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Analyzing the Fluid Flow in Continuous Casting through Evolutionary Neural Nets and Multi-Objective Genetic Algorithms

机译:通过进化神经网络和多目标遗传算法分析连铸过程中的流体流动

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摘要

The flow fields computed for a typical continuous caster are analysed using the basic concepts of Pareto-optimality in the context of multi-objective optimization. The data generated by the flow solver FLUENT~(TM)are trained through Evolutionary Neural Networks that emergedthrough a Pareto-tradeoff between the complexity of the network and its accuracy of training. A number of objectives constructed this way aresubjected to optimization using a Multi-objective Predator-Prey Genetic Algorithm. The procedure is repeated using the software mode-FRONTIER~(TM)and the results are compared analysed.
机译:在多目标优化的情况下,使用帕累托优化的基本概念分析了典型连铸机的流场。流量求解器FLUENT〜™生成的数据通过进化神经网络进行训练,该进化神经网络是通过在网络的复杂性与其训练精度之间进行Pareto权衡而得出的。使用多目标捕食-被捕食遗传算法对通过这种方式构造的许多目标进行优化。使用软件模式-FRONTIER〜TM重复该过程,并对结果进行比较分析。

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