An Empirical Investigation of V-I Trajectory based Load Signatures for Non-Intrusive Load Monitoring
Taha Hassan, Fahad Javed, Naveed Arshad

TL;DR
This paper investigates V-I trajectory-based load signatures for non-intrusive load monitoring, demonstrating their effectiveness and robustness in appliance classification using a benchmark dataset and novel model selection strategies.
Contribution
It introduces V-I trajectory load signatures for improved appliance classification and applies differential evolution for optimal load model selection in energy disaggregation.
Findings
V-I trajectory features improve prediction accuracy.
Wave-shape features are effective for load classification.
Proposed methods are robust against noise and load similarity.
Abstract
Choice of load signature or feature space is one of the most fundamental design choices for non-intrusive load monitoring or energy disaggregation problem. Electrical power quantities, harmonic load characteristics, canonical transient and steady-state waveforms are some of the typical choices of load signature or load signature basis for current research addressing appliance classification and prediction. This paper expands and evaluates appliance load signatures based on V-I trajectory - the mutual locus of instantaneous voltage and current waveforms - for precision and robustness of prediction in classification algorithms used to disaggregate residential overall energy use and predict constituent appliance profiles. We also demonstrate the use of variants of differential evolution as a novel strategy for selection of optimal load models in context of energy disaggregation. A publicly…
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