Multi-objective optimization of building planning energy saving based on genetic algorithm

IF 1.9 Q3 MANAGEMENT
Ningjing Chen, Juanfen Wang
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引用次数: 0

Abstract

The construction industry itself has led to a large amount of energy consumption, and this paper is based on genetic algorithm to optimize the planning and design of rural buildings with energy saving and multi-objective. Firstly, the multi-objective optimization problem and Pareto concept are discussed, the NSGA-II algorithm is applied to solve the problem of building energy saving integrated optimization, and the algorithm implementation of building energy saving integrated optimization design based on NSGA-II algorithm is given. Use incremental costs and incremental benefits as objective functions and make relevant assumptions to keep the model realistic while simplifying calculations. Second, a series of constraint functions are set up to ensure the superiority of the results. By constructing model assumptions, objective functions and constraint functions, the energy-saving optimization model is formed and solved by genetic algorithm. From the optimization results, it can be seen that the energy consumption of all the design schemes in the Pareto solution set is between 25.0 KWh/m2∼31.7 KWh/m2. Therefore, in the selection of architectural planning and design schemes, we should avoid simply pursuing low energy consumption and high comfort, and also use comprehensive consideration of economic costs to choose the most cost-effective scheme.
基于遗传算法的建筑规划节能多目标优化
建筑行业本身造成了大量的能源消耗,本文基于遗传算法对节能多目标的农村建筑规划设计进行优化。首先,讨论了多目标优化问题和Pareto概念,将NSGA-II算法应用于解决建筑节能综合优化问题,给出了基于NSGA-II算法的建筑节能综合优化设计的算法实现。使用增量成本和增量收益作为目标函数,并做出相应的假设,在简化计算的同时保持模型的现实性。其次,建立了一系列约束函数,以保证结果的优越性。通过构造模型假设、目标函数和约束函数,形成节能优化模型,并采用遗传算法求解。从优化结果可以看出,Pareto解集中所有设计方案的能耗在25.0 KWh/m2 ~ 31.7 KWh/m2之间。因此,在选择建筑规划设计方案时,应避免单纯追求低能耗、高舒适度,同时还要综合考虑经济成本,选择性价比最高的方案。
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
CiteScore
2.70
自引率
14.30%
发文量
18
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