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Recursive cointegration analytics for adaptive monitoring of nonstationary industrial processes with both static and dynamic variations

机译:递归协整分析,用于静态和动态变化的非视野工业过程的自适应监测

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摘要

Conventional adaptive monitoring strategies detect anomalies in time-varying process by frequently updating models, which requires high computation complexity and may falsely include abnormal samples. Cointegration analysis (CA) based monitoring strategies can be implemented with less model updating since they are developed based on the extracted long-term equilibrium relationship. However, once the cointegration relationship changes, the previous CA model cannot accurately reflect the operation status of future nonstationary process. In this study, an adaptive monitoring scheme based on recursive CA is proposed to address the aforementioned issues for nonstationary processes. First, a recursive strategy is developed for CA to effectively update the monitoring model. After that, three monitoring statistics are developed to reflect the operation status of the industrial process with representation of both static deviation and dynamic fluctuation. Finally, an adaptive monitoring strategy is constructed based on the proposed recursive CA using the aforementioned monitoring statistics. Experimental results of two real industrial processes show that the adaptive monitoring strategy based on recursive CA can effectively adapt to normal process changes without frequent model updating. (C) 2020 Elsevier Ltd. All rights reserved.
机译:传统的自适应监测策略通过经常更新模型来检测时变处理的异常,这需要高计算复杂性并且可能错误地包括异常样本。基于协整分析(CA)的监测策略可以利用较少的模型更新实施,因为它们是基于提取的长期平衡关系开发的。但是,一旦协整的关系发生变化,先前的CA模型就无法准确反映未来的非视野的操作状态。在本研究中,提出了一种基于递归CA的自适应监测方案,以解决非间断过程的上述问题。首先,为CA开发了递归策略,以有效更新监控模型。之后,开发了三个监测统计,以反映工业过程的运行状态,具有静态偏差和动态波动的表示。最后,使用上述监测统计数据基于所提出的递归CA构建自适应监测策略。两个实际工业过程的实验结果表明,基于递归CA的自适应监测策略可以有效适应正常过程变化,而无需频繁的模型更新。 (c)2020 elestvier有限公司保留所有权利。

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