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REAL-TIME FAULT DETECTION AND ISOLATION WITH SUPERVISED TRAINING

机译:通过监督培训进行实时故障检测和隔离

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摘要

The paper is focused on fault detection and isolation (FDI) in a stochastic nonlinear system affected by noise. The substance of the presented Bayesian identification-based FDI methodology is a probabilistic model determined by the fault probability table. The methodology consists in probabilistic mapping of the measured data into a fault variable. Necessary computations are very simple and heuristic knowledge about the fault can also be easily included in real time. The practical aspects of the proposed FDI algorithm have been tested in real time on a laboratory heating system. The results obtained proved suitability of the designed algorithm for fault detection and isolation in real plants.
机译:本文的重点是在受噪声影响的随机非线性系统中的故障检测和隔离(FDI)。提出的基于贝叶斯识别的FDI方法论的实质是由故障概率表确定的概率模型。该方法包括将测量数据概率映射到故障变量中。所需的计算非常简单,有关故障的启发式知识也可以轻松地实时包含在内。所提出的FDI算法的实际方面已在实验室供暖系统上进行了实时测试。获得的结果证明了所设计的算法在实际工厂中用于故障检测和隔离的适用性。

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