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Online Sensor Fault Detection Based on an Improved Strong Tracking Filter

机译:基于改进型强跟踪滤波器的传感器在线故障检测

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摘要

We propose a method for online sensor fault detection that is based on the evolving Strong Tracking Filter (STCKF). The cubature rule is used to estimate states to improve the accuracy of making estimates in a nonlinear case. A residual is the difference in value between an estimated value and the true value. A residual will be regarded as a signal that includes fault information. The threshold is set at a reasonable level, and will be compared with residuals to determine whether or not the sensor is faulty. The proposed method requires only a nominal plant model and uses STCKF to estimate the original state vector. The effectiveness of the algorithm is verified by simulation on a drum-boiler model.
机译:我们提出了一种基于不断发展的强跟踪滤波器(STCKF)的在线传感器故障检测方法。容积法则用于估计状态,以提高在非线性情况下进行估计的准确性。残差是估计值和真实值之间的值差。残差将被视为包含故障信息的信号。该阈值设置在合理的水平,并将与残差进行比较以确定传感器是否有故障。所提出的方法仅需要名义工厂模型,并使用STCKF估计原始状态向量。通过对汽包锅炉模型的仿真验证了该算法的有效性。

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