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首页> 外文期刊>IEEE Transactions on Components and Packaging Technologies >Bayesian surrogates for integrating numerical, analytical, and experimental data: application to inverse heat transfer in wearable computers
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Bayesian surrogates for integrating numerical, analytical, and experimental data: application to inverse heat transfer in wearable computers

机译:用于整合数值,分析和实验数据的贝叶斯替代方法:在可穿戴计算机中逆热传递中的应用

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摘要

Wearable computers are portable electronics worn on the body. The increasing thermal challenges facing these compact electronics systems have motivated new cooling strategies such as transient thermal management with thermal storage materials. The ability of building models to assess quickly the effect of different design parameters is critical for effectively incorporating innovative thermal strategies into new products. System models that enable design space exploration are built from different information sources such as numerical simulations, physical experiments, analytical solutions and heuristics. These models, called surrogates, are nonlinear, adaptive, and suitable for system responses where limited information is available and few realizations of experiments or numerical simulations are feasible. This paper applies a Bayesian surrogate framework to estimate values for unknown physical parameters of an embedded electronics system. Physical experiments and numerical simulations are performed on an embedded electronics prototype system of a wearable computer. Numerical models for the experimental prototype, which involve five and three unknown parameters, are implemented with and without thermal contact resistances. Through the use of orthogonal arrays and optimal sampling, an efficient exploration of the parameter space is performed to determine thermal conductivities, thermal contact resistances and heat transfer coefficients. Surrogate models are built that combine information obtained from numerical simulations, experimental model measurements and a thermal resistance network. The integration of several information sources reduces the number of large-scale numerical simulations needed to find reliable estimates of the system parameters. For the embedded electronics case, the use of prior information from the thermal resistance network model reduces significantly the computational effort required to investigate the solution space.
机译:可穿戴计算机是穿戴在身上的便携式电子设备。这些紧凑的电子系统面临的日益严峻的热挑战激发了新的冷却策略,例如利用蓄热材料进行瞬态热管理。建立模型以快速评估不同设计参数的影响的能力对于有效地将创新的热策略纳入新产品至关重要。能够进行设计空间探索的系统模型是从不同的信息源构建的,例如数值模拟,物理实验,分析解决方案和启发式方法。这些称为代理的模型是非线性的,自适应的,适用于系统信息有限的系统响应,而这些实践中很少有实现实验或数值模拟的方法。本文应用贝叶斯代理框架来估计嵌入式电子系统未知物理参数的值。物理实验和数值模拟是在可穿戴计算机的嵌入式电子原型系统上执行的。在有和没有热接触电阻的情况下,实现了涉及五个和三个未知参数的实验原型的数值模型。通过使用正交阵列和最佳采样,对参数空间进行了有效的探索,以确定热导率,热接触电阻和热传递系数。建立替代模型,该模型结合了从数值模拟,实验模型测量和热阻网络获得的信息。几个信息源的集成减少了寻找可靠的系统参数估计所需的大规模数值模拟的数量。对于嵌入式电子设备而言,使用热阻网络模型中的先验信息会大大减少调查解决方案空间所需的计算量。

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