Abstract

Recent years have seen an increasing interest in Demand Response (DR), as a means to satisfy the growing flexibility needs of modern power grids. This increased flexibility is required due to the growing proportion of intermittent renewable energy generation into the energy mix, and increasing complexity in demand profiles from the electrification of transport networks. Currently, less than 2% of the global potential for demand-side flexibility is currently utilised, but a more widespread adoption of residential consumers as flexibility resources can lead to substantially higher utilisation of the demand-side flexibility potential. In order to achieve this target, acquiring a better understanding of how residential DR participants respond in DR events is essential – and recent advances in novel machine learning and statistical AI provide promising tools to address this challenge. This study provides an in-depth analysis of how residential customers have responded in incentive-based DR, utilising household-related data from a large-scale, real-world trial: the Smart Grid, Smart City (SGSC) project. Using a number of different machine learning approaches, we model the relationship between a household’s response and household-related features. Moreover, we examine the potential effects of households’ features on the residential response behaviour, and highlight a number of key insights which raise questions about the reported level of consumers’ engagement in DR schemes, and the motivation for different customers’ response level. Finally, we explore the temporal structure of the response – and although we found no supporting evidence of DR responders learning over time for the available data from this trial, the proposed methodologies could be used for longer-term longitudinal DR studies. Our study concludes with a broader discussion of our findings and potential paths for future research in this emerging area.

Highlights

  • The increasing proportion of renewable energy resources and the growing adoption of new variable load types (e.g. Electric Vehicles) in the energy mix poses new challenges to electricity grids [1]

  • This study provides an in-depth analysis of how residential customers have responded in incentive-based demand response (DR), utilising household-related data from a large-scale, real-world trial: the Smart Grid, Smart City (SGSC) project

  • Our work provides new and complimentary insights, which can be used to augment prior research and brings a more complete picture of demand response behaviour, and the drivers behind it

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Summary

Introduction

The increasing proportion of renewable energy resources and the growing adoption of new variable load types (e.g. Electric Vehicles) in the energy mix poses new challenges to electricity grids [1]. The predominant sources of demand-side flexibility are industrial thermal loads and processes, thermal comfort in buildings (both residential and nonresidential), charging of electric vehicles and on-site generation and energy storage [3]. This demand-side flexibility can be offered by Virtual Power Plants (VPPs), demand response providers and prosumers [2]. The focus of this work, within the larger SGSC trial, is on the incentive-based dynamic peak rebate (DPR) scheme provided by the network trial partner In this programme, participating customers were encouraged to reduce their electricity consumption by receiving rebate incentives. All the participants in this DR scheme were residential/domestic customers

Contributions and study outline
Data-driven approaches for demand response behaviour
Overview of key data-driven techniques
Related work on data-driven methods for DR response behaviour
Individual datasets exploration and analysis
Temporal structure analysis
Modelling of demand response behaviour
Findings
Conclusion and further work
Full Text
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