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Artificial neural networks for the prediction of the energy consumption of a passive solar building

机译:人工神经网络用于预测被动式太阳能建筑的能耗

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Artificial neural networks (ANNs) have been used for the prediction of the energy consumption of a passive solar building. The building structure consists of one room with an inclined roof. Two cases were investigated, an all insulated building and a building with one wall made completely of masonry and the other walls made partially of masonry and thermal insulation. The investigation was performed for two seasons: winter, for which the building with the masonry-only wall is facing south, and summer, for which the building with the masonry-only wall is facing north. The building's thermal behaviour was evaluated by using a dynamic thermal building model constructed on the basis of finite volumes and time marching. The energy consumption of the building depends on whether all walls have insulation, on the thickness of the masonry and insulation and on the season. Simulated data for a number of cases were used to train an artificial neural network (ANN) in order to generate a mapping between the above easily measurable inputs and the desired output, i.e., the building energy consumption in kWh. The simulated buildings had walls varying from l5 cm to 60 cm in thickness. The objective of this work is to produce another simulation program, using ANNs, to model the thermal behaviour of the building. A multilayer recurrent architecture using the standard back-propagation learning algorithm has been applied. The results obtained for the training set are such that they yield a coefficient of multiple determination (R' value) equal to 0.9985. The network was used subsequently for pr
机译:人工神经网络(ANN)已用于预测被动式太阳能建筑的能耗。建筑结构由一间带有倾斜屋顶的房间组成。对两个案例进行了调查,一栋全绝缘建筑,一幢完全由砖石砌成的墙体,另一面部分由砖石和隔热材料制成的墙体。进行了两个季节的调查:冬天,只有砖石墙的建筑朝南;冬天,只有砖石墙的朝北。通过使用基于有限体积和时间进行的动态热建筑模型来评估建筑物的热行为。建筑物的能源消耗取决于所有墙壁是否都具有隔热层,砌体和隔热层的厚度以及季节。为了在上述易于测量的输入与期望的输出(即以kWh为单位的建筑能耗)之间生成映射,将许多情况下的模拟数据用于训练人工神经网络(ANN)。模拟建筑物的墙壁厚度从15厘米到60厘米不等。这项工作的目的是使用ANN生成另一个模拟程序,以对建筑物的热行为进行建模。已经应用了使用标准反向传播学习算法的多层递归架构。从训练集中获得的结果使得它们产生的多重确定系数(R'值)等于0.9985。该网络随后用于公关

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