A machine learning-based framework for clustering residential electricity load profiles to enhance demand response programs
National Technical University of Athens
Abstract
Load shapes derived from smart meter data are frequently employed to analyze daily energy consumption patterns, particularly in the context of applications like Demand Response (DR). Nevertheless, one of the most important challenges to this endeavor lies in identifying the most suitable consumer clusters with similar consumption behaviors. In this paper, we present a novel machine learning based framework in order to achieve optimal load profiling through a real case study, utilizing data from almost 5000 households in London. Four widely used clustering algorithms are applied specifically K-means, K-medoids, Hierarchical Agglomerative Clustering and Density-based Spatial Clustering. An empirical analysis as…
Citation impact
- FWCI
- 26.62
- Percentile
- 100%
- References
- 58
Authors
6- VMVasilis MichalakopoulosCorresponding
National Technical University of Athens
- ESElissaios Sarmas
National Technical University of Athens
- IPIoannis Papias
National Technical University of Athens
- PSPanagiotis Skaloumpakas
National Technical University of Athens
- VMVangelis Marinakis
National Technical University of Athens
Topics & keywords
- Cluster analysis
- Computer science
- Interpretability
- Hierarchical clustering
- Demand response
- Scalability
- Data mining
- Machine learning
- Affordable and clean energy