论文标题
基于立方DUCG的因果知识表示和工业故障诊断的推论的平台
A platform for causal knowledge representation and inference in industrial fault diagnosis based on cubic DUCG
论文作者
论文摘要
大规模工业系统的工作条件非常复杂。一旦发生故障,它将影响工业生产,造成财产损失,甚至危害工人的生命。因此,控制系统的操作很重要,以准确掌握系统的操作状态并找出时间的故障。系统故障的发生是一个逐渐的过程,当前系统故障的发生可能取决于系统的先前状态,这是顺序的。基于时间序列的故障诊断技术可以实时监视系统的操作状态,检测系统在允许的时间间隔内的异常操作,诊断出故障的根本原因并预测状态趋势。为了指导技术人员进行故障排除和解决相关的故障,在本文中,根据立方DUCG理论实施了工业故障诊断系统。系统的诊断模型是根据专家知识和经验构建的。同时,它可以根据时间序列执行实时故障诊断,从而解决了没有样品数据的工业系统的故障诊断问题。
The working conditions of large-scale industrial systems are very complex. Once a failure occurs, it will affect industrial production, cause property damage, and even endanger the workers' lives. Therefore, it is important to control the operation of the system to accurately grasp the operation status of the system and find out the failure in time. The occurrence of system failure is a gradual process, and the occurrence of the current system failure may depend on the previous state of the system, which is sequential. The fault diagnosis technology based on time series can monitor the operating status of the system in real-time, detect the abnormal operation of the system within the allowable time interval, diagnose the root cause of the fault and predict the status trend. In order to guide the technical personnel to troubleshoot and solve related faults, in this paper, an industrial fault diagnosis system is implemented based on the cubic DUCG theory. The diagnostic model of the system is constructed based on expert knowledge and experience. At the same time, it can perform real-time fault diagnosis based on time sequence, which solves the problem of fault diagnosis of industrial systems without sample data.