Targeted demand response for flexible energy communities using clustering techniques
Sotiris Pelekis, Angelos Pipergias, Evangelos Karakolis, Spiros, Mouzakitis, Francesca Santori, Mohammad Ghoreishi, Dimitris Askounis

TL;DR
This study develops clustering-based demand response strategies for energy communities, optimizing consumption patterns to reduce grid stress and peak demand, using machine learning algorithms evaluated with a novel performance metric.
Contribution
It introduces a clustering approach with a new peak performance score metric to effectively segment prosumers for tailored demand response programs in energy communities.
Findings
k-means with dynamic time warping and 14 clusters performs best
Clustering effectively identifies prosumer segments for demand response
Method is robust to limited and low-quality data
Abstract
The present study proposes clustering techniques for designing demand response (DR) programs for commercial and residential prosumers. The goal is to alter the consumption behavior of the prosumers within a distributed energy community in Italy. This aggregation aims to: a) minimize the reverse power flow at the primary substation, occuring when generation from solar panels in the local grid exceeds consumption, and b) shift the system wide peak demand, that typically occurs during late afternoon. Regarding the clustering stage, we consider daily prosumer load profiles and divide them across the extracted clusters. Three popular machine learning algorithms are employed, namely k-means, k-medoids and agglomerative clustering. We evaluate the methods using multiple metrics including a novel metric proposed within this study, namely peak performance score (PPS). The k-means algorithm with…
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Taxonomy
TopicsSmart Grid Energy Management · Energy Load and Power Forecasting · Electric Vehicles and Infrastructure
