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Residential Electricity Demand: Peaks, Sequences of Activities and Markov chains (REDPeAk)

Reference Number
EP/P000630/1
Title
Residential Electricity Demand: Peaks, Sequences of Activities and Markov chains (REDPeAk)
Status
Completed
Energy Categories
Other Cross-Cutting Technologies or Research(Energy Models)
Other Power and Storage Technologies(Electricity transmission and distribution)
Other Cross-Cutting Technologies or Research(Other Supporting Data)
Research Types
Basic and strategic applied research
Science and Technology Fields
PHYSICAL SCIENCES AND MATHEMATICS (Applied Mathematics)
ENGINEERING AND TECHNOLOGY (Electrical and Electronic Engineering)
UKERC Cross Cutting Characterisation
Not Cross-cutting
Systems Analysis related to energy R&D (Energy modelling)
Principal Investigator
Dr J Torriti
Construction Management and Engineering
University of Reading
Award Type
Standard
Funding Source
EPSRC
Start Date
01 February 2017
End Date
01 July 2022
Duration
65 months
Total Grant Value
£615,782
Industrial Sectors
Energy
Region
South East
Programme
Energy : Energy
Investigators
Principal Investigator
Dr J Torriti, Construction Management and Engineering, University of Reading
Industrial Collaborator
Project Contact, Association for Decentralised Energy
Project Contact, E.ON UK (formerly PowerGen)
Project Contact, University of Surrey
Project Contact, Bloomberg New Energy Finance
Project Contact, Kiwi Power Limited
Project Contact, Second Law
Project Contact, Havant and South Downs College
Web Site
Objectives
Abstract
Peak electricity demand is becoming an increasingly significant problem for UK networks as it causes imbalances between demand and supply with negative impacts on system costs and the environment. The residential sector is responsible for about one third of overall electricity demand (DECC, 2013). During peak demand, electricity prices in wholesale markets could fluctuate from less than 0.04 Euros/kWh to as much as 0.35 Euros/kWh (Torriti, 2015). In the future the peak problem is expected to worsen due to the integration of intermittent renewables in the supply mix as well as high penetration of electric vehicles and electric heat pumps. Understanding what constitutes peaks and identifying areas of effective load shifting intervention becomes vital to the balancing of demand and supply of electricity. Whilst there is information about the aggregate level of consumption of electricity, little is known about residential peak demand and what levels of flexibility might be available. REDPeak will fill this gap.The overall aim of REDPeak is to analyse the variation in sequences of activities taking place at times of peak electricity demand with a view to identify clusters of users which might provide flexibility for peak shifting intervention.The project will analyse 10-minute resolution time use activity data from the UK Office for National Statistics Time Use Survey with a view to derive information about occupancy and synchronisation of activities. Markov chains will be used to model load profiles in combination with appliance-specific parameter data. Since Markov chains have proven effective at generating electricity load profiles except for peak times, REDPeak will develop Hybrid Monte Carlo modelling to account for demand moving in larger steps during peak periods. Sequence analysis will be used to mine activities at periods of peak electricity demand. REDPeak will cluster respondents according to sequences of activities and analyse to what extent appliance-specific control variables explain activities at specific times of the day. Three datasets will be used for direct validation between metered data and time use data. Findings on sequence analysis will feed into algorithms for automated demand management or Demand Side Response.
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Added to Database
08/02/19