Bridging POMDPs and Bayesian decision making for robust maintenance planning under model uncertainty: An application to railway systems

Giacomo Arcieri, C. Hoelzl, Oliver Schwery, D. Štraub, K. Papakonstantinou, E. Chatzi
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引用次数: 5

Abstract

Structural Health Monitoring (SHM) describes a process for inferring quantifiable metrics of structural condition, which can serve as input to support decisions on the operation and maintenance of infrastructure assets. Given the long lifespan of critical structures, this problem can be cast as a sequential decision making problem over prescribed horizons. Partially Observable Markov Decision Processes (POMDPs) offer a formal framework to solve the underlying optimal planning task. However, two issues can undermine the POMDP solutions. Firstly, the need for a model that can adequately describe the evolution of the structural condition under deterioration or corrective actions and, secondly, the non-trivial task of recovery of the observation process parameters from available monitoring data. Despite these potential challenges, the adopted POMDP models do not typically account for uncertainty on model parameters, leading to solutions which can be unrealistically confident. In this work, we address both key issues. We present a framework to estimate POMDP transition and observation model parameters directly from available data, via Markov Chain Monte Carlo (MCMC) sampling of a Hidden Markov Model (HMM) conditioned on actions. The MCMC inference estimates distributions of the involved model parameters. We then form and solve the POMDP problem by exploiting the inferred distributions, to derive solutions that are robust to model uncertainty. We successfully apply our approach on maintenance planning for railway track assets on the basis of a"fractal value"indicator, which is computed from actual railway monitoring data.
桥梁pomdp和贝叶斯决策在模型不确定性下的鲁棒维修计划:在铁路系统中的应用
结构健康监测(SHM)描述了推断结构状况的可量化指标的过程,这些指标可以作为支持基础设施资产运营和维护决策的输入。考虑到关键结构的长寿命,这个问题可以被看作是在规定范围内的顺序决策问题。部分可观察马尔可夫决策过程(pomdp)为解决潜在的最优规划任务提供了一个形式化框架。然而,有两个问题会破坏POMDP解决方案。首先,需要一个能够充分描述结构状况在恶化或纠正措施下的演变的模型,其次,从现有监测数据中恢复观测过程参数的重要任务。尽管存在这些潜在的挑战,所采用的POMDP模型通常不考虑模型参数的不确定性,导致解决方案可能不切实际的自信。在这项工作中,我们解决了这两个关键问题。我们提出了一个框架,通过马尔可夫链蒙特卡罗(MCMC)采样的隐马尔可夫模型(HMM),直接从可用数据估计POMDP过渡和观测模型参数。MCMC推理估计了相关模型参数的分布。然后,我们通过利用推断的分布来形成和解决POMDP问题,以得出对模型不确定性具有鲁棒性的解决方案。我们成功地将该方法应用于铁路轨道资产的维修计划,该计划是基于实际铁路监测数据计算的“分形值”指标。
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