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Forecasting in Industrial Process Control: A Hidden Markov Model Approach * * This work was supported by an NSERC CRD project.

机译:工业过程控制中的预测:隐马尔可夫模型方法 * * 此工作受到NSERC CRD项目的支持。

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The forecasting of information in industrial process control can assist in predicting the occurrence of future events. This is useful when such events are undesired and may lead to costly shutdowns of an industrial process. Thus, the forecasting of information can assist in determining preparatory measures to be taken to mitigate or prevent the occurrence of undesired events. This paper addresses the forecasting of information in industrial process control using a hidden Markov model approach. It defines three types of information signals from data of industrial process control (namely, low-dynamic, fast-dynamic, and multi-level switching). The paper discusses the complete methodology for forecasting of the signals; namely, pre-processing of the data, detection of the explanatory variables, determining the order of the forecasting model, implementation of the forecasting model, and generation and validation of the forecasted information. In addition, the paper implements the proposed methodology for two different practical systems with adjusting the parameters of the prediction model to demonstrate its applicability.
机译:工业过程控制中的信息预测可以帮助预测未来事件的发生。当不希望发生此类事件时,这很有用,并且可能导致工业过程的高成本停机。因此,信息的预测可以帮助确定要采取的准备措施,以减轻或防止不良事件的发生。本文使用隐马尔可夫模型方法处理工业过程控制中的信息预测。它从工业过程控制数据定义了三种类型的信息信号(即低动态,快速动态和多级切换)。本文讨论了信号预测的完整方法。即,数据的预处理,解释变量的检测,确定预测模型的顺序,实施预测模型以及生成和验证预测信息。此外,本文还通过调整预测模型的参数来实现针对两个不同实际系统的建议方法,以证明其适用性。

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