屋顶
人工神经网络
绿色屋顶
冷负荷
还原(数学)
风速
太阳增益
试验数据
相对湿度
热舒适性
工程类
环境科学
模拟
计算机科学
土木工程
气象学
热的
机器学习
空调
数学
机械工程
地理
软件工程
几何学
作者
Shrikant Pandey,D.A. Hindoliya,Ritu mod
标识
DOI:10.1016/j.scs.2012.01.003
摘要
Over the summer's two test structures one with green roofs and other with RCC was built and tested at Sustainable City, Ujjain to determine their cooling potential. Results indicate that the test cell with the green roof consistently performs better than the test cells with the conventional cement RCC roof. The objective of this work is to train an artificial neural network (ANN) to learn to predict the reduction in heat gain from the roof buildings with the different experimental data. A number of different training algorithms were used to create an ANN model. This study is helpful in finding the thermal comfort and energy saving of building by applying green roof over the roof. The data presented as input were daily Statistics for Dry Bulb temperatures temperature, relative humidity, average solar intensity and wind speed. The network output was reduction in heat gain from roof. The advantages of this approach compared to the conventional algorithmic methods are (i) the speed of calculation, (ii) the simplicity, (iii) adaptive learning from examples and thus gradually improve its performance, (iv) self-organization, (v) real time operation. ANN gives satisfactory results with deviation of 4.7% and successful prediction rate of 93.8–98.5%.
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