The Nationwide Technical College of Athens (NTUA), one of many DEDALUS scientific companions, has accomplished a examine on grouping residential electrical energy shoppers, primarily based on their historic electrical energy consumption, to create extra focused demand-response packages.
This grouping shall be utilized in virtually each DEDALUS service on the finish of the day, making the companies extra focused per group. The examine was printed within the journal Utilized Vitality.
Particularly, the paper introduces a machine learning-based framework to optimize demand response packages. Utilizing information from practically 5,000 households in London, 4 clustering algorithms—Okay-means, Okay-medoids, Hierarchical Agglomerative Clustering, and DBSCAN—had been evaluated to establish teams with related consumption patterns.
The issue was reframed as a probabilistic classification process, leveraging Explainable AI to enhance mannequin interpretability. The optimum variety of clusters was discovered to be seven, though two clusters, comprising round 10% of the info, exhibited excessive inside dissimilarity and had been excluded from additional consideration.
This framework affords a scalable answer for utility firms to boost the focusing on and effectiveness of demand response initiatives.
“Our research aims to tackle a key challenge in energy management: efficiently identifying and classifying household energy consumption patterns to enhance the implementation of Demand Response programs”, stated Vasilis Michalakopoulos—one of many paper’s authors.
“Optimizing family power use is more and more vital, each for selling environmental sustainability and for enabling utility firms to ship extra focused and efficient DR options.
“This work aligns with the overarching objectives of the DEDALUS project, which seeks to expand residential participation in DR programs across Europe by bringing together key stakeholders and advancing smarter energy management strategies.”
Extra data:
Vasilis Michalakopoulos et al, A machine learning-based framework for clustering residential electrical energy load profiles to boost demand response packages, Utilized Vitality (2024). DOI: 10.1016/j.apenergy.2024.122943
iCube Programme
Quotation:
Machine studying framework boosts residential electrical energy clustering for demand-response (2024, October 4)
retrieved 4 October 2024
from https://techxplore.com/information/2024-10-machine-framework-boosts-residential-electricity.html
This doc is topic to copyright. Aside from any honest dealing for the aim of personal examine or analysis, no
half could also be reproduced with out the written permission. The content material is supplied for data functions solely.