Predicting Energy Consumption in Residential Buildings Using Advanced Machine Learning Algorithms

被引:34
作者
Dinmohammadi, Fateme [1 ,2 ]
Han, Yuxuan [2 ]
Shafiee, Mahmood [3 ]
机构
[1] Univ West London, Sch Comp & Engn, London W5 5RF, England
[2] Univ Coll London UCL, Bartlett Ctr Adv Spatial Anal CASA, Gower St, London WC1E 6BT, England
[3] Univ Surrey, Sch Mech Engn Sci, Guildford GU2 7XH, England
关键词
Net-Zero; energy consumption; residential building; machine learning; prediction; MODEL; DESIGN;
D O I
10.3390/en16093748
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
The share of residential building energy consumption in global energy consumption has rapidly increased after the COVID-19 crisis. The accurate prediction of energy consumption under different indoor and outdoor conditions is an essential step towards improving energy efficiency and reducing carbon footprints in the residential building sector. In this paper, a PSO-optimized random forest classification algorithm is proposed to identify the most important factors contributing to residential heating energy consumption. A self-organizing map (SOM) approach is applied for feature dimensionality reduction, and an ensemble classification model based on the stacking method is trained on the dimensionality-reduced data. The results show that the stacking model outperforms the other models with an accuracy of 95.4% in energy consumption prediction. Finally, a causal inference method is introduced in addition to Shapley Additive Explanation (SHAP) to explore and analyze the factors influencing energy consumption. A clear causal relationship between water pipe temperature changes, air temperature, and building energy consumption is found, compensating for the neglect of temperature in the SHAP analysis. The findings of this research can help residential building owners/managers make more informed decisions around the selection of efficient heating management systems to save on energy bills.
引用
收藏
页数:23
相关论文
共 48 条
[41]   Improving Interpretability and Regularization in Deep Learning [J].
Wu, Chunyang ;
Gales, Mark J. F. ;
Ragni, Anton ;
Karanasou, Penny ;
Sim, Khe Chai .
IEEE-ACM TRANSACTIONS ON AUDIO SPEECH AND LANGUAGE PROCESSING, 2018, 26 (02) :256-265
[42]   Building Energy Prediction Models and Related Uncertainties: A Review [J].
Yu, Jiaqi ;
Chang, Wen-Shao ;
Dong, Yu .
BUILDINGS, 2022, 12 (08)
[43]   A decision tree method for building energy demand modeling [J].
Yu, Zhun ;
Haghighat, Fariborz ;
Fung, Benjamin C. M. ;
Yoshino, Hiroshi .
ENERGY AND BUILDINGS, 2010, 42 (10) :1637-1646
[44]   Energy consumption predicting model of VRV (Variable refrigerant volume) system in office buildings based on data mining [J].
Zhao, Deyin ;
Zhong, Ming ;
Zhang, Xu ;
Su, Xing .
ENERGY, 2016, 102 :660-668
[45]   A review on the prediction of building energy consumption [J].
Zhao, Hai-xiang ;
Magoules, Frederic .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2012, 16 (06) :3586-3592
[46]   Vector field-based support vector regression for building energy consumption prediction [J].
Zhong, Hai ;
Wang, Jiajun ;
Jia, Hongjie ;
Mu, Yunfei ;
Lv, Shilei .
APPLIED ENERGY, 2019, 242 :403-414
[47]   Uncertainty calibration of building energy models by combining approximate Bayesian computation and machine learning algorithms [J].
Zhu, Chuanqi ;
Tian, Wei ;
Yin, Baoquan ;
Li, Zhanyong ;
Shi, Jiaxin .
APPLIED ENERGY, 2020, 268
[48]  
Zorin P., DATA HEATING METERS