Appliance identification via combinatorial fusion analysis-assisted Bayesian-optimized classifier
IEEE Transactions on Smart Grid, 2023•ieeexplore.ieee.org
Non-Intrusive Load Monitoring (NILM) aids in estimating the individual energy consumed by
different appliances using aggregate signals measured at point of common connection. This
paper explores various unexplored aspects concerning load classification in NILM. Rich
feature sets are extracted from load signatures using auto-correlogram, Variational Mode
Decomposition (VMD), and Wavelet Packet Tree (WPT) decomposition. Typically, previous
works employ a single Feature Selection (FS) technique to earmark the relevant features for …
different appliances using aggregate signals measured at point of common connection. This
paper explores various unexplored aspects concerning load classification in NILM. Rich
feature sets are extracted from load signatures using auto-correlogram, Variational Mode
Decomposition (VMD), and Wavelet Packet Tree (WPT) decomposition. Typically, previous
works employ a single Feature Selection (FS) technique to earmark the relevant features for …
Non-Intrusive Load Monitoring (NILM) aids in estimating the individual energy consumed by different appliances using aggregate signals measured at point of common connection. This paper explores various unexplored aspects concerning load classification in NILM. Rich feature sets are extracted from load signatures using auto-correlogram, Variational Mode Decomposition (VMD), and Wavelet Packet Tree (WPT) decomposition. Typically, previous works employ a single Feature Selection (FS) technique to earmark the relevant features for improved performance of NILM. However, each FS technique behaves uniquely, and the effects of using different FS techniques or their combinations have yet to be explored for NILM. Hence, Combinatorial Fusion Analysis (CFA), which surpasses the performance of a single FS technique by considering an optimal combination of multiple FS techniques, is used in this paper. The final selected features are fused and provided to a classifier. Rather than manually tuning or performing an exhaustive search for setting the classifier’s hyper-parameters, as prevalent in previous works, the present work utilizes Bayesian Optimization (BO) comprising surrogate and acquisition functions. The proposed work’s efficacy is validated on publicly available data-sets in a host computer and an embedded device, namely, R-Pi, via comparison with previous works.
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