论文标题
计算力学中无模型的数据驱动推断
Model-Free Data-Driven Inference in Computational Mechanics
论文作者
论文摘要
我们将无模型数据驱动的计算范式扩展到由于材料行为的固有随机性而导致随机的固体和结构。这种材料的行为的特征是可能性度量而不是本构的关系。我们特别假定仅通过材料或相空间中的经验点数据知道材料的可能性度量。固体或结构的状态还受到兼容性和平衡约束。问题是要推断出感兴趣的给定结构性结果的可能性。在这项工作中,我们提出了一种数据驱动的推理方法,该方法决定了从经验材料数据中确定结果的可能性,并且不需要材料或事先建模。特别是,对期望的计算减少到对本地材料数据集的明确总和,并在可接受的状态下进行二次。例如,满足兼容性和平衡的状态。材料数据集总和的复杂性在数据点的数量和结构中的成员数中是线性的。提出了有效的人口退火程序和快速搜索算法以加速计算。该方法的范围,成本和收敛属性通过辅助选定的应用和基准测试评估。
We extend the model-free Data-Driven computing paradigm to solids and structures that are stochastic due to intrinsic randomness in the material behavior. The behavior of such materials is characterized by a likelihood measure instead of a constitutive relation. We specifically assume that the material likelihood measure is known only through an empirical point-data set in material or phase space. The state of the solid or structure is additionally subject to compatibility and equilibrium constraints. The problem is then to infer the likelihood of a given structural outcome of interest. In this work, we present a Data-Driven method of inference that determines likelihoods of outcomes from the empirical material data and that requires no material or prior modeling. In particular, the computation of expectations is reduced to explicit sums over local material data sets and to quadratures over admissible states, i. e., states satisfying compatibility and equilibrium. The complexity of the material data-set sums is linear in the number of data points and in the number of members in the structure. Efficient population annealing procedures and fast search algorithms for accelerating the calculations are presented. The scope, cost and convergence properties of the method are assessed with the aid selected applications and benchmark tests.