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An improved phase field method by using statistical learning theory-based optimization algorithm for simulation of martensitic transformation in NiTi alloy

机译:利用基于统计学习理论的优化算法来改进的相现场方法,用于模拟Niti合金的马氏体变换

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An improved phase field method by using statistical learning theory based optimization algorithm is developed for solving the phase field equations through building simple relationships between the key phase field variables and the phase evolution driving force, and using statistical analysis of mass computed data during phase field simulation. Phase field simulation results of growth of R phase and the B2-R phase transformation in a Ni-rich Ni50.5Ti49.5 alloy by using the proposed statistical strategy algorithm are compared with that using the conventional numerical algorithm, which demonstrates that with coupling the statistical learning theory, i.e., by means of the optimization algorithm, the credible simulated microstructure is obtained while maintaining high accuracy, and meanwhile the computational time has been significantly reduced.
机译:通过使用基于统计学习理论的优化算法的改进的相现场方法来开发用于通过构建关键相位变量与相位演化驱动力之间的简单关系来解决相位场方程,以及在相场仿真期间使用质量计计算数据的统计分析 。 通过使用常规数值算法将Ni-Ni50.5Ti49.5合金中R相和B2-R相变化的相场仿真结果和使用常规数值算法的统计策略算法进行了比较。 统计学习理论,即借助于优化算法,获得可信的模拟微结构,同时保持高精度,同时计算时间显着降低。

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