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基于改进遗传算法的AGC机组优化组合研究 被引量:3

Optimization of Generator Unit Commitment Including AGC Based on Improved Genetic Algorithm
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摘要 为降低发电成本,该文对自动发电控制(AGC)机组优化组合问题进行了研究。基于改进遗传算法,建立了包含AGC的机组优化组合模型;针对遗传算法存在的不足,结合包含AGC机组优化组合模型的特殊性,提出了可变长二进制编码;设计了专门的遗传操作,并采用等微增法对其中的连续变量进行了处理。将所研究的算法和模型应用于包含16台机组24时段的机组优化系统中,仿真结果表明该改进遗传算法的计算结果优于实数编码方法结果11.33%,并在搜索区间及收敛速度等方面都具有较好的性能,适用于大、中型发电系统。 To reduce the generating cost, a method for generator unit commitment including automatic generation control (AGC) is studied here. Based on the improved genetic algorithm, a new model of generator unit commitment including AGC is established. For the existing deficiencies of the standard genetic algorithm and particularity of the model on generator unit commitment including AGC, a variable-length binary encoding is proposed and a special genetic operation is designed, in which the principle of equal incremental rate is used for the continuous variables. The simulations of the 16-machine and 24-hour system show that the results from the improved genetic algorittuns and mode optimize 11.33% compared with the results from real encoding. A preferable performance is achieved in search range and convergence speed. The method is suitable for large and medium generating systems.
出处 《南京理工大学学报》 EI CAS CSCD 北大核心 2009年第6期801-805,共5页 Journal of Nanjing University of Science and Technology
关键词 遗传算法 等微增法 机组优化组合 自动发电控制 genetic algorithm principle of equal incremental rate generator unit commitment automatic generation control
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  • 1陈慧坤,卢恩,王仁明.电网联络线功率与频率偏差的控制及考核分析[J].三峡大学学报(自然科学版),2007,29(1):29-32. 被引量:3
  • 2曾光,李东旭.空间智能桁架作动器/传感器位置优化中的遗传算法应用[J].宇航学报,2007,28(2):461-464. 被引量:10
  • 3Jennings N R, Faratin P, Lomuscio A R, et al. Automated negotiation : Prospects, methods and challenges[ J]. Group Decision and Negotiation,2001, 10(2) :199-215.
  • 4Hindriks K, Tykhonov D. Opponent modelling in automated muhi-issue negotiation using bayesian learning[ A ]. Proceedings of the 7th international joint conference on Autonomous agents and muhiagent systems [ C ]. Richland, USA : ACM,2008 : 331-338.
  • 5Hindriks K, Jonker C, Tykhonov D. Eliminating issue dependencies in complex negotiation domains [ J ]. Muhiagent and Grid Systems,2010,6(5) :477-501.
  • 6Coehoorn R M, Jennings N R. Learning on opponent's preferences to make effective multi-issue negotiation trade-offs [ A ]. Proceedings of the 6th International Conference on Electronic Commerce [ C ]. The Netherlands : ACM ,2004:59-68.
  • 7Tipping M E. Sparse Bayesian learning and the relevance vector machine[ J]. The Journal of Machine Learning Research ,2001,1 (9) :211-244.
  • 8Bishop C M. Pattern recognition and machine learning [ M ]. New York, USA : Springer Link ,2006.
  • 9张森林.区域电力市场辅助服务补偿机制实用化研究[J].水电能源科学,2008,26(3):193-197. 被引量:26
  • 10程昱,高济,古华茂,傅朝阳.基于对手态度学习的协商决策模型[J].浙江大学学报(工学版),2008,42(10):1676-1680. 被引量:9

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