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多种群蚁群算法解机组组合优化
引用本文:王威,李颖浩,龚向阳,蔡振华,郑春莹. 多种群蚁群算法解机组组合优化[J]. 机电工程, 2012, 29(5): 572-575,612
作者姓名:王威  李颖浩  龚向阳  蔡振华  郑春莹
作者单位:浙江大学电气工程学院,浙江杭州,310027
摘    要:电力系统机组组合问题是一个大规模混合整数规划问题,具有高维、离散、非线性等特点,在数学上被称为NP-hard问题。为解决蚁群算法在解决机组组合问题中遇到的计算速度慢、易陷入局部最优等问题,将多种群蚁群算法应用到解决机组组合的问题中。开展了多种群蚁群算法在机组组合问题中的应用分析,新建了除搜索蚁之外的侦察蚁和工蚁,设定了3种蚁群之间的信息交互原理,提出了各蚁群的信息素更新方法。在修正后的IEEE30节点系统对算法可行性作了验证,并对算法的合理性和有效性进行了分析。研究结果表明,所提出的多种群蚁群算法是合理、有效的。

关 键 词:机组组合  多种群蚁群算法  启发式算法

Unit commitment solved by multi colony ant optimization algorithm
WANG Wei , LI Ying-hao , GONG Xiang-yang , CAI Zhen-hua , ZHENG Chun-ying. Unit commitment solved by multi colony ant optimization algorithm[J]. Mechanical & Electrical Engineering Magazine, 2012, 29(5): 572-575,612
Authors:WANG Wei    LI Ying-hao    GONG Xiang-yang    CAI Zhen-hua    ZHENG Chun-ying
Affiliation:(School of Electrical Engineering,Zhejiang University,Hangzhou 310027,China)
Abstract:Unit commitment(UC)has commonly been formulated as a large-scale,mixed-integer optimization problem which is with the characteristic of high-dimensional,discrete and nonlinear and is known as NP-hard problem in mathematics.In order to solve the problems of time-consuming and easy to fall into local optimum that the ant colony optimization algorithm(ACO)met,the multi colony ant optimization algorithms was investigated.After the analysis of the use of the multi colony ant optimization algorithms in unit commitment,the detect ant and ergate were presented beside the search ant,the new principles of information exchange were set,and the new update method for pheromone was established.The feasibility of the algorithm was verified,the rationality and effectiveness were analyzed by the modified IEEE30.The result shows that the proposed multi colony ant algorithm is reasonable and effective.
Keywords:unit commitment(UC)  multi colony ant optimization algorithm(MCAO)  heuristic algorithm
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