This paper proposes a novel Adaptive Clustering-based Reduced-Order Modeling (ACROM) framework to significantly improve and extend the recent family of clustering-based reduced-order models (CROMs). This adaptive framework enables the clustering-based domain decomposition to evolve dynamically throughout the problem solution, ensuring optimum refinement in regions where the relevant fields present steeper gradients. It offers a new route to fast and accurate material modeling of history-dependent nonlinear problems involving highly localized plasticity and damage phenomena. The overall approach is composed of three main building blocks: target clusters selection criterion, adaptive cluster analysis, and computation of cluster interaction tensors. In addition, an adaptive clustering solution rewinding procedure and a dynamic adaptivity split factor strategy are suggested to further enhance the adaptive process. The coined Adaptive Self-Consistent Clustering Analysis (ASCA) is shown to perform better than its static counterpart when capturing the multi-scale elasto-plastic behavior of a particle-matrix composite and predicting the associated fracture and toughness. Given the encouraging results shown in this paper, the ACROM framework sets the stage and opens new avenues to explore adaptivity in the context of CROMs.
翻译:本文提出一个新的适应性集群减少轨道模型框架,以显著改进和扩大最近以集群为基础的减少顺序模型(CROM)系列。这一适应性框架使基于集群的减少顺序模型(CROM)能够使基于集群的域分解在整个问题解决方案中动态地演变,确保在相关领域出现陡坡的区域进行最佳改进。它为快速和准确建立涉及高度本地化的塑料和损害现象的历史非线性非线性问题模型提供了一条新的途径。总体方法由三个主要组成部分组成:目标集群选择标准、适应性集群分析以及集群互动阵列的计算。此外,建议采用适应性集群解决方案回缩程序和动态适应性分化要素战略,以进一步加强适应性进程。在获取粒子矩阵复合的多尺度电离层行为并预测相关断裂和坚硬性。考虑到本文件所显示的令人鼓舞的结果,ACROM框架设置了一个阶段,并开辟了在CROM背景下探索适应性的新途径。