Machine Learning-Augmented Stochastic Search for the Automated Synthesis and Optimization of Cooling Channels

Jonas Schwarz, K. Shea
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引用次数: 1

Abstract

Stochastic search methods are widely used when it comes to design synthesis and optimization of response-based objective functions. In engineering applications, the objective function is typically expensive to evaluate, and stochastic search methods lack efficiency, resulting in the necessity of extensive design evaluations. In order to improve stochastic search methods, we propose a Machine Learning (ML)-based augmentation, consisting of three modules: a design archiver, a data modeler, and a modification advisor. These three modules cooperatively work together to store the gathered data during the design process, build up a representative model of the observations made, and advise the search for further sequences of modifications to apply. The proposed method is benchmarked against its unaugmented parent method in placing cooling channels in a die casting mold. The results show that the efficiency of the method is significantly improved when augmented with ML, i.e. similar results are obtained with 25–50% fewer evaluations. Additionally, the robustness and reliability of the optimization process is improved with a standard deviation of the obtained results that is 60–85% smaller. It is shown that the search strategy can be significantly improved with the proposed method, resulting in shorter running times and more reliable convergence behavior.
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基于机器学习增强随机搜索的冷却通道自动合成与优化
随机搜索方法在基于响应的目标函数的设计、综合和优化中得到了广泛的应用。在工程应用中,目标函数的评估通常是昂贵的,随机搜索方法缺乏效率,导致需要大量的设计评估。为了改进随机搜索方法,我们提出了一种基于机器学习(ML)的增强方法,该增强方法由三个模块组成:设计归档器、数据建模器和修改顾问。这三个模块协同工作,存储设计过程中收集的数据,建立观察结果的代表性模型,并建议搜索要应用的进一步修改序列。在压铸模具中放置冷却通道时,对所提出的方法进行了基准测试。结果表明,当与ML增强时,该方法的效率显著提高,即减少25-50%的评估即可获得相似的结果。此外,优化过程的鲁棒性和可靠性也得到了提高,得到的结果的标准差减小了60-85%。结果表明,该方法能显著改善搜索策略,使算法运行时间更短,收敛性能更可靠。
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