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Robust design optimization (RDO) of thermoelectric generator system using non-dominated sorting genetic algorithm Ⅱ (NSGA-Ⅱ)

机译:基于非支配排序遗传算法Ⅱ(NSGA-Ⅱ)的热电发电机系统鲁棒设计优化(RDO)

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摘要

The thermoelectric generator (TEG) is a promising technology for the exhaust heat recovery of automobiles and TEG optimization has been widely studied. However, previous TEG optimization studies did not consider variations in the TEG net power output caused by uncertain parameters in the TEG system. This paper introduces a robust design optimization (RDO) that maximizes the mean of the performance function while minimizing its variance, leading to an optimum design that is less sensitive to uncertainties in TEG systems. A surrogate model is used to reduce the computational cost and the non-dominated sorting genetic algorithm II (NSGA-II) is used to find a compromise solution. The standard deviation of the TEG net power output of the deterministic optimum design (93.51 W) verifies that the uncertainty of TEG systems significantly affects the variation of the TEG net power output, indicating that the uncertainty should be considered in TEG optimization problems. The compromise solution guarantees stable and high TEG net power output compared to the deterministic optimum design stemming from existing TEG optimization studies. The results of a global sensitivity analysis using the Sobol index indicate that the inlet temperature of the hot fluid has the greatest impact on the TEG net power output.
机译:热电发电机(TEG)是一种用于汽车废热回收的有前途的技术,TEG优化已得到广泛研究。但是,以前的TEG优化研究并未考虑TEG系统中不确定参数导致的TEG净功率输出的变化。本文介绍了一种鲁棒的设计优化(RDO),它可以使性能函数的均值最大化,同时将其方差最小化,从而获得对TEG系统中的不确定性较不敏感的最优设计。使用代理模型来减少计算成本,并使用非支配排序遗传算法II(NSGA-II)来找到折衷方案。确定性最佳设计的TEG净功率输出的标准偏差(93.51 W)验证了TEG系统的不确定性会显着影响TEG净功率输出的变化,表明在TEG优化问题中应考虑不确定性。与基于现有TEG优化研究得出的确定性最佳设计相比,折衷解决方案可确保稳定且较高的TEG净功率输出。使用Sobol指数进行的全局灵敏度分析的结果表明,热流体的入口温度对TEG净功率输出影响最大。

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