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A binary symmetric based hybrid meta-heuristic method for solving mixed integer unit commitment problem integrating with significant plug-in electric vehicles.

Authors :
Yang, Zhile
Li, Kang
Guo, Yuanjun
Feng, Shengzhong
Niu, Qun
Xue, Yusheng
Foley, Aoife
Source :
Energy. Mar2019, Vol. 170, p889-905. 17p.
Publication Year :
2019

Abstract

Abstract Conventional unit commitment is a mixed integer optimization problem and has long been a key issue for power system operators. The complexity of this problem has increased in recent years given the emergence of new participants such as large penetration of plug-in electric vehicles. In this paper, a new model is established for simultaneously considering the day-ahead hourly based power system scheduling and a significant number of plug-in electric vehicles charging and discharging behaviours. For solving the problem, a novel hybrid mixed coding meta-heuristic algorithm is proposed, where V-shape symmetric transfer functions based binary particle swarm optimization are employed. The impact of transfer functions utilised in binary optimization on solving unit commitment and plug-in electric vehicle integration are investigated in a 10 unit power system with 50,000 plug-in electric vehicles. In addition, two unidirectional modes including grid to vehicle and vehicle to grid, as well as a bi-directional mode combining plug-in electric vehicle charging and discharging are comparatively examined. The numerical results show that the novel symmetric transfer function based optimization algorithm demonstrates competitive performance in reducing the fossil fuel cost and increasing the scheduling flexibility of plug-in electric vehicles in three intelligent scheduling modes. Highlights • A new unit commitment model considering electric vehicles is established. • A binary symmetric based hybrid meta-heuristic method is proposed. • The impact of transfer function on unit commitment problem is evaluated. • Three flexible scheduling modes are comparatively studied. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03605442
Volume :
170
Database :
Academic Search Index
Journal :
Energy
Publication Type :
Academic Journal
Accession number :
134738812
Full Text :
https://doi.org/10.1016/j.energy.2018.12.165