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首页> 外文期刊>International Journal for Numerical Methods in Engineering >Accelerating crack growth simulations through adaptive model order reduction
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Accelerating crack growth simulations through adaptive model order reduction

机译:通过减少自适应模型顺序加速裂缝增长模拟

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摘要

Accurate numerical modeling of fracture in solids is a challenging undertaking that often involves the use of computationally demanding modeling frameworks. Model order reduction techniques can be used to alleviate the computational effort associated with these models. However, the traditional offline-onlinereduction approach is unsuitable for complex fracture phenomena due to their excessively large parameter spaces. In this work, we present a reduction framework for fracture simulations that leaves out the offlinetraining phase and instead adaptively constructs reduced solutions spaces online. We apply the framework to the thick level set (TLS) method, a novel approach for modeling fracture able to model crack initiation, propagation, branching, and merging. The analysis starts with a fully-solved load step, after which two consecutive reduction operations-the proper orthogonal decomposition and the empirical cubature method-are performed. Numerical features specific to the TLS method are used to define an adaptive domain decomposition scheme that allows for three levels of model reduction coexisting on the same finite element mesh. Special solutions are proposed that allow the framework to deal with enriched nodes and a dynamic number of integration points. We demonstrate and assess the performance of the framework with a number of numerical examples.
机译:固体中骨折的准确数值模型是一个挑战性的企业,通常涉及使用计算要求苛刻的建模框架。模型订单减少技术可用于缓解与这些模型相关的计算工作。然而,由于其过度的参数空间,传统的离线导电方法不适合复杂的骨折现象。在这项工作中,我们提出了一种削减骨折模拟的框架,即留出脱机阶段,而是在线自适应地构建减少的解决方案空间。我们将框架应用于厚级集(TLS)方法,这是一种模拟裂缝启动,传播,分支和合并的裂缝的新方法。分析以完全解决的负载步骤开始,之后进行两个连续的减少操作 - 执行适当的正交分解和经验次数方法。特定于TLS方法的数值特征用于定义自适应域分解方案,其允许在相同的有限元网上进行三个级别的模型减少共存。提出了特殊解决方案,允许框架处理丰富的节点和动态数量的集成点。我们用许多数值示例展示并评估框架的性能。

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