Energy Demand Forecasting and Optimizing Electric Systems for Developing Countries

被引:11
作者
Arnob, Saadman S. [1 ]
Arefin, Abu Isha Md. Sadot [1 ,2 ]
Saber, Ahmed Y. [3 ]
Mamun, Khondaker A. [1 ,2 ]
机构
[1] United Int Univ, Adv Intelligent Multidisciplinary Syst AIMS Lab, Dhaka 1212, Bangladesh
[2] United Int Univ, Dept Comp Sci & Engn, Dhaka 1212, Bangladesh
[3] Operat Technol Inc, ETAP, Irvine, CA 92618 USA
关键词
Systematics; Developing countries; Predictive models; Load modeling; Load forecasting; Databases; Data models; Energy management; Artificial neural networks; Machine learning; Time series analysis; Electricity load forecasting; systematic review; energy demand forecasting; artificial neural network; developing countries; machine learning; time series techniques; long term forecasting; short term forecasting; SUPPORT VECTOR MACHINE; DEEP LEARNING-MODEL; SHORT-TERM; TIME-SERIES; GENETIC ALGORITHM; FEATURE-SELECTION; RANDOM FOREST; POWER LOAD; CONSUMPTION; OPTIMIZATION;
D O I
10.1109/ACCESS.2023.3250110
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Currently, developing countries are experiencing a massive shift toward industrialization. Developing countries lack the technical sophistication and infrastructure to encourage low-carbon and sustainable economic growth because of weak public awareness, regulations, and technology. Developing countries must plan the industrialization process for maximum energy efficiency of production, thereby reducing their CO textsubscript 2 emissions significantly by increasing energy efficiency. This paper presents a systematic survey on the current pragmatic methods for forecasting the future load demands from minutes to years ahead in developing countries, following the Preferred Reporting Items for Systematic review and Meta-Analysis Protocols (PRISMA-P). The primary focus of this systematic survey paper is to provide an optimal forecasting model selection strategy for potential researchers and forecasters. Based on the strengths and weaknesses of the different models, we will discuss the most suitable methods to tailor them to multiple applications and scenarios of load forecasting. The comparison elements are Forecast horizons, Spatio-temporal resolutions, factors affecting the load, different dimensional reduction techniques, model complexity analysis, and the MAPE for error analysis. From the results, We have found ANN hybridized with meta-heuristic techniques to be superior in most of the analysis cases. ANN's ability to handle non-linear data, flexibility, and robustness is why. Consumption data aggregated at the national level can capture trends efficiently. Meteorological and calendar features influence short-term forecasting extensively, whereas economic factors influence long-term load patterns. Finally, we have identified the trends and research gaps from the existing literature, presenting relevant technical recommendations for improvement.
引用
收藏
页码:39751 / 39775
页数:25
相关论文
共 119 条
[1]  
Abdullah AG, 2018, J ENG SCI TECHNOL, V13, P2395
[2]   Hybrid Particle Swarm Optimization With Genetic Algorithm to Train Artificial Neural Networks for Short-Term Load Forecasting [J].
Abeyrathna, Kuruge Darshana ;
Jeenanunta, Chawalit .
INTERNATIONAL JOURNAL OF SWARM INTELLIGENCE RESEARCH, 2019, 10 (01) :1-14
[3]   A Comprehensive Review of the Load Forecasting Techniques Using Single and Hybrid Predictive Models [J].
Al Mamun, Abdullah ;
Sohel, Md ;
Mohammad, Naeem ;
Sunny, Md Samiul Haque ;
Dipta, Debopriya Roy ;
Hossain, Eklas .
IEEE ACCESS, 2020, 8 :134911-134939
[4]   A Real-Time Electrical Load Forecasting in Jordan Using an Enhanced Evolutionary Feedforward Neural Network [J].
Alhmoud, Lina ;
Abu Khurma, Ruba ;
Al-Zoubi, Ala' M. ;
Aljarah, Ibrahim .
SENSORS, 2021, 21 (18)
[5]   A study of hybrid data selection method for a wavelet SVR mid-term load forecasting model [J].
Alirezaei, Hamid Reza ;
Salami, Abolfazl ;
Mohammadinodoushan, Mohammad .
NEURAL COMPUTING & APPLICATIONS, 2019, 31 (07) :2131-2141
[6]  
Ananthu D. P., 2021, INT J ELECT ELECT RE, V9, P114
[7]   Long-term electrical energy consumption forecasting for developing and developed economies based on different optimized models and historical data types [J].
Ardakani, F. J. ;
Ardehali, M. M. .
ENERGY, 2014, 65 :452-461
[8]  
Asrari A, 2012, PRZ ELEKTROTECHNICZN, V88, P228
[9]   Optimum estimation and forecasting of renewable energy consumption by artificial neural networks [J].
Azadeh, A. ;
Babazadeh, R. ;
Asadzadeh, S. M. .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2013, 27 :605-612
[10]   Optimization of Short Load Forecasting in Electricity Market of Iran Using Artificial Neural Networks [J].
Azadeh, Ali ;
Ghaderi, Seyyed Farid ;
Sheikhalishahi, Mohammad ;
Nokhandan, Behnaz Pourvalikhan .
OPTIMIZATION AND ENGINEERING, 2014, 15 (02) :485-508