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首页> 外文期刊>International journal of green energy >Developing an empirical predictive saved load-rating model for windows by using artificial neural network
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Developing an empirical predictive saved load-rating model for windows by using artificial neural network

机译:通过使用人工神经网络开发窗户的经验预测保存的负载评级模型

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In line with the growing global trend towards energy efficiency in buildings, this paper introduces a predictive model based on an artificial neural network model to rate the performance of windows in terms of saved heating and cooling loads. A four-story building representing the conventional type of residential apartments in Iran for four climates of cold, hot and humid, hot and arid, and temperate was selected for simulation. An artificial neural network model was developed based on ten variables of U-factor, SHGC, emissivity, monthly average dry bulb temperature, monthly average percent humidity, monthly average wind speed, monthly average direct solar radiation, monthly average diffuse solar radiation, orientation, and month as the input variables. The developed ANN model computes the amount of saved heating or cooling loads as a result of using a window with defined parameters. The best architecture of 10-10-1 with MAPE, RMSE, and R-2 values of 1.4%, 0.008, and 0.985, respectively showed an acceptable predictive performance of the model. The predictions of this model, in line with the four levels of window performance defined in this paper, which range from excellent performance to weak performance, constitute the final rating of a window. The rated performance of the windows used in this study showed that the performance of a window can vary in cold and hot months, and windows should be rated according to the climate in which they are being used.
机译:符合建筑物中的能源效率的不断增长的全球趋势,介绍了基于人工神经网络模型的预测模型,以节省保存的加热和冷却负荷来评估窗口的性能。选择了一座代表伊朗传统的住宅公寓的四层建筑,为墨水,热和潮湿,热和干旱和温带的温带和温带。人工神经网络模型是基于U形因子,SHGC,发射率,月平均干泡温,月平均风速,月平均风速,月平均直接太阳辐射,月平均漫射太阳辐射,定期漫射太阳辐射,定向和月份作为输入变量。由于使用具有定义参数的窗口,开发的ANN模型计算了保存的加热或冷却负载的量。 10-10-1的最佳架构为MAPE,RMSE和R-2值为1.4%,0.008和0.985,分别显示了该模型的可接受的预测性能。该模型的预测,符合本文中定义的四个窗口性能,这范围从出色的性能到弱的性能,构成了窗口的最终评分。本研究中使用的窗口的额定性能表明,窗户的性能可能在寒冷和炎热的月份中变化,并且窗户应根据所使用的气候评定。

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