A PARALLEL STATISTICAL LEARNING APPROACH TO THE PREDICTION OF BUILDING ENERGY CONSUMPTION BASED ON LARGE DATASETS
The prediction of future energy consumption of buildings based on historical performances is an important approach to achieve energy efficiency. A simulation method is here introduced to obtain sufficient clean historical consumption data to improve the accuracy of the prediction. The widely used statistical learning method, Support Vector Machines (SVMs), is then applied to train and to evaluate the prediction model. Due to the time-consuming problem of the training process, a parallel approach is applied to improve the speed of the training of large amounts of data when considering multiple buildings. The experimental results show very good performance of this model and of the parallel approach, allowing the application of Support Vector Machines on more complex problems of energy efficiency involving large datasets.
Support Vector Machines (SVMs) Prediction Model Energy Efficiency Parallel Computing
ZHAO Hai-xiang Fr(e)d(e)ric MAGOUL(E)S
Applied Mathematics and Systems Laboratory, Ecole Centrale Paris Grande Voie des Vignes, 92295 Chatenay-Malabry Cedex, France
国际会议
武汉
英文
111-115
2009-10-16(万方平台首次上网日期,不代表论文的发表时间)