Perspectives of Machine Learning and Natural Language Processing on Characterizing Positive Energy Districts

被引:5
作者
Han, Mengjie [1 ]
Canli, Ilkim [2 ,3 ]
Shah, Juveria [1 ]
Zhang, Xingxing [1 ]
Dino, Ipek Gursel [2 ,4 ]
Kalkan, Sinan [4 ,5 ]
机构
[1] Dalarna Univ, Sch Informat & Engn, S-79131 Falun, Sweden
[2] Middle East Tech Univ, Dept Architecture, TR-06800 Ankara, Turkiye
[3] Middle East Tech Univ, Ctr Solar Energy Res & Applicat ODTU GUNAM, TR-06800 Ankara, Turkiye
[4] Middle East Tech Univ METU, METU Robot & AI Technol Applicat & Res Ctr METU RO, TR-06800 Ankara, Turkiye
[5] Middle East Tech Univ, Dept Comp Engn, TR-06800 Ankara, Turkiye
关键词
Positive Energy District; machine learning; natural language processing; characterization; ARTIFICIAL-INTELLIGENCE; PREDICTION; MODEL; CONSUMPTION; TRENDS; CLASSIFICATION; EFFICIENCY; COMFORT;
D O I
10.3390/buildings14020371
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
The concept of a Positive Energy District (PED) has become a vital component of the efforts to accelerate the transition to zero carbon emissions and climate-neutral living environments. Research is shifting its focus from energy-efficient single buildings to districts, where the aim is to achieve a positive energy balance across a given time period. Various innovation projects, programs, and activities have produced abundant insights into how to implement and operate PEDs. However, there is still no agreed way of determining what constitutes a PED for the purpose of identifying and evaluating its various elements. This paper thus sets out to create a process for characterizing PEDs. First, nineteen different elements of a PED were identified. Then, two AI techniques, machine learning (ML) and natural language processing (NLP), were introduced and examined to determine their potential for modeling, extracting, and mapping the elements of a PED. Lastly, state-of-the-art research papers were reviewed to identify any contribution they can make to the determination of the effectiveness of the ML and NLP models. The results suggest that both ML and NLP possess significant potential for modeling most of the identified elements in various areas, such as optimization, control, design, and stakeholder mapping. This potential is realized through the utilization of vast amounts of data, enabling these models to generate accurate and useful insights for PED planning and implementation. Several practical strategies have been identified to enhance the characterization of PEDs. These include a clear definition and quantification of the elements, the utilization of urban-scale energy modeling techniques, and the development of user-friendly interfaces capable of presenting model insights in an accessible manner. Thus, developing a holistic approach that integrates existing and novel techniques for PED characterization is essential to achieve sustainable and resilient urban environments.
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页数:28
相关论文
共 152 条
[1]   Renewable power source energy consumption by hybrid machine learning model [J].
Abd El-Aziz, Rasha M. .
ALEXANDRIA ENGINEERING JOURNAL, 2022, 61 (12) :9447-9455
[2]   Machine Learning Techniques in the Energy Consumption of Buildings: A Systematic Literature Review Using Text Mining and Bibliometric Analysis [J].
Abdelaziz, Ahmed ;
Santos, Vitor ;
Dias, Miguel Sales .
ENERGIES, 2021, 14 (22)
[3]   Data science for building energy efficiency: A comprehensive text-mining driven review of scientific literature [J].
Abdelrahman, Mahmoud M. ;
Zhan, Sicheng ;
Miller, Clayton ;
Chong, Adrian .
ENERGY AND BUILDINGS, 2021, 242
[4]   Hydrothermal biomass processing for green energy transition: insights derived from principal component analysis of international patents [J].
Acaru, Silviu Florin ;
Abdullah, Rosnah ;
Lai, Daphne Teck Ching ;
Lim, Ren Chong .
HELIYON, 2022, 8 (09)
[5]  
Ahmadiahangar R, 2019, 2019 IEEE INTERNATIONAL CONFERENCE ON ENVIRONMENT AND ELECTRICAL ENGINEERING AND 2019 IEEE INDUSTRIAL AND COMMERCIAL POWER SYSTEMS EUROPE (EEEIC / I&CPS EUROPE), DOI 10.1109/eeeic.2019.8783634
[6]   Machine Learning Based Energy Management Model for Smart Grid and Renewable Energy Districts [J].
Ahmed, Waqar ;
Ansari, Hammad ;
Khan, Bilal ;
Ullah, Zahid ;
Ali, Sahibzada Muhammad ;
Mehmood, Chaudhry Arshad Arshad ;
Qureshi, Muhammad B. ;
Hussain, Iqrar ;
Jawad, Muhammad ;
Khan, Muhammad Usman Shahid ;
Ullah, Amjad ;
Nawaz, Raheel .
IEEE ACCESS, 2020, 8 :185059-185078
[7]  
Alasadi S.A., 2017, Journal of Engineering and Applied Sciences, V12, P4102, DOI DOI 10.3923/JEASCI.2017.4102.4107
[8]   Definitions of Positive Energy Districts: A Review of the Status Quo and Challenges [J].
Albert-Seifried, Vicky ;
Murauskaite, Lina ;
Massa, Gilda ;
Aelenei, Laura ;
Baer, Daniela ;
Krangsas, Savis Gohari ;
Alpagut, Beril ;
Mutule, Anna ;
Pokorny, Nikola ;
Vandevyvere, Han .
SUSTAINABILITY IN ENERGY AND BUILDINGS 2021, 2022, 263 :493-506
[9]  
Alpagut B., 2019, PROCEEDINGS, V20, DOI [10.3390/proceedings2019020008, DOI 10.3390/PROCEEDINGS2019020008]
[10]   A review of data-driven building energy consumption prediction studies [J].
Amasyali, Kadir ;
El-Gohary, Nora M. .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2018, 81 :1192-1205