221;1&#8243; disabled_on=&#8221;on|on|off&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;0px||0px|||&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_row _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; width=&#8221;90%&#8221; max_width=&#8221;1920px&#8221; custom_padding=&#8221;32px|||||&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_column type=&#8221;4_4&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_menu menu_id=&#8221;248&#8243; menu_style=&#8221;centered&#8221; active_link_color=&#8221;#b5ce43&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; menu_font=&#8221;|700|||on||||&#8221; menu_text_color=&#8221;#2A6BB7&#8243; menu_font_size=&#8221;18px&#8221; module_alignment=&#8221;center&#8221; custom_padding=&#8221;||||false|false&#8221; global_colors_info=&#8221;{}&#8221;][\/et_pb_menu][\/et_pb_column][\/et_pb_row][\/et_pb_section][et_pb_section fb_built=&#8221;1&#8243; admin_label=&#8221;Featured Feature&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; background_color=&#8221;#f5f5f5&#8243; background_position=&#8221;bottom_right&#8221; custom_margin=&#8221;|||&#8221; custom_padding=&#8221;75px||75px||true|false&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_row column_structure=&#8221;3_5,2_5&#8243; module_class=&#8221; et_pb_row_fullwidth&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; width=&#8221;90%&#8221; width_tablet=&#8221;90%&#8221; width_phone=&#8221;&#8221; width_last_edited=&#8221;on|tablet&#8221; max_width=&#8221;1920px&#8221; max_width_tablet=&#8221;1920px&#8221; max_width_phone=&#8221;&#8221; max_width_last_edited=&#8221;on|desktop&#8221; custom_padding=&#8221;||60px|||&#8221; make_fullwidth=&#8221;on&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_column type=&#8221;3_5&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_text _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; text_text_color=&#8221;#000000&#8243; ul_line_height=&#8221;1.8em&#8221; header_text_color=&#8221;#000000&#8243; background_layout=&#8221;dark&#8221; text_font_size_tablet=&#8221;&#8221; text_font_size_phone=&#8221;15px&#8221; text_font_size_last_edited=&#8221;on|phone&#8221; text_line_height_tablet=&#8221;&#8221; text_line_height_phone=&#8221;1.9em&#8221; text_line_height_last_edited=&#8221;on|phone&#8221; global_colors_info=&#8221;{}&#8221;]<\/p>\n<p><strong>Artificial intelligence is used in the SmartPro impulse projects BEYOND (2020-2022) and Smart-DATA in the form of machine learning (ML) methods.<\/strong><\/p>\n<p>In particular, SmartPro researchers are investigating and further developing methods for quality control and process monitoring. ML methods are developed specifically for the three SmartPro application fields (energy converters, energy storage systems, and lightweight construction) through close collaboration within the SmartPro network. Data- and algorithm-based models are built through iterative artificial learning processes that can subsequently recognize relationships within the data, identify patterns or errors, and automatically perform comprehensive analyses.<\/p>\n<p>This establishes a toolbox that provides methods for a wide variety of problems that can be easily adapted for the defined purpose. Using ML methods in all SmartPro application fields further promotes the collaboration between researchers in the SmartPro network.<\/p>\n<p>[\/et_pb_text][\/et_pb_column][et_pb_column type=&#8221;2_5&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_image src=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/11\/smartpro-icon-gehirn-ouline.svg&#8221; alt=&#8221;Machine Learning (K\u00fcnstliche Intelligenz) \/\/ SmartPro&#8221; title_text=&#8221;Machine Learning (K\u00fcnstliche Intelligenz) \/\/ SmartPro&#8221; align=&#8221;center&#8221; _builder_version=&#8221;4.19.2&#8243; _module_preset=&#8221;default&#8221; width=&#8221;40%&#8221; width_tablet=&#8221;30%&#8221; width_phone=&#8221;&#8221; width_last_edited=&#8221;on|tablet&#8221; module_alignment=&#8221;center&#8221; custom_margin=&#8221;6px||||false|false&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;][\/et_pb_image][\/et_pb_column][\/et_pb_row][et_pb_row _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; width=&#8221;90%&#8221; max_width=&#8221;1920px&#8221; custom_margin=&#8221;||-25px||false|false&#8221; custom_padding=&#8221;||0px|||&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_column type=&#8221;4_4&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][dsm_image_carousel gallery_ids=&#8221;5319,5285,5305,5297,5313,7408,7404&#8243; sizes=&#8221;large&#8221; slide_to_show=&#8221;6&#8243; pause_on_hover=&#8221;on&#8221; dots=&#8221;off&#8221; arrow_color=&#8221;#FFFFFF&#8221; arrow_background_color=&#8221;#254B94&#8243; slide_to_show_tablet=&#8221;3&#8243; slide_to_show_phone=&#8221;&#8221; slide_to_show_last_edited=&#8221;on|tablet&#8221; arrow_size_tablet=&#8221;&#8221; arrow_size_phone=&#8221;28px&#8221; arrow_size_last_edited=&#8221;on|phone&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; saved_tabs=&#8221;all&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;][\/dsm_image_carousel][\/et_pb_column][\/et_pb_row][\/et_pb_section][et_pb_section fb_built=&#8221;1&#8243; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_margin=&#8221;|||&#8221; custom_padding=&#8221;75px|0px|75px|0px|true|false&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_row column_structure=&#8221;2_5,3_5&#8243; disabled_on=&#8221;off|off|off&#8221; module_id=&#8221;smartdata&#8221; module_class=&#8221; et_pb_row_fullwidth&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; width=&#8221;90%&#8221; width_tablet=&#8221;90%&#8221; width_phone=&#8221;&#8221; width_last_edited=&#8221;on|desktop&#8221; max_width=&#8221;1920px&#8221; max_width_tablet=&#8221;1920px&#8221; max_width_phone=&#8221;&#8221; max_width_last_edited=&#8221;on|tablet&#8221; custom_padding=&#8221;25px|0px|27px|0px|false|false&#8221; make_fullwidth=&#8221;on&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_column type=&#8221;2_5&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_text _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; text_text_color=&#8221;#000000&#8243; text_font_size=&#8221;17px&#8221; text_line_height=&#8221;1.9em&#8221; ul_font_size=&#8221;17px&#8221; ul_line_height=&#8221;1.8em&#8221; header_font=&#8221;||||||||&#8221; header_2_font=&#8221;||||||||&#8221; header_2_font_size=&#8221;32px&#8221; header_3_font=&#8221;||||||||&#8221; header_3_font_size=&#8221;24px&#8221; custom_margin=&#8221;||40px||false|false&#8221; custom_padding=&#8221;20px|20px||20px|false|false&#8221; text_font_size_tablet=&#8221;&#8221; text_font_size_phone=&#8221;15px&#8221; text_font_size_last_edited=&#8221;on|phone&#8221; border_width_top=&#8221;3px&#8221; border_color_top=&#8221;#dbe0f2&#8243; border_color_right=&#8221;#dbe0f2&#8243; border_width_left=&#8221;3px&#8221; border_color_left=&#8221;#DBE0F2&#8243; global_colors_info=&#8221;{}&#8221;]<\/p>\n<h2>Smart-DATA<\/h2>\n<p>\/\/ Project duration: 01.04.2022 to 31.03.2026<\/p>\n<p>&nbsp;<\/p>\n<h3>Project management<\/h3>\n<p><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#orsolya-csiszar\">Prof. Dr. Orsolya Csisz\u00e1r<\/a><br \/>Mathematik und KI-Anwendungen<br \/>Tel.: +49 (0) 7361 576-5567<br \/><a href=\"mailto:orsolya.csiszar@hs-aalen.de\">orsolya.csiszar@hs-aalen.de<\/a><\/p>\n<p>&nbsp;<\/p>\n<h3>Project partners<\/h3>\n<p>[\/et_pb_text][et_pb_toggle title=&#8221;Aalen University&#8221; open_toggle_text_color=&#8221;#254B94&#8243; closed_toggle_background_color=&#8221;#dbe0f2&#8243; icon_color=&#8221;#254b94&#8243; open_icon_color=&#8221;#254b94&#8243; _builder_version=&#8221;4.25.1&#8243; _module_preset=&#8221;default&#8221; title_text_color=&#8221;#000000&#8243; title_level=&#8221;h4&#8243; title_font=&#8221;||||||||&#8221; title_font_size=&#8221;18px&#8221; body_text_color=&#8221;#000000&#8243; body_ul_line_height=&#8221;1.8em&#8221; custom_margin=&#8221;-15px|||&#8221; body_font_size_tablet=&#8221;&#8221; body_font_size_phone=&#8221;15px&#8221; body_font_size_last_edited=&#8221;on|phone&#8221; custom_css_toggle_title=&#8221;font-weight: 400;&#8221; border_width_all=&#8221;3px&#8221; border_color_all=&#8221;#dbe0f2&#8243; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;]<\/p>\n<ul>\n<li><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#timo-bernthaler\">Dr. Timo Bernthaler<\/a>, Materials Research Institute Aalen<\/li>\n<li><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#gerhard-schneider\">Prof. Dr. Gerhard Schneider<\/a>, Materials Research Institute Aalen<\/li>\n<li><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#manfred-roessle\">Prof. Dr. Manfred R\u00f6ssle<\/a>, Business Informatics<\/li>\n<li>Prof. Dr. Ulrich Klauck, Machine Learning and Data Analysis<\/li>\n<\/ul>\n<p>[\/et_pb_toggle][et_pb_toggle title=&#8221;Companies&#8221; open_toggle_text_color=&#8221;#254B94&#8243; closed_toggle_background_color=&#8221;#dbe0f2&#8243; icon_color=&#8221;#254b94&#8243; open_icon_color=&#8221;#254b94&#8243; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; title_text_color=&#8221;#000000&#8243; title_level=&#8221;h4&#8243; title_font=&#8221;||||||||&#8221; title_font_size=&#8221;18px&#8221; body_text_color=&#8221;#000000&#8243; body_ul_line_height=&#8221;1.8em&#8221; custom_margin=&#8221;-15px|||&#8221; body_font_size_tablet=&#8221;&#8221; body_font_size_phone=&#8221;15px&#8221; body_font_size_last_edited=&#8221;on|phone&#8221; custom_css_toggle_title=&#8221;font-weight: 400;&#8221; border_width_all=&#8221;3px&#8221; border_color_all=&#8221;#dbe0f2&#8243; global_colors_info=&#8221;{}&#8221;]<\/p>\n<ul>\n<li class=\"MsoNormal\">Carl Zeiss Industrielle Messtechnik GmbH<\/li>\n<li class=\"MsoNormal\">Carl Zeiss Microscopy GmbH<\/li>\n<li class=\"MsoNormal\"><span style=\"font-size: 18px\">F. &amp; G. Hachtel GmbH &amp; Co. KG<\/span><\/li>\n<li class=\"MsoNormal\"><span style=\"font-size: 18px\"><\/span><span style=\"font-size: 18px\">Kessler &amp; Co. GmbH &amp; Co. KG<\/span><\/li>\n<li class=\"MsoNormal\"><span style=\"font-size: 18px\"><\/span><span style=\"font-size: 18px\">Oskar Frech GmbH &amp; Co. KG<\/span><\/li>\n<li class=\"MsoNormal\"><span style=\"font-size: 18px\"><\/span><span style=\"font-size: 18px\">PVA TePla Analytical Systems GmbH<\/span><\/li>\n<li class=\"MsoNormal\"><span style=\"font-size: 18px\">Wieland-Werke AG<\/span><\/li>\n<\/ul>\n<p>[\/et_pb_toggle][et_pb_toggle title=&#8221;Other research institutions&#8221; open_toggle_text_color=&#8221;#254B94&#8243; closed_toggle_background_color=&#8221;#dbe0f2&#8243; icon_color=&#8221;#254b94&#8243; open_icon_color=&#8221;#254b94&#8243; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; title_text_color=&#8221;#000000&#8243; title_level=&#8221;h4&#8243; title_font=&#8221;||||||||&#8221; title_font_size=&#8221;18px&#8221; body_text_color=&#8221;#000000&#8243; body_ul_line_height=&#8221;1.8em&#8221; custom_margin=&#8221;-15px|||&#8221; body_font_size_tablet=&#8221;&#8221; body_font_size_phone=&#8221;15px&#8221; body_font_size_last_edited=&#8221;on|phone&#8221; custom_css_toggle_title=&#8221;font-weight: 400;&#8221; border_width_all=&#8221;3px&#8221; border_color_all=&#8221;#dbe0f2&#8243; global_colors_info=&#8221;{}&#8221;]<\/p>\n<ul>\n<li>\n<p class=\"MsoNormal\">Universit\u00e4t Trier &#8211; Informationswissenschaften Wirtschaftsinformatik<\/p>\n<\/li>\n<\/ul>\n<p>[\/et_pb_toggle][et_pb_toggle title=&#8221;Transferakteure&#8221; open_toggle_text_color=&#8221;#254B94&#8243; closed_toggle_background_color=&#8221;#dbe0f2&#8243; icon_color=&#8221;#254b94&#8243; open_icon_color=&#8221;#254b94&#8243; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.19.2&#8243; _module_preset=&#8221;default&#8221; title_text_color=&#8221;#000000&#8243; title_level=&#8221;h4&#8243; title_font=&#8221;||||||||&#8221; title_font_size=&#8221;18px&#8221; body_text_color=&#8221;#000000&#8243; body_ul_line_height=&#8221;1.8em&#8221; custom_margin=&#8221;-15px|||&#8221; body_font_size_tablet=&#8221;&#8221; body_font_size_phone=&#8221;15px&#8221; body_font_size_last_edited=&#8221;on|phone&#8221; custom_css_toggle_title=&#8221;font-weight: 400;&#8221; border_width_all=&#8221;3px&#8221; border_color_all=&#8221;#dbe0f2&#8243; disabled=&#8221;on&#8221; global_colors_info=&#8221;{}&#8221;]<\/p>\n<p>&#8211;<\/p>\n<p>[\/et_pb_toggle][\/et_pb_column][et_pb_column type=&#8221;3_5&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_blurb title=&#8221;Domain-optimized machine learning methods for smart production systems (Smart-DATA)&#8221; image=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/11\/Smart-DATA_Impulsprojekt_3x2_red.jpg&#8221; alt=&#8221;Machine Learning (K\u00fcnstliche Intelligenz) \/\/ SmartPro&#8221; content_max_width=&#8221;100%&#8221; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.19.2&#8243; _module_preset=&#8221;default&#8221; header_level=&#8221;h3&#8243; header_font=&#8221;|700|||||||&#8221; header_text_color=&#8221;#000000&#8243; header_font_size=&#8221;24&#8243; header_line_height=&#8221;1.4em&#8221; body_font=&#8221;Open Sans||||||||&#8221; body_text_color=&#8221;#000000&#8243; body_line_height=&#8221;1.9em&#8221; body_ul_line_height=&#8221;1.9em&#8221; custom_padding=&#8221;20px|20px|20px|20px&#8221; body_font_size_tablet=&#8221;&#8221; body_font_size_phone=&#8221;15px&#8221; body_font_size_last_edited=&#8221;on|phone&#8221; border_width_all=&#8221;3px&#8221; border_color_all=&#8221;#dbe0f2&#8243; global_colors_info=&#8221;{}&#8221;]<\/p>\n<p>The manufacturing of the next generation of products requires complex processes and high-quality materials. As a result, the need for innovative procedures for quality control and production optimization is constantly increasing. However, classical systems for quality control are often insufficient to meet these increased challenges.<\/p>\n<p>Smart-DATA therefore focuses on innovative ML-based systems and, in particular, their integration into production and quality control. The decisive factor is that the methods are customized or can be easily adapted for the respective research questions or industrial applications. Deep learning methods were developed specifically for materials research in a previous project, and these methods are being further developed in Smart-DATA for smart applications for energy-efficient and resource-saving products. Examples include quality assessment in die casting, hybrid components, and magnetic and battery materials.<\/p>\n<p>[\/et_pb_blurb][\/et_pb_column][\/et_pb_row][\/et_pb_section][et_pb_section fb_built=&#8221;1&#8243; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; background_color=&#8221;#f5f5f5&#8243; custom_margin=&#8221;|||&#8221; custom_padding=&#8221;75px|0px|75px|0px|true|false&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_row column_structure=&#8221;3_5,2_5&#8243; disabled_on=&#8221;off|off|off&#8221; module_id=&#8221;beyond&#8221; module_class=&#8221; et_pb_row_fullwidth&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; width=&#8221;90%&#8221; width_tablet=&#8221;90%&#8221; width_phone=&#8221;&#8221; width_last_edited=&#8221;on|desktop&#8221; max_width=&#8221;1920px&#8221; max_width_tablet=&#8221;1920px&#8221; max_width_phone=&#8221;&#8221; max_width_last_edited=&#8221;on|tablet&#8221; custom_padding=&#8221;25px|0px|27px|0px|false|false&#8221; make_fullwidth=&#8221;on&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_column type=&#8221;3_5&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_blurb title=&#8221;Domain-optimized highly adaptive deep learning methods for materials research (BEYOND)&#8221; image=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2020\/09\/image_678_Hochschule_Aalen_RicardoB_ttner_FotoJanWalford-e1599559475354_neu.jpg&#8221; alt=&#8221;Deep-Learning-Verfahren (Machine Learning)  \/\/ SmartPro&#8221; content_max_width=&#8221;100%&#8221; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.19.2&#8243; _module_preset=&#8221;default&#8221; header_level=&#8221;h3&#8243; header_font=&#8221;|700|||||||&#8221; header_text_color=&#8221;#000000&#8243; header_font_size=&#8221;24&#8243; header_line_height=&#8221;1.4em&#8221; body_font=&#8221;Open Sans||||||||&#8221; body_text_color=&#8221;#000000&#8243; body_line_height=&#8221;1.9em&#8221; body_ul_line_height=&#8221;1.9em&#8221; custom_padding=&#8221;20px|20px|20px|20px&#8221; body_font_size_tablet=&#8221;&#8221; body_font_size_phone=&#8221;15px&#8221; body_font_size_last_edited=&#8221;on|phone&#8221; border_width_all=&#8221;3px&#8221; border_color_all=&#8221;#dbe0f2&#8243; global_colors_info=&#8221;{}&#8221;]<\/p>\n<p>The development of novel smart material systems has led to increased requirements in the optimization of process parameters as well as in the areas of microstructure analysis and quality assessment. These often cannot be handled by classical approaches. The use of self-optimizing, high-precision, and easily-adaptable ML methods, more precisely deep learning, was the topic of the impulse project BEYOND.<\/p>\n<p>Established deep learning methods were adapted and further developed in close cooperation with the four other impulse projects from the SmartPro initial phase. A specific focus was on reducing required data volumes and training intervals to enable efficient analysis. This allows the methods to be widely applied, even with limited data volumes.<\/p>\n<p>Another central aspect of the project was the optimization and further development of existing systems based on Convolutional Neural Networks\u00a0(ConvNets), which are artificial neural networks modelled on the human brain. Additionally, pre-processing methods for data preparation and combination of data from different sources were further developed for effective use in materials research. The aim was to achieve the broadest possible range of applications, including the combined analysis of imaging and non-imaging data.<\/p>\n<p>[\/et_pb_blurb][\/et_pb_column][et_pb_column type=&#8221;2_5&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_text _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; text_text_color=&#8221;#000000&#8243; text_font_size=&#8221;17px&#8221; text_line_height=&#8221;1.9em&#8221; ul_font_size=&#8221;17px&#8221; ul_line_height=&#8221;1.8em&#8221; header_font=&#8221;||||||||&#8221; header_2_font=&#8221;||||||||&#8221; header_2_font_size=&#8221;32px&#8221; header_3_font=&#8221;||||||||&#8221; header_3_font_size=&#8221;24px&#8221; custom_margin=&#8221;||40px||false|false&#8221; custom_padding=&#8221;20px|20px||20px|false|false&#8221; text_font_size_tablet=&#8221;&#8221; text_font_size_phone=&#8221;15px&#8221; text_font_size_last_edited=&#8221;on|phone&#8221; border_width_top=&#8221;3px&#8221; border_color_top=&#8221;#dbe0f2&#8243; border_width_right=&#8221;3px&#8221; border_color_right=&#8221;#dbe0f2&#8243; global_colors_info=&#8221;{}&#8221;]<\/p>\n<h2>BEYOND<\/h2>\n<p>\/\/ Project duration: 01.01.2020 to 31.08.2022<\/p>\n<p>&nbsp;<\/p>\n<h3>Project management<\/h3>\n<p><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#dagmar-goll\" data-et-has-event-already=\"true\">Prof. Dr. Dagmar Goll<\/a> (from 08\/2021)<br \/>Materials Research Institute Aalen<br \/>Tel.: +49 (0) 7361 576-1601<br \/><a href=\"mailto:dagmar.goll@hs-aalen.de\">dagmar.goll@hs-aalen.de<\/a><\/p>\n<p>Prof. Dr. Ricardo B\u00fcttner (bis 07\/2021)<br \/>Business Informatics, Aalen Universtiy<br \/>(since 08\/2021 University of Bayreuth)<br \/><a href=\"mailto:ricardo.buettner@uni-bayreuth.de\">ricardo.buettner@uni-bayreuth.de<\/a><\/p>\n<p>&nbsp;<\/p>\n<h3>Project partners<\/h3>\n<p>[\/et_pb_text][et_pb_toggle title=&#8221;Aalen University&#8221; open_toggle_text_color=&#8221;#254B94&#8243; closed_toggle_background_color=&#8221;#dbe0f2&#8243; icon_color=&#8221;#254b94&#8243; open_icon_color=&#8221;#254b94&#8243; _builder_version=&#8221;4.25.1&#8243; _module_preset=&#8221;default&#8221; title_text_color=&#8221;#000000&#8243; title_level=&#8221;h4&#8243; title_font=&#8221;||||||||&#8221; title_font_size=&#8221;18px&#8221; body_text_color=&#8221;#000000&#8243; body_ul_line_height=&#8221;1.8em&#8221; custom_margin=&#8221;-15px|||&#8221; body_font_size_tablet=&#8221;&#8221; body_font_size_phone=&#8221;15px&#8221; body_font_size_last_edited=&#8221;on|phone&#8221; custom_css_toggle_title=&#8221;font-weight: 400;&#8221; border_width_all=&#8221;3px&#8221; border_color_all=&#8221;#dbe0f2&#8243; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;]<\/p>\n<ul>\n<li><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#dagmar-goll\">Prof. Dr. Dagmar Goll<\/a>, Materials Research Institute Aalen<\/li>\n<li><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#harald-riegel\"> Prof. Dr. Harald Riegel<\/a>, LaserApplicationCenter<\/li>\n<li><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#markus-merkel\">Prof. Dr. Markus Merkel<\/a>, Zentrum f\u00fcr Virtuelle Produktentwicklung<\/li>\n<li><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#volker-knoblauch\">Prof. Dr. Volker Knoblauch<\/a>, Materials Research Institute Aalen<\/li>\n<\/ul>\n<p>[\/et_pb_toggle][et_pb_toggle title=&#8221;Unternehmen&#8221; 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_module_preset=&#8221;default&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_cta title=&#8221;Follow us!&#8221; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; header_level=&#8221;h3&#8243; header_text_align=&#8221;left&#8221; header_text_color=&#8221;#FFFFFF&#8221; header_font_size=&#8221;48px&#8221; header_letter_spacing=&#8221;1px&#8221; header_line_height=&#8221;1.2em&#8221; body_font=&#8221;|700|||||||&#8221; body_text_align=&#8221;left&#8221; body_text_color=&#8221;#FFFFFF&#8221; body_font_size=&#8221;28px&#8221; body_line_height=&#8221;1.4em&#8221; background_color=&#8221;RGBA(0,0,0,0)&#8221; width=&#8221;75%&#8221; width_tablet=&#8221;100%&#8221; width_phone=&#8221;&#8221; width_last_edited=&#8221;on|tablet&#8221; module_alignment=&#8221;left&#8221; custom_margin=&#8221;||-35px||false|false&#8221; custom_padding=&#8221;||0px|5%|false|false&#8221; custom_padding_tablet=&#8221;||0px|5%|false|false&#8221; custom_padding_phone=&#8221;|||9%|false|false&#8221; 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disabled_on=&#8221;off|off|off&#8221; module_id=&#8221;explorative_projekte&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_margin=&#8221;|||&#8221; custom_padding=&#8221;75px|0px|75px|0px|true|false&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_row column_structure=&#8221;1_3,2_3&#8243; module_id=&#8221;explorativ&#8221; module_class=&#8221; et_pb_row_fullwidth&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; width=&#8221;90%&#8221; width_tablet=&#8221;90%&#8221; width_phone=&#8221;&#8221; width_last_edited=&#8221;on|tablet&#8221; max_width=&#8221;1920px&#8221; max_width_tablet=&#8221;1920px&#8221; max_width_phone=&#8221;&#8221; max_width_last_edited=&#8221;on|desktop&#8221; make_fullwidth=&#8221;on&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_column type=&#8221;1_3&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_text _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; text_font_size=&#8221;16px&#8221; text_line_height=&#8221;2em&#8221; header_2_font_size=&#8221;32px&#8221; header_2_line_height=&#8221;1.3em&#8221; custom_margin=&#8221;||10px||false|false&#8221; custom_padding=&#8221;||||false|false&#8221; header_2_font_size_tablet=&#8221;&#8221; header_2_font_size_phone=&#8221;28px&#8221; header_2_font_size_last_edited=&#8221;on|phone&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;]<\/p>\n<h2>Explorative Projects<\/h2>\n<p>[\/et_pb_text][et_pb_divider color=&#8221;#DBE0F2&#8243; divider_weight=&#8221;4px&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_margin=&#8221;||||false|false&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;][\/et_pb_divider][\/et_pb_column][et_pb_column type=&#8221;2_3&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_text _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; text_text_color=&#8221;#000000&#8243; ul_line_height=&#8221;1.8em&#8221; header_text_color=&#8221;#000000&#8243; background_layout=&#8221;dark&#8221; text_font_size_tablet=&#8221;&#8221; text_font_size_phone=&#8221;15px&#8221; text_font_size_last_edited=&#8221;on|phone&#8221; text_line_height_tablet=&#8221;&#8221; text_line_height_phone=&#8221;1.9em&#8221; text_line_height_last_edited=&#8221;on|phone&#8221; global_colors_info=&#8221;{}&#8221;]<\/p>\n<p>Artificial intelligence is a multi-faceted cross-sectional technology that connects the application fields in the SmartPro network. This is illustrated by the multiple explorative projects that apply methods from artificial intelligence to research on energy converters, energy storage systems, and lightweight construction. The main focus was on machine learning methods for improving manufacturing processes and quality assessment.<span style=\"line-height: 107%\"><\/span><\/p>\n<p>[\/et_pb_text][\/et_pb_column][\/et_pb_row][et_pb_row column_structure=&#8221;1_2,1_2&#8243; module_id=&#8221;MagNetz&#8221; module_class=&#8221; et_pb_row_fullwidth&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; width=&#8221;90%&#8221; width_tablet=&#8221;90%&#8221; width_phone=&#8221;&#8221; width_last_edited=&#8221;on|tablet&#8221; max_width=&#8221;1920px&#8221; max_width_tablet=&#8221;1920px&#8221; max_width_phone=&#8221;&#8221; max_width_last_edited=&#8221;on|desktop&#8221; custom_padding=&#8221;25px|0px|27px|0px|false|false&#8221; make_fullwidth=&#8221;on&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_column type=&#8221;1_2&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_image src=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2019\/02\/Exploratives_Projekt_PreMo-LiB__FotografThomasKlink-e1548934661496.jpg&#8221; alt=&#8221;Machine Learning (K\u00fcnstliche Intelligenz) \/\/ SmartPro&#8221; title_text=&#8221;Machine Learning (K\u00fcnstliche Intelligenz) \/\/ SmartPro&#8221; show_bottom_space=&#8221;off&#8221; align=&#8221;center&#8221; force_fullwidth=&#8221;on&#8221; align_tablet=&#8221;center&#8221; align_phone=&#8221;&#8221; align_last_edited=&#8221;on|desktop&#8221; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.19.2&#8243; _module_preset=&#8221;default&#8221; custom_margin=&#8221;||||false|false&#8221; global_colors_info=&#8221;{}&#8221;][\/et_pb_image][et_pb_toggle title=&#8221;PreMo-LiB \/\/ Artificial Intelligence and Machine Learning Solutions to Improve Process Quality in Battery Mass Production &#8221; open_toggle_text_color=&#8221;#254B94&#8243; closed_toggle_background_color=&#8221;#dbe0f2&#8243; icon_color=&#8221;#254b94&#8243; open_icon_color=&#8221;#254b94&#8243; disabled_on=&#8221;off|off|off&#8221; admin_label=&#8221;PreMo-LiB&#8221; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; title_text_color=&#8221;#000000&#8243; title_level=&#8221;h3&#8243; title_font=&#8221;||||||||&#8221; title_font_size=&#8221;18px&#8221; title_line_height=&#8221;1.6em&#8221; body_text_color=&#8221;#000000&#8243; body_ul_line_height=&#8221;1.8em&#8221; title_font_size_tablet=&#8221;&#8221; title_font_size_phone=&#8221;17px&#8221; title_font_size_last_edited=&#8221;on|phone&#8221; body_font_size_tablet=&#8221;&#8221; body_font_size_phone=&#8221;15px&#8221; body_font_size_last_edited=&#8221;on|phone&#8221; custom_css_toggle_title=&#8221;font-weight: 400;&#8221; border_width_all=&#8221;3px&#8221; border_color_all=&#8221;#dbe0f2&#8243; global_module=&#8221;5647&#8243; saved_tabs=&#8221;all&#8221; global_colors_info=&#8221;{}&#8221;]<\/p>\n<div class=\"et_pb_toggle_content clearfix\">\n<p><strong>01.03.2019 to 31.08.2020<\/strong><\/p>\n<p>High-quality lithium-ion batteries with a long service life is needed in many industrial products, e.g. in electric cars, smartphones or power tools. In the explorative project PreMo-LiB, we \u2212 in cooperation with the Varta Microbattery GmbH \u2212 investigated innovative in-line methods enabling to predict the service life of accumulators and to improve their overall quality. To achieve this, we used modern self-learning software algorithms \u2212 machine learning (applied artificial intelligence).<\/p>\n<p>Commonly, it is only in later usage that it is revealed whether a lithium-ion based battery meets the customer requirements. Due to the complex physical interactions within a battery, so far, quality prediction during production has only been possible to a very limited extent and not suitable for mass production.<\/p>\n<p>But remarkably, in the project PreMo-LiB, machine learning methods were developed to predict the quality and service life of (test) batteries during production in a both cost-effective and feasible manner. Most importantly, the established quality assurance process is non-destructive and scalable for the mass production of high-quality lithium-ion batteries.<\/p>\n<ul>\n<li><strong>Project management<\/strong><\/li>\n<\/ul>\n<p style=\"padding-left: 40px\">Prof. Dr. Ricardo B\u00fcttner, Business Informatics<\/p>\n<ul>\n<li><strong>Project partner<\/strong><\/li>\n<\/ul>\n<p style=\"padding-left: 40px\">VARTA Microbattery GmbH<\/p>\n<\/div>\n<p>[\/et_pb_toggle][\/et_pb_column][et_pb_column type=&#8221;1_2&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_image src=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2020\/09\/HS-AA-3558_DiMa-2-scaled-e1599556231573_neu.jpg&#8221; alt=&#8221;Machine Learning (K\u00fcnstliche Intelligenz) \/\/ SmartPro&#8221; title_text=&#8221;Machine Learning (K\u00fcnstliche Intelligenz) \/\/ SmartPro&#8221; show_bottom_space=&#8221;off&#8221; align=&#8221;center&#8221; force_fullwidth=&#8221;on&#8221; align_tablet=&#8221;center&#8221; align_phone=&#8221;&#8221; align_last_edited=&#8221;on|desktop&#8221; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.19.2&#8243; _module_preset=&#8221;default&#8221; custom_margin=&#8221;||||false|false&#8221; global_colors_info=&#8221;{}&#8221;][\/et_pb_image][et_pb_toggle title=&#8221;DiMa \/\/ Digitization Potential of Materials Research in SmartPro&#8221; open_toggle_text_color=&#8221;#254B94&#8243; closed_toggle_background_color=&#8221;#dbe0f2&#8243; icon_color=&#8221;#254b94&#8243; open_icon_color=&#8221;#254b94&#8243; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.25.1&#8243; _module_preset=&#8221;default&#8221; title_text_color=&#8221;#000000&#8243; title_level=&#8221;h3&#8243; title_font=&#8221;||||||||&#8221; title_font_size=&#8221;18px&#8221; title_line_height=&#8221;1.6em&#8221; body_text_color=&#8221;#000000&#8243; body_ul_line_height=&#8221;1.8em&#8221; title_font_size_tablet=&#8221;&#8221; title_font_size_phone=&#8221;17px&#8221; title_font_size_last_edited=&#8221;on|phone&#8221; body_font_size_tablet=&#8221;&#8221; body_font_size_phone=&#8221;15px&#8221; body_font_size_last_edited=&#8221;on|phone&#8221; custom_css_toggle_title=&#8221;font-weight: 400;&#8221; border_width_all=&#8221;3px&#8221; border_color_all=&#8221;#dbe0f2&#8243; global_colors_info=&#8221;{}&#8221;]<\/p>\n<p><strong>01.10.2019 \u2013 30.09.2020<\/strong><\/p>\n<p>The explorative project <strong>DiMa <\/strong>on machine learning (ML) methods was carried out in four subprojects, each of which focused on one of the applications fields of SmartPro or additive manufacturing. Here, the methodological competence of ML experts was combined with expertise in the particular research areas. In this way, interdisciplinary approaches were successfully used to push research further towards tailored development and application of ML methods within SmartPro. Each of the four subprojects served as a starting point for the current cross-sectional impulse project <strong>BEYOND<\/strong> with a focus on machine learning.<\/p>\n<p>The subproject <strong>MagTwin<\/strong> (assigned to the impulse project <strong>MagNetz<\/strong>, energy converters) focused on the development of a digital twin of a permanent magnet test bench. Most importantly, the aging processes of permanent magnets were simulated.<\/p>\n<p>In the subproject <strong>DigitEL<\/strong> (assigned to the impulse project <strong>LiMaProMet<\/strong>, energy storage systems), machine learning was used to analyze microstructures of electrode material in lithium-ion accumulators, and performance was improved. A particular focus was on the prediction of current rate capability.<\/p>\n<p>The subproject in the application field of lightweight construction (and to the impulse project<strong> InDiMat<\/strong>) investigated the surface properties of adhesive-bonded multi-material systems based on carbon fiber-reinforced plastics (CFRP). The systems were analyzed microscopically, and images were collected using 2D and 3D systems. Based on these and supplementary data, machine learning approaches were used to predict the mechanical strength of the bonded joints.<\/p>\n<p>In <strong>SmartPrint<\/strong> (assigned to the <strong>AddFunk<\/strong> impulse project), the relationships between the quality of 3D-printed optical components and their process parameters as well as material properties were investigated using machine learning.<\/p>\n<p>&nbsp;<\/p>\n<ul>\n<li><strong>Project management<br \/><\/strong><\/li>\n<\/ul>\n<p style=\"padding-left: 40px\">Prof. Dr. Ricardo B\u00fcttner, Business Informatics<\/p>\n<ul>\n<li><strong>Project partners<br \/><\/strong><\/li>\n<\/ul>\n<p style=\"padding-left: 40px\"><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#sebastian-feldmann\">Prof. Dr.-Ing. Sebastian Feldmann<\/a>, Digitale Systemintegration im Maschinenbau<\/p>\n<p style=\"padding-left: 40px\">Prof. Dr. Ulrich Klauck, Machine Learning and Data Analysis<\/p>\n<p style=\"padding-left: 40px\"><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#manfred-roessle\">Prof. Dr. Manfred R\u00f6ssle<\/a>, Business Informatics<\/p>\n<p>[\/et_pb_toggle][et_pb_image src=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2024\/05\/SmartCycle_scaled-scaled.jpg&#8221; alt=&#8221;Machine Learning (K\u00fcnstliche Intelligenz) \/\/ SmartPro&#8221; title_text=&#8221;SmartCycle_scaled&#8221; show_bottom_space=&#8221;off&#8221; align=&#8221;center&#8221; force_fullwidth=&#8221;on&#8221; align_tablet=&#8221;center&#8221; align_phone=&#8221;&#8221; align_last_edited=&#8221;on|desktop&#8221; disabled_on=&#8221;off|off|off&#8221; module_id=&#8221;smartcycle&#8221; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; custom_margin=&#8221;||||false|false&#8221; global_colors_info=&#8221;{}&#8221;][\/et_pb_image][et_pb_toggle title=&#8221;SmartCycle \/\/ Smart Recycling Solutions for Future Technologies&#8221; open_toggle_text_color=&#8221;#254B94&#8243; closed_toggle_background_color=&#8221;#dbe0f2&#8243; icon_color=&#8221;#254b94&#8243; open_icon_color=&#8221;#254b94&#8243; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.25.1&#8243; _module_preset=&#8221;default&#8221; title_text_color=&#8221;#000000&#8243; title_level=&#8221;h3&#8243; title_font=&#8221;||||||||&#8221; title_font_size=&#8221;18px&#8221; title_line_height=&#8221;1.6em&#8221; body_text_color=&#8221;#000000&#8243; body_ul_line_height=&#8221;1.8em&#8221; hover_enabled=&#8221;0&#8243; title_font_size_tablet=&#8221;&#8221; title_font_size_phone=&#8221;17px&#8221; title_font_size_last_edited=&#8221;on|phone&#8221; body_font_size_tablet=&#8221;&#8221; body_font_size_phone=&#8221;15px&#8221; body_font_size_last_edited=&#8221;on|phone&#8221; custom_css_toggle_title=&#8221;font-weight: 400;&#8221; border_width_all=&#8221;3px&#8221; border_color_all=&#8221;#dbe0f2&#8243; global_colors_info=&#8221;{}&#8221; sticky_enabled=&#8221;0&#8243;]<\/p>\n<p><strong>01.05.2023 &#8211; 31.07.2025<\/strong><\/p>\n<p>The recycling and circular economy of materials in the areas of energy converters, energy storage systems, and lightweight construction \u2013 the three fields of application addressed by SmartPro research \u2013 are vital for sustainable resource management. By implementing efficient recycling processes and embracing circular economy principles, valuable materials can be recovered from waste, reducing the need for raw material extraction and minimizing environmental impact. The aim of the explorative SmartPro project SmartCycle is to explore new recycling strategies and further develop methods to perform these practices. This project will shed light on innovative recycling methods and thus contribute to conserving resources, promoting energy efficiency, and fostering a more sustainable and environmentally-conscious approach to the production and use of magnets, batteries, and lightweight construction materials.<\/p>\n<p>To achieve these goals, SmartCycle is divided into five sub-projects, aligned with the three application fields addressed by SmartPro (energy converters, energy storage systems, and lightweight construction) as well as the interdisciplinary technology of machine learning.<\/p>\n<p>&nbsp;<\/p>\n<ul>\n<li><strong>Project management<br \/><\/strong><\/li>\n<\/ul>\n<p style=\"padding-left: 40px\"><a href=\"http:\/\/smart-pro.org\/en\/researchers\/#iman-taha\">Prof. Dr. Iman Taha<\/a>, Institute for Sustainable Polymers and Composites<\/p>\n<p style=\"padding-left: 40px\">The <strong>RecyKIMi <\/strong>sub-project focuses on using machine learning, virtual reality, and augmented reality methods to characterize and assess the quality of recyclates. In the context of electromobility, magnetic materials are essential for electric motors, while battery materials play a critical role in energy storage systems. When recycling these materials, it is essential to evaluate their quality to ensure that they meet the required standards and can perform effectively in new applications. Artificial intelligence (AI) methods such as machine learning are powerful tools for assessing the quality of recycled materials because they can be trained to recognize patterns in new data. In RecyKIMi, material-specific AI-modules are developed to analyze the microstructure of the recyclates in real time from microscopic images.<\/p>\n<ul>\n<li><strong>Sub-project management<br \/><\/strong><\/li>\n<\/ul>\n<p style=\"padding-left: 40px\"><a href=\"http:\/\/smart-pro.org\/en\/researchers\/#timo-bernthaler\">Dr. Timo Bernthaler<\/a>, Materials Research Insitute Aalen<\/p>\n<p style=\"padding-left: 40px\"><a href=\"http:\/\/smart-pro.org\/en\/researchers\/#carsten-lecon\">Prof. Dr. Carsten Lecon<\/a>, Laboratory for Multimedia Design and Virtual Reality<\/p>\n<p style=\"padding-left: 40px\"><a href=\"http:\/\/smart-pro.org\/en\/researchers\/#gerhard-schneider\">Prof. Dr. Gerhard Schneider<\/a>, Materials Research Insitute Aalen<\/p>\n<p>[\/et_pb_toggle][\/et_pb_column][\/et_pb_row][\/et_pb_section][et_pb_section fb_built=&#8221;1&#8243; module_id=&#8221;relatedprojects&#8221; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_row column_structure=&#8221;1_3,2_3&#8243; module_class=&#8221; &#8221; _builder_version=&#8221;4.20.2&#8243; width=&#8221;90%&#8221; width_tablet=&#8221;90%&#8221; width_phone=&#8221;&#8221; width_last_edited=&#8221;on|tablet&#8221; max_width=&#8221;1920px&#8221; max_width_tablet=&#8221;1920px&#8221; max_width_phone=&#8221;&#8221; max_width_last_edited=&#8221;on|desktop&#8221; make_fullwidth=&#8221;on&#8221; global_module=&#8221;11593&#8243; saved_tabs=&#8221;all&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_column type=&#8221;1_3&#8243; _builder_version=&#8221;4.16&#8243; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_text _builder_version=&#8221;4.20.2&#8243; text_font_size=&#8221;16px&#8221; text_line_height=&#8221;2em&#8221; header_2_font_size=&#8221;32px&#8221; header_2_line_height=&#8221;1.3em&#8221; custom_margin=&#8221;||10px||false|false&#8221; custom_padding=&#8221;||||false|false&#8221; header_2_font_size_tablet=&#8221;&#8221; header_2_font_size_phone=&#8221;28px&#8221; header_2_font_size_last_edited=&#8221;on|phone&#8221; global_colors_info=&#8221;{}&#8221;]<\/p>\n<h2>Related projects<\/h2>\n<p>[\/et_pb_text][et_pb_divider color=&#8221;#DBE0F2&#8243; divider_weight=&#8221;4px&#8221; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; custom_margin=&#8221;||||false|false&#8221; locked=&#8221;off&#8221; global_colors_info=&#8221;{}&#8221;][\/et_pb_divider][\/et_pb_column][et_pb_column type=&#8221;2_3&#8243; _builder_version=&#8221;4.16&#8243; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_text _builder_version=&#8221;4.20.2&#8243; text_text_color=&#8221;#000000&#8243; ul_line_height=&#8221;1.8em&#8221; header_text_color=&#8221;#000000&#8243; background_layout=&#8221;dark&#8221; text_font_size_tablet=&#8221;&#8221; text_font_size_phone=&#8221;15px&#8221; text_font_size_last_edited=&#8221;on|phone&#8221; text_line_height_tablet=&#8221;&#8221; text_line_height_phone=&#8221;1.9em&#8221; text_line_height_last_edited=&#8221;on|phone&#8221; global_colors_info=&#8221;{}&#8221;]<\/p>\n<p>The working groups of the SmartPro network at Aalen University of Applied Sciences are involved in numerous other research projects in addition to the SmartPro projects. These often investigate related topics that are thematically or methodologically related to SmartPro.<\/p>\n<p>[\/et_pb_text][\/et_pb_column][\/et_pb_row][et_pb_row column_structure=&#8221;1_2,1_2&#8243; disabled_on=&#8221;on|on|on&#8221; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; width=&#8221;90%&#8221; width_tablet=&#8221;90%&#8221; width_phone=&#8221;&#8221; width_last_edited=&#8221;on|tablet&#8221; max_width=&#8221;1920px&#8221; max_width_tablet=&#8221;1920px&#8221; max_width_phone=&#8221;&#8221; max_width_last_edited=&#8221;on|desktop&#8221; custom_padding=&#8221;25px|0px|27px|0px|false|false&#8221; make_fullwidth=&#8221;on&#8221; disabled=&#8221;on&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_column type=&#8221;1_2&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_image src=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2019\/02\/Exploratives_Projekt_PreMo-LiB__FotografThomasKlink-e1548934661496.jpg&#8221; alt=&#8221;Machine Learning (K\u00fcnstliche Intelligenz) \/\/ SmartPro&#8221; title_text=&#8221;Machine Learning (K\u00fcnstliche Intelligenz) \/\/ SmartPro&#8221; show_bottom_space=&#8221;off&#8221; align=&#8221;center&#8221; force_fullwidth=&#8221;on&#8221; align_tablet=&#8221;center&#8221; align_phone=&#8221;&#8221; align_last_edited=&#8221;on|desktop&#8221; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; custom_margin=&#8221;||||false|false&#8221; global_colors_info=&#8221;{}&#8221;][\/et_pb_image][et_pb_toggle title=&#8221;SmartCycle \/\/ Smart Recycling Solutions for Future Technologies&#8221; open_toggle_text_color=&#8221;#254B94&#8243; closed_toggle_background_color=&#8221;#dbe0f2&#8243; icon_color=&#8221;#254b94&#8243; open_icon_color=&#8221;#254b94&#8243; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; title_text_color=&#8221;#000000&#8243; title_level=&#8221;h3&#8243; title_font=&#8221;||||||||&#8221; title_font_size=&#8221;18px&#8221; title_line_height=&#8221;1.6em&#8221; body_text_color=&#8221;#000000&#8243; body_ul_line_height=&#8221;1.8em&#8221; title_font_size_tablet=&#8221;&#8221; title_font_size_phone=&#8221;17px&#8221; title_font_size_last_edited=&#8221;on|phone&#8221; body_font_size_tablet=&#8221;&#8221; body_font_size_phone=&#8221;15px&#8221; body_font_size_last_edited=&#8221;on|phone&#8221; custom_css_toggle_title=&#8221;font-weight: 400;&#8221; border_width_all=&#8221;3px&#8221; border_color_all=&#8221;#dbe0f2&#8243; global_colors_info=&#8221;{}&#8221;]<\/p>\n<p><strong>01.05.2023 &#8211; 31.07.2025<\/strong><\/p>\n<p>The recycling and circular economy of materials in the areas of energy converters, energy storage systems, and lightweight construction \u2013 the three fields of application addressed by SmartPro research \u2013 are vital for sustainable resource management. By implementing efficient recycling processes and embracing circular economy principles, valuable materials can be recovered from waste, reducing the need for raw material extraction and minimizing environmental impact. The aim of the explorative SmartPro project SmartCycle is to explore new recycling strategies and further develop methods to perform these practices. This project will shed light on innovative recycling methods and thus contribute to conserving resources, promoting energy efficiency, and fostering a more sustainable and environmentally-conscious approach to the production and use of magnets, batteries, and lightweight construction materials.<\/p>\n<p>To achieve these goals, SmartCycle is divided into five sub-projects, aligned with the three application fields addressed by SmartPro (energy converters, energy storage systems, and lightweight construction) as well as the interdisciplinary technology of machine learning.<\/p>\n<p>&nbsp;<\/p>\n<ul>\n<li><strong>Project management<br \/><\/strong><\/li>\n<\/ul>\n<p style=\"padding-left: 40px\"><a href=\"http:\/\/smart-pro.org\/en\/researchers\/#iman-taha\">Prof. Dr. Iman Taha<\/a>, Lehrstuhl f\u00fcr Nachhaltige Werkstoffe in der Kunststofftechnik<\/p>\n<p style=\"padding-left: 40px\">The <strong>RecyKIMi <\/strong>sub-project focuses on using machine learning, virtual reality, and augmented reality methods to characterize and assess the quality of recyclates. In the context of electromobility, magnetic materials are essential for electric motors, while battery materials play a critical role in energy storage systems. When recycling these materials, it is essential to evaluate their quality to ensure that they meet the required standards and can perform effectively in new applications. Artificial intelligence (AI) methods such as machine learning are powerful tools for assessing the quality of recycled materials because they can be trained to recognize patterns in new data. In RecyKIMi, material-specific AI-modules are developed to analyze the microstructure of the recyclates in real time from microscopic images.<\/p>\n<ul>\n<li><strong>Sub-project management<br \/><\/strong><\/li>\n<\/ul>\n<p style=\"padding-left: 40px\"><a href=\"http:\/\/smart-pro.org\/en\/researchers\/#timo-bernthaler\">Dr. Timo Bernthaler<\/a>, Materials Research Insitute Aalen<\/p>\n<p style=\"padding-left: 40px\"><a href=\"http:\/\/smart-pro.org\/en\/researchers\/#carsten-lecon\">Prof. Dr. Carsten Lecon<\/a>, Laboratory for Multimedia Design and Virtual Reality<\/p>\n<p style=\"padding-left: 40px\"><a href=\"http:\/\/smart-pro.org\/en\/researchers\/#gerhard-schneider\">Prof. Dr. Gerhard Schneider<\/a>, Materials Research Insitute Aalen<\/p>\n<p>[\/et_pb_toggle][\/et_pb_column][et_pb_column type=&#8221;1_2&#8243; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_image src=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2020\/09\/HS-AA-3558_DiMa-2-scaled-e1599556231573_neu.jpg&#8221; alt=&#8221;Machine Learning (K\u00fcnstliche Intelligenz) \/\/ SmartPro&#8221; title_text=&#8221;Machine Learning (K\u00fcnstliche Intelligenz) \/\/ SmartPro&#8221; show_bottom_space=&#8221;off&#8221; align=&#8221;center&#8221; force_fullwidth=&#8221;on&#8221; align_tablet=&#8221;center&#8221; align_phone=&#8221;&#8221; align_last_edited=&#8221;on|desktop&#8221; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; custom_margin=&#8221;||||false|false&#8221; global_colors_info=&#8221;{}&#8221;][\/et_pb_image][et_pb_toggle title=&#8221;DiMa \/\/ Digitization Potential of Materials Research in SmartPro&#8221; open_toggle_text_color=&#8221;#254B94&#8243; closed_toggle_background_color=&#8221;#dbe0f2&#8243; icon_color=&#8221;#254b94&#8243; open_icon_color=&#8221;#254b94&#8243; disabled_on=&#8221;off|off|off&#8221; _builder_version=&#8221;4.20.2&#8243; _module_preset=&#8221;default&#8221; title_text_color=&#8221;#000000&#8243; title_level=&#8221;h3&#8243; title_font=&#8221;||||||||&#8221; title_font_size=&#8221;18px&#8221; title_line_height=&#8221;1.6em&#8221; body_text_color=&#8221;#000000&#8243; body_ul_line_height=&#8221;1.8em&#8221; title_font_size_tablet=&#8221;&#8221; title_font_size_phone=&#8221;17px&#8221; title_font_size_last_edited=&#8221;on|phone&#8221; body_font_size_tablet=&#8221;&#8221; body_font_size_phone=&#8221;15px&#8221; body_font_size_last_edited=&#8221;on|phone&#8221; custom_css_toggle_title=&#8221;font-weight: 400;&#8221; border_width_all=&#8221;3px&#8221; border_color_all=&#8221;#dbe0f2&#8243; global_colors_info=&#8221;{}&#8221;]<\/p>\n<p><strong>01.10.2019 \u2013 30.09.2020<\/strong><\/p>\n<p>The explorative project <strong>DiMa <\/strong>on machine learning (ML) methods was carried out in four subprojects, each of which focused on one of the applications fields of SmartPro or additive manufacturing. Here, the methodological competence of ML experts was combined with expertise in the particular research areas. In this way, interdisciplinary approaches were successfully used to push research further towards tailored development and application of ML methods within SmartPro. Each of the four subprojects served as a starting point for the current cross-sectional impulse project <strong>BEYOND<\/strong> with a focus on machine learning.<\/p>\n<p>The subproject <strong>MagTwin<\/strong> (assigned to the impulse project <strong>MagNetz<\/strong>, energy converters) focused on the development of a digital twin of a permanent magnet test bench. Most importantly, the aging processes of permanent magnets were simulated.<\/p>\n<p>In the subproject <strong>DigitEL<\/strong> (assigned to the impulse project <strong>LiMaProMet<\/strong>, energy storage systems), machine learning was used to analyze microstructures of electrode material in lithium-ion accumulators, and performance was improved. A particular focus was on the prediction of current rate capability.<\/p>\n<p>The subproject in the application field of lightweight construction (and to the impulse project<strong> InDiMat<\/strong>) investigated the surface properties of adhesive-bonded multi-material systems based on carbon fiber-reinforced plastics (CFRP). The systems were analyzed microscopically, and images were collected using 2D and 3D systems. Based on these and supplementary data, machine learning approaches were used to predict the mechanical strength of the bonded joints.<\/p>\n<p>In <strong>SmartPrint<\/strong> (assigned to the <strong>AddFunk<\/strong> impulse project), the relationships between the quality of 3D-printed optical components and their process parameters as well as material properties were investigated using machine learning.<\/p>\n<p>&nbsp;<\/p>\n<ul>\n<li><strong>Project management<br \/><\/strong><\/li>\n<\/ul>\n<p style=\"padding-left: 40px\">Prof. Dr. Ricardo B\u00fcttner, Business Informatics<\/p>\n<ul>\n<li><strong>Project partners<br \/><\/strong><\/li>\n<\/ul>\n<p style=\"padding-left: 40px\"><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#sebastian-feldmann\">Prof. Dr.-Ing. Sebastian Feldmann<\/a>, Digitale Systemintegration im Maschinenbau<\/p>\n<p style=\"padding-left: 40px\"><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#ulrich-klauck\">Prof. Dr. Ulrich Klauck<\/a>, Machine Learning and Data Analysis<\/p>\n<p style=\"padding-left: 40px\"><a href=\"https:\/\/smart-pro.org\/en\/researchers\/#manfred-roessle\">Prof. Dr. Manfred R\u00f6ssle<\/a>, Business Informatics<\/p>\n<p>[\/et_pb_toggle][\/et_pb_column][\/et_pb_row][\/et_pb_section][et_pb_section fb_built=&#8221;1&#8243; fullwidth=&#8221;on&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_fullwidth_slider show_arrows=&#8221;off&#8221; show_pagination=&#8221;off&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; custom_padding=&#8221;300px||300px|&#8221; animation_style=&#8221;fade&#8221; auto=&#8221;on&#8221; auto_speed=&#8221;4000&#8243; auto_ignore_hover=&#8221;on&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_slide use_bg_overlay=&#8221;off&#8221; use_text_overlay=&#8221;off&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; background_color=&#8221;#ffffff&#8221; background_image=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/11\/Smart-DATA_Slider_01_FotografThomasKlink_3x2_red.jpg&#8221; background_enable_image=&#8221;on&#8221; parallax=&#8221;on&#8221; button_on_hover=&#8221;on&#8221; global_colors_info=&#8221;{}&#8221; sticky_transition=&#8221;on&#8221;][\/et_pb_slide][et_pb_slide use_bg_overlay=&#8221;off&#8221; use_text_overlay=&#8221;off&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; background_color=&#8221;#ffffff&#8221; background_image=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/11\/Smart-DATA_Slider_02_3x2_red.jpg&#8221; background_enable_image=&#8221;on&#8221; parallax=&#8221;on&#8221; button_on_hover=&#8221;on&#8221; global_colors_info=&#8221;{}&#8221; sticky_transition=&#8221;on&#8221;][\/et_pb_slide][et_pb_slide use_bg_overlay=&#8221;off&#8221; use_text_overlay=&#8221;off&#8221; _builder_version=&#8221;4.16&#8243; _module_preset=&#8221;default&#8221; background_color=&#8221;#ffffff&#8221; background_image=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/11\/Smart-DATA_Slider_03_3x2_red.jpg&#8221; background_enable_image=&#8221;on&#8221; parallax=&#8221;on&#8221; button_on_hover=&#8221;on&#8221; global_colors_info=&#8221;{}&#8221; sticky_transition=&#8221;on&#8221;][\/et_pb_slide][\/et_pb_fullwidth_slider][\/et_pb_section][et_pb_section fb_built=&#8221;1&#8243; _builder_version=&#8221;4.16&#8243; background_color=&#8221;rgba(219,224,242,0.39)&#8221; background_image=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2019\/02\/square-layer-4.png&#8221; background_size=&#8221;initial&#8221; background_position=&#8221;bottom_right&#8221; custom_padding=&#8221;30px||30px||false|false&#8221; global_module=&#8221;11318&#8243; saved_tabs=&#8221;all&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_row column_structure=&#8221;2_3,1_3&#8243; module_class=&#8221; et_pb_row_fullwidth&#8221; _builder_version=&#8221;4.16&#8243; width=&#8221;90%&#8221; width_tablet=&#8221;90%&#8221; width_phone=&#8221;80%&#8221; width_last_edited=&#8221;on|desktop&#8221; max_width=&#8221;1920px&#8221; max_width_tablet=&#8221;1920px&#8221; max_width_phone=&#8221;1920px&#8221; max_width_last_edited=&#8221;on|desktop&#8221; custom_padding=&#8221;40px|||||&#8221; make_fullwidth=&#8221;on&#8221; custom_width_px=&#8221;1442px&#8221; global_colors_info=&#8221;{}&#8221;][et_pb_column type=&#8221;2_3&#8243; _builder_version=&#8221;4.16&#8243; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_text content_tablet=&#8221;&#8221; content_phone=&#8221;&#8221; content_last_edited=&#8221;on|phone&#8221; _builder_version=&#8221;4.20.2&#8243; text_text_color=&#8221;#000000&#8243; link_letter_spacing=&#8221;1px&#8221; link_line_height=&#8221;1.2em&#8221; header_3_line_height=&#8221;1.4em&#8221; width_tablet=&#8221;&#8221; width_phone=&#8221;100%&#8221; width_last_edited=&#8221;on|phone&#8221; text_font_size_tablet=&#8221;&#8221; text_font_size_phone=&#8221;15px&#8221; text_font_size_last_edited=&#8221;on|phone&#8221; text_line_height_tablet=&#8221;&#8221; text_line_height_phone=&#8221;1.9em&#8221; text_line_height_last_edited=&#8221;on|phone&#8221; module_alignment_tablet=&#8221;&#8221; module_alignment_phone=&#8221;center&#8221; module_alignment_last_edited=&#8221;on|phone&#8221; global_colors_info=&#8221;{}&#8221;]<\/p>\n<h5>SmartPro \/\/ FH-Impuls:<br \/>Strong universities of applied sciences &#8211; impulses for the region<\/h5>\n<p>With SmartPro, <a href=\"https:\/\/www.hs-aalen.de\/en\/facilities\/131\" target=\"_blank\" rel=\"noopener\">Aalen University of Applied Sciences<\/a> has positioned itself in the top group of universities of applied sciences nationwide. SmartPro is one of ten partnerships funded through the \u201c<a href=\"https:\/\/www.forschung-fachhochschulen.de\/fachhochschulen\/de\/massnahmen\/fh-impuls\/fh-impuls.html\" target=\"_blank\" rel=\"noopener\">FH-Impuls<\/a>\u201d program of the <a href=\"https:\/\/www.bmbf.de\/bmbf\/en\/home\/home_node.html\" target=\"_blank\" rel=\"noopener\">Federal Ministry of Education and Research<\/a> with around 10 million euros from 2017 until 2025. Core objectives are the sustainable expansion of the regional transfer and cooperation network as well as strengthening the research profile and innovative power. SmartPro contributes to the advancement of climate protection and digitalization, two key social challenges.<\/p>\n<p>[\/et_pb_text][\/et_pb_column][et_pb_column type=&#8221;1_3&#8243; _builder_version=&#8221;4.16&#8243; custom_padding=&#8221;|||&#8221; global_colors_info=&#8221;{}&#8221; custom_padding__hover=&#8221;|||&#8221;][et_pb_image src=&#8221;https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2018\/11\/image.png&#8221; url=&#8221;https:\/\/www.forschung-fachhochschulen.de\/massnahmen\/foerdermassnahme-fh-impuls&#8221; url_new_window=&#8221;on&#8221; align_tablet=&#8221;center&#8221; align_phone=&#8221;&#8221; align_last_edited=&#8221;on|desktop&#8221; _builder_version=&#8221;4.16&#8243; width_tablet=&#8221;&#8221; width_phone=&#8221;100%&#8221; width_last_edited=&#8221;on|phone&#8221; module_alignment_tablet=&#8221;&#8221; module_alignment_phone=&#8221;center&#8221; module_alignment_last_edited=&#8221;on|phone&#8221; global_colors_info=&#8221;{}&#8221;][\/et_pb_image][\/et_pb_column][\/et_pb_row][\/et_pb_section]<\/p>\n","protected":false},"excerpt":{"rendered":"<p>Research \/\/ Machine Learning \u2013 Artificial IntelligenceSmartPro \u2013 Key to Smart Products!Artificial intelligence is used in the SmartPro impulse projects BEYOND (2020-2022) and Smart-DATA in the form of machine learning (ML) methods. In particular, SmartPro researchers are investigating and further developing methods for quality control and process monitoring. ML methods are developed specifically for the three SmartPro application fields (energy converters, energy storage systems, and lightweight construction) through close collaboration within the SmartPro network. Data- and algorithm-based models are built through iterative artificial learning processes that can subsequently recognize relationships within the data, identify patterns or errors, and automatically perform comprehensive analyses. This establishes a toolbox that provides methods for a wide variety of problems that can be easily adapted for the defined purpose. Using ML methods in all SmartPro application fields further promotes the collaboration between researchers in the SmartPro network.<div class=\"et_pb_module dsm_image_carousel dsm_image_carousel_0 dsm_image_carousel_arrow_outside dsm_image_carousel_arrow_mobile_inside \">\n\t\t\t\t\n\t\t\t\t\n\t\t\t\t\n\t\t\t\t\n\t\t\t\t\n\t\t\t\t\n\t\t\t\t<div class=\"et_pb_module_inner\">\n\t\t\t\t\t<div class=\"swiper-container dsm_image_carousel_container  dsm_image_carousel_carousel\" dir=\"ltr\"data-effect=\"default\"\n\t\t\tdata-slider-effect-shadows=\"false\"\n\t\t\tdata-slider-effect-coverflow-rotate=\"30\"\n\t\t\tdata-slider-effect-coverflow-depth=\"0\"\n\t\t\tdata-loop=\"true\"\n\t\t\tdata-slide-to-show=\"6\"\n\t\t\tdata-slide-to-show-tablet=\"3\"\n\t\t\tdata-slide-to-show-phone=\"1\"\n\t\t\tdata-slide-to-scroll=\"1\"\n\t\t\tdata-slide-to-scroll-tablet=\"1\"\n\t\t\tdata-slide-to-scroll-phone=\"1\"\n\t\t\tdata-space-between=\"15\"\n\t\t\tdata-space-between-tablet=\"15\"\n\t\t\tdata-space-between-phone=\"15\"\n\t\t\tdata-slide-row=\"1\"\n\t\t\tdata-centered-slides=\"false\"\n\t\t\tdata-speed=\"300\"\n\t\t\tdata-autoplay=\"true\"\n\t\t\tdata-autoplay-speed=\"3000\"\n\t\t\tdata-touch-move=\"true\"\n\t\t\tdata-grab=\"true\"\n\t\t\tdata-pause-on-hover=\"true\"\n\t\t\tdata-show-lightbox=\"false\"\n\t\t\tdata-lightbox-gallery=\"false\"\n\t\t\tdata-lightbox-caption=\"false\"\n\t\t\tdata-infinite-scrolling=\"false\"\n\t\t\tdata-slide-row-tablet=\"1\"\n\t\t\tdata-slide-row-phone=\"1\"\n\t\t\tdata-autoplay-viewport=80%\n\t\t\tdata-mousewheel=\"false\"\n\t\t\tdata-lazyload=\"false\"\n\t\t\tdata-type=\"carousel\"\n\t\t\tdata-slideshow-effect=\"default\"\n\t\t\tdata-slideshow-to-show=\"4\"\n\t\t\tdata-slideshow-to-show-tablet=\"4\"\n\t\t\tdata-slideshow-to-show-phone=\"\"\n\t\t\tdata-slider-orientation=\"horizontal\"\n\t\t\t\t\t\tdata-lightbox-title=\"false\"\n\n\t\t\t><div class=\"swiper-wrapper\"><div class=\"swiper-slide dsm_image_carousel_item\"><img loading=\"lazy\" decoding=\"async\" src=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-zeiss.jpg\" alt=\"\" title=\"hsaa-smartpro-partner-zeiss\" width=\"730\" height=\"487\" data-dsm-image-description=\"\" srcset=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-zeiss.jpg 730w, https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-zeiss-480x320.jpg 480w\" sizes=\"(min-width: 0px) and (max-width: 480px) 480px, (min-width: 481px) 730px, 100vw\" class=\" skip-lazy\" \/><\/div><div class=\"swiper-slide dsm_image_carousel_item\"><img loading=\"lazy\" decoding=\"async\" src=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-hachtel.jpg\" alt=\"\" title=\"hsaa-smartpro-partner-hachtel\" width=\"730\" height=\"487\" data-dsm-image-description=\"\" srcset=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-hachtel.jpg 730w, https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-hachtel-480x320.jpg 480w\" sizes=\"(min-width: 0px) and (max-width: 480px) 480px, (min-width: 481px) 730px, 100vw\" class=\" skip-lazy\" \/><\/div><div class=\"swiper-slide dsm_image_carousel_item\"><img loading=\"lazy\" decoding=\"async\" src=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-kessler-co.jpg\" alt=\"\" title=\"hsaa-smartpro-partner-kessler-co\" width=\"730\" height=\"487\" data-dsm-image-description=\"\" srcset=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-kessler-co.jpg 730w, https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-kessler-co-480x320.jpg 480w\" sizes=\"(min-width: 0px) and (max-width: 480px) 480px, (min-width: 481px) 730px, 100vw\" class=\" skip-lazy\" \/><\/div><div class=\"swiper-slide dsm_image_carousel_item\"><img loading=\"lazy\" decoding=\"async\" src=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-frech.jpg\" alt=\"\" title=\"hsaa-smartpro-partner-frech\" width=\"730\" height=\"487\" data-dsm-image-description=\"\" srcset=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-frech.jpg 730w, https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-frech-480x320.jpg 480w\" sizes=\"(min-width: 0px) and (max-width: 480px) 480px, (min-width: 481px) 730px, 100vw\" class=\" skip-lazy\" \/><\/div><div class=\"swiper-slide dsm_image_carousel_item\"><img loading=\"lazy\" decoding=\"async\" src=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-pva-tepla.jpg\" alt=\"\" title=\"hsaa-smartpro-partner-pva-tepla\" width=\"730\" height=\"487\" data-dsm-image-description=\"\" srcset=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-pva-tepla.jpg 730w, https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/07\/hsaa-smartpro-partner-pva-tepla-480x320.jpg 480w\" sizes=\"(min-width: 0px) and (max-width: 480px) 480px, (min-width: 481px) 730px, 100vw\" class=\" skip-lazy\" \/><\/div><div class=\"swiper-slide dsm_image_carousel_item\"><img loading=\"lazy\" decoding=\"async\" src=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/12\/hsaa-smartpro-partern-wieland.jpg\" alt=\"\" title=\"hsaa-smartpro-partern-wieland\" width=\"730\" height=\"487\" data-dsm-image-description=\"\" srcset=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/12\/hsaa-smartpro-partern-wieland.jpg 730w, https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/12\/hsaa-smartpro-partern-wieland-480x320.jpg 480w\" sizes=\"(min-width: 0px) and (max-width: 480px) 480px, (min-width: 481px) 730px, 100vw\" class=\" skip-lazy\" \/><\/div><div class=\"swiper-slide dsm_image_carousel_item\"><img loading=\"lazy\" decoding=\"async\" src=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/12\/hsaa-smartpro-partern-Uni_Trier.jpg\" alt=\"\" title=\"hsaa-smartpro-partern-Uni_Trier\" width=\"731\" height=\"487\" data-dsm-image-description=\"\" srcset=\"https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/12\/hsaa-smartpro-partern-Uni_Trier.jpg 731w, https:\/\/smart-pro.org\/en\/wp-content\/uploads\/sites\/2\/2021\/12\/hsaa-smartpro-partern-Uni_Trier-480x320.jpg 480w\" sizes=\"(min-width: 0px) and (max-width: 480px) 480px, (min-width: 481px) 731px, 100vw\" class=\" skip-lazy\" \/><\/div><\/div><\/div><div class=\"swiper-button-prev swiper-arrow-button\" data-icon=\"4\"><\/div><div class=\"swiper-button-next swiper-arrow-button\" data-icon=\"5\"><\/div>\n\t\t\t\t<\/div>\n\t\t\t<\/div>Smart-DATA \/\/ Project duration: 01.04.2022 to 31.03.2026 &nbsp; Project management Prof. Dr. Orsolya Csisz\u00e1rMathematik und KI-AnwendungenTel.: +49 (0) 7361 576-5567orsolya.csiszar@hs-aalen.de &nbsp; Project partners Dr. Timo Bernthaler, Materials Research Institute Aalen Prof. Dr. Gerhard Schneider, Materials Research Institute Aalen Prof. Dr. Manfred [&hellip;]<\/p>\n","protected":false},"author":1,"featured_media":0,"parent":0,"menu_order":0,"comment_status":"closed","ping_status":"closed","template":"","meta":{"_acf_changed":false,"_et_pb_use_builder":"on","_et_pb_old_content":"","_et_gb_content_width":"","iawp_total_views":28,"footnotes":""},"class_list":["post-11228","page","type-page","status-publish","hentry"],"acf":[],"yoast_head":"<!-- This site is optimized with the Yoast SEO plugin v25.8 - https:\/\/yoast.com\/wordpress\/plugins\/seo\/ -->\n<title>Machine Learning - SmartPro \u2013 Key to Smart Products<\/title>\n<meta name=\"robots\" content=\"index, follow, max-snippet:-1, max-image-preview:large, max-video-preview:-1\" \/>\n<link rel=\"canonical\" href=\"https:\/\/smart-pro.org\/en\/machine-learning-3\/\" \/>\n<meta property=\"og:locale\" content=\"en_GB\" \/>\n<meta property=\"og:type\" content=\"article\" \/>\n<meta property=\"og:title\" content=\"Machine Learning - SmartPro \u2013 Key to Smart Products\" \/>\n<meta property=\"og:description\" content=\"Research \/\/ Machine Learning \u2013 Artificial IntelligenceSmartPro \u2013 Key to Smart Products!Artificial intelligence is used in the SmartPro impulse projects BEYOND (2020-2022) and Smart-DATA in the form of machine learning (ML) methods. In particular, SmartPro researchers are investigating and further developing methods for quality control and process monitoring. ML methods are developed specifically for the three SmartPro application fields (energy converters, energy storage systems, and lightweight construction) through close collaboration within the SmartPro network. Data- and algorithm-based models are built through iterative artificial learning processes that can subsequently recognize relationships within the data, identify patterns or errors, and automatically perform comprehensive analyses. This establishes a toolbox that provides methods for a wide variety of problems that can be easily adapted for the defined purpose. Using ML methods in all SmartPro application fields further promotes the collaboration between researchers in the SmartPro network.Smart-DATA \/\/ Project duration: 01.04.2022 to 31.03.2026 &nbsp; Project management Prof. Dr. Orsolya Csisz\u00e1rMathematik und KI-AnwendungenTel.: +49 (0) 7361 576-5567orsolya.csiszar@hs-aalen.de &nbsp; Project partners Dr. Timo Bernthaler, Materials Research Institute Aalen Prof. Dr. Gerhard Schneider, Materials Research Institute Aalen Prof. Dr. Manfred [&hellip;]\" \/>\n<meta property=\"og:url\" content=\"https:\/\/smart-pro.org\/en\/machine-learning-3\/\" \/>\n<meta property=\"og:site_name\" content=\"SmartPro \u2013 Key to Smart Products\" \/>\n<meta property=\"article:modified_time\" content=\"2025-02-17T08:52:28+00:00\" \/>\n<meta name=\"twitter:card\" content=\"summary_large_image\" \/>\n<meta name=\"twitter:label1\" content=\"Estimated reading time\" \/>\n\t<meta name=\"twitter:data1\" content=\"12 minutes\" \/>\n<script type=\"application\/ld+json\" class=\"yoast-schema-graph\">{\"@context\":\"https:\/\/schema.org\",\"@graph\":[{\"@type\":\"WebPage\",\"@id\":\"https:\/\/smart-pro.org\/en\/machine-learning-3\/\",\"url\":\"https:\/\/smart-pro.org\/en\/machine-learning-3\/\",\"name\":\"Machine Learning - SmartPro \u2013 Key to Smart Products\",\"isPartOf\":{\"@id\":\"https:\/\/smart-pro.org\/en\/#website\"},\"datePublished\":\"2023-10-25T07:35:37+00:00\",\"dateModified\":\"2025-02-17T08:52:28+00:00\",\"breadcrumb\":{\"@id\":\"https:\/\/smart-pro.org\/en\/machine-learning-3\/#breadcrumb\"},\"inLanguage\":\"en-GB\",\"potentialAction\":[{\"@type\":\"ReadAction\",\"target\":[\"https:\/\/smart-pro.org\/en\/machine-learning-3\/\"]}]},{\"@type\":\"BreadcrumbList\",\"@id\":\"https:\/\/smart-pro.org\/en\/machine-learning-3\/#breadcrumb\",\"itemListElement\":[{\"@type\":\"ListItem\",\"position\":1,\"name\":\"Home\",\"item\":\"https:\/\/smart-pro.org\/en\/\"},{\"@type\":\"ListItem\",\"position\":2,\"name\":\"Machine Learning\"}]},{\"@type\":\"WebSite\",\"@id\":\"https:\/\/smart-pro.org\/en\/#website\",\"url\":\"https:\/\/smart-pro.org\/en\/\",\"name\":\"SmartPro \u2013 Key to Smart Products\",\"description\":\"Klimaschutz durch Energie- und Ressourceneffizienz\",\"potentialAction\":[{\"@type\":\"SearchAction\",\"target\":{\"@type\":\"EntryPoint\",\"urlTemplate\":\"https:\/\/smart-pro.org\/en\/?s={search_term_string}\"},\"query-input\":{\"@type\":\"PropertyValueSpecification\",\"valueRequired\":true,\"valueName\":\"search_term_string\"}}],\"inLanguage\":\"en-GB\"}]}<\/script>\n<!-- \/ Yoast SEO plugin. -->","yoast_head_json":{"title":"Machine Learning - SmartPro \u2013 Key to Smart Products","robots":{"index":"index","follow":"follow","max-snippet":"max-snippet:-1","max-image-preview":"max-image-preview:large","max-video-preview":"max-video-preview:-1"},"canonical":"https:\/\/smart-pro.org\/en\/machine-learning-3\/","og_locale":"en_GB","og_type":"article","og_title":"Machine Learning - SmartPro \u2013 Key to Smart Products","og_description":"Research \/\/ Machine Learning \u2013 Artificial IntelligenceSmartPro \u2013 Key to Smart Products!Artificial intelligence is used in the SmartPro impulse projects BEYOND (2020-2022) and Smart-DATA in the form of machine learning (ML) methods. In particular, SmartPro researchers are investigating and further developing methods for quality control and process monitoring. ML methods are developed specifically for the three SmartPro application fields (energy converters, energy storage systems, and lightweight construction) through close collaboration within the SmartPro network. Data- and algorithm-based models are built through iterative artificial learning processes that can subsequently recognize relationships within the data, identify patterns or errors, and automatically perform comprehensive analyses. This establishes a toolbox that provides methods for a wide variety of problems that can be easily adapted for the defined purpose. 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