通过物理建模和统计学习进行健康监测

Claire-Eleuthèriane Gerrer, Sylvain Girard
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引用次数: 0

摘要

运行状况监控的目的是防止发生故障。我们的健康监测方法是将对系统的观察与物理建模相结合。通过统计学习从复杂的观察中提取信息。对这些原始信息的研究可以对问题有初步的了解。要更进一步,还需要系统的物理知识。系统组件的建模实现了我们对系统的物理知识。对该模型进行反演,可以识别导致退化的参数。通过贝叶斯推理实现模型反演。随着时间的推移,系统参数的退化使精确诊断和预测性维护操作的建立成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Health Monitoring by Physical Modeling and Statistical Learning
Health monitoring aims at preventing failures from happening. Our approach of health monitoring is to combine observations of the system with physical modeling. Information is extracted from complex observations by statistical learning. The study of this raw information can give first insights in the problem. To go further, the physical knowledge about the system is required. The modeling of the system components implements the physical knowledge we have of the system. Inversing this model enables the identification of the parameters responsible for the degradation. Model inversion is realized by bayesian inference. The evolution over time of the system parameters undergoing degradation enables precise diagnoses and the set up of predictive maintenance operations.
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