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Human-in-the-loop optimization for vehicle body lightweight design
Journal article   Peer reviewed

Human-in-the-loop optimization for vehicle body lightweight design

Jia Hao, Ruofan Deng, Liangyue Jia, Zuoxuan Li, Reza Alizadeh, Leili Soltanisehat, Bingyi Liu, Zhibin Sun and Yiping Shao
Advanced engineering informatics, Vol.62, p.102887
10/01/2024

Abstract

Computer Science Computer Science, Artificial Intelligence Engineering Engineering, Multidisciplinary Science & Technology Technology
Automatic optimization algorithms are crucial for vehicle body lightweight design; however, existing methods remain inefficient leading to excessive iterations that increase both time and costs. Current interactive optimization strategies partially mitigate this issue but lack a broad range of manipulation points and auxiliary information models. As such, we introduce a novel approach, "Human-in-the-Loop based method for Vehicle Body Lightweight Design" (HIL-VBLD). This method integrates human decision-making with optimization algorithms to reduce unproductive iterations. HIL-VBLD comprises two key components: (1) an innovative interaction mode that provides multiple manipulation points including constraint modification, algorithm switching, and selection of solutions of interest (SOI); (2) A comprehensive auxiliary information model that supports decision-making for designers. Our analysis demonstrates HIL-VBLD's efficacy, showing a 54.5 % reduction in iteration cycles for genetic algorithm using SOI selection. Algorithm switching led to a 4.5 % mass reduction, mitigating local optimum pitfalls associated with gradient algorithms. Additionally, the auxiliary information model achieved a further 1.25 % mass reduction, enhancing optimization robustness. Compared to conventional automatic algorithm switching strategies, HIL-VBLD maintains equivalent accuracy with 23.9 % fewer iterations.

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