Evaluating Energy Efficiency of Buildings using Artificial Neural Networks and K-means Clustering Techniques

A. Nazir, Ahsan Wajahat, F. Akhtar, Faheem Ullah, Sirajuddin Qureshi, Sher Afghan Malik, A. Shakeel
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引用次数: 1

Abstract

The consumption of energy in buildings has risen abruptly over the last decades. Due to less energy-efficient buildings, most of the energy is being thrown in our surroundings thus making an adverse effect on our environment. In this paper, heating and cooling loads of private or non-commercial buildings are covered. By implementing the proposed technique, which is a blend of cluster analysis and Artificial Neural Network (ANN), evaluation and prediction are performed. The estimation of heating and cooling loads of private or non-commercial buildings are performed using eight input variables in the ANN-based model. The details of variables are as follows, a relative surface area, total height, compactness, roof area, glazing area distribution, orientation, glazing area, and wall area. K-means clustering methodology is then used to cluster buildings on the basis of output variables. Stand on simulated literature data, evaluation of 768 different private or non-commercial buildings is done using the above-suggested method. Research results depicted that depending upon input variables, the above-suggested approach can efficiently evaluate heating and cooling load that is very much close to real test results.
基于人工神经网络和k -均值聚类技术的建筑能效评估
在过去的几十年里,建筑物的能源消耗急剧上升。由于建筑的节能程度较低,大部分的能源被扔到我们周围的环境中,从而对我们的环境产生了不利的影响。本文涵盖了私人或非商业建筑的冷热负荷。通过将聚类分析和人工神经网络(ANN)相结合的方法进行评价和预测。在基于人工神经网络的模型中,使用8个输入变量对私人或非商业建筑的冷热负荷进行估计。变量的细节如下:相对表面积、总高度、密实度、屋顶面积、玻璃面积分布、朝向、玻璃面积、墙面面积。然后使用k均值聚类方法在输出变量的基础上对建筑物进行聚类。在模拟文献数据的基础上,采用上述方法对768栋不同类型的私人或非商业建筑进行了评价。研究结果表明,根据输入变量的不同,上述方法可以有效地评估出与实际测试结果非常接近的冷热负荷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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