This paper presents a computational framework that generates ensemble predictive mechanics models with uncertainty quantification (UQ). We first develop a causal discovery algorithm to infer causal relations among time-history data measured during each representative volume element (RVE) simulation through a directed acyclic graph (DAG). With multiple plausible sets of causal relationships estimated from multiple RVE simulations, the predictions are propagated in the derived causal graph while using a deep neural network equipped with dropout layers as a Bayesian approximation for uncertainty quantification. We select two representative numerical examples (traction-separation laws for frictional interfaces, elastoplasticity models for granular assembles) to examine the accuracy and robustness of the proposed causal discovery method for the common material law predictions in civil engineering applications.
翻译:本文件提出一个计算框架,产生具有不确定性量化的共性预测力模型(UQ),我们首先开发一个因果发现算法,通过定向循环图(DAG)来推断每个代表性体积元素模拟中测量的时间-历史数据之间的因果关系。根据多个RVE模拟所估算的多种可信的因果关系,预测在衍生因果图中传播,同时使用一个深神经网络,配备了辍学层作为贝叶斯近似值,用于不确定性量化。我们选择了两个具有代表性的数字实例(摩擦界面的色分法、颗粒组装的弹性体模型),以审查民用工程应用中共同材料法预测的拟议因果发现方法的准确性和可靠性。