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Material parameter optimisation of Ohno-Wang kinematic hardening model using multi objective genetic algorithm

机译:基于多目标遗传算法的Ohno-Wang运动强化模型材料参数优化

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摘要

Ohno-Wang hardening model is an advanced constitutive model to evaluate the cyclic plasticity behaviour of material. This model has capability to simulate uniaxial and biaxial ratcheting response of the material. But, it is required to determine large number of material parameters from several experimental responses in order to simulate this phenomenon. Material parameters for constitutive models are generally determined manually through trial and error approach which is tedious and less accurate. Due to arbitrariness and complexity of cyclic loading, advanced constitutive material models become non-linear and multimodal in functional and parameter space. To overcome this problem, an automated parameter optimisation approach using genetic algorithm has been proposed in the present work to identify Ohno-Wang material parameters of 304LN, stainless steel for uniaxial simulation. Optimisation by this approach has improved the model prediction in uniaxial low cycle and ratcheting fatigue simulations after comparison with the experimental response.
机译:Ohno-Wang硬化模型是用于评估材料的循环可塑性行为的高级本构模型。该模型具有模拟材料的单轴和双轴棘轮响应的能力。但是,为了模拟这种现象,需要从几个实验响应中确定大量的材料参数。用于本构模型的材料参数通常是通过反复试验的方法手动确定的,该方法既繁琐又不太准确。由于循环载荷的任意性和复杂性,高级本构材料模型在功能和参数空间中变为非线性和多峰的。为了克服这个问题,在本工作中提出了一种使用遗传算法的自动参数优化方法,以识别用于单轴模拟的304LN不锈钢的Ohno-Wang材料参数。通过与实验响应进行比较,通过这种方法进行的优化改善了单轴低循环和棘轮疲劳仿真中的模型预测。

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