进气通风系统的代理辅助进化多目标形状优化

Tinkle Chugh, Karthik Sindhya, K. Miettinen, Yaochu Jin, T. Krátký, P. Makkonen
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引用次数: 31

摘要

我们在解决现实世界的工业问题中解决了三个不同的挑战:制定优化问题,连接不同的仿真工具和处理计算昂贵的目标函数。要优化的问题是拖拉机进气通风系统,它由三个计算代价昂贵的目标函数组成。我们描述了系统的建模和用商业软件进行的数值评估。为了获得少量函数求值的解,采用了最近提出的代理辅助进化算法K-RVEA。将通风系统四个不同出口的直径作为决策变量。具有实质知识的决策者根据自己的偏好,从K-RVEA生成的非支配解集中选择最终解。与初始设计的基线解相比,最终选择的解具有更好的目标函数值。还对K-RVEA和RVEA(不使用代理)的解决方案进行了比较,以显示使用代理的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surrogate-assisted evolutionary multiobjective shape optimization of an air intake ventilation system
We tackle three different challenges in solving a real-world industrial problem: formulating the optimization problem, connecting different simulation tools and dealing with computationally expensive objective functions. The problem to be optimized is an air intake ventilation system of a tractor and consists of three computationally expensive objective functions. We describe the modeling of the system and its numerical evaluation with a commercial software. To obtain solutions in few function evaluations, a recently proposed surrogate-assisted evolutionary algorithm K-RVEA is applied. The diameters of four different outlets of the ventilation system are considered as decision variables. From the set of nondominated solutions generated by K-RVEA, a decision maker having substance knowledge selected the final one based on his preferences. The final selected solution has better objective function values compared to the baseline solution of the initial design. A comparison of solutions with K-RVEA and RVEA (which does not use surrogates) is also performed to show the potential of using surrogates.
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