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A quadratic boundedness approach to a neural network-based simultaneous estimation of actuator and sensor faults

机译:基于神经网络的同时估算执行器和传感器故障的二次界限方法

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The paper is devoted to the problem of a neural network-based robust simultaneous actuator and sensor faults estimator design for the purpose of the fault diagnosis of nonlinear systems. In particular, the methodology of designing a neural network-based fault estimator is developed. The main novelty of the approach is associated with possibly simultaneous sensor and actuator faults under imprecise measurements. For this purpose, a linear parameter-varying description of a recurrent neural network is exploited. The proposed approach guaranties a predefined disturbance attenuation level and convergence of the estimator. In particular, it uses the quadratic boundedness approach to provide uncertainty intervals of the achieved estimates. The final part of the paper presents an illustrative example concerning the application of the proposed approach to the multitank system fault diagnosis.
机译:本文致力于神经网络的鲁棒同时执行器和传感器故障估计设计的问题,以实现非线性系统的故障诊断。 特别地,开发了设计神经网络的故障估计器的方法。 该方法的主要新颖性与可能在不精确测量下的同时传感器和执行器故障相关联。 为此目的,利用反复性神经网络的线性参数变化描述。 所提出的方法保证了估计器的预定义干扰衰减水平和收敛性。 特别地,它使用二次界限方法来提供所取得的估计的不确定性间隔。 本文的最后一部分提出了一个关于应用提出的多层系统故障诊断方法的说明性示例。

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