DocumentCode :
1777199
Title :
A robust optimization approach to evaluate the impact of smart grid technologies on generation plans
Author :
Dong Han ; Zheng Yan ; Yiqun Song ; Libing Yang ; Yuanrui Hong
Author_Institution :
Key Lab. of Control Power Transm. & Conversion, Shanghai Jiao Tong Univ., Shanghai, China
fYear :
2014
fDate :
20-22 Oct. 2014
Firstpage :
1706
Lastpage :
1711
Abstract :
In this paper how the electric power system generation plans change and improve based on the availability of smart grid technologies is investigated. The smart grid technologies mainly consist of renewable energy generation, carbon capture and storage (CCS), demand response and electric vehicles in this research. The approach uses robust optimization to determine the generation technology options in the context of smart grids under uncertainties. Robust optimization approach focuses on the consideration of parameter uncertainty in a mathematical programming problem. This paper explores the technical and economic feasibility of improving the utilization of smart grid technologies in the generation plan model. Since smart grid technologies have more uncertainties than conventional technologies, more estimation errors will appear and influence the optimal value of the generation planning problem. Therefore, the application of a robust optimization approach is proposed. In the adopted robust methodology, the optimal decision-making will search for the trade-off between the robustness and the optimality. The new model specifically considers the availability of smart grid technologies improving the performance of the generation system. In the proposed model, the objectives of the proposed model include investment, operational and maintenance cost, generation cost, reliability cost and carbon emission cost. Moreover, the constraints of both the electricity grid and the customer sector are considered in the generation planning. Due to the existing data uncertainties in the constraints, the robust linear programming problem is solved to find the corresponding robust counterpart, which means the uncertainty optimization problem will be transformed into a deterministic optimization problem. The derived robust counterpart model shows the multi-objective and multi-period generation expansion plan problem, and it will be solved by linear programming technique. The proposed optim- zation model is justified and described in some detail, apply it to the reference cases, to support the generation planning with smart grid technology applications.
Keywords :
decision making; linear programming; power generation economics; power generation planning; smart power grids; CCS; carbon capture and storage; carbon emission cost; decision-making; demand response; deterministic optimization problem; electric power system generation plans; electric vehicles; generation cost; generation technology options; investment; maintenance cost; mathematical programming problem; operational cost; reliability cost; renewable energy generation; robust linear programming problem; robust optimization approach; smart grid technologies; uncertainty optimization problem; Indexes; Optimization; Planning; Robustness; Smart grids; Uncertainty; data uncertainty; generation planning; robust counterpart; robust optimization; smart grid technologies;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Power System Technology (POWERCON), 2014 International Conference on
Conference_Location :
Chengdu
Type :
conf
DOI :
10.1109/POWERCON.2014.6993510
Filename :
6993510
Link To Document :
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