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Applying support vector machines to predict building energy consumption in tropical region

机译:应用支持向量机预测热带地区的建筑能耗

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The methodology to predict building energy consumption is increasingly important for building energy baseline model development and measurement and verification protocol (MVP). This paper presents support vector machines (SVM), a new neural network algorithm, to forecast building energy consumption in the tropical region. The objective of this paper is to examine the feasibility and applicability of SVM in building load forecasting area. Four commercial buildings in Singapore are selected randomly as case studies. Weather data including monthly mean outdoor dry-bulb temperature (T_0), relative humidity (RH) and global solar radiation (GSR) are taken as three input features. Mean monthly landlord utility bills are collected for developing and testing models. In addition, the performance of SVM with respect to two parameters, C and ε, was explored using stepwise searching method based on radial-basis function (RBF) kernel. Finally, all prediction results are found to have coefficients of variance (CV) less than 3% and percentage error (%error) within 4%.
机译:预测建筑能耗的方法对于建筑能耗基准模型开发以及测量和验证协议(MVP)越来越重要。本文提出了一种支持向量机(SVM),一种新的神经网络算法,可以预测热带地区的建筑能耗。本文的目的是检验支持向量机在建筑负荷预测领域的可行性和适用性。随机选择新加坡的四座商业建筑作为案例研究。包括每月平均室外干球温度(T_0),相对湿度(RH)和全球太阳辐射(GSR)在内的天气数据被视为三个输入要素。平均每月收取房东水电费,用于开发和测试模型。另外,使用基于径向基函数(RBF)核的逐步搜索方法,探索了SVM在两个参数C和ε方面的性能。最后,发现所有预测结果的方差系数(CV)均小于3%,误差百分比(%error)则在4%以内。

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