Intermittent Oscillation Diagnosis in a Control Loop Using Extreme Gradient Boosting

Dana Fatadilla Rabba, Awang N. I. Wardana, Nazrul Effendy
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引用次数: 1

Abstract

The control loop in the industry is a component that must be maintained because it will determine the plant's performance. Most industrial controllers experience oscillations with various causes, such as noise, oscillation, backlash, dead band, hysteresis, random variation, and poor controller tuning. The oscillation diagnosis system, which can understand the oscillation type characteristics, is built based on machine learning because it is dynamic and not based on specific rules. This study developed an online oscillation diagnosis program using the extreme gradient boosting (XGBoost) method. The data was obtained through the simulation of the Tennessee Eastman process. The data is segmented on specific window sizes, and then time series feature extraction is performed. The extraction results are then used to build an XGBoost model capable of performing oscillation diagnosis tasks. There are seven types of oscillations tested in this study. The model that has been made is implemented online with the help of sliding windows. The results show that the XGBoost model performs best when the data window size is 100, with the accuracy performance and the F1 score of the model in classifying the type of oscillation being 0.918 and 0.905, respectively. The model can detect the type of oscillation with an average diagnosis time of 712 seconds on diagnostic tests.
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基于极值梯度增强的控制回路间歇振荡诊断
工业中的控制回路是必须维护的部件,因为它将决定工厂的性能。大多数工业控制器都会经历各种原因的振荡,如噪声、振荡、齿隙、死区、滞后、随机变化和控制器调谐不良。能够理解振荡类型特征的振荡诊断系统是基于机器学习构建的,因为它是动态的,而不是基于特定规则。本研究利用极限梯度升压(XGBoost)方法开发了一个在线振荡诊断程序。数据是通过模拟田纳西-伊斯曼过程获得的。根据特定的窗口大小对数据进行分割,然后执行时间序列特征提取。提取结果然后用于建立能够执行振荡诊断任务的XGBoost模型。本研究中测试了七种类型的振荡。已经制作的模型是在滑动窗口的帮助下在线实现的。结果表明,XGBoost模型在数据窗口大小为100时表现最好,模型在对振荡类型进行分类时的精度性能和F1得分分别为0.918和0.905。该模型可以在诊断测试中检测振荡类型,平均诊断时间为712秒。
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