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首页> 外文期刊>Reliability, IEEE Transactions on >Analytic Confusion Matrix Bounds for Fault Detection and Isolation Using a Sum-of-Squared-Residuals Approach
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Analytic Confusion Matrix Bounds for Fault Detection and Isolation Using a Sum-of-Squared-Residuals Approach

机译:平方和残差法用于故障检测和隔离的解析混淆矩阵界

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摘要

Given a system which can fail in 1 of $n$ different ways, a fault detection and isolation (FDI) algorithm uses sensor data to determine which fault is the most likely to have occurred. The effectiveness of an FDI algorithm can be quantified by a confusion matrix, also called a diagnosis probability matrix, which indicates the probability that each fault is isolated given that each fault has occurred. Confusion matrices are often generated with simulation data, particularly for complex systems. In this paper, we perform FDI using sum-of-squared residuals (SSRs). We assume that the sensor residuals are $s$-independent and Gaussian, which gives the SSRs chi-squared distributions. We then generate analytic lower, and upper bounds on the confusion matrix elements. This approach allows for the generation of optimal sensor sets without numerical simulations. The confusion matrix bounds are verified with simulated aircraft engine data.
机译:给定一个可能以$ n $种方式中的一种失败的系统,故障检测和隔离(FDI)算法使用传感器数据来确定最可能发生的故障。 FDI算法的有效性可以通过混淆矩阵(也称为诊断概率矩阵)进行量化,该矩阵表示在已发生每种故障的情况下隔离每种故障的概率。混淆矩阵通常由仿真数据生成,特别是对于复杂系统。在本文中,我们使用平方和残差(SSR)进行FDI。我们假设传感器残差是独立于$ s $和高斯的,这给出了SSR的卡方分布。然后,我们生成混淆矩阵元素的解析下限和上限。这种方法可以生成最佳的传感器集,而无需进行数值模拟。混淆矩阵边界已通过模拟飞机发动机数据进行了验证。

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