基于性能仿真的建筑多目标优化初步设计方法。

Journal of Solar Energy Engineering Pub Date : 2019-08-01 Epub Date: 2019-01-08 DOI:10.1115/1.4042244
Bruno Ramos Zemero, Maria Emília de Lima Tostes, Ubiratan Holanda Bezerra, Vitor Dos Santos Batista, Carminda Célia M M Carvalho
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引用次数: 16

摘要

建筑能耗在世界范围内具有巨大的能源和环境影响。由于建筑围护结构对整体系统性能的影响,建筑设计有很大的潜力来解决这一问题,但这是一项涉及许多目标和约束的任务。在过去的二十年中,应用于建筑能源效率的优化研究帮助专家选择最佳的设计方案。然而,目前还缺乏将优化方法应用到设计阶段,而设计阶段是影响建筑全生命周期能效的最重要的阶段。因此,本文提出了一个多目标优化模型,通过Pareto存档进化策略(PAES)算法与EnergyPlus模拟器耦合来评估解决方案,以帮助设计者进行方案设计。搜索过程由一个二进制数组执行,其中数组组件与其他构建组件一起在几代中进化。该方法旨在以最低的建设成本和更高的能源效率找到最佳解决方案(os)。在案例研究中,可以模拟使用优化模型的过程,并分析相关结果:标准建筑;能源消费分类水平;被动式设计指南;可用性和准确性,证明了该工具在建筑设计中的支持作用。在四种不同的天气条件下,运营系统平均节省了50%的能源,减少了50%的二氧化碳排放,投资回报不到3年。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methodology for Preliminary Design of Buildings Using Multi-Objective Optimization Based on Performance Simulation.

Buildings' energy consumption has a great energetic and environmental impact worldwide. The architectural design has great potential to solve this problem because the building envelope exerts influence on the overall system performance, but this is a task that involves many objectives and constraints. In the last two decades, optimization studies applied to energy efficiency of buildings have helped specialists to choose the best design options. However, there is still a lack of optimization approaches applied to the design stage, which is the most influential stage for building energy efficiency over its entire life cycle. Therefore, this article presents a multi-objective optimization model to assist designers in the schematic building design, by means of the Pareto archived evolutionary strategies (PAES) algorithm with the EnergyPlus simulator coupled to evaluate the solutions. The search process is executed by a binary array where the array components evolve over the generations, together with the other building components. The methodology aims to find optimal solutions (OSs) with the lowest constructive cost associated with greater energy efficiency. In the case study, it was possible to simulate the process of using the optimization model and analyze the results in relation to: a standard building; energy consumption classification levels; passive design guidelines; usability and accuracy, proving that the tool serves as support in building design. The OSs reached an average of 50% energy savings over typical consumption, 50% reduction in CO2 operating emissions, and investment return less than 3 years in the four different weathers.

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