Application of Improved Frog Leaping Algorithm in Multi objective Optimization of Engineering Project Management

Yongxian Wang, Junxia Ma, Yanrong Zhang
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Abstract

The development of information has promoted the development of various industries, and the development of industries will inevitably lead to intensified competition, including the construction industry. To enhance the competitiveness of construction enterprises in the industry, a multi-objective optimization model for construction project management has been proposed. At the same time, carbon emission was included as one of the optimization objectives in the experiment. This can also align the construction industry with the concept of modern green development. A non-dominated sorting genetic algorithm with elite strategy was proposed to improve the hybrid frog leaping algorithm, and the improved hybrid frog leaping algorithm was used to solve multi-objective optimization problems. The improved hybrid frog leaping algorithm performed better in solving multi-objective optimization problems. The improved hybrid frog leaping algorithm found a total of 132 Pareto solution sets, while the non-dominated sorting genetic algorithm with elite strategy only found 23 Pareto solution sets. And the solution set of the improved hybrid frog leaping algorithm is closer to the optimal position. The optimized duration and cost of the improved hybrid frog leaping algorithm are lower, with an optimal duration of 135 days and a minimum cost of $20,000. A multi-objective optimization model for engineering project management incorporating carbon emissions was successfully constructed in the study, and the multi-objective optimization problem was solved.
改进的蛙跳算法在工程项目管理多目标优化中的应用
信息的发展促进了各行各业的发展,而行业的发展必然导致竞争的加剧,建筑行业也不例外。为了提高建筑企业在行业中的竞争力,提出了建筑工程管理的多目标优化模型。同时,在实验中将碳排放作为优化目标之一。这也可以使建筑行业与现代绿色发展理念接轨。提出了一种具有精英策略的非支配排序遗传算法来改进混合蛙跳算法,并将改进后的混合蛙跳算法用于解决多目标优化问题。改进后的混合蛙跳算法在求解多目标优化问题时表现更好。改进的混合蛙跳算法总共找到了 132 个帕累托解集,而采用精英策略的非支配排序遗传算法只找到了 23 个帕累托解集。而且改进的混合蛙跳算法的解集更接近最优位置。改进的混合蛙跳算法的优化工期和成本较低,最佳工期为 135 天,最低成本为 2 万美元。该研究成功构建了包含碳排放的工程项目管理多目标优化模型,并解决了多目标优化问题。
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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