Title :
A Novel Demand Response Model with an Application for a Virtual Power Plant
Author :
Mnatsakanyan, Ashot ; Kennedy, Scott W.
Author_Institution :
Masdar Inst. of Sci. & Technol., Masdar, United Arab Emirates
Abstract :
In modern power systems and electricity markets, demand response (DR) programs play an important role enabling the mitigation of critical load periods or price-peaking scenarios, thereby improving system reliability. Price fluctuations, in forward or real-time markets, can be an effective price-based DR mechanism for curtailing or shifting load. However, using dynamic pricing to achieve a desired load profile requires both an accurate demand forecast and knowledge of the price elasticity of demand, which is notoriously difficult to estimate. The limited accuracy of these parameter estimates is the main source of uncertainty limiting appropriate DR implementation. In this paper, we present a novel DR scheme that avoids the need to predict the price elasticity of demand or demand forecast, yet still delivers a significant DR. This is done based on the consumers´ submissions of candidate load profiles ranked in the preference order. The load aggregator then performs the final selection of individual load profiles subject to the total system cost minimization. Additionally, the proposed DR model incorporates a fair billing mechanism that is enhanced with an ex post consumer performance tracking scheme implemented in a context of a virtual power plant aggregating load and generation units.
Keywords :
cost reduction; demand side management; distributed power generation; power generation economics; power generation reliability; power markets; pricing; critical load periods mitigation; demand forecast; demand price elasticity; demand response model; fair billing mechanism; forward markets; generation unit aggregation; load curtailing; load profile; load shifting; load unit aggregation; modern electricity markets; modern power systems; price fluctuations; price-based DR mechanism; price-peaking scenario mitigation; real-time markets; system reliability improvement; total system cost minimization; virtual power plant; Context; Elasticity; Electricity supply industry; Load management; Load modeling; Power generation; Real-time systems; Demand response (DR); demand side management; electricity market; smart grid; virtual power plant;
Journal_Title :
Smart Grid, IEEE Transactions on
DOI :
10.1109/TSG.2014.2339213