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Physics-guided, data-refined fault root cause tracing framework for complex electromechanical system

机译:面向复杂机电系统的物理引导、数据优化的故障根因追踪框架

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? 2023 Elsevier LtdFault root cause tracing (FRCT) is critical for the safety assurance of complex electromechanical systems. However, it is still a challenging task due to the complexity, uncertainty and time-varying characteristics of limited known fault development and propagation mechanism. Therefore, this paper proposed a physics-guided, data-refined FRCT framework. First, a physics-guided hierarchical fault root cause tracing network (HFTN) model is defined and constructed based on the statistics fault mechanism while considering fault development and propagation characteristics including network, hierarchy, and uncertainty. Second, an operation data-refined algorithm is designed to update the initial model, where Wasserstein Generative Adversarial Network and Long Short-Term Memory-based local anomalies detection, and statistical failure laws-based global dynamic fault mechanism reflection are introduced. Third, a novel bidirectional probabilistic reasoning strategy is developed to rank the real-time probabilities of fault causes in HFTN, which combines both faults reverse diagnostic and forward predictive knowledge to improve the results stability. The research is evaluated by an offshore wind turbine FRCT application, the research-assisted dynamic reliability analysis and identification of compound fault are also explored for potential application. This research combines common and individual properties of faults, has excellent accuracy and interpretability, and is expected to support integrated research of system safety.
机译:?2023 Elsevier Ltd故障根本原因追踪 (FRCT) 对于复杂机电系统的安全保障至关重要。然而,由于已知故障发展和传播机制的复杂性、不确定性和时变特性,这仍然是一项具有挑战性的任务。因此,本文提出了一个以物理为导向、数据改进的FRCT框架。首先,基于统计故障机制,考虑故障发展和传播特征,包括网络性、层次性和不确定性,定义并构建了物理引导的分层故障根源追踪网络(HFTN)模型;其次,设计了一种运算数据细化算法对初始模型进行更新,引入了基于Wasserstein生成对抗网络和长短期记忆的局部异常检测,以及基于统计失效律的全局动态故障机制反射。然后,提出了一种新的双向概率推理策略,将故障逆向诊断和正向预测知识相结合,对HFTN中故障原因的实时概率进行排序,以提高结果的稳定性。通过海上风力发电机FRCT应用对研究进行了评价,并探讨了研究辅助的动态可靠性分析和复合故障识别的潜在应用前景。该研究结合了故障的常见性和个体性,具有优异的准确性和可解释性,有望支持系统安全的综合研究。

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