Alarm prediction in industrial machines using autoregressive LS-SVM models

R. Langone, C. Alzate, A. Bey-Temsamani, J. Suykens
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引用次数: 7

Abstract

In industrial machines different alarms are embedded in machines controllers. They make use of sensors and machine states to indicate to end-users various information (e.g. diagnostics or need of maintenance) or to put machines in a specific mode (e.g. shut-down when thermal protection is activated). More specifically, the alarms are often triggered based on comparing sensors data to a threshold defined in the controllers software. In batch production machines, triggering an alarm (e.g. thermal protection) in the middle of a batch production is crucial for the quality of the produced batch and results into a high production loss. This situation can be avoided if the settings of the production machine (e.g. production speed) is adjusted accordingly based on the temperature monitoring. Therefore, predicting a temperature alarm and adjusting the production speed to avoid triggering the alarm seems logical. In this paper we show the effectiveness of Least Squares Support Vector Machines (LS-SVMs) in predicting the evolution of the temperature in a steel production machine and, as a consequence, possible alarms due to overheating. Firstly, in an offline fashion, we develop a nonlinear autoregressive (NAR) model, where a systematic model selection procedure allows to carefully tune the model parameters. Afterwards, the NAR model is used online to forecast the future temperature trend. Finally, a classifier which uses as input the outcomes of the NAR model allows to foresee future alarms.
基于自回归LS-SVM模型的工业机械报警预测
在工业机器中,不同的报警器被嵌入到机器控制器中。它们利用传感器和机器状态向最终用户指示各种信息(例如诊断或需要维护)或将机器置于特定模式(例如在热保护激活时关闭)。更具体地说,警报通常是基于将传感器数据与控制器软件中定义的阈值进行比较而触发的。在批量生产机器中,在批量生产过程中触发警报(例如热保护)对所生产批次的质量至关重要,并导致高生产损失。如果根据温度监测对生产机器的设置(如生产速度)进行相应的调整,就可以避免这种情况。因此,预测温度警报并调整生产速度以避免触发警报似乎是合乎逻辑的。在本文中,我们展示了最小二乘支持向量机(ls - svm)在预测钢铁生产机器温度演变方面的有效性,以及由于过热而可能产生的警报。首先,在离线方式下,我们开发了一个非线性自回归(NAR)模型,其中系统的模型选择过程允许仔细调整模型参数。然后利用NAR模型在线预测了未来的温度趋势。最后,分类器使用NAR模型的结果作为输入,可以预测未来的警报。
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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