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A holistic multi-failure mode prognosis approach for complex equipment

机译:复杂设备的整体多故障模式预测方法

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The aim of this paper is to propose a holistic multi-failure mode prognosis approach that takes into account the complexity of failure mechanisms as a system. Model assumptions are first proposed by experts and then formalized using graph theory and stochastic models. The prognosis approach relies on a diagnostic algorithm that combines diagnostic information from different sources (e.g., measurements and inspections) to detect active failure mechanisms and track their progression, and a prognostic algorithm that predicts failure mode occurrences dynamically as new information becomes available. Furthermore, the approach identifies undetectable failure mechanisms where no symptoms have yet been measured. The relative simplicity of the algorithms and graphical representation of the results helps to build decision-makers' trust. In addition, the approach is a means of capturing acquired knowledge and available data. A case study of a hydroelectric generator stator is proposed. The resulting multi-state degradation model identified more than 150 failure mechanisms discretized in 70 physical states and leading to three failure modes. Three historical failure and one online case studies are presented, based on diagnostic data from Hydro-Quebec's generating fleet. In two of the case studies, the failure mode occurrence could have been predicted more than eight years in advance.
机译:本文的目的是提出一种整体的多故障模式预测方法,该方法考虑了故障机制作为一个系统的复杂性。模型假设首先由专家提出,然后使用图论和随机模型形式化。预后方法依赖于诊断算法,该算法将来自不同来源(例如,测量和检查)的诊断信息进行组合,以检测活动的故障机制并跟踪其进展情况,以及一种预测算法,该算法可在获得新信息时动态地预测故障模式的发生。此外,该方法可以确定尚未检测到症状的无法检测到的故障机制。算法的相对简单性和结果的图形表示有助于建立决策者的信任。另外,该方法是一种捕获获取的知识和可用数据的方法。提出了水轮发电机定子的案例研究。由此产生的多状态退化模型确定了在70个物理状态中离散化的150多个故障机制,并导致了三种故障模式。根据魁北克水电公司发电机组的诊断数据,提出了三项历史性故障和一项在线案例研究。在其中两个案例研究中,可以提前八年以上预测故障模式的发生。

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