Multi-oscillations Detection for Process Variables Based on K-Nearest Neighbor

Muhammad Amrullah, Awang Wardana, Agus Arif
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Abstract

In the process industry, a control system is important to ensure the process runs smoothly and keeps the product under predetermined specifications. Oscillations in process variables can affect the decreasing profitability of the plant. It is important to detect the oscillation before it becomes a problem for profitability. Various methods have been developed; however, the methods still need to improve when implemented online for multi-oscillation. Therefore, this research uses a machine learning-based method with the K-Nearest Neighbour (KNN) algorithm to detect multi-oscillation in the control loop, and the detection methods are made to carry out online detection from real plants. The developed method simulated the Tennessee Eastman Process (TEP), and it used Python programming to create a KNN model and extract time series data into the frequency domain. The Message Queuing Telemetry Transport (MQTT) communication protocol has been used to implement as an online system. The result of the implementation showed that two KNN models were made with different window size variations to get the best performance model. The best model for multi-oscillation detection was obtained with an F1 score of 76% for detection.
基于k近邻的过程变量多振荡检测
在过程工业中,控制系统对于确保过程顺利运行和保持产品符合预定规格非常重要。过程变量的波动会影响工厂不断下降的盈利能力。重要的是要在波动成为盈利能力的问题之前发现它。已经开发了各种方法;然而,在多振荡的在线应用中,这些方法仍有待改进。因此,本研究采用基于机器学习的方法,结合k近邻(KNN)算法检测控制回路中的多重振荡,并制定检测方法,从真实植物进行在线检测。该方法模拟田纳西伊士曼过程(Tennessee Eastman Process, TEP),利用Python编程建立KNN模型,并将时间序列数据提取到频域。使用消息队列遥测传输(MQTT)通信协议作为在线系统来实现。实现结果表明,采用不同的窗口大小变化建立了两个KNN模型,以获得最佳的性能模型。对多振荡检测的最佳模型,检测F1得分为76%。
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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