Load Forecasting in an Office Building with Different Data Structure and Learning Parameters

被引:21
作者
Ramos, Daniel [1 ,2 ]
Khorram, Mahsa [1 ,2 ]
Faria, Pedro [1 ,2 ]
Vale, Zita [2 ]
机构
[1] GECAD Res Grp Intelligent Engn & Comp Adv Innovat, Rua DR,Antonio Bernardino de Almeida 431, P-4200072 Porto, Portugal
[2] Polytech Porto, Rua DR,Antonio Bernardino de Almeida 431, P-4200072 Porto, Portugal
来源
FORECASTING | 2021年 / 3卷 / 01期
关键词
building energy management; forecast; neural network; SCADA; user comfort; ENERGY MANAGEMENT; DEMAND RESPONSE; SYSTEM;
D O I
10.3390/forecast3010015
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Energy efficiency topics have been covered by several energy management approaches in the literature, including participation in demand response programs where the consumers provide load reduction upon request or price signals. In such approaches, it is very important to know in advance the electricity consumption for the future to adequately perform the energy management. In the present paper, a load forecasting service designed for office buildings is implemented. In the building, using several available sensors, different learning parameters and structures are tested for artificial neural networks and the K-nearest neighbor algorithm. Deep focus is given to the individual period errors. In the case study, the forecasting of one week of electricity consumption is tested. It has been concluded that it is impossible to identify a single combination of learning parameters as different parts of the day have different consumption patterns.
引用
收藏
页码:242 / 255
页数:14
相关论文
共 35 条
[1]  
Abrishambaf O., 2018, Energy Informatics, V1, P3, DOI [10.1186/s42162-018-0006-6, DOI 10.1186/S42162-018-0006-6]
[2]   Smart energy forecasting strategy with four machine learning models for climate-sensitive and non-climate sensitive conditions [J].
Ahmad, Tanveer ;
Chen Huanxin ;
Zhang, Dongdong ;
Zhang, Hongcai .
ENERGY, 2020, 198 (198)
[3]   A review on renewable energy and electricity requirement forecasting models for smart grid and buildings [J].
Ahmad, Tanveer ;
Zhang, Hongcai ;
Yan, Biao .
SUSTAINABLE CITIES AND SOCIETY, 2020, 55
[4]   Forest and Trees: Exploring Bacterial Virulence with Genome-wide Association Studies and Machine Learning [J].
Allen, Jonathan P. ;
Snitkin, Evan ;
Pincus, Nathan B. ;
Hauser, Alan R. .
TRENDS IN MICROBIOLOGY, 2021, 29 (07) :621-633
[5]  
Armstrong J.S., 1985, LONG RANGE FORECASTI
[6]  
Barrash S, 2019, 2019 IEEE 8TH INTERNATIONAL WORKSHOP ON COMPUTATIONAL ADVANCES IN MULTI-SENSOR ADAPTIVE PROCESSING (CAMSAP 2019), P241, DOI [10.1109/camsap45676.2019.9022509, 10.1109/CAMSAP45676.2019.9022509]
[7]  
Bless K, P 2009 IEEE POW EN S, P1, DOI [10.1109/PES.2009.5275391, DOI 10.1109/PES.2009.5275391]
[8]   Modeling and forecasting building energy consumption: A review of data-driven techniques [J].
Bourdeau, Mathieu ;
Zhai, Xiao Qiang ;
Nefzaoui, Elyes ;
Guo, Xiaofeng ;
Chatellier, Patrice .
SUSTAINABLE CITIES AND SOCIETY, 2019, 48
[9]   Model predictive control of commercial buildings in demand response programs in the presence of thermal storage [J].
Cao, Yan ;
Du, Jiang ;
Soleymanzadeh, Ehsan .
JOURNAL OF CLEANER PRODUCTION, 2019, 218 :315-327
[10]   Explaining the Success of Nearest Neighbor Methods in Prediction [J].
Chen, George H. ;
Shah, Devavrat .
FOUNDATIONS AND TRENDS IN MACHINE LEARNING, 2018, 10 (5-6) :337-588