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Fault diagnosis in metallurgical process systems with support vector machines

机译:支持向量机的冶金过程系统故障诊断

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摘要

Fault detection and identification are major challenges in process engineering and manufacturing and the key component of abnormal event management systems. Timely detection, diagnosis and rectification of abnormal or faulty process conditions can lead to savings of billions of dollars in equipment damage and lost productivity, not to mention the prevention of injury and loss of human life associated with industrial accidents. A major contributing factor to current losses in industry is the reliance on human operators to interpret high-frequency samples from hundreds or thousands of variables simultaneously. As a result, the automation of fault detection and diagnosis is seen as crucial to the successful implementation of abnormal event management, the need for which is becoming all the more urgent given the increased complexity associated with modern industrial plants. In this paper, a methodology for process monitoring that uses support vector methods to extract nonlinear features from data is discussed and applied in the diagnostic monitoring of an industrial liquid-liquid extraction column.
机译:故障检测和识别是过程工程和制造中的主要挑战,也是异常事件管理系统的关键组成部分。及时发现,诊断和纠正异常或故障过程状况可以节省数十亿美元的设备损坏和生产力损失,更不用说预防与工业事故有关的伤害和生命损失。造成当前行业损失的一个主要因素是依赖于操作员同时解释数百个或数千个变量中的高频样本。结果,故障检测和诊断的自动化被视为成功实施异常事件管理的关键,鉴于与现代工业工厂相关的复杂性日益增加,对此的需求变得更加紧迫。本文讨论了一种使用支持​​向量法从数据中提取非线性特征的过程监控方法,并将其应用于工业液-液萃取塔的诊断监控。

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