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Automated Parameterization of CAE Model Based on Test Data Response Bands Humanetics Innovative Solutions, Incorporated

SAE Technical Papers (1906-current) Available online

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Format:
Book
Conference/Event
Author/Creator:
Khopekar, Maria, author.
Contributor:
Arya, Bibhu
Kurkuri, Mahendra
Mohan, Pradeep
Sridhar, Raam
Conference Name:
Symposium on International Automotive Technology (2026) (2026-01-28 : Pune, India)
Language:
English
Physical Description:
1 online resource cm
Place of Publication:
Warrendale, PA SAE International 2026
Summary:
This study presents a data-driven approach aimed at enhancing the correlation between physical test data and Computer-Aided Engineering (CAE) simulations, with an emphasis on adapting the standard CAE model's response to minimize any gaps relative to the response of a given test specimen. Leveraging historical test data, machine learning techniques are used to categorize responses into distinct bands, effectively capturing the inherent variability observed in real-world scenarios. This categorization step recognizes patterns across a wide range of test data, forming the foundation for closely matching and adapting CAE models to new, unseen hardware data. In typical automotive simulation workflows, tuning a standard CAE model to match new hardware test data involves iterative parameter adjustments and simulations. This process can be time-consuming and often lacks predictive insight into the necessary modifications. The approach developed in this study addresses this challenge by systematically modifying a baseline CAE model to represent the test response of new hardware. The proposed approach leverages machine learning algorithms in two key stages:This targeted adaptation enables the generation of a modified CAE model that closely replicates the behaviour observed in new test data. By reducing the gap between predicted and actual test responses, this process enhances the accuracy and efficiency of simulation-driven engineering. The result is a more reliable and automated method for aligning CAE models with physical test data, supporting faster development cycles and improved decision-making in product design and validation
Notes:
Vendor supplied data
Publisher Number:
2026-26-0436
Access Restriction:
Restricted for use by site license

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