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首页> 外文期刊>Journal of Process Control >Fault diagnosis and accommodation of nonlinear systems based on multiple-model adaptive unscented Kalman filter and switched MPC and H-infinity loop-shaping controller
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Fault diagnosis and accommodation of nonlinear systems based on multiple-model adaptive unscented Kalman filter and switched MPC and H-infinity loop-shaping controller

机译:基于多模型自适应无味卡尔曼滤波器,开关式MPC和H无限回路整形控制器的非线性系统故障诊断与适应

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In this paper, a new active fault tolerant control (AFTC) methodology is proposed based on a state estimation scheme for fault detection and identification (FDI) to deal with the potential problems due to possible fault scenarios. A bank of adaptive unscented Kalman filters (AUKFs) is used as a core of FDI module. The AUKF approach alleviates the inflexibility of the conventional UKF due to constant covariance set up, leading to probable divergence. A fuzzy-based decision making (FDM) algorithm is introduced to diagnose sensor and/or actuator faults. The proposed FDI approach is utilized to recursively correct the measurement vector and the model used for both state estimation and output prediction in a model predictive control (MPC) formulation. Robustness of the proposed FTC system, H ∞ optimal robust controller and MPC are combined via a fuzzy switch that is used for switching between MPC and robust controller such that FTC system is able to maintain the offset free behavior in the face of abrupt changes in model parameters and unmeasured disturbances. This methodology is applied on benchmark three-tank system; the proposed FTC approach facilitates recovery of the closed loop performance after the faults have been isolated leading to an offset free behavior in the presence of sensor/actuator faults that can be either abrupt or drift change in biases. Analysis of the simulation results reveals that the proposed approach provides an effective method for treating faults (biases/drifts in sensors/actuators, changes in model parameters and unmeasured disturbances) under the unified framework of robust fault tolerant control.
机译:本文提出了一种新的基于状态估计方案的主动故障容错控制(AFTC)方法,用于故障检测和识别(FDI),以解决可能出现的故障情况下的潜在问题。一堆自适应无味卡尔曼滤波器(AUKF)被用作FDI模块的核心。由于建立了恒定的协方差,因此AUKF方法减轻了传统UKF的灵活性,从而导致可能的分歧。引入了基于模糊的决策(FDM)算法来诊断传感器和/或执行器故障。所提出的FDI方法用于在模型预测控制(MPC)公式中递归校正用于状态估计和输出预测的测量向量和模型。拟议的FTC系统的鲁棒性,H∞最优鲁棒控制器和MPC通过模糊开关进行组合,该模糊开关用于在MPC和鲁棒控制器之间进行切换,使得FTC系统能够在模型突然变化的情况下保持无偏移行为。参数和无法测量的干扰。该方法适用于基准三缸系统;提出的FTC方法有助于在故障被隔离后恢复闭环性能,从而在存在传感器/执行器故障的情况下实现无偏移的行为,而传感器/执行器故障可能是突变的,也可能是偏差的漂移。对仿真结果的分析表明,在鲁棒容错控制的统一框架下,该方法提供了一种有效的方法来处理故障(传感器/执行器中的偏置/漂移,模型参数的变化以及无法测量的干扰)。

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