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Fault Diagnosis Of Ship Power Supply System Based on grey correlation improved BP neural network

机译:基于灰色关联改进BP神经网络的船舶供电系统故障诊断。

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The ship power system is becoming more and more complex, and the probability of failure is also greatly increased. In this paper, the ship power system fault diagnosis algorithm of BP neural network is put forward based on the grey correlation improved BP neural network, the structure of BP neural network is improved by using grey correlation. In view of the different effects of each hidden layer neuron to the network output layer, the function of the output layer is analyzed by using the gray correlation analysis method, and the gray correlation degree is calculated to effectively eliminate the hidden layer neurons those has small influence on the output layer, which can optimize the structure of BP neural network. The simulation results of fault diagnosis for ship power system are analyzed, which show that the optimized BP neural network can effectively improve the accuracy of the fault diagnosis of the ship power system.
机译:船舶动力系统越来越复杂,发生故障的可能性也大大增加。提出了一种基于灰色关联改进BP神经网络的船舶电力系统故障诊断算法,利用灰色关联对BP神经网络的结构进行了改进。针对每个隐层神经元对网络输出层的不同影响,采用灰色关联分析法对输出层的功能进行了分析,计算了灰色关联度,有效消除了隐层神经元较小的隐层神经元。对输出层的影响,可以优化BP神经网络的结构。分析了舰船电力系统故障诊断的仿真结果,表明优化的BP神经网络可以有效提高舰船电力系统故障诊断的准确性。

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