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Multivariate relationships between campus design parameters and energy performance using reinforcement learning and parametric modeling

机译:利用加固学习和参数建模的校园设计参数与能量性能之间的多变量关系

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摘要

For the past two decades, extensive research has been conducted to evaluate the performance of urban form scenarios such as sky view factors, solar radiation, or energy performance. The relationships between urban design parameters and multiple performance should be stipulated to evaluate scenarios for supporting timely and reliable design decisions. However, there are three major challenges: (1) only a few design alternatives are devised, (2) the multiple performance has not been provided synthetically, and (3) the relationships between design parameters and performance are difficult to be determined because they are multivariate relationships. This research proposes a new methodology applying a generative design approach using a reinforcement learning algorithm, a parametric performance modeling, and a multivariate adaptive regression splines approach to identify relationships between design parameters and urban performance. This research aims to support decision-making of urban design to achieve an energy efficient and visually qualified urban environment. A data driven urban design approach is proposed to generate possible design alternatives using reinforcement learning, and a design-driven analysis is conducted to evaluate multiple performance of urban buildings using parametric modeling. The multivariate analysis presented relationships between urban geometric forms and performance criteria by using 30 samples. The findings show that to maintain optimal solar potential, the building coverage ratio is recommended to be bigger than 0.17. To maintain the optimal energy balance, the threshold for sky view factor is recommended as 54.17%. These relationships contribute to deriving design strategies and guidelines for designing a sustainable campus.
机译:在过去的二十年中,已经进行了广泛的研究,以评估城市形态场景,如天空视图因素,太阳辐射或能源性能。应规定城市设计参数与多种性能之间的关系,以评估支持及时可靠的设计决策的场景。但是,有三项主要挑战:(1)只有一些设计替代品设计,(2)尚未合成提供多种性能,并且(3)难以确定设计参数和性能之间的关系,因为它们是难以确定的多变量关系。该研究提出了一种利用增强学习算法,参数性能建模和多变量自适应回归样条方法应用生成设计方法的新方法,以识别设计参数和城市性能之间的关系。本研究旨在支持城市设计的决策,实现能源效率和视觉合格的城市环境。建议使用增强学习产生可能的设计替代品的数据驱动的城市设计方法,并使用参数建模来评估城市建筑物的多种性能的设计驱动分析。多变量分析通过使用30个样本来提出城市几何形式和性能标准之间的关系。调查结果表明,为了保持最佳的太阳能潜力,建议覆盖率建议大于0.17。为了保持最佳能量平衡,建议天空视图因子的阈值为54.17%。这些关系有助于导出设计策略和指导可持续校园的指导方针。

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