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遗传算法在非线性热传导问题中的应用。

Application of genetic algorithms in nonlinear heat conduction problems.

作者信息

Kadri Muhammad Bilal, Khan Waqar A

机构信息

Department of Electronics and Power Engineering, PN Engineering College, National University of Sciences and Technology, PNS Jauhar, Karachi 75350, Pakistan.

Department of Engineering Sciences, PN Engineering College, National University of Sciences and Technology, PNS Jauhar, Karachi 75350, Pakistan.

出版信息

ScientificWorldJournal. 2014 Feb 17;2014:451274. doi: 10.1155/2014/451274. eCollection 2014.

Abstract

Genetic algorithms are employed to optimize dimensionless temperature in nonlinear heat conduction problems. Three common geometries are selected for the analysis and the concept of minimum entropy generation is used to determine the optimum temperatures under the same constraints. The thermal conductivity is assumed to vary linearly with temperature while internal heat generation is assumed to be uniform. The dimensionless governing equations are obtained for each selected geometry and the dimensionless temperature distributions are obtained using MATLAB. It is observed that GA gives the minimum dimensionless temperature in each selected geometry.

摘要

采用遗传算法来优化非线性热传导问题中的无量纲温度。选择三种常见几何形状进行分析,并使用最小熵产生的概念来确定在相同约束条件下的最佳温度。假设热导率随温度线性变化,而内部热生成假定为均匀的。针对每个选定的几何形状获得无量纲控制方程,并使用MATLAB获得无量纲温度分布。可以观察到,遗传算法在每个选定的几何形状中给出了最小的无量纲温度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4e6c/3947691/07f3ccc13357/TSWJ2014-451274.001.jpg

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