Passive solar building design using genetic programming

M. Gholami, B. Ross
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引用次数: 3

Abstract

Passive solar building design considers the effect that sunlight has on energy usage. The goal is to reduce the need for artificial cooling and heating devices, thereby saving energy costs. A number of competing design objectives can arise. Window heat gain during winter requires large windows. These same windows, however, reduce energy efficiency during nights and summers. Other model requirements add further complications, which creates a challenging optimization problem. We use genetic programming for passive solar building design. The EnergyPlus system is used to evaluate energy consumption. It considers factors ranging from model construction (shape, windows, materials) to location particulars (latitude/longitude, weather, time of day/year). We use a strongly typed design language to build 3D models, and multi-objective fitness to evaluate the multiple design objectives. Experimental results showed that balancing window heat gain and total energy use is challenging, although our multi-objective strategy could find interesting compromises. Many factors (roof shape, material selection) were consistently optimized by evolution. We also found that geographic aspects of the location play a critical role in the final building design.
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利用遗传程序设计被动式太阳能建筑
被动式太阳能建筑设计考虑了阳光对能源使用的影响。其目标是减少对人工冷却和加热设备的需求,从而节省能源成本。可能会出现许多相互竞争的设计目标。冬季窗户的热量增加需要大窗户。然而,这些窗户在夜间和夏季降低了能源效率。其他模型需求增加了进一步的复杂性,从而产生了一个具有挑战性的优化问题。我们使用遗传程序设计被动式太阳能建筑。EnergyPlus系统用于评估能源消耗。它考虑了从模型构造(形状、窗户、材料)到位置细节(纬度/经度、天气、一天/一年的时间)的各种因素。我们使用强类型设计语言来构建三维模型,并使用多目标适应度来评估多个设计目标。实验结果表明,平衡窗口热增益和总能源使用是具有挑战性的,尽管我们的多目标策略可以找到有趣的妥协。许多因素(屋顶形状、材料选择)在进化过程中不断优化。我们还发现,地理位置在最终的建筑设计中起着至关重要的作用。
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