Energy, Journal Year: 2021, Volume and Issue: 224, P. 120187 - 120187
Published: Feb. 22, 2021
Language: Английский
Energy, Journal Year: 2021, Volume and Issue: 224, P. 120187 - 120187
Published: Feb. 22, 2021
Language: Английский
Renewable and Sustainable Energy Reviews, Journal Year: 2020, Volume and Issue: 124, P. 109792 - 109792
Published: March 2, 2020
Language: Английский
Citations
851International 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
560Journal of Cleaner Production, Journal Year: 2020, Volume and Issue: 276, P. 123343 - 123343
Published: Aug. 9, 2020
Language: Английский
Citations
254Applied Sciences, Journal Year: 2020, Volume and Issue: 10(2), P. 487 - 487
Published: Jan. 9, 2020
Forecasting is a crucial task for successfully integrating photovoltaic (PV) output power into the grid. The design of accurate forecasters remains challenging issue, particularly multistep-ahead prediction. Accurate PV forecasting critical in number applications, such as micro-grids (MGs), energy optimization and management, integrated smart buildings, electrical vehicle chartering. Over last decade, vast literature has been produced on this topic, investigating numerical probabilistic methods, physical models, artificial intelligence (AI) techniques. This paper aims at providing complete review recent applications AI techniques; we will focus machine learning (ML), deep (DL), hybrid these branches are becoming increasingly attractive. Special attention be paid to development application DL, well future trends topic.
Language: Английский
Citations
251Electric Power Systems Research, Journal Year: 2022, Volume and Issue: 208, P. 107908 - 107908
Published: March 12, 2022
Language: Английский
Citations
239IEEE Access, Journal Year: 2019, Volume and Issue: 7, P. 74822 - 74834
Published: Jan. 1, 2019
With the fast expansion of renewable energy system installed capacity in recent years, availability, stability, and quality smart grids have become increasingly important. The output forecasting applications also been developing rapidly such techniques particularly applied fields wind solar photovoltaic (PV). In case PV forecasting, many performed with machine learning hybrid techniques. this paper, we propose a high-precision deep neural network model named PVPNet to forecast power. methodology behind proposed is based on networks, able generate 24-h probabilistic deterministic power meteorological information, as temperature, radiation, historical data. accuracy determined by mean absolute error (MAE) root square (RMSE) values. results from experiments show that MAE RMSE algorithm are 109.4845 163.1513, respectively. prove prediction outperforms other benchmark models, effectively predicts complex time series high degree volatility irregularity.
Language: Английский
Citations
214Journal of Cleaner Production, Journal Year: 2020, Volume and Issue: 277, P. 123948 - 123948
Published: Aug. 29, 2020
Language: Английский
Citations
183Renewable Energy, Journal Year: 2021, Volume and Issue: 177, P. 101 - 112
Published: May 22, 2021
Language: Английский
Citations
181Applied Energy, Journal Year: 2020, Volume and Issue: 268, P. 115023 - 115023
Published: April 21, 2020
Language: Английский
Citations
157Renewable and Sustainable Energy Reviews, Journal Year: 2021, Volume and Issue: 150, P. 111459 - 111459
Published: July 16, 2021
Artificial intelligence techniques lead to data-driven energy services in distribution power systems by extracting value from the data generated deployed metering and sensing devices. This paper performs a holistic analysis of artificial applications networks, ranging operation, monitoring maintenance planning. The potential for system needed sources are identified classified. following networks analyzed: topology estimation, observability, fraud detection, predictive maintenance, non-technical losses forecasting, management systems, aggregated flexibility trading. A review methods implemented each these is conducted. Their interdependencies mapped, proving that multiple can be offered as single clustered service different stakeholders. Furthermore, dependencies between AI with identified. In recent years there has been significant rise deep learning time series prediction tasks. Another finding unsupervised mainly being applied customer segmentation, buildings efficiency clustering consumption profile grouping detection. Reinforcement widely design, although more testing real environments needed. Distribution network sensorization should enhanced increased order obtain larger amounts valuable data, enabling better outcomes. Finally, future opportunities challenges applying grids discussed.
Language: Английский
Citations
117