Multiscale Modelling to maximise Demand Side Management (Part 2)
Lead Research Organisation:
Heriot-Watt University
Department Name: Sch of Engineering and Physical Science
Abstract
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Organisations
- Heriot-Watt University, United Kingdom (Lead Research Organisation)
- Areva, United Kingdom (Project Partner)
- E ON Central Networks plc, United Kingdom (Project Partner)
- International Union for Electricity Appl, France (Project Partner)
- Scottish and Southern Energy SSE plc (Project Partner)
- Flexitricity Limited, United Kingdom (Project Partner)
- Scottish Power Energy Networks, United Kingdom (Project Partner)
- Wilson Energy, United Kingdom (Project Partner)
People |
ORCID iD |
Stephen McLaughlin (Principal Investigator) |
Publications

Altmann Y
(2016)
Robust Bayesian target detection algorithm for depth imaging from sparse single-photon data
in IEEE Transactions on Computational Imaging

Collin A
(2014)
Development of Low-Voltage Load Models for the Residential Load Sector
in IEEE Transactions on Power Systems

Stephen McLaughlin (Author)
(2011)
Multi-scale Dynamic Modeling to Maximize Demand Side Management


Tsagarakis G
(2013)
A Statistical Survey of the UK Residential Sector Electrical Loads
in International Journal of Emerging Electric Power Systems

Tsagarakis G
(2016)
Assessment of the Cost and Environmental Impact of Residential Demand-Side Management
in IEEE Transactions on Industry Applications
Related Projects
Project Reference | Relationship | Related To | Start | End | Award Value |
---|---|---|---|---|---|
EP/I000585/1 | 01/11/2010 | 01/10/2011 | £389,490 | ||
EP/I000585/2 | Transfer | EP/I000585/1 | 01/10/2011 | 30/04/2014 | £288,994 |
Description | There has been considerable interest in developing demand side management for domestic suppliers, put simply, enable power suppliers to determine when you might switch on and off your domestic appliances to ensure that the smart grid can deliver energy more efficiently. Our work analysed exactly how you might determine the benefits in an objective manner by determining the improvements in electrical power that might accrue. |
Exploitation Route | These have been taken forward in a subsequent EU grant exploring the use of smart grid technologies |
Sectors | Energy |