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Cyclic plasticity using Prager's translation rule and both nonlinear kinematic and isotropic hardening: Theory, validation and algorithmic implementation

机译:使用Prager转换规则以及非线性运动学和各向同性淬火的循环可塑性:理论,验证和算法实现

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摘要

Finite element analysis of structures under elasto-plastic nonproportional cyclic loadings is useful in seismic engineering, fatigue analysis and ductile fracture. Usual models with nonlinear stress-strain curves in cyclic behavior are based on Mroz multisurface plasticity, bounding surface models or models derived from the Armstrong-Frederick rule. These models depart from the associative Prager's rule with the main purpose of modeling aspects of cyclic nonlinear hardening. In this paper we develop a model for cyclic plasticity within the framework of the associative classical plasticity theory using Prager's rule accounting for anisotropic nonlinear kinematic hardening coupled with nonlinear isotropic hardening. We include the validation of the theory against several uniaxial and multiaxial cyclic experiments and an efficient fully implicit radial return algorithm. The parameters of the model are obtained directly by a discretization of the uniaxial stress-strain behavior. Remarkably, both the presented theory and the computational algorithm automatically recover classical bi-linear plasticity and the Krieg and Key algorithm if the user-prescribed stress-strain curve is bilinear. (C) 2017 Elsevier B.V. All rights reserved.
机译:弹塑性非比例循环载荷下结构的有限元分析可用于地震工程,疲劳分析和延性断裂。通常具有周期性行为的非线性应力-应变曲线的模型基于Mroz多表面可塑性,有界表面模型或从Armstrong-Frederick规则得出的模型。这些模型背离了关联的Prager规则,其主要目的是对循环非线性硬化的各个方面进行建模。在本文中,我们使用关联的各向异性非线性运动硬化与非线性各向同性硬化的普拉格法则,在关联经典可塑性理论的框架内建立了循环可塑性模型。我们包括针对几个单轴和多轴循环实验的理论验证以及有效的完全隐式径向返回算法。通过离散化单轴应力-应变行为直接获得模型的参数。值得注意的是,如果用户指定的应力-应变曲线是双线性的,则所提出的理论和计算算法都会自动恢复经典双线性可塑性,而Krieg和Key算法也会自动恢复。 (C)2017 Elsevier B.V.保留所有权利。

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