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首页> 外文期刊>Journal of Process Control >Particle filtering for sensor fault diagnosis and identification in nonlinear plants
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Particle filtering for sensor fault diagnosis and identification in nonlinear plants

机译:用于非线性工厂中传感器故障诊断和识别的粒子滤波

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摘要

We propose a novel method for sensor monitoring and fault-tolerant estimation in systems described by general stochastic nonlinear and/or non-Gaussian state-space models. Faults are defined as abruptly occurring calibration errors, causing the sensor readings to be biased or scaled. Actuators and the process itself are assumed to be fault free. The main novelty of the work is an adaptive particle filter, whose configuration changes in order to diagnose sensor faults and to compensate for their effects. The presence, type and magnitude of sensor faults are determined through hypothesis testing and maximum likelihood estimation, based on the difference between the measurements and the particle filter estimates. The validity of the proposed approach was demonstrated through simulations on a drum-boiler model, although its effectiveness is not conditioned on any particular feature of the considered example.
机译:我们提出了一种由通用随机非线性和/或非高斯状态空间模型描述的系统中的传感器监视和容错估计的新方法。故障定义为突然发生的校准错误,从而导致传感器读数出现偏差或缩放。执行器和过程本身被假定为无故障。这项工作的主要新颖之处是自适应粒子滤波器,其配置会发生变化,以便诊断传感器故障并补偿其影响。传感器故障的存在,类型和严重程度是通过假设测试和最大似然估计来确定的,这是基于测量值与粒子滤波器估计值之间的差异。通过对鼓式锅炉模型的仿真证明了该方法的有效性,尽管其有效性并不取决于所考虑示例的任何特定功能。

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