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Optimization of Cellular Automata Model for the Heating of Dual-Phase Steel by Genetic Algorithm and Genetic Programming

机译:遗传算法和遗传程序优化的双相钢加热元胞自动机模型

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摘要

This study considers a common metallurgical problem associated with the phase transformation of steel during heating where austenite grain tends to grow in size with time and results in poor mechanical properties in the final stages. This investigation was performed using a Cellular Automata model for dual-phase steel developed in house. Data-driven metamodels for a biobjective optimization problem involving minimizing average austenite grain size along with the maximizing of time of heating were constructed using Evolutionary Neural Network (EvoNN) and Biobjective Genetic Programming (BioGP). The input variables selected for this task were (i) heating rate, (ii) pearlite percentage, (iii) nucleation density of austenite, and (iv) the finish temperature of austenite formation. The analyses of the results led to the fact that heating rate is the most influencing factor and it needs to be large during transformation to obtain a refined microstructure. The comparison of Pareto front between EvoNN and BioGP reveals a better performance of the latter. Limited experimental confirmation was also carried out.
机译:这项研究考虑了与加热过程中钢的相变有关的常见冶金问题,其中奥氏体晶粒尺寸随时间增长,并在最终阶段导致较差的机械性能。这项研究是使用Cellular Automata模型对室内开发的双相钢进行的。使用演化神经网络(EvoNN)和双目标遗传规划(BioGP)为涉及最小化奥氏体平均晶粒尺寸以及加热时间最大化的双目标优化问题建立了数据驱动的元模型。为此任务选择的输入变量是(i)加热速率,(ii)珠光体百分比,(iii)奥氏体的成核密度和(iv)奥氏体形成的最终温度。对结果的分析导致了这样一个事实,即加热速率是影响最大的因素,在转化过程中需要大一些才能获得精细的组织。 EvoNN和BioGP之间的Pareto前沿比较表明后者具有更好的性能。还进行了有限的实验确认。

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