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Neural Network-Based Sensor Fault Accommodation in Flight Control System

机译:飞行控制系统中基于神经网络的传感器故障适应

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This article deals with detection and accommodation of sensor faults in longitudinal dynamics of an F8 aircraft model. Both the detection of the fault and reconfiguration of the failed sensor are done with the help of neural network-based models. Detection of a sensor fault is done with the help of knowledge-based neural network fault detection (KBNNFD). Apart from KBNNFD, another neural network model is developed in this article for the reconfiguration of the failed sensor. A model-based approach of the neural network (MBNN) is developed, which uses the radial basis function of the neural network. MBNN successfully does the task of providing analytical redundancy for the aircraft sensor. In this work, both detection and reconfiguration of a fault is done using neural networks. Hence, the control system becomes robust for handling sensor failures near steady state and reconfiguration is also faster. A generalized regression neural network (GRNN), which is a type of radial basis network, is used for MBNN, which gives very efficient results for function approximation. An F8 aircraft model and C-Star controller, which improves its handling quality, are used for validation of the method involved. Models of F8 aircraft, C-Star controller, KBNNFD, and MBNN were developed using MATLAB/Simulink. Successful implementation and simulation results are shown and discussed using Simulink.
机译:本文讨论了在F8飞机模型的纵向动力学中传感器故障的检测和处理。故障检测和故障传感器的重新配置都借助基于神经网络的模型完成。借助基于知识的神经网络故障检测(KBNNFD)可以完成传感器故障的检测。除了KBNNFD,本文还开发了另一个神经网络模型来重新配置故障传感器。开发了一种基于模型的神经网络方法(MBNN),该方法使用了神经网络的径向基函数。 MBNN成功完成了为飞机传感器提供分析冗余的任务。在这项工作中,使用神经网络来完成故障的检测和重新配置。因此,控制系统变得健壮,可以处理接近稳态的传感器故障,并且重新配置也更快。广义回归神经网络(GRNN)是一种径向基网络,用于MBNN,可为函数逼近提供非常有效的结果。使用F8飞机模型和C-Star控制器(可提高其处理质量)来验证所涉及的方法。 F8飞机,C-Star控制器,KBNNFD和MBNN的模型是使用MATLAB / Simulink开发的。使用Simulink展示并讨论了成功的实现和仿真结果。

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