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Hybrid ant optimization system for multiobjective economic emission load dispatch problem under fuzziness

机译:模糊条件下多目标经济排放负荷分配问题的混合蚁群优化系统

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摘要

In this paper, a new hybrid optimization system is presented. Our approach integrates the merits of both ant colony optimization and steady state genetic algorithm and it has two characteristic features. Firstly, since there is instabilities in the global market and the rapid fluctuations of prices, a fuzzy representation of the economic emission load dispatch (EELD) problem has been defined, where the input data involve many parameters whose possible values may be assigned by the expert. Secondly, by enhancing ant colony optimization through steady state genetic algorithm, a strong robustness and more effectively algorithm was created. Also, stable Pareto set of solutions has been detected, where in a practical sense only Pareto optimal solutions that are stable are of interest since there are always uncertainties associated with efficiency data. Moreover to help the decision maker DM to extract the best compromise solution from a finite set of alternatives a Technique for Order Performance by Similarity to Ideal Solution (TOPSIS) method is adopted. It is based upon simultaneous minimization of distance from an ideal point (IP) and maximization of distance from a nadir point (NP). The results on the standard IEEE systems demonstrate the capabilities of the proposed approach to generate true and well-distributed Pareto optimal nondominated solutions of the multiobjective EELD.
机译:本文提出了一种新的混合优化系统。我们的方法融合了蚁群优化和稳态遗传算法的优点,并且具有两个特征。首先,由于全球市场不稳定和价格快速波动,已经定义了经济排放负荷分配(EELD)问题的模糊表示,其中输入数据涉及许多参数,专家可能会为其分配可能的值。 。其次,通过稳态遗传算法增强蚁群优化,建立了一种强大的鲁棒性和更有效的算法。而且,已经检测到稳定的Pareto解集,在实际意义上,只有稳定的Pareto最优解才有意义,因为效率数据始终存在不确定性。此外,为了帮助决策者DM从有限的一组备选方案中提取最佳折衷解决方案,采用了一种类似于理想解决方案的订单执行技术(TOPSIS)方法。它基于同时最小化到理想点(IP)的距离和最大化到最低点(NP)的距离。在标准IEEE系统上的结果证明了所提出的方法能够生成真实且分布合理的多目标EELD的帕累托最优非支配解。

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