论文标题

工程系统的基于深度学习的逆设计:汽车制动器的多学科设计优化

Deep Learning-Based Inverse Design for Engineering Systems: Multidisciplinary Design Optimization of Automotive Brakes

论文作者

Kim, Seongsin, Jwa, Minyoung, Lee, Soonwook, Park, Sunghoon, Kang, Namwoo

论文摘要

制动系统的制动性能是必须考虑用于车辆开发的目标性能。明显的活塞旅行(APT)和阻力扭矩是评估制动性能的最具代表性因素。特别是,由于两个绩效因素相互冲突,因此制动设计需要一种多学科设计优化(MDO)方法。但是,随着学科数量的增加,MDO的计算成本增加。对使用深度学习(DL)的逆设计的最新研究已经确定了可以立即生成最佳设计的可能性,该设计可以满足目标性能而无需实施迭代优化过程。这项研究提出了一个基于DL的多学科逆设计(MID),同时满足多个目标,例如制动系统的APT和阻力扭矩。结果表明,与常规优化方法相比,所提出的逆设计可以更有效地找到最佳设计,例如反向传播和顺序二次编程。在准确性和计算成本方面,MID的性能与单学科逆设计相似。根据结果​​得出了一种新颖的设计,并且与现有设计相同的性能得到了满足。

The braking performance of the brake system is a target performance that must be considered for vehicle development. Apparent piston travel (APT) and drag torque are the most representative factors for evaluating braking performance. In particular, as the two performance factors have a conflicting relationship with each other, a multidisciplinary design optimization (MDO) approach is required for brake design. However, the computational cost of MDO increases as the number of disciplines increases. Recent studies on inverse design that use deep learning (DL) have established the possibility of instantly generating an optimal design that can satisfy the target performance without implementing an iterative optimization process. This study proposes a DL-based multidisciplinary inverse design (MID) that simultaneously satisfies multiple targets, such as the APT and drag torque of the brake system. Results show that the proposed inverse design can find the optimal design more efficiently compared with the conventional optimization methods, such as backpropagation and sequential quadratic programming. The MID achieved a similar performance to the single-disciplinary inverse design in terms of accuracy and computational cost. A novel design was derived on the basis of results, and the same performance was satisfied as that of the existing design.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源