IEEE Trans Cybern. 2022 Sep;52(9):9414-9427. doi: 10.1109/TCYB.2021.3055770. Epub 2022 Aug 18.
In this article, a novel thruster information fusion fault diagnosis method for the deep-sea human occupied vehicle (HOV) is proposed. A deep belief network (DBN) is introduced into the multisensor information fusion model to identify uncertain and unknown, continuously changing fault patterns of the deep-sea HOV thruster. Inputs for the DBN information fusion fault diagnosis model are the control voltage, feedback current, and rotational speed of the deep-sea HOV thruster; and the output is the corresponding fault degree parameter ( s ), which indicates the pattern and degree of the thruster fault. In order to illustrate the effectiveness of the proposed fault diagnosis method, a pool experiment under different simulated fault cases is conducted in this study. The experimental results have proved that the DBN information fusion fault diagnosis method can not only diagnose the continuously changing, uncertain, and unknown thruster fault but also has higher identification accuracy than the information fusion fault diagnosis methods based on traditional artificial neural networks.
本文提出了一种用于深海有人驾驶潜水器(HOV)推进器的新型推进器信息融合故障诊断方法。引入深度置信网络(DBN)到多传感器信息融合模型中,以识别深海 HOV 推进器不确定和未知的、不断变化的故障模式。DBN 信息融合故障诊断模型的输入是深海 HOV 推进器的控制电压、反馈电流和转速;输出是相应的故障程度参数(s),表示推进器故障的模式和程度。为了说明所提出的故障诊断方法的有效性,本研究进行了不同模拟故障情况下的水池实验。实验结果证明,DBN 信息融合故障诊断方法不仅可以诊断不断变化的、不确定的和未知的推进器故障,而且比基于传统人工神经网络的信息融合故障诊断方法具有更高的识别精度。