Efficient non-probabilistic parallel model updating based on analytical correlation propagation formula and derivative-aware deep neural network metamodel

IF 6.9 1区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Jiang Mo , Wang-Ji Yan , Ka-Veng Yuen , Michael Beer
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引用次数: 0

Abstract

Non-probabilistic convex models are powerful tools for structural model updating with uncertain‑but-bounded parameters. However, existing non-probabilistic model updating (NPMU) methods often struggle with detecting parameter correlation due to limited prior information. Worth still, the unique core steps of NPMU, involving nested inner layer forward uncertainty propagation and outer layer inverse parameter updating, present challenges in efficiency and convergence. In response to these challenges, a novel and flexible NPMU scheme is introduced, integrating analytical correlation propagation and parallel interval bounds prediction to enable automatic detection of parameter correlations. In the forward uncertainty propagation phase, a linear coordinate transformation is applied to map the original parameter space to a standard hypercube space, simplifying correlation-involved bounds prediction into conventional interval bounds prediction. Moreover, an analytical correlation propagation formula is derived using a second-order response approximation to sidestep the complexities of geometry-based correlation calculations. To expedite forward propagation, a derivative-aware neural network model is employed to replace the physical solver, facilitating improved fitting capabilities and automatic differentiation, including the calculation of Jacobian and Hessian matrices essential for correlation propagation. The neural network's inherent parallelism accelerates interval bounds prediction through parallel computation of samples. In the inverse parameter updating phase, the block coordinate descent algorithm is embraced to narrow the search space and boost convergence capabilities, while the perturbation method is utilized to determine the optimal starting point for optimization. Two numerical examples illustrate the efficacy of the proposed method in updating structural models while considering correlations.
基于解析相关性传播公式和导数感知深度神经网络元模型的高效非概率并行模型更新
非概率凸模型是利用不确定但有限制的参数进行结构模型更新的有力工具。然而,由于先验信息有限,现有的非概率模型更新(NPMU)方法往往难以检测参数相关性。更重要的是,非概率模型更新的独特核心步骤涉及嵌套的内层正向不确定性传播和外层反向参数更新,这给效率和收敛性带来了挑战。为了应对这些挑战,我们引入了一种新颖灵活的 NPMU 方案,将分析相关性传播和并行区间边界预测整合在一起,以实现参数相关性的自动检测。在前向不确定性传播阶段,应用线性坐标变换将原始参数空间映射到标准超立方空间,从而将涉及相关性的边界预测简化为传统的区间边界预测。此外,还利用二阶响应近似推导出分析相关性传播公式,以避免基于几何的相关性计算的复杂性。为了加快前向传播,采用了导数感知神经网络模型来替代物理求解器,从而提高了拟合能力和自动微分能力,包括计算相关传播所必需的雅各布矩阵和赫斯矩阵。神经网络固有的并行性通过并行计算样本加速了区间边界预测。在反向参数更新阶段,采用了块坐标下降算法来缩小搜索空间并提高收敛能力,同时利用扰动方法来确定优化的最佳起点。两个数值示例说明了所提方法在考虑相关性的同时更新结构模型的有效性。
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来源期刊
CiteScore
12.70
自引率
15.30%
发文量
719
审稿时长
44 days
期刊介绍: Computer Methods in Applied Mechanics and Engineering stands as a cornerstone in the realm of computational science and engineering. With a history spanning over five decades, the journal has been a key platform for disseminating papers on advanced mathematical modeling and numerical solutions. Interdisciplinary in nature, these contributions encompass mechanics, mathematics, computer science, and various scientific disciplines. The journal welcomes a broad range of computational methods addressing the simulation, analysis, and design of complex physical problems, making it a vital resource for researchers in the field.
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