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Sequential Clustering-Based Event Detection for Non-Intrusive Load Monitoring

Authors

Karim Said Barsim and Bin Yang, University of Stuttgart, Germany

Abstract

The problem of change-point detection has been well studied and adopted in many signal processing applications. In such applications, the informative segments of the signal are the stationary ones before and after the change-point. However, for some novel signal processing and machine learning applications such as Non-Intrusive Load Monitoring (NILM), the information contained in the non-stationary transient intervals is of equal or even more importance to the recognition process. In this paper, we introduce a novel clustering-based sequential detection of abrupt changes in an aggregate electricity consumption profile with accurate decomposition of the input signal into stationary and non-stationary segments. We also introduce various event models in the context of clustering analysis. The proposed algorithm is applied to building-level energy profiles with promising results for the residential BLUED power dataset.

Keywords

Event detection, change-interval detection, density-based clustering, DBSCAN, non-intrusive load monitoring, NILM, BLUED, energy disaggregation

Full Text  Volume 6, Number 1