文章摘要
李安强,王丽萍,蔺伟民,纪昌明.免疫粒子群算法在梯级电站短期优化调度中的应用[J].水利学报,2008,39(4):
免疫粒子群算法在梯级电站短期优化调度中的应用
Application of immune particle swarm optimization algorithm to short term optimal dispatch of cascade hydropower stations
  
DOI:
中文关键词: 梯级水电站  短期优化调度  免疫粒子群算法  PSO
英文关键词: cascade hydropower stations  short term optimal dispatch  immune particle swarm optimization algorithm (IPSO)
基金项目:
作者单位
李安强 武汉大学 水资源与水电工程科学国家重点实验室湖北 武汉 430072 
王丽萍 华北电力大学北京 102206 
蔺伟民 新疆奎屯农七师勘测设计院新疆 奎屯 833200 
纪昌明 华北电力大学北京 102206 
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中文摘要:
      将免疫原理引入粒子群算法(PSO)中,利用其免疫记忆与自我调节机制保持各适应度层次的粒子维持一定的浓度,保证种群的多样性;引入疫苗接种等操作,对算法的进化过程进行有目的、有选择地指导,提高算法的搜索性能。随后在分析梯级电站短期优化调度数学模型及该算法特点的基础上,建立了基于免疫粒子群(IPSO)算法的梯级电站短期优化调度数学模型,并给出其具体的求解步骤。最后应用该方法进行仿真计算,并与常规调度及PSO算法进行对比,结果表明,该算法可获得较优的优化调度方案,并可提高解的精度,加快其收敛速度。
英文摘要:
      The mathematical model for short term optimal dispatch of cascade hydropower stations was established referring the global maximum output energy as the objective function and considering the restriction of output of hydropower stations, balance of water volume and control of reservoir level. The principle of immune was introduced to improve the particle swarm optimization (IPSO) algorithm for searching the optimal dispatch scheme. The improved method utilize the function of immune memory and the self adjustment mechanism to maintain the concentration of particles at a certain level in every layer to guarantee the diversity of population, and adopts the operation of vaccine inoculation to accelerate the optimization searching speed. So that the accuracy of solution is elevated and the convergence speed of calculation is higher than that of using particle swarm optimal (PSO) algorithm.
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