Study on Marine Diesel Engine Fault Identification Based on Neural Network

Defu Zhang, Tongyu Hou, J. Yang, Jianjiang Xiao
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Abstract

In order to further improve the accuracy and real-time of Marine diesel engine fault identification, an intelligent identification method based on Shffled Frog Leaping algorithm and Harmonic search algorithm and optimized RBF neural network was proposed to diagnose Marine diesel engine fault. This method optimizes the hidden node, center vector and width parameters of RBF neural network, and carries out simulation experiment on Marine diesel engine fault identification under MATLAB environment. In the experimental process, the RBF neural network was built, and the HS algorithm was used to optimize the hyperparameters of the RBF network, and the SFLA algorithm was used to optimize the harmony memory library to further improve the accuracy of fault identification. Experimental results show that the RBF neural network trained by this method has good convergence effect and high diagnostic accuracy, which verifies the validity and rationality of the proposed method.
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基于神经网络的船用柴油机故障识别研究
为了进一步提高船用柴油机故障识别的准确性和实时性,提出了一种基于Shffled青蛙跳跃算法、谐波搜索算法和优化RBF神经网络的船用柴油机故障智能识别方法。该方法对RBF神经网络的隐节点、中心向量和宽度参数进行了优化,并在MATLAB环境下对船用柴油机故障识别进行了仿真实验。在实验过程中,构建了RBF神经网络,利用HS算法对RBF网络的超参数进行优化,利用SFLA算法对和声记忆库进行优化,进一步提高故障识别的准确率。实验结果表明,该方法训练的RBF神经网络具有良好的收敛效果和较高的诊断准确率,验证了所提方法的有效性和合理性。
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