New formulation and analysis of the system planning expansion model

A. Sadegheih
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引用次数: 7

Abstract

In this paper, an electrical power transmission network planning expansion is formulated for mixed-integer programming, a genetic algorithm and tabu search (TS). Compared with other optimisation methods, GA's are suitable for traversing large search spaces since they can do this relatively rapidly and because the use of mutation diverts the method away from local minima, which will tend to become more common as the search space increases in size. GA's give an excellent trade-off between solution quality and computing time and flexibility for taking into account specific constraints in real situations. TS has emerged as a new, highly efficient, search paradigm for finding quality solutions to combinatorial problems. It is characterised by gathering knowledge during the search, and subsequently profiting from this knowledge. The attractiveness of the technique comes from its ability to escape local optimality. The cost function of this problem consists of the capital investment cost in discrete form, the cost of transmission losses and the power generation costs. The DC load flow equations for the network are embedded in the constraints of the mathematical model to avoid sub-optimal solutions that can arise if the enforcement of such constraints is done in an indirect way. The solution of the model gives the best line additions, and also provides information regarding the optimal generation at each generation point. This method of solution is demonstrated on the expansion of a 10 bus-bar system to 18 bus-bars. Finally, an empirical analysis of the effects of parameter values on genetic algorithm performance is tested. Copyright © 2007 John Wiley & Sons, Ltd.
新的系统规划可拓模型的制定与分析
本文采用混合整数规划、遗传算法和禁忌搜索,建立了输电网规划扩展模型。与其他优化方法相比,遗传算法适合遍历大型搜索空间,因为它们可以相对快速地完成此操作,并且由于使用突变使方法远离局部最小值,这将随着搜索空间大小的增加而变得更加普遍。遗传算法在解决方案质量、计算时间和考虑实际情况中特定约束的灵活性之间给出了一个很好的权衡。TS已经成为一种新的、高效的搜索范式,用于寻找组合问题的高质量解决方案。它的特点是在搜索过程中收集知识,然后从这些知识中获利。该技术的吸引力来自于它能够避免局部最优性。该问题的成本函数包括离散形式的资本投资成本、输电损耗成本和发电成本。网络的直流负荷流方程被嵌入到数学模型的约束中,以避免在以间接方式执行这些约束时可能出现的次优解。该模型的解给出了最佳的线加法,并提供了关于每个生成点的最优生成的信息。通过将一个10母线系统扩展到18母线系统,验证了这种解法。最后,对参数值对遗传算法性能的影响进行了实证分析。版权所有©2007 John Wiley & Sons, Ltd
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
European Transactions on Electrical Power
European Transactions on Electrical Power 工程技术-工程:电子与电气
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审稿时长
5.4 months
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