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MML Mixture Models of Heterogeneous Poisson Processes with Uniform Outliers for Bridge Deterioration

机译:具有均匀异常值的桥梁变差的非均匀泊松过程的MML混合模型

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Effectiveness of maintenance programs of existing concrete bridges is highly dependent on the accuracy of the deterioration parameters utilised in the asset management models of the bridge assets. In this paper, bridge deterioration is modelled using non-homogenous Poisson processes, since deterioration of reinforced concrete bridges involves multiple processes. Minimum Message Length (MML) is used to infer the parameters for the model. MML is a statistically invariant Bayesian point estimation technique that is statistically consistent and efficient. In this paper, a method is demonstrated estimate the decay-rates in non-homogeneous Poisson processes using MML inference. The application of methodology is illustrated using bridge inspection data from road authorities. Bridge inspection data are well known for their high level of scatter. An effective and rational MML-based methodology to weed out the outliers is presented as part of the inference.
机译:现有混凝土桥梁维护计划的有效性高度依赖于桥梁资产的资产管理模型中使用的劣化参数的准确性。在本文中,由于钢筋混凝土桥梁的劣化涉及多个过程,因此使用非均质泊松过程对桥梁的劣化进行建模。最小消息长度(MML)用于推断模型的参数。 MML是统计上不变且有效的统计不变贝叶斯点估计技术。本文证明了一种使用MML推论估计非均匀泊松过程中的衰减率的方法。使用道路当局的桥梁检查数据说明了该方法的应用。桥梁检查数据以其高度分散而闻名。作为推论的一部分,提出了一种有效,合理的基于MML的方法,以剔除异常值。

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