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A data-driven based adaptive fault diagnosis scheme for nonlinear stochastic distribution systems via 2-step neural networks and descriptor model

机译:基于数据驱动的非线性随机分配系统的两步神经网络和描述子模型自适应故障诊断方案

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A data-driven based adaptive sensor fault diagnosis (FD) and compensation scheme for stochastic distribution control (SDC) systems is studied in this paper, where an augmented descriptor model is employed. Unlike traditional SDC systems, the driven information is the output probability density function (OPDF), which is a kind of image mapping information to the true output values. A mixed 2-step adaptive neural network (NN) framework is studied, where the static NN is to describe the OPDF while the dynamic NN is to identify nonlinearity, uncertainty of system and to refine the OPDF model based on data of the input and statistic information of the output. To identify the sensor fault, an augmented descriptor system is employed, where the augmented state includes the plant state and the sensor fault. As a result, an adaptive strategy is given for nonlinear parameter estimation and sensor fault identification simultaneously. A sensor compensation rule is given to restore the plant by adding it to output feedback controller. The simulation examples are given to verify the effectiveness of the presented algorithm.
机译:研究了一种基于数据驱动的随机分布控制(SDC)系统的自适应传感器故障诊断(FD)和补偿方案,其中采用了增强的描述符模型。与传统的SDC系统不同,驱动信息是输出概率密度函数(OPDF),它是一种将图像映射到真实输出值的信息。研究了一个混合两步自适应神经网络(NN)框架,其中静态NN用于描述OPDF,而动态NN用于识别非线性,系统不确定性并基于输入和统计数据精炼OPDF模型输出信息。为了识别传感器故障,采用了增强的描述符系统,其中增强状态包括工厂状态和传感器故障。结果,给出了同时进行非线性参数估计和传感器故障识别的自适应策略。通过将传感器补偿规则添加到输出反馈控制器中,可以恢复工厂。仿真实例验证了所提算法的有效性。

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