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A Diagnosis Approach for Parameter Deviations in Linear System Using Artificial Neural Networks

机译:基于人工神经网络的线性系统参数偏差诊断方法。

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A novel approach towards diagnosis of parameter deviations in linear system using artificial neural network based identification algorithm is proposed in this brief. The fault diagnosis is done by identifying the parameters of the system from the measurement of state variables of the system. The input excitation for the system is unit step and the artificial neural network which identifies the parameters of the system is trained using widrow-hoff training rule. The system is identified in discrete domain by using the state variables of the system at to consecutive sampling instants in a recursive procedure. The faults are introduced arbitrarily and the neural network identifies the parameter continuously from the measurement of state variables. The proposed method is feasible for on line fault diagnosis through digital implementation. The mathematical formulation of the technique and the simulation results are presented to validate the feasibility of the proposed approach.
机译:提出了一种基于人工神经网络的辨识算法诊断线性系统参数偏差的新方法。通过从系统状态变量的测量中识别系统参数来完成故障诊断。系统的输入激励是单位步长,并且使用widrow-hoff训练规则对识别系统参数的人工神经网络进行训练。在递归过程中,通过在连续采样时刻使用系统的状态变量,可以在离散域中识别系统。任意引入故障,并且神经网络从状态变量的测量中连续识别参数。所提出的方法对于通过数字实现的在线故障诊断是可行的。提出了该技术的数学公式和仿真结果,以验证该方法的可行性。

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