Sampling Strategy Analysis of Machine Learning Models for Energy Consumption Prediction

Zeqing Wu, Weishen Chu
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引用次数: 19

Abstract

With the development of the Internet of things (IoT), energy consumption of smart buildings has been widely concerned. The prediction of building energy consumption is of great significance for energy conservation and environmental protection as well as the construction of smart city. With the development of artificial intelligence, machine learning technology has been introduced to energy consumption prediction. In this study, multiple learning algorithms including Support Vector Regression (SVR), Artificial Neural Network (ANN), Random Forest (RF) are developed to perform energy consumption prediction. The most appropriate machine learning algorithm for energy consumption prediction has been investigated and found to be the random forest algorithm. Based on the developed machine learning models, studies on the sampling strategy for energy consumption prediction have been conducted. It is found that the variance of data has a significant effect on the prediction accuracy, and a better prediction result can be achieved by increasing the sampling density over the data with high variance. This result can be used to optimize the machine learning algorithm for building energy consumption prediction and improve the computational efficiency.
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能源消耗预测机器学习模型的抽样策略分析
随着物联网的发展,智能建筑的能耗问题受到广泛关注。建筑能耗预测对于节能环保和智慧城市建设具有重要意义。随着人工智能的发展,机器学习技术被引入到能源消耗预测中。本研究采用支持向量回归(SVR)、人工神经网络(ANN)、随机森林(RF)等多种学习算法进行能耗预测。研究发现,最适合用于能源消耗预测的机器学习算法是随机森林算法。基于所建立的机器学习模型,对能源消耗预测的采样策略进行了研究。研究发现,数据的方差对预测精度有显著影响,在方差较大的数据上增加采样密度可以获得较好的预测结果。该结果可用于优化建筑能耗预测的机器学习算法,提高计算效率。
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