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Fault Detection for Stochastic Switched System Based on Fuzzy Adaptive Unscented Kalman Filter

机译:基于模糊自适应无味卡尔曼滤波器的随机开关系统故障检测

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In order to solve the problem of state estimation and fault detection for a class of stochastic switched nonlinear system with unknown characteristics of observation noise change, a system state estimation algorithm based on interactive multiple model and unscented Kalman filter (IMM-UKF) is proposed. The algorithm uses the UKF to estimate the state of each subsystem at different time points, then fuses the state estimation results of different subsystems to obtain the final state estimation, and realizes the estimation of the real state of the system. In order to achieve real-time tracking of system observation noise, a fuzzy controller is established to adjust the observation noise of IMM- UKF in real time, and a fuzzy adaptive IMM-UKF algorithm (FAIMM-UKF) is proposed. For actuator failure in a class of stochastic switched nonlinear systems, FAIMM-UKF is used to estimate the system state. Based on the result of the state estimation, residual and residual evaluation functions are established to detect the actuator fault. Finally, the effectiveness of the proposed algorithm is verified by simulation experiment.
机译:针对一类具有未知观测噪声变化特征的随机切换非线性系统的状态估计和故障检测问题,提出了一种基于交互式多重模型和无味卡尔曼滤波器的系统状态估计算法。该算法利用UKF估计不同时间点每个子系统的状态,然后融合不同子系统的状态估计结果以获得最终状态估计,实现对系统真实状态的估计。为了实现对系统观测噪声的实时跟踪,建立了模糊控制器实时调整IMM-UKF的观测噪声,提出了模糊自适应IMM-UKF算法(FAIMM-UKF)。对于一类随机切换非线性系统中的执行器故障,使用FAIMM-UKF估计系统状态。根据状态估计的结果,建立残差和残差评估功能以检测执行器故障。最后,通过仿真实验验证了所提算法的有效性。

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