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Distributed Prognostics Based on Structural Model Decomposition

机译:基于结构模型分解的分布式预测

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Within systems health management, prognostics focuses on predicting the remaining useful life of a system. In the model-based prognostics paradigm, physics-based models are constructed that describe the operation of a system, and how it fails. Such approaches consist of an estimation phase, in which the health state of the system is first identified, and a prediction phase, in which the health state is projected forward in time to determine the end of life. Centralized solutions to these problems are often computationally expensive, do not scale well as the size of the system grows, and introduce a single point of failure. In this paper, we propose a novel distributed model-based prognostics scheme that formally describes how to decompose both the estimation and prediction problems into computationally-independent local subproblems whose solutions may be easily composed into a global solution. The decomposition of the prognostics problem is achieved through structural decomposition of the underlying models. The decomposition algorithm creates from the global system model a set of local submodels suitable for prognostics. Computationally independent local estimation and prediction problems are formed based on these local submodels, resulting in a scalable distributed prognostics approach that allows the local subproblems to be solved in parallel, thus offering increases in computational efficiency. Using a centrifugal pump as a case study, we perform a number of simulation-based experiments to demonstrate the distributed approach, compare the performance with a centralized approach, and establish its scalability.
机译:在系统健康管理中,预测重点在于预测系统的剩余使用寿命。在基于模型的预测模型中,构建了基于物理的模型,这些模型描述了系统的运行以及故障的方式。这样的方法包括一个估计阶段和一个预测阶段,在该阶段中,系统首先确定系统的健康状态,在该阶段中,健康状态会及时向前投影以确定寿命结束。这些问题的集中式解决方案在计算上通常很昂贵,无法随着系统规模的增长而很好地扩展,并且会引入单点故障。在本文中,我们提出了一种新颖的基于分布式模型的预测方案,该方案正式描述了如何将估计和预测问题分解为与计算无关的局部子问题,这些子问题的解决方案可以轻松地组成全局解决方案。通过基础模型的结构分解可以实现预测问题的分解。分解算法从全局系统模型中创建一组适合于预测的局部子模型。基于这些局部子模型形成计算上独立的局部估计和预测问题,从而导致可扩展的分布式预测方法,该方法可以并行解决局部子问题,从而提高了计算效率。我们以离心泵为例,进行了许多基于模拟的实验,以演示分布式方法,将性能与集中式方法进行比较,并确定其可扩展性。

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