Álvaro Michelena, Francisco Zayas-Gato, Esteban Jove, J. Casteleiro-Roca, Héctor Quintián, Oscar Fontenla-Romero, José Luis Calvo-Rolle
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引用次数: 0
摘要
本研究介绍了一种新型自适应异常检测方法,用于优化非线性和时变系统的性能。该建议将基于中心点的方法与实时识别技术递归最小二乘法(Recursive Least Squares)相结合。为了发现异常,该方法将当前的系统动态与在给定设定点的早期状态下发现的动态的平均值(中心点)进行比较。如果动态差异超过确定的阈值,系统就会将其标记为异常。为了验证该建议,我们使用了从液位控制设备运行中获得的两个不同数据集,并人为地添加了异常值。结果表明,该方法的性能令人满意,尤其是在噪音较低的过程中。
Novel adaptive approach for anomaly detection in nonlinear and time-varying industrial systems
The present research describes a novel adaptive anomaly detection method to optimize the performance of nonlinear and time-varying systems. The proposal integrates a centroid-based approach with the real-time identification technique Recursive Least Squares. In order to find anomalies, the approach compares the present system dynamics with the average (centroid) of the dynamics found in earlier states for a given setpoint. The system labels the dynamics difference as an anomaly if it rises over a determinate threshold. To validate the proposal, two different datasets obtained from a level control plant operation have been used, to which anomalies have been artificially added. The results shown have determined a satisfactory performance of the method, especially in those processes with low noise.