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An Empirical Investigation of V-I Trajectory based Load Signatures for Non-Intrusive Load Monitoring (1305.0596v1)

Published 2 May 2013 in cs.CE

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 available benchmark dataset REDD is employed for evaluation purposes. Our experimental evaluations indicate that these load signatures, in conjunction with a number of popular classification algorithms, offer better or generally comparable overall precision of prediction, robustness and reliability against dynamic, noisy and highly similar load signatures with reference to electrical power quantities and harmonic content. Herein, wave-shape features are found to be an effective new basis of classification and prediction for semi-automated energy disaggregation and monitoring.

Citations (268)

Summary

  • The paper investigates V-I trajectory wave-shape features, demonstrating their effectiveness in classifying appliance signatures for Non-Intrusive Load Monitoring.
  • Empirical evaluations show wave-shape features perform comparably or better than traditional power metrics and harmonic content features, requiring fewer computational resources.
  • The findings propose wave-shape features as viable for enhancing automated NILM systems and suggest their potential for smart grid applications.

Empirical Evaluation of Wave-Shape Features for Non-Intrusive Load Monitoring

The paper by T. Hassan, F. Javed, and N. Arshad explores the application of wave-shape (WS) features derived from the V-I trajectory of instantaneous voltage and current waveforms for enhancing Non-Intrusive Load Monitoring (NILM) systems. The primary focus of this research is to evaluate the efficacy and robustness of these features in classifying and predicting appliance signatures within NILM frameworks. Utilizing the REDD dataset as a benchmark, the authors rely on established classification algorithms including artificial feedforward neural networks (ANN), a hybrid ANN combined with evolutionary algorithms (ANN + EA), support vector machines (SVM), and AdaBoost to assess performance.

Research Objectives and Methodology

The paper undertakes a comparative analysis of wave-shape features against traditional power metrics (PQ) and harmonic content (HAR) features. The authors justify their reliance on wave-shape features by outlining their fundamental correlation to appliance operational characteristics and their potential to deal with noise, similarity among appliances, and dynamic load shifts.

Key methodologies include:

  1. Feature Extraction: Utilizing WS features drawn from the mutual trajectory of V-I waveforms to distinguish between appliance signatures based on load taxonomy.
  2. Classification Algorithms: Implementing multiple classification algorithms to analyze the predictive accuracy of WS features versus PQ and HAR features.
  3. Optimization Strategy: Employing differential evolution techniques, particularly an enhanced variant (EDE), for optimizing model parameters to achieve optimal classification precision.
  4. Monte Carlo Simulations: Conducting extensive simulations to evaluate classification precision across varying operational conditions, including noise variations and dynamic load scenarios.

Numerical Results

Through empirical evaluations, wave-shape features demonstrate superior or equivalent predictive capabilities compared to traditional benchmarks. Notably, WS features require fewer dimension parameters than HAR, achieving competitive predictive accuracy with fewer computational resources. This performance trait accentuates their resilience to high-noise environments and dynamic, varying load patterns. The results indicate a general robustness of WS features across the tested algorithms, with precision of prediction comparable to or better than other methods in several instances.

Implications and Future Directions

The implications extend beyond mere academic evaluation; the paper proposes wave-shape features as viable candidates for enhancing semi-automated and fully automated NILM systems. The differential evolution approach adopted for parameter tuning signifies a promising avenue for further research on optimizing NILM system components with metaheuristic methodologies. In broader applications, these advancements suggest potential for deployment within smart grids and sophisticated energy management systems, enhancing load profiling, anomaly detection, and energy efficiency.

Future research could integrate these foundational results with unsupervised and online learning techniques, enhancing NILM systems' adaptability to evolving appliance landscapes and unforeseen electrical interference. The exploration of WS features in real-time applications alongside scalable service platforms would further cement their practical value in energy management and monitoring.

This paper's critical evaluation of WS features as effective classifiers sets a precedent for subsequent exploration in the field of NILM, emphasizing the need for continued refinement of analytical models in adapting to increasingly complex load environments.