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首页> 外文期刊>Computer-Aided Civil and Infrastructure Engineering >A Two-Dimension Dynamic Bayesian Network for Large-Scale Degradation Modeling with an Application to a Bridges Network
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A Two-Dimension Dynamic Bayesian Network for Large-Scale Degradation Modeling with an Application to a Bridges Network

机译:大规模退化建模的二维动态贝叶斯网络及其在桥梁网络中的应用

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摘要

Modeling the stochastic evolution of a large-scale fleet or network generally proves to be challenging. This difficulty may be compounded through complex relationships between various assets in the network. Although a great number of probabilistic graph-based models (e.g., Bayesian networks) have been developed recently to describe the behavior of single assets, one can find significantly fewer approaches addressing a fully integrated network. It is proposed an extension to the standard dynamic Bayesian network (DBN) by introducing an additional dimension for multiple elements. These elements are then linked through a set of covariates that translate the probabilistic dependencies. A Markov chain is utilized to model the elements and develop a distribution-free mathematical framework to parameterize the transition probabilities without previous data. This is achieved by borrowing from Cooke's method for structured expert judgment and also applied to the quantification of the covariate relationships. Some metrics are also presented for evaluating the sensitivity of information inserted into the covariate DBN where the focus is given on two specific types of configurations. The model is applied to a real-world example of steel bridge network in the Netherlands. Numerical examples highlight the inference mechanism and show the sensitivity of information inserted in various ways. It is shown that information is most valuable very early and decreases substantially over time. Resulting observations entail the reduction of inference combinations and by extension a computational gain to select the most sensitive pieces of information.
机译:对大型机队或网络的随机演化进行建模通常被证明具有挑战性。网络中各种资产之间的复杂关系可能会加剧这种困难。尽管最近已经开发了许多基于概率图的模型(例如,贝叶斯网络)来描述单个资产的行为,但是可以发现很少有方法可以解决完全集成的网络。通过引入多个元素的额外维度,建议对标准动态贝叶斯网络(DBN)进行扩展。这些元素然后通过一组协变量进行链接,这些协变量可转换概率相关性。马尔可夫链用于建模元素并开发无分布的数学框架,以在没有先前数据的情况下参数化过渡概率。这是通过借鉴Cooke的方法进行结构化专家判断而实现的,并且还应用于协变量关系的量化。还提出了一些指标,用于评估插入协变量DBN中的信息的敏感性,其中重点放在两种特定类型的配置上。该模型已应用于荷兰钢桥网络的实际示例。数值示例突出了推理机制,并显示了以各种方式插入的信息的敏感性。结果表明,信息在很早的时候是最有价值的,并且随着时间的流逝会大量减少。所得观察结果需要减少推理组合,并通过扩展计算增益来选择最敏感的信息。

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