UDDT: An Unsupervised Drift Detection Method for Industrial Time Series Data

被引:0
作者
Maduskar, Deepti [1 ]
Sharma, Divyasheel [1 ]
Chandrika, K. R. [1 ]
Borrison, Reuben [2 ]
Manca, Gianluca [2 ]
Dix, Marcel [2 ]
机构
[1] ABB Corp Res Ctr, Ind Software Res, Bangalore, Karnataka, India
[2] ABB Corp Res Ctr, Ind AI, Ladenburg, Germany
来源
2023 IEEE 2ND INDUSTRIAL ELECTRONICS SOCIETY ANNUAL ON-LINE CONFERENCE, ONCON | 2023年
关键词
Drift Detection; Distribution Shift; Time Series; Inter-dependence; Stationarity; Correlation Structure; Noise;
D O I
10.1109/ONCON60463.2023.10431133
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Industrial ML models are primarily data-driven. Therefore, one of the main focus for monitoring the model should be towards identifying the drifts in the data that might affect the performance of the model. The traditional drift detecting methods are usually based on some assumptions related to the underlying data such as no inter-dependence. However industrial sensor data typically consists of time series data, which is collected at regular intervals. Therefore, detecting drift in dependent data where the current readings depend on the previously registered readings demands a different approach. Existing solutions require either the ground truth, a fixed size, or the underlying model details. We propose an Unsupervised Drift Detection method for industrial Time series data or UDDT, a generic approach with no such pre-requisites. In our approach, we can check whether two series belong to the same model. Apart from detecting the drift in the two series, it can also provide the rationale behind the observed drift, i.e., whether the drift is due to a difference in stationarity, correlation structures, or noise distributions. We evaluate the UDDT on two datasets to demonstrate its correctness and the trust regions under various circumstances.
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页数:6
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