Fault Classification of Pump Using Support Vector Machine (SVM) Method

Avie Aura Dzilfadhilah, A. Vinaya, Nicky Yesica
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引用次数: 1

Abstract

A machine is mechanical or electrical equipment that converts energy to aid human activities or manufacture specific items. A machine's condition should be maintained and checked in proper working order. As a result, the machine's state must be determined before major harm occurs. The goal of this research is to use machine learning to detect the type of pump damage. The focus of this investigation was a Panasonic GP-129 water pump. The purpose of this research is to classify three types of pump faults: misalignment, imbalance, and bearing fault. Based on the results obtained, the classification of pump fault using Support Vector Machine (SVM) methods had average accuracy of 98.35% on the Linear SVM and Cubic SVM models, and average accuracy of 100% on the Quadratic SVM model.
基于支持向量机的泵故障分类
机器是一种机械或电气设备,它转换能量来帮助人类活动或制造特定的物品。应保持和检查机器的状态,使其处于正常的工作状态。因此,必须在发生重大损害之前确定机器的状态。本研究的目标是使用机器学习来检测泵的损坏类型。本次调查的重点是松下GP-129水泵。本研究的目的是对三种类型的泵故障进行分类:不对准、不平衡和轴承故障。基于所得结果,支持向量机方法在线性支持向量机和三次支持向量机模型上的平均准确率为98.35%,在二次支持向量机模型上的平均准确率为100%。
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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