Structural components are typically exposed to dynamic loading, such as earthquakes, wind, and explosions. Structural engineers should be able to conduct real-time analysis in the aftermath or during extreme disaster events requiring immediate corrections to avoid fatal failures. As a result, it is crucial to predict dynamic stress distributions during highly disruptive events in real-time. Currently available high-fidelity methods, such as Finite Element Models (FEMs), suffer from their inherent high complexity and are computationally prohibitive. Therefore, to reduce computational cost while preserving accuracy, a deep learning model, Neuro-DynaStress, is proposed to predict the entire sequence of stress distribution based on finite element simulations using a partial differential equation (PDE) solver. The model was designed and trained to use the geometry, boundary conditions and sequence of loads as input and predict the sequences of high-resolution stress contours. The performance of the proposed framework is compared to finite element simulations using a PDE solver.
翻译:结构工程师应能在灾后或发生需要立即纠正的极端灾害事件期间进行实时分析,以避免致命的故障。因此,在实时发生高度破坏性事件时,预测动态应激分布至关重要。目前现有的高不洁方法,如Finite Element 模型(FEMS),具有内在的高度复杂性,在计算上令人望而却步。因此,为了降低计算成本,同时保持准确性,提议采用一个深层学习模型,Neuro-DynaStres, 利用部分差异方程(PDE)解算器,预测以有限要素模拟为基础的整个压力分布序列。该模型的设计和培训是为了使用几何、边界条件和负荷序列作为输入,并预测高分辨率应激矩的序列。拟议框架的性能与使用PDE解算器进行的有限要素模拟相比较。