期刊文献+

遗传算法的改进及其在水库优化调度中的应用研究 被引量:29

The Improvement of Genetic Algorithm and Its Application in the Optimal Operation of Reservoirs
下载PDF
导出
摘要 遗传算法是通过对样本中个体的不断改进来寻找各类问题的最优解。由于标准遗传算法 (SGA)存在收敛性及个体适应度求解方面的困难 ,在研究中 ,通过对SGA中遗传算子改进 ,特别是对选择算子的改进 ,提出了一种改进遗传算法 (AGA) ,并将它应用于水库优化调度中。改变通常以水位变化序列为基础的遗传算法编码方案 ,通过数组存储水库库容状态 ,并以各库容状态对应的数组下标为基础进行遗传算法编码 ,通过实例 ,表明AGA对水库优化调度问题具有良好的适应性 。 Genetic algorithms search for the optimal solution by continually improving the individual of the population. Because of the difficulty in convergence and solving of individual fitness, standard genetic algorithm(SGA) is not used widely. Based on the improvement of SGA, especially the improvement of the selection operator in SGA, a new genetic algorithm(AGA) is proposed to solve the problems about the optimal operation of reservoirs. A new coding method is presented which is based on the subscript sequence of reservoir capacity array other than the water level sequence. An engineering example illustrates that AGA is much more efficient than SGA, and also the new coding method predigests the course of genetic algorithm in the optimal operation of reservoirs. [
出处 《中国工程科学》 2003年第9期22-26,共5页 Strategic Study of CAE
基金 国家自然科学基金 ( 5 0 1790 2 3 ) 高等学校优秀青年教师教学科研奖励计划 ( 2 0 0 1667)
关键词 遗传算法 改进 水库 优化调度 genetic algorithm improvement reservoir optimal operation
  • 相关文献

参考文献12

二级参考文献21

  • 1蔡煜东.运用改进的遗传算法拟合离子选择电极工作曲线[J].分析化学,1995,23(6):640-643. 被引量:5
  • 2刘首文,冯尚友.遗传算法及其在水污染控制系统规划中的应用[J].武汉水利电力大学学报,1996,29(4):95-99. 被引量:18
  • 3文栓,中国电机工程学报,1994年,14卷,3期,29页
  • 4钱令希,工程结构优化设计,1983年
  • 5Yeh W,Water Resources Res,1985年,21卷,12期,96页
  • 6马光文.遗传算法在水电站优化调度中的应用[J].水科学进展,1997,3.
  • 7Goldberg D E. Genetic Algorithms is Search, Optimization and Machine Learning[J]. Addison-Wesley, 1989.
  • 8Daene C. McKinney, and Min-Der Lin, Genetic algorithm solution of groundwater management models[J]. Water Resources Research. 1994,30(60):1897-1906.
  • 9Scott E. Cieniawski, J.Wayland Eheart, and S.Ranjithan. Using genetic algorithms to solve a multiobjective groundwater monitoring problem[J]. Water Resources Research, 1995,31(2):399-409.
  • 10Graeme C.Dandy, Angus R.SImpson, and Laurence J.Murphy. An improved genetic algorithm for pipe network optimization[J]. Water Resources Research, 1996,32(2): 449-458.

共引文献284

同被引文献309

引证文献29

二级引证文献275

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部