Fault Classification for Unmanned Surface Vehicles using Supervised Learning Methods

Rupam Singh, B. Bhushan
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Abstract

The key role of fault detection and diagnosis in the nonlinear system is to maintain safety, reliability, and survivability in case of system failure during a fault. The main idea behind this paper is to explore unmanned surface vehicles (USVs) performance under faulty conditions. K-Nearest Neighbour method has been chosen for faults detection, identification, and classification. A ball balancer system, which is a laboratory setup, has been considered for analysis of faults occur. The translational motion-related control of USVs is represented by ball movement on a plate in the x-y direction. The sway motion of USVs corresponds to x-axis movement of the ball while surge represents the y-axis motion of the ball on a plate. For algorithm implementation, the necessary fault data has been taken from the position of the ball, plate angle, and motor input voltage after inserting the fault in the system. For performance analysis, the results of Simulink and hardware has been validated.
基于监督学习方法的无人水面车辆故障分类
在非线性系统中,故障检测和诊断的关键作用是在系统发生故障时保持系统的安全性、可靠性和生存能力。本文的主要思想是探索无人水面车辆(usv)在故障条件下的性能。选择k -最近邻方法进行故障检测、识别和分类。在实验室条件下,对滚珠平衡器系统进行了故障分析。usv的平移运动相关控制由x-y方向上的球在板上的运动来表示。usv的摇摆运动对应于球的x轴运动,而浪涌则代表球在板上的y轴运动。在算法实现中,将故障插入系统后,从球的位置、板的角度、电机的输入电压中获取必要的故障数据。对于性能分析,Simulink和硬件的结果已经得到验证。
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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