Investigation of Heat Source Layout Optimization by Using Deep Learning Surrogate Models

0 ENGINEERING, MECHANICAL ASME journal of heat and mass transfer Pub Date : 2024-02-13 DOI:10.1115/1.4064733
Ji Lang, Qianqian Wang, Shan Tong
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Abstract

The optimization of heat source layout (HSLO) is able to facilitate superior heat dissipation, thereby addressing the complexities associated with thermal management. However, HSLO is characterized by numerous degrees of freedom and complex interrelations between components. Conventional optimization methodologies often exhibit limitations such as high computational demands and diminished efficiency, particularly with large-scale predicaments. This study introduces the application of deep learning surrogate models grounded in backpropagation neural (BP) networks to optimize heat source layouts. These models afford rapid and precise evaluations, diminishing computational loads and enhancing the efficiency of HSLO. The suggested framework integrates coarse and fine search modules to traverse the layout space and pinpoint optimal configurations competently. Parametric examinations are taken to explore the impact of refinement grades and conductive ratios, which dominates the optimization problem. The pattern changes of the conductive channel have been presented. Moreover, the critical conductive ratio has been found, below which the conductive material can not contribute to heat dissipation. The outcomes elucidate the fundamental processes of HSLO, providing valuable insights for pioneering thermal management strategies.
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利用深度学习代用模型进行热源布局优化的研究
热源布局(HSLO)的优化能够促进良好的散热,从而解决与热管理相关的复杂问题。然而,HSLO 的特点是自由度大,组件之间的相互关系复杂。传统的优化方法往往表现出局限性,如计算要求高、效率低,尤其是在处理大规模困境时。本研究介绍了以反向传播神经(BP)网络为基础的深度学习替代模型在优化热源布局中的应用。这些模型可提供快速、精确的评估,减少计算负荷,提高 HSLO 的效率。所建议的框架集成了粗略和精细搜索模块,以遍历布局空间并准确定位最佳配置。对优化问题中占主导地位的细化等级和导电率的影响进行了参数检验。介绍了导电通道的模式变化。此外,还找到了临界导电率,低于该临界导电率,导电材料将无法促进散热。这些成果阐明了 HSLO 的基本过程,为开创热管理策略提供了宝贵的见解。
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