Review of stochastic optimization methods for smart grid

被引:0
作者
S. Surender Reddy
Vuddanti Sandeep
Chan-Mook Jung
机构
[1] Woosong University,Department of Railroad and Electrical Engineering
[2] Central University of Karnataka,School of Engineering
[3] Woosong University,Department of Railroad and Civil Engineering
来源
Frontiers in Energy | 2017年 / 11卷
关键词
renewable energy sources; stochastic optimization; smart grid; uncertainty; optimal power flow (OPF);
D O I
暂无
中图分类号
学科分类号
摘要
This paper presents various approaches used by researchers for handling the uncertainties involved in renewable energy sources, load demands, etc. It gives an idea about stochastic programming (SP) and discusses the formulations given by different researchers for objective functions such as cost, loss, generation expansion, and voltage/V control with various conventional and advanced methods. Besides, it gives a brief idea about SP and its applications and discusses different variants of SP such as recourse model, chance constrained programming, sample average approximation, and risk aversion. Moreover, it includes the application of these variants in various power systems. Furthermore, it also includes the general mathematical form of expression for these variants and discusses the mathematical description of the problem and modeling of the system. This review of different optimization techniques will be helpful for smart grid development including renewable energy resources (RERs).
引用
收藏
页码:197 / 209
页数:12
相关论文
共 146 条
[1]  
Pimentel D(2002)Renewable energy: current and potential issues Bioscience 52 1111-1120
[2]  
Herz M(2011)Minimizing energy losses: optimal accommodation and smart operation of renewable distributed generation IEEE Transactions on Power Systems 26 198-205
[3]  
Glickstein M(2005)Distributed generation: definition, benefits and issues Energy Policy 33 787-798
[4]  
Zimmerman M(2009)Intermittent wind generation in optimal power flow dispatching IET Generation, Transmission & Distribution 3 66-74
[5]  
Allen R(2011)State of art in optimal power flow solution methodologies Journal of Theoretical and Applied Information Technology 30 128-154
[6]  
Becker K(2010)Comparative analysis of ant colony and particle swarm optimization techniques International Journal of Computers and Applications 5 1-6
[7]  
Evans J(2009)A survey of particle swarm optimization applications in electric power systems IEEE Transactions on Evolutionary Computation 13 913-918
[8]  
Hussain B(1999)A review of selected optimal power flow literature to 1993. I. Nonlinear and quadratic programming approaches IEEE Transactions on Power Systems 14 96-104
[9]  
Sarsfeld R(1987)Security constrained optimal power flow with post-contingency corrective rescheduling IEEE Transaction on Power System 1 175-180
[10]  
Grosfeld A(1987)Security analysis and optimization Proceedings of the IEEE 75 1623-1644