DocumentCode :
3602016
Title :
A Game Theory-Based Energy Management System Using Price Elasticity for Smart Grids
Author :
Kun Wang ; Zhiyou Ouyang ; Krishnan, Rahul ; Lei Shu ; Lei He
Author_Institution :
Inst. of Adv. Technol., Nanjing Univ. of Posts & Telecommun., Nanjing, China
Volume :
11
Issue :
6
fYear :
2015
Firstpage :
1607
Lastpage :
1616
Abstract :
Distributed devices in smart grid systems are decentralized and connected to the power grid through different types of equipment transmit, which will produce numerous energy losses when power flows from one bus to another. One of the most efficient approaches to reduce energy losses is to integrate distributed generations (DGs), mostly renewable energy sources. However, the uncertainty of DG may cause instability issues. Additionally, due to the similar consumption habits of customers, the peak load period of power consumption may cause congestion in the power grid and affect the energy delivery. Energy management with DG regulation is considered to be one of the most efficient solutions for solving these instability issues. In this paper, we consider a power system with both distributed generators and customers, and propose a distributed locational marginal pricing (DLMP)-based unified energy management system (uEMS) model, which, unlike previous works, considers both increasing profit benefits for DGs and increasing stability of the distributed power system (DPS). The model contains two parts: 1) a game theory-based loss reduction allocation (LRA); and 2) a load feedback control (LFC) with price elasticity. In the former component, we develop an iterative loss reduction method using DLMP to remunerate DGs for their participation in energy loss reduction. By using iterative LRA to calculate energy loss reduction, the model accurately rewards DG contribution and offers a fair competitive market. Furthermore, the overall profit of all DGs is maximized by utilizing game theory to calculate an optimal LRA scheme for calculating the distributed loss of every DG in each time slot. In the latter component of the model, we propose an LFC submodel with price elasticity, where a DLMP feedback signal is calculated by customer demand to regulate peak-load value. In uEMS, LFC first determines the DLMP signal of a customer bus by a time-shift load optimization (LO) algorithm ba- ed on the changes of customer demand, which is fed back to the DLMP of the customer bus at the next slot-time, allowing for peak-load regulation via price elasticity. Results based on the IEEE 37-bus feeder system show that the proposed uEMS model can increase DG benefits and improve system stability.
Keywords :
distributed power generation; energy management systems; feedback; game theory; iterative methods; power consumption; power generation economics; power markets; pricing; smart power grids; DLMP; IEEE 37-bus feeder system; LFC submodel; distributed devices; distributed generations; distributed locational marginal pricing; distributed loss; distributed power system; energy loss reduction; game theory-based energy management system; game theory-based loss reduction allocation; load feedback control; peak-load regulation; power consumption; power grid; price elasticity; smart grids; system stability; time-shift load optimization; uEMS model; unified energy management system; Elasticity; Game theory; Load management; Load modeling; Mathematical model; Power system stability; Demand response; demand response; feedback control; game theory; loss reduction; optimization theory; price elasticity; smart gird;
fLanguage :
English
Journal_Title :
Industrial Informatics, IEEE Transactions on
Publisher :
ieee
ISSN :
1551-3203
Type :
jour
DOI :
10.1109/TII.2015.2426015
Filename :
7094305
Link To Document :
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