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Valuing Demand Response Controllability via Chance Constrained Programming

Authors :
William D'haeseleer
Erik Delarue
Kenneth Bruninx
Yury Dvorkin
Daniel S. Kirschen
Source :
IEEE Transactions on Sustainable Energy. 9:178-187
Publication Year :
2018
Publisher :
Institute of Electrical and Electronics Engineers (IEEE), 2018.

Abstract

© 2017 IEEE. Controllable loads can modify their electricity consumption in response to signals from a system operator, providing some of the flexibility needed to compensate for the stochasticity of electricity generated from renewable energy sources (RES) and other loads. However, unlike traditional flexibility providers, e.g., conventional generators and energy storage systems, demand response (DR) resources are not fully controlled by the system operator and their availability is limited by user-defined comfort constraints. This paper describes a deterministic unit commitment model with probabilistic reserve constraints that optimizes day-ahead power plant scheduling in the presence of stochastic RES-based electricity generation and DR resources that are only partially controllable, in this case residential electric heating systems. This model is used to evaluate the operating cost savings that can be attained with these DR resources on amodel inspired by the Belgian power system. ispartof: IEEE Transactions on Sustainable Energy vol:9 issue:99 pages:1-10 status: published

Details

ISSN :
19493037 and 19493029
Volume :
9
Database :
OpenAIRE
Journal :
IEEE Transactions on Sustainable Energy
Accession number :
edsair.doi.dedup.....2241f445129ab4a9f586af31658045b8