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A new method for fatigue life prediction based on the Thick Level Set approach

机译:一种基于厚级套法的疲劳寿命预测方法

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摘要

The last decade has seen a growing interest in cohesive zone models for fatigue applications. These cohesive zone models often suffer from a lack of generality and applying them typically requires calibrating a large number of model-specific parameters. To improve on these issues a new method has been proposed in this paper based on the Thick Level Set approach. In this concept, material degradation due to cyclic loading is the result of interaction between damage evolution and fracture mechanics. The Thick Level Set formulation has been extended to interface elements, in order to allow for separation of strain energy in the bulk and energy required for surface creation. Global fracture parameters, derived from a free energy description governing the interface elements, are used as input for the empirical crack growth rate relation (Paris' equation). It must be emphasized that in contrast to existing fatigue models, the Thick Level Set approach does not require the definition of a damage evolution law. Instead, damage is updated automatically by a continuously moving damage front. It is shown that applicability is not limited to fatigue behavior of linear elastic materials; elastic-plastic materials such as steels can be analysed as well. The sensitivity of model parameters is investigated and discussed and the practical relevance is explored for standard test configurations. (C) 2017 Elsevier Ltd. All rights reserved.
机译:过去十年在疲劳应用中对凝聚区模型的兴趣日益增长。这些粘性区域模型通常缺乏普遍性,并且应用它们通常需要校准大量的模型特定参数。为了提高这些问题,本文基于厚级别的方法提出了一种新方法。在这种概念中,由于循环负载引起的材料降解是损伤进化和骨折力学之间相互作用的结果。厚级集合配方已扩展到界面元件,以便允许在表面创造所需的体积和能量中分离应变能量。从控制界面元素的自由能量描述得出的全局骨折参数用作经验裂纹增长率关系的输入(巴黎方程)。必须强调的是,与现有的疲劳模型相比,厚级别的方法不需要定义损坏进化法。相反,通过持续移动的损坏前部自动更新损坏。结果表明,适用性不限于线性弹性材料的疲劳行为;可以分析弹性塑料材料,例如钢等。研究了模型参数的敏感性,并讨论了标准测试配置的实际相关性。 (c)2017 Elsevier Ltd.保留所有权利。

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