Optimal scheduling of wind-thermal power system using clustered adaptive teaching learning based optimization

被引:0
作者
S. Surender Reddy
机构
[1] Woosong University,Department of Railroad and Electrical Engineering
来源
Electrical Engineering | 2017年 / 99卷
关键词
Demand response offers; Renewable energy resources; Spinning reserves; Unit commitment; Weibull distribution; Wind energy;
D O I
暂无
中图分类号
学科分类号
摘要
This paper proposes an optimal scheduling/allocation of energy and spinning reserves for a wind-thermal power system. There is a considerable need for the renewable energy resources in the modern power system; therefore, in this paper, wind energy generators are used. Here, two different market clearing models are proposed. One model includes reserve offers from the conventional thermal generators, and the other includes reserve offers from both thermal generators, and demand/consumers. The stochastic behavior of wind speed and wind power generation is represented by the Weibull probability density function. The objective function considered in this paper includes cost of energy provided by conventional thermal and wind generators, cost of reserves provided by conventional thermal generators and load demands. It also includes costs due to under-estimation and over-estimation of available wind power generation. Clustered adaptive teaching learning based optimization algorithm is used to solve the proposed optimal scheduling problem for both conventional and wind-thermal power systems considering the provision for spinning reserves. To show the effectiveness and feasibility of the proposed frame work, various case studies are presented for two different test systems.
引用
收藏
页码:535 / 550
页数:15
相关论文
共 102 条
  • [1] Song Z(2005)Optimal spinning reserve allocation in deregulated power systems IEE Gen Trans Distriub 152 483-488
  • [2] Goel L(1999)Capacity reserve assessment using system well-being analysis IEEE Trans Power Syst 14 433-438
  • [3] Wang P(2011)Characteristics of the prices of operating reserves and regulation services in competitive electricity markets Energy Policy 39 3210-3221
  • [4] Billinton R(2010)Evolution and current status of demand response (DR) in electricity markets: Insights from PJM and NYISO Energy 35 1553-1560
  • [5] Karki R(2010)Demand response scheduling by stochastic SCUC IEEE Trans Smart Grid 1 89-98
  • [6] Wang P(2012)Integrating load reduction into wholesale energy market with application to wind power integration IEEE Syst J 6 35-45
  • [7] Zareipour H(2003)Demand side reserve offers in joint energy/reserve electricity markets IEEE Trans Power Syst 18 1300-1306
  • [8] Rosehart WD(2012)Towards full integration of demand-side resources in joint forward energy/reserve electricity markets IEEE Trans Power Syst 27 280-289
  • [9] Walawalkar R(2007)Pricing energy and reserves using stochastic optimization in an alternative electricity market IEEE Trans Power Syst 22 631-638
  • [10] Fernands S(2014)Gencos wind-thermal scheduling problem using Artificial immune system algorithm Int J Electron Power Energy Syst 54 112-122