Differential evolution with dynamic adaptation of mutation factor applied to inverse heat transfer problem

V. Mariani, Vagner Jorge Neckel, L. D. Afonso, L. Coelho
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Abstract

In this paper a Modified Differential Evolution (MDE) is proposed and its performance for solving the inverse heat transfer problem is compared with Genetic Algorithm with Floating-point representation (GAF) and classical Differential Evolution (DE). The inverse analysis of heat transfer has some practical applications, for example, the estimation of radioactive and thermal properties, such as the conductivity of material with and without the temperatures dependence of diffusive processes. The inverse problems are usually formulated as optimization problems and the main objective becomes the minimization of a cost function. MDE adapts a concept originally proposed in particle swarm optimization design for the dynamic adaptation of mutation factor. Using a piecewise function for apparent thermal conductivity as a function of the temperature data, the heat transfer equation is able to estimate the unknown variables of the inverse problem. The variables that provide the beast least squares fit between the experimental and predicted time-temperatures curves were obtained. Numerical results for inverse heat transfer problem demonstrated the applicability and efficiency of the MDE algorithm. In this application, MDE approach outperforms the GAF and DE best solutions.
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基于变异因子动态适应的微分进化方法应用于换热逆问题
本文提出了一种改进的差分进化算法(MDE),并将其与带有浮点表示的遗传算法(GAF)和经典的差分进化算法(DE)在求解反传热问题上的性能进行了比较。热传递的逆分析有一些实际应用,例如,放射性和热性质的估计,如材料的电导率有或没有扩散过程的温度依赖。反问题通常被表述为优化问题,其主要目标是最小化成本函数。MDE采用了最初在粒子群优化设计中提出的一个概念,对突变因子进行动态适应。利用视热导率的分段函数作为温度数据的函数,传热方程能够估计反问题的未知变量。在实验和预测的时间-温度曲线之间获得了提供野兽最小二乘拟合的变量。对反传热问题的数值计算结果表明了该算法的适用性和有效性。在这个应用程序中,MDE方法优于GAF和DE最佳解决方案。
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