Fault Detection of Propeller of an Overactuated Unmanned Surface Vehicle based on Convolutional Neural Network

Seung-dae Baek, Joohyun Woo
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Abstract

This paper proposes a fault detection method for a Unmanned Surface Vehicle (USV) with overactuated system. Current status information for fault detection is expressed as a scalogram image. The scalogram image is obtained by wavelet-transforming the USV's control input and sensor information. The fault detection scheme is based on Convolutional Neural Network (CNN) algorithm. The previously generated scalogram data was transferred learning to GoogLeNet algorithm. The data are generated as scalogram images in real time, and fault is detected through a learning model. The result of fault detection is very robust and highly accurate.
基于卷积神经网络的超驱动无人水面飞行器螺旋桨故障检测
提出了一种针对超驱动系统的无人水面车辆故障检测方法。用于故障检测的当前状态信息表示为尺度图图像。通过对USV的控制输入和传感器信息进行小波变换,得到USV的尺度图图像。故障检测方案基于卷积神经网络(CNN)算法。将之前生成的尺度图数据转移到GoogLeNet算法中学习。数据实时生成为尺度图图像,并通过学习模型检测故障。故障检测结果鲁棒性好,精度高。
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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