The Leakage Identification and Location of Ship Pipeline System Based on Vibration Signal Processing

P. Su, Jiechang Wu, Guanghui Chang, Shuyong Liu, Xuejiao Feng
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引用次数: 0

Abstract

The leakage of the ship’s pipeline system will bring great risks to the engine equipment and seriously threaten the vitality of the ship. In this paper, the pipeline leakage detection and localization research are carried out based on the vibration signal generated by pipeline leakage. First, the finite element model of the pipeline is constructed to obtain the variation law of the vibration signal when the pipeline leaks are carried out. Second, the vibration signal is processed based on the variational mode decomposition (VMD) and radial basis function (RBF) neural networks. The wavelet packet threshold noise reduction is conducted before signal decomposition to improve the signal-to-noise ratio. Then, the denoised signal is decomposed by VMD. The effective component is identified by analyzing the correlation coefficient between the component and the denoised signal. The center frequency and energy of the effective component are used as feature vector to train the RBF neural network to identify and locate leakage. Finally, a pipeline leakage test platform is built under laboratory conditions. After processing the data samples collected from the test, the RBF neural network is trained to identify and locate leaks. The test sample identification results show that the leak identification and localization method based on VMD-RBF has a high accuracy.
基于振动信号处理的船舶管道系统泄漏识别与定位
船舶管道系统的泄漏将给发动机设备带来巨大的风险,严重威胁船舶的生命力。本文基于管道泄漏产生的振动信号进行管道泄漏检测与定位研究。首先,建立管道有限元模型,得到管道发生泄漏时振动信号的变化规律;其次,基于变分模态分解(VMD)和径向基函数(RBF)神经网络对振动信号进行处理;在信号分解前进行小波包阈值降噪,提高信噪比。然后对去噪后的信号进行VMD分解。通过分析有效分量与去噪信号的相关系数来识别有效分量。利用有效分量的中心频率和能量作为特征向量,训练RBF神经网络进行泄漏识别和定位。最后,在实验室条件下搭建了管道泄漏测试平台。在对从测试中收集的数据样本进行处理后,训练RBF神经网络来识别和定位泄漏。测试样本识别结果表明,基于VMD-RBF的泄漏识别与定位方法具有较高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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