Guardado en:
Detalles Bibliográficos
Autores principales: de Payrebrune, Kristin M., Flaßkamp, Kathrin, Ströhla, Tom, Sattel, Thomas, Bestle, Dieter, Röder, Benedict, Eberhard, Peter, Peitz, Sebastian, Stoffel, Marcus, Rutwik, Gulakala, Aditya, Borse, Wohlleben, Meike, Sextro, Walter, Raff, Maximilian, Remy, C. David, Yadav, Manish, Stender, Merten, van Delden, Jan, Lüddecke, Timo, Langer, Sabine C., Schultz, Julius, Blech, Christopher
Formato: Preprint
Publicado: 2024
Materias:
Acceso en línea:https://arxiv.org/abs/2412.12230
Etiquetas: Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
_version_ 1866913614558920704
author de Payrebrune, Kristin M.
Flaßkamp, Kathrin
Ströhla, Tom
Sattel, Thomas
Bestle, Dieter
Röder, Benedict
Eberhard, Peter
Peitz, Sebastian
Stoffel, Marcus
Rutwik, Gulakala
Aditya, Borse
Wohlleben, Meike
Sextro, Walter
Raff, Maximilian
Remy, C. David
Yadav, Manish
Stender, Merten
van Delden, Jan
Lüddecke, Timo
Langer, Sabine C.
Schultz, Julius
Blech, Christopher
author_facet de Payrebrune, Kristin M.
Flaßkamp, Kathrin
Ströhla, Tom
Sattel, Thomas
Bestle, Dieter
Röder, Benedict
Eberhard, Peter
Peitz, Sebastian
Stoffel, Marcus
Rutwik, Gulakala
Aditya, Borse
Wohlleben, Meike
Sextro, Walter
Raff, Maximilian
Remy, C. David
Yadav, Manish
Stender, Merten
van Delden, Jan
Lüddecke, Timo
Langer, Sabine C.
Schultz, Julius
Blech, Christopher
contents Artificial intelligence (AI) is driving transformative changes across numerous fields, revolutionizing conventional processes and creating new opportunities for innovation. The development of mechatronic systems is undergoing a similar transformation. Over the past decade, modeling, simulation, and optimization techniques have become integral to the design process, paving the way for the adoption of AI-based methods. In this paper, we examine the potential for integrating AI into the engineering design process, using the V-model from the VDI guideline 2206, considered the state-of-the-art in product design, as a foundation. We identify and classify AI methods based on their suitability for specific stages within the engineering product design workflow. Furthermore, we present a series of application examples where AI-assisted design has been successfully implemented by the authors. These examples, drawn from research projects within the DFG Priority Program \emph{SPP~2353: Daring More Intelligence - Design Assistants in Mechanics and Dynamics}, showcase a diverse range of applications across mechanics and mechatronics, including areas such as acoustics and robotics.
format Preprint
id arxiv_https___arxiv_org_abs_2412_12230
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle The impact of AI on engineering design procedures for dynamical systems
de Payrebrune, Kristin M.
Flaßkamp, Kathrin
Ströhla, Tom
Sattel, Thomas
Bestle, Dieter
Röder, Benedict
Eberhard, Peter
Peitz, Sebastian
Stoffel, Marcus
Rutwik, Gulakala
Aditya, Borse
Wohlleben, Meike
Sextro, Walter
Raff, Maximilian
Remy, C. David
Yadav, Manish
Stender, Merten
van Delden, Jan
Lüddecke, Timo
Langer, Sabine C.
Schultz, Julius
Blech, Christopher
Systems and Control
Machine Learning
J.6; D.2
Artificial intelligence (AI) is driving transformative changes across numerous fields, revolutionizing conventional processes and creating new opportunities for innovation. The development of mechatronic systems is undergoing a similar transformation. Over the past decade, modeling, simulation, and optimization techniques have become integral to the design process, paving the way for the adoption of AI-based methods. In this paper, we examine the potential for integrating AI into the engineering design process, using the V-model from the VDI guideline 2206, considered the state-of-the-art in product design, as a foundation. We identify and classify AI methods based on their suitability for specific stages within the engineering product design workflow. Furthermore, we present a series of application examples where AI-assisted design has been successfully implemented by the authors. These examples, drawn from research projects within the DFG Priority Program \emph{SPP~2353: Daring More Intelligence - Design Assistants in Mechanics and Dynamics}, showcase a diverse range of applications across mechanics and mechatronics, including areas such as acoustics and robotics.
title The impact of AI on engineering design procedures for dynamical systems
topic Systems and Control
Machine Learning
J.6; D.2
url https://arxiv.org/abs/2412.12230