Abstract

Demand response services and energy communities are set to be vital in bringing citizens to the core of the energy transition. The success of load flexibility integration in the electricity market, provided by demand response services, will depend on a redesign or adaptation of the current regulatory framework, which so far only reaches large industrial electricity users. However, due to the high contribution of the residential sector to electricity consumption, there is huge potential when considering the aggregated load flexibility of this sector. Nevertheless, challenges remain in load flexibility estimation and attaining data integrity while respecting consumer privacy. This study presents a methodology to estimate such flexibility by integrating a non-intrusive load monitoring approach to load disaggregation algorithms in order to train a machine-learning model. We then apply a categorization of loads and develop flexibility criteria, targeting each load flexibility amplitude with a corresponding time. Two datasets, Residential Energy Disaggregation Dataset (REDD) and Refit, are used to simulate the flexibility for a specific household, applying it to a grid balancing event request. Two algorithms are used for load disaggregation, Combinatorial Optimization, and a Factorial Hidden Markov model, and the U.K. demand response Short Term Operating Reserve (STOR) program is used for market integration. Results show a maximum flexibility power of 200–245 W and 180–500 W for the REDD and Refit datasets, respectively. The accuracy metrics of the flexibility models are presented, and results are discussed considering market barriers.

Highlights

  • Balancing power in the grid is a progressively challenging task, both for long-term and short-term balance

  • Two algorithms are used for load disaggregation, Combinatorial Optimization, and a Factorial Hidden Markov model, and the U.K. demand response Short Term Operating Reserve (STOR) program is used for market integration

  • Demand response (DR) is a promising method for balancing supply and demand in power systems, with a high share of variable renewable energy generation offering flexibility to the market. In many countries such as the United Kingdom, France, and northern European Union member states, proper regulatory frameworks have been developed or partially implemented, meaning demand response services are already available for large units as industries or commercial clients

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Summary

Introduction

Balancing power in the grid is a progressively challenging task, both for long-term and short-term balance. The ever-increasing contribution of renewable energy generation coupled with the associated variability and unpredictability of supply is expected to further complicate this task by increasing the number and scale of sharp fluctuations in demand/supply mismatch. Demand response (DR) is a promising method for balancing supply and demand in power systems, with a high share of variable renewable energy generation offering flexibility to the market. In many countries such as the United Kingdom, France, and northern European Union member states, proper regulatory frameworks have been developed or partially implemented, meaning demand response services are already available for large units as industries or commercial clients. The first requires active participation of end users responding (either automatically or by giving permission to a third party) to requests from

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