Health diagnosis of marine engine room equipment based on BP and D-S evidence theory

Yuhang Jiang, Zhimin Wang, Yi Zhang, Ning Chen
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引用次数: 1

Abstract

Aiming at the problems of poor resolution and low precision in traditional health diagnosis of Marine engine room equipment, this paper proposes a health diagnosis method of intelligent Marine engine room equipment based on BP neural network and D-S evidence theory. Firstly, the time-domain parameters of the obtained acceleration signal are extracted and the energy in frequency domain after wavelet decomposition is calculated. Then the eigenvectors of time domain and wavelet packet energy were constructed respectively, and the normalized processing was input into two BP neural networks to obtain the classification results. Finally, the fault classification results in time domain and frequency domain are combined with the D-S evidence theory and output diagnosis. Through experimental analysis and verification of rolling bearing data from electrical Engineering Laboratory of Case Western Reserve University, the accuracy of the proposed method is better than that of time domain and frequency domain analysis alone, which improves the accuracy and reliability of fault classification.
基于BP和D-S证据理论的船舶机舱设备健康诊断
针对传统船舶机舱设备健康诊断分辨率差、精度低的问题,提出了一种基于BP神经网络和D-S证据理论的智能船舶机舱设备健康诊断方法。首先,提取得到的加速度信号的时域参数,计算小波分解后的频域能量;然后分别构造时域特征向量和小波包能量特征向量,并将归一化处理输入到两个BP神经网络中,得到分类结果。最后,将时域和频域的故障分类结果与D-S证据理论和输出诊断相结合。通过对凯斯西储大学电气工程实验室的滚动轴承数据进行实验分析和验证,该方法的精度优于单独进行时域和频域分析,提高了故障分类的准确性和可靠性。
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