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Research on Fault Diagnosis of Neural Network Based on Bee Colony Algorithm Optimization in Gun Control System

机译:基于蜂群算法优化的枪支控制系统神经网络故障诊断研究

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Aiming at the problems of large subjectivity and inaccurate diagnosis results in the fault diagnosis of tank gun control system, the fault diagnosis method based on improved artificial bee colony is studied. Combined with the improved artificial bee colony algorithm and BP neural network, a BP neural network algorithm based on improved bee colony optimization algorithm is formed and the model of the algorithm is established. And through the use of MATLAB simulation of computer programs, compared with the BP neural network algorithm without optimization, the experiment is summarized. The results show that the system can give fault diagnosis results more accurately, which helps to improve the maintenance efficiency and reliability of the tank gun control system.
机译:针对坦克炮控制系统故障诊断中主观性大,诊断结果不准确的问题,研究了一种基于改进的人工蜂群的故障诊断方法。结合改进的人工蜂群算法和BP神经网络,形成了一种基于改进的蜂群优化算法的BP神经网络算法,并建立了模型。并通过使用MATLAB对计算机程序进行仿真,与未经优化的BP神经网络算法相比较,对实验进行了总结。结果表明,该系统可以更准确地给出故障诊断结果,有助于提高坦克炮控制系统的维护效率和可靠性。

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