A fault diagnosis system for CNC hydraulic machines: a conceptual framework

Fajar Anzari, W. Septiani, D. Sugiarto, Martino Luis
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Abstract

The fault diagnosis process in Computer Numerical Control (CNC) hydraulic machines for steel processing relies on skills, experiences, and maintenance technicians' understanding of the machine. The problem is many junior maintenance technicians are inexperienced and unskilled. This paper proposes a conceptual framework for a fault diagnosis system for the CNC hydraulic machine to help a maintenance technician in a fault diagnosis process. The framework uses association rule mining to discover hidden association patterns between fault symptoms and causes from historical machine fault data. The framework has consisted of data standardization, knowledge acquisition, and a model of the fault diagnosis system. The data standardization aims to make the data ready to be mined by assigning a fault tag for each record of historical fault data. The tagged repair records are used to produce symptoms–cause associative knowledge. The produced knowledge is refined by corrective actions acquired from expert knowledge. The knowledge is then stored in the fault knowledge database in the form of IF-THEN rules. The reasoning machine is developed to map the fault symptoms as IF and the causes as THEN. Production operators can fill in the fault symptoms by choosing the standardized fault symptom tag. When a maintenance technician reviews a fault report, the system, through a reasoning machine, will access the appropriate IF-THEN rules based on the fault symptoms that the production operator has filled in. The system concludes the fault cause and recommends suitable corrective action.
数控液压机故障诊断系统:概念框架
钢加工用数控(CNC)液压机的故障诊断过程依赖于技术、经验和维修技术人员对机器的理解。问题是许多初级维修技术人员缺乏经验和技能。本文提出了一个数控液压机故障诊断系统的概念框架,以帮助维修人员进行故障诊断。该框架使用关联规则挖掘从历史机器故障数据中发现故障症状和原因之间隐藏的关联模式。该框架由数据标准化、知识获取和故障诊断系统模型组成。数据标准化的目的是通过为每条历史故障数据记录分配故障标签,使数据准备好被挖掘。标记的修复记录用于生成症状-原因关联知识。产生的知识通过从专家知识中获得的纠正措施得到完善。然后将知识以IF-THEN规则的形式存储在故障知识库中。开发推理机,将故障症状映射为IF,将故障原因映射为THEN。生产操作人员可以通过选择标准化的故障症状标签填写故障症状。当维护技术人员查看故障报告时,系统将通过推理机根据生产操作员填写的故障症状访问相应的IF-THEN规则。系统总结故障原因并建议适当的纠正措施。
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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