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Research on fault tolerant control system based on optimized neural network algorithm

机译:基于优化神经网络算法的容错控制系统研究

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Due to the strict personnel control measures in COVID-19 epidemic, the control system cannot be maintained and managed manually. This puts forward higher requirements for the accuracy of its fault-tolerant performance. The control system plays an increasingly important role in the rapid development of industrial production. When the sensor in the system fails, the system will become unstable. Therefore, it is necessary to accurately and quickly diagnose the faults of the system sensors and maintain the system in time. This paper takes the control system as the object to carry out the fault diagnosis and fault-tolerant control research of its sensors. A network model of wavelet neural network is proposed, and an improved genetic algorithm is used to optimize the weights and thresholds of the neural network model to avoid the deficiencies of traditional neural network algorithms. For the depth sensor of a certain system, an online fault diagnosis scheme based on RBF (Radial Basis Function) neural network and genetic algorithm optimized neural network was designed. The disturbance fault, "stuck" fault, drift fault and oscillation fault of the depth sensor are simulated. Simulation experiments show that both online fault diagnosis schemes can accurately identify sensor faults and the genetic algorithm optimized neural network is superior to RBF neural network in both recognition accuracy and training time under the influence of COVID-19.
机译:由于COVID2019冠状病毒疾病的严格的人员控制措施,控制系统不能手动维护和管理。这对其容错性能的准确性提出了更高的要求。在工业生产的快速发展中,控制系统发挥着越来越重要的作用。当系统中的传感器发生故障时,系统将变得不稳定。因此,有必要准确、快速地诊断系统传感器的故障,并及时对系统进行维护。本文以控制系统为对象,对其传感器进行故障诊断和容错控制研究。提出了小波神经网络的网络模型,并利用改进的遗传算法优化神经网络模型的权值和阈值,以避免传统神经网络算法的不足。针对某系统深度传感器,设计了基于径向基函数(RBF)神经网络和遗传算法优化神经网络的在线故障诊断方案。对深度传感器的干扰故障、卡滞故障、漂移故障和振荡故障进行了仿真。仿真实验表明,2019冠状病毒疾病的在线故障诊断方案都能准确识别传感器故障,遗传算法优化神经网络在COVID-19的影响下,在识别精度和训练时间上均优于RBF神经网络。

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