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ARTIFICIAL INTELLIGENCE APPLIED TO THE THERMAL CHARACTERIZATION OF BUILDING INTEGRATED PHOTOVOLTAIC TECHNOLOGIES

机译:人工智能应用于建筑集成光伏技术的热特征

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Building Integrated Photovoltaic (BIPV) systems aim not only to generate part of the electricity consumed by the edifice, but also to reduce the environmental impact, such as the Green House Gases emissions produced by the generation of electricity by fossil fuels and the land area that would be required when installed the PV devices in floor. Nevertheless, the thermal behaviour of the PV modules has an impact into the indoor temperature of the building. To study the thermal effect produced by the environmental factors into the module temperature, Artificial intelligence, i.e. Genetic Programming (GP), is applied to one year of data of crystalline silicone PV modules mounted as building elements at outdoor operating conditions to get the model which best describes the thermal behaviour. Two well-known models guided the algorithm, the ones proposed by Ross and by Sandia Laboratories. From the application of Genetic Programming, a model was obtained which calculates the module temperature with less than 1% error. Six constants parameters are obtained for the thermal behaviour of crystalline silicon PV technology, fitting an equation whose structure reflects the two well-known models of Ross and Sandia.
机译:建筑集成光伏(BIPV)系统旨在产生大厦消耗的一部分电力,也可以减少环境影响,例如由化石燃料和土地面积产生电力产生的绿色房屋气体排放在楼层安装光伏设备时,将是必需的。然而,光伏模块的热行为对建筑物的室内温度产生影响。为了研究环境因素产生的热效果,进入模块温度,人工智能,即遗传编程(GP),应用于安装在室外操作条件下的建筑元素的晶体硅氧烷PV模块的一年数据以获得模型最能描述热行为。两个着名的模型引导了罗斯和桑迪亚实验室提出的算法。根据遗传编程的应用,获得了一种模型,其计算误差小于1%的模块温度。获得六个常数参数,用于晶体硅PV技术的热行为,装配结构反映其两个公知的罗斯和桑迪亚模型的方程。

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