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Multi-objective optimization of building retrofit in the Mediterranean climate by means of genetic algorithm application

机译:通过遗传算法应用,Mediterranean Climate中建筑改造的多目标优化

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Nowadays, as the role of energy retrofit on the existing building stock is recognized towards energy savings and emissions' reductions, the actions to be undertaken towards this aim require complex decisions, in terms of the choice among active and passive strategies and among often conflicting objectives of the retrofit. Depending on the actor of the retrofit (e.g., private, public), the main objective could be minimizing the investment, minimizing the energy demand or cost, or minimizing emissions. To facilitate the selection of the optimal retrofit actions, here the application of active archive non-dominated sorting genetic algorithm (aNSGA-II) towards multi-objective optimization is illustrated. The results of the algorithm implementation are analyzed with respect to a residential building located in Rome, Italy. The genes (i.e., the implemented strategies) are described and the optimal solution in the R-4 space is discussed, alongside with considerations about the solutions pertaining to the Pareto frontier. The applied method allowed to considerably lower the computational time and identifying the multi-objective optimal solution, which was able to reduce by 49.2% annual energy demand, by 48.8% annual energy costs, by 45.2% CO2 emissions while still maintaining almost 60% lower investment cost with respect to other criterion-optimal solutions. (C) 2020 Elsevier B.V. All rights reserved.
机译:如今,随着能源改造对现有建筑物的作用,确认能源节约和排放的减少,以便在积极和被动策略的选择和经常相互矛盾的目标中选择要对此目的的行动需要复杂的决定改造。根据改造的演员(例如,私人,公共),主要目标可能会尽量减少投资,最大限度地减少能源需求或成本,或最小化排放。为了便于选择最佳改造作用,这里示出了激活归档非主导分类遗传算法(ANSGA-II)朝向多目标优化的应用。在意大利罗马的住宅建筑方面分析了算法实施的结果。描述了基因(即实施的策略),并且讨论了R-4空间中的最佳解决方案,以及关于与Pareto边界有关的解决方案的考虑。所施加的方法可相当降低计算时间并识别多目标最佳解决方案,该方法能够减少49.2%的年能需求,每年能源费用48.8%,二氧化碳排放量为45.2%,同时仍保持近60%对其他标准最优解决方案的投资成本。 (c)2020 Elsevier B.v.保留所有权利。

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