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An improved decentralized model for sensor fault detection and isolation demonstrated on an airplane system

机译:在飞机系统上演示了改进的用于传感器故障检测和隔离的分散模型

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摘要

With various modeling technologies applied, the sensor fault detection and isolation scheme based on the decentralized model (also referred to as dedicated observer scheme) becomes a popular approach for sophisticated systems. However, the commonly used modeling approach in many literatures that directly takes measurement values as model inputs may result in residual crosstalks and even false alarms. In this paper, the traditional decentralized model scheme is analyzed and a novel scheme based on the time window interactive prediction structure is proposed. Then, the Elman neural network is applied to model identification due to its nonlinear approximation and online learning properties. Finally, Simulations for comparison using the decoupled longitudinal motion model of some airplane are performed, and the results show that the proposed scheme has higher detection speed, lower false alarm rate and less undetected faults.
机译:随着各种建模技术的应用,基于分散模型的传感器故障检测和隔离方案(也称为专用观察员方案)成为复杂系统的流行方法。但是,许多文献中常用的直接将测量值作为模型输入的建模方法可能会导致残留的串扰甚至误报。本文分析了传统的分散模型方案,提出了一种基于时间窗交互式预测结构的新方案。然后,由于其非线性逼近和在线学习特性,将Elman神经网络应用于模型识别。最后,利用某飞机的解耦纵向运动模型进行了比较仿真,结果表明,该方案具有较高的检测速度,较低的误报率和较少的未发现故障。

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