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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Neural network fault diagnosis of a trolling motor based on feature reduction techniques for an unmanned surface vehicle
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Neural network fault diagnosis of a trolling motor based on feature reduction techniques for an unmanned surface vehicle

机译:基于特征约简技术的拖曳电机神经网络故障诊断

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摘要

This article presents a novel approach to the diagnosis of unbalanced faults in a trolling motor under stationary operating conditions. The trolling motor being typically of that used as the propulsion system for an unmanned surface vehicle, the diagnosis approach is based on the use of discrete wavelet transforms as a feature extraction tool and a time-delayed neural network for fault classification. The time-delayed neural network classifies between healthy and faulty conditions of the trolling motor by analysing the stator current and vibration. To overcome feature redundancy, which affects diagnosis accuracy, several feature reduction methods have been tested, and the orthogonal fuzzy neighbourhood discriminant analysis approach is found to be the most effective method. Four faulty conditions were analysed under laboratory conditions, where one of the blades causing damage to the trolling motor is cut into 10%, 25%, half and then into full to simulate the effects of propeller blades being damaged partly or fully. The results obtained from the real-time simulation demonstrate the effectiveness and reliability of the proposed methodology in classifying the different faults faster and accurately.
机译:本文提出了一种在固定运行条件下诊断拖钓电动机不平衡故障的新颖方法。拖曳电动机通常是用作无人水面飞行器的推进系统的电动机,诊断方法基于离散小波变换作为特征提取工具和延时神经网络进行故障分类的基础。时延神经网络通过分析定子电流和振动,在拖曳电动机的健康状态和故障状态之间进行分类。为了克服影响诊断准确性的特征冗余,已经测试了几种特征约简方法,并且发现正交模糊邻域判别分析方法是最有效的方法。在实验室条件下分析了四个故障条件,其中将对拖钓电机造成损坏的一个叶片切成10%,25%,一半,然后切成全部,以模拟部分或全部损坏的螺旋桨叶片的影响。实时仿真得到的结果证明了所提方法在快速,准确地分类不同故障方面的有效性和可靠性。

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