Random forest solar power forecast based on classification optimization DOI
Da Liu, Kun Sun

Energy, Journal Year: 2019, Volume and Issue: 187, P. 115940 - 115940

Published: Aug. 12, 2019

Language: Английский

A review of deep learning for renewable energy forecasting DOI
Huaizhi Wang,

Zhenxing Lei,

Xian Zhang

et al.

Energy Conversion and Management, Journal Year: 2019, Volume and Issue: 198, P. 111799 - 111799

Published: July 17, 2019

Language: Английский

Citations

875

A review and evaluation of the state-of-the-art in PV solar power forecasting: Techniques and optimization DOI
Razin Ahmed, Victor Sreeram, Yateendra Mishra

et al.

Renewable and Sustainable Energy Reviews, Journal Year: 2020, Volume and Issue: 124, P. 109792 - 109792

Published: March 2, 2020

Language: Английский

Citations

849

Artificial intelligence for sustainability: Challenges, opportunities, and a research agenda DOI
Rohit Nishant,

Mike Kennedy,

Jacqueline Corbett

et al.

International Journal of Information Management, Journal Year: 2020, Volume and Issue: 53, P. 102104 - 102104

Published: April 20, 2020

Language: Английский

Citations

695

Forecasting: theory and practice DOI Creative Commons
Fotios Petropoulos, Daniele Apiletti,

Vassilios Assimakopoulos

et al.

International Journal of Forecasting, Journal Year: 2022, Volume and Issue: 38(3), P. 705 - 871

Published: Jan. 20, 2022

Forecasting has always been at the forefront of decision making and planning. The uncertainty that surrounds future is both exciting challenging, with individuals organisations seeking to minimise risks maximise utilities. large number forecasting applications calls for a diverse set methods tackle real-life challenges. This article provides non-systematic review theory practice forecasting. We provide an overview wide range theoretical, state-of-the-art models, methods, principles, approaches prepare, produce, organise, evaluate forecasts. then demonstrate how such theoretical concepts are applied in variety contexts. do not claim this exhaustive list applications. However, we wish our encyclopedic presentation will offer point reference rich work undertaken over last decades, some key insights practice. Given its nature, intended mode reading non-linear. cross-references allow readers navigate through various topics. complement covered by lists free or open-source software implementations publicly-available databases.

Language: Английский

Citations

560

A day-ahead PV power forecasting method based on LSTM-RNN model and time correlation modification under partial daily pattern prediction framework DOI
Fei Wang, Zhiming Xuan, Zhao Zhen

et al.

Energy Conversion and Management, Journal Year: 2020, Volume and Issue: 212, P. 112766 - 112766

Published: April 10, 2020

Language: Английский

Citations

512

Prediction of solar energy guided by pearson correlation using machine learning DOI

Imane Jebli,

Fatima-Zahra Belouadha, Mohammed Issam Kabbaj

et al.

Energy, Journal Year: 2021, Volume and Issue: 224, P. 120109 - 120109

Published: Feb. 19, 2021

Language: Английский

Citations

384

Review on forecasting of photovoltaic power generation based on machine learning and metaheuristic techniques DOI Open Access

Muhammad Naveed Akhter,

Saad Mekhilef, Hazlie Mokhlis

et al.

IET Renewable Power Generation, Journal Year: 2019, Volume and Issue: 13(7), P. 1009 - 1023

Published: Feb. 7, 2019

The modernisation of the world has significantly reduced prime sources energy such as coal, diesel and gas. Thus, alternative based on renewable have been a major focus nowadays to meet world's demand at same time reduce global warming. Among these sources, solar is source that used generate electricity through photovoltaic (PV) system. However, performance power generated highly sensitive climate seasonal factors. unpredictable behaviour affects output causes an unfavourable impact stability, reliability operation grid. Thus accurate forecasting PV crucial requirement ensure stability This study provides systematic critical review methods forecast with main metaheuristic machine learning methods. Advantages disadvantages each method are summarised, historical data along horizons input parameters. Finally, comprehensive comparison between compiled assist researchers in choosing best technique for future research.

Language: Английский

Citations

368

Photovoltaic power forecasting based LSTM-Convolutional Network DOI
Kejun Wang, Xiaoxia Qi, Hongda Liu

et al.

Energy, Journal Year: 2019, Volume and Issue: 189, P. 116225 - 116225

Published: Sept. 26, 2019

Language: Английский

Citations

348

Extensive comparison of physical models for photovoltaic power forecasting DOI Creative Commons
Martin János Mayer, Gyula Gróf

Applied Energy, Journal Year: 2020, Volume and Issue: 283, P. 116239 - 116239

Published: Dec. 4, 2020

Forecasting the power production of grid-connected photovoltaic (PV) plants is essential for both profitability and prospects technology. Physically inspired modelling represents a common approach in calculating expected output from numerical weather prediction data. The model selection has high effect on physical PV forecasting accuracy, as difference between most least accurate chains 13% mean absolute error (MAE), 12% root square (RMSE), 23–33% skill scores plant average. forecast performance analysis performed verified one-year 15-min resolution data 16 Hungary day-ahead intraday time horizons all possible combinations nine direct diffuse irradiance separation, ten tilted transposition, three reflection loss, five cell temperature, four module performance, two shading inverter models. critical calculation steps are identified separation transposition modelling, while models important. Absolute squared errors conflicting metrics, more detailed result lowest MAE, simplest ones have RMSE. Wind speed forecasts only marginal prediction. results this study contribute to deeper understanding research community, main conclusions also beneficial owners preparing their generation forecasts.

Language: Английский

Citations

268

Taxonomy research of artificial intelligence for deterministic solar power forecasting DOI
Huaizhi Wang, Yangyang Liu, Bin Zhou

et al.

Energy Conversion and Management, Journal Year: 2020, Volume and Issue: 214, P. 112909 - 112909

Published: May 1, 2020

Language: Английский

Citations

266