Reliability analysis of complex systems using subset simulations with Hamiltonian Neural Networks

IF 5.7 1区 工程技术 Q1 ENGINEERING, CIVIL Structural Safety Pub Date : 2024-04-25 DOI:10.1016/j.strusafe.2024.102475
Denny Thaler , Somayajulu L.N. Dhulipala , Franz Bamer , Bernd Markert , Michael D. Shields
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Abstract

We present a new Subset Simulation approach using Hamiltonian neural network-based Monte Carlo sampling for reliability analysis. The proposed strategy combines the superior sampling of the Hamiltonian Monte Carlo method with computationally efficient gradient evaluations using Hamiltonian neural networks. This combination is especially advantageous because the neural network architecture conserves the Hamiltonian, which defines the acceptance criteria of the Hamiltonian Monte Carlo sampler. Hence, this strategy achieves high acceptance rates at low computational cost. Our approach estimates small failure probabilities using Subset Simulations. However, in low-probability sample regions, the gradient evaluation is particularly challenging. The remarkable accuracy of the proposed strategy is demonstrated on different reliability problems, and its efficiency is compared to the traditional Hamiltonian Monte Carlo method. We note that this approach can reach its limitations for gradient estimations in low-probability regions of complex and high-dimensional distributions. Thus, we propose techniques to improve gradient prediction in these particular situations and enable accurate estimations of the probability of failure. The highlight of this study is the reliability analysis of a system whose parameter distributions must be inferred with Bayesian inference problems. In such a case, the Hamiltonian Monte Carlo method requires a full model evaluation for each gradient evaluation and, therefore, comes at a very high cost. However, using Hamiltonian neural networks in this framework replaces the expensive model evaluation, resulting in tremendous improvements in computational efficiency.

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利用汉密尔顿神经网络子集模拟进行复杂系统可靠性分析
我们提出了一种新的子集模拟方法,利用基于哈密尔顿神经网络的蒙特卡罗抽样进行可靠性分析。所提出的策略结合了哈密尔顿蒙特卡洛法的出色采样和使用哈密尔顿神经网络的高效梯度计算。这种结合尤其具有优势,因为神经网络结构保留了哈密顿,而哈密顿定义了哈密顿蒙特卡洛采样器的接受标准。因此,这种策略能以较低的计算成本实现较高的接受率。我们的方法使用子集模拟来估算小故障概率。然而,在低概率样本区域,梯度评估尤其具有挑战性。我们在不同的可靠性问题上证明了所提出策略的卓越准确性,并将其效率与传统的汉密尔顿蒙特卡罗方法进行了比较。我们注意到,这种方法在复杂和高维分布的低概率区域的梯度估计中会受到限制。因此,我们提出了在这些特殊情况下改进梯度预测的技术,从而实现对失效概率的准确估计。本研究的亮点是对参数分布必须通过贝叶斯推理问题来推断的系统进行可靠性分析。在这种情况下,哈密尔顿蒙特卡洛方法需要对每个梯度进行完整的模型评估,因此成本非常高。然而,在此框架中使用汉密尔顿神经网络可以取代昂贵的模型评估,从而极大地提高计算效率。
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来源期刊
Structural Safety
Structural Safety 工程技术-工程:土木
CiteScore
11.30
自引率
8.60%
发文量
67
审稿时长
53 days
期刊介绍: Structural Safety is an international journal devoted to integrated risk assessment for a wide range of constructed facilities such as buildings, bridges, earth structures, offshore facilities, dams, lifelines and nuclear structural systems. Its purpose is to foster communication about risk and reliability among technical disciplines involved in design and construction, and to enhance the use of risk management in the constructed environment
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