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Reconstruction of sensor faults for a class of uncertain nonlinear systems using adaptive sliding mode observers

机译:一种使用自适应滑模观测器的一类不确定非线性系统的传感器故障的重建

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The present paper proposes a new scheme for estimating sensor faults for a class of uncertain nonlinear systems using adaptive sliding mode observers (SMOs). Initially, a state and output transformation is introduced to transform the original system into two subsystems such that the first subsystem (subsystem-1) has system uncertainties but is free from sensor faults and the second subsystem (subsystem-2) has sensor faults but without any uncertainties. The sensor faults in subsystem-2 are then transformed to actuator faults using integral observer based approach. Two SMOs are designed such that the effects of system uncertainties in subsystem-1 are completely eliminated and the sensor faults presenting in subsystem-2 can be reconstructed using the equivalent output error injection term. The Lipschitz constant is assumed to be unknown in the work and this problem can be solved by integrating adaptation laws to the gain of SMOs. The sufficient condition of the stability of the proposed scheme has been derived and expressed as Linear Matrix Inequalities (LMIs). The effectiveness of the proposed scheme in reconstructing sensor faults is illustrated considering an example of a single-link robotic arm with revolute elastic joint. The simulation results demonstrate that the proposed scheme can reconstruct sensor faults even in the presence of large system uncertainties. Incipient sensor faults can also be accurately estimated using the proposed scheme.
机译:本文提出了一种新的方案,用于使用自适应滑动模式观察者(SMOS)估算一类不确定非线性系统的传感器故障。首先,状态和输出变换被引入到原始系统变换为两个子系统,使得所述第一子系统(子系统-1)具有系统的不确定性,但是从传感器故障和所述第二子系统的分类(子系统-2)具有传感器故障,但没有任何不确定性。然后使用基于积分观测器的方法将子系统-2中的传感器故障转换为执行器故障。设计了两个SMOS,使得系统不确定性在子系统-1中的影响被完全消除,并且可以使用等效的输出错误注射术语重建子系统-2中的传感器故障。在工作中假设Lipschitz常数被认为是未知的,并且通过将适应法律集成到SMOS的增益来解决这个问题。已经得出了所提出的方案的稳定性的充分条件,并表达为线性基质不等式(LMI)。考虑到具有旋转弹性接头的单链路机器人臂的示例,说明了所提出的方案在重建传感器故障中的有效性。仿真结果表明,即使在存在大系统不确定性的情况下,该方案也可以重建传感器故障。还可以使用所提出的方案准确地估计初期传感器故障。

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