AIPREF 2023
First International Workshop on
AI-Powered Renewable Energy Forecasting: Techniques and Challenges
December 15-18, Sorrento (Italy)
DESCRIPTION
The European Green Deal, an extremely ambitious set of policies that should allow European citizens and businesses to profit from a sustainable green transition, aims to make Europe the first climate-neutral continent by 2050.
Renewable energy sources such as solar, and wind, are therefore becoming increasingly popular due to their clean and sustainable nature.
The use of renewable energy provides a number of potential advantages, such as a decrease in greenhouse gas emissions, the diversification of energy sources, and a decreased reliance on the markets for fossil fuels (especially oil and gas).
However, accurate estimation of energy production from these sources is crucial in ensuring a reliable and consistent supply. To achieve this goal, big data analysis supported by sophisticated models and forecasting techniques is required. These models have to accurately calculate the amount of energy that can be produced, which helps in planning and managing the power grid. This is where artificial intelligence (AI) come into play. Machine learning, Deep learning models and other AI-based technologies can analyze large amounts of data, including historical weather patterns, sensor data, and satellite imagery, to make more accurate predictions about renewable energy production. By using AI to predict renewable energy output, grid operators can better manage the supply of energy, prevent outages, and ensure that energy is distributed efficiently. Additionally, AI can help to optimize the use of energy storage systems, allowing excess energy to be stored and used during times of low production.
The AIPREF workshop is a gathering of experts in the fields of artificial intelligence and renewable energy. The purpose of the workshop is to share the latest research and developments in AI techniques for forecasting renewable energy production, such as solar and wind power.
The workshop will be of interest to researchers, engineers, and industry professionals who are working on developing AI techniques for renewable energy forecasting. It will provide an opportunity for participants to learn from one another, share best practices, and collaborate on future research and development in this important field.
TOPICS
Topics of interest include but are not limited to:
Machine learning and deep learning models for renewable energy forecasting
Hybrid forecasting models using both physical and AI-based models
Real-time renewable energy forecasting using AI
Time series analysis for renewable energy forecasting
Statistical models for renewable energy forecasting
Big data preprocessing techniques for renewable energy forecasting
Integration of AI-based renewable energy forecasting models into energy management systems
Real-world case studies and applications of AI-based renewable energy forecasting models
Uncertainty analysis and risk assessment in renewable energy forecasting using AI
Data visualization and interpretation of renewable energy forecasts
Data acquisition, pre-processing, and management for renewable energy forecasting
Overview of machine learning and deep learning algorithms for renewable energy forecasting
PAPER SUBMISSION
Authors can submit their papers at this link
All accepted papers will be included in the Workshop Proceedings published by the IEEE Computer Society Press, and made available at the Conference. Proceedings will be included in the IEEE digital library indexed by Google Scholar and Scopus.
The workshop organizers are negotiating a special journal issue. Further details will be provided in the next future.
TEMPLATE
The IEEE conference template can be found at this link
IMPORTANT DATES
Nov 13, 2023 (Extended): Due date for full workshop papers submission
Nov 15, 2023 (Extended): Notification of paper acceptance to authors
Nov 22, 2023 (Extended): Camera-ready of accepted papers
Dec 15-18, 2023: Workshops
PROGRAM CHAIRS
Luciano Caroprese, InGeo, University “G. d’Annunzio” of Chieti-Pescara
Sergio Montelpare, InGeo, University “G. d’Annunzio” of Chieti-Pescara
Mariano Pierantozzi, InGeo, University “G. d’Annunzio” of Chieti-Pescara
Ester Zumpano, DIMES, University of Calabria
PROGRAM COMMITTEE MEMBERS
Luciano Caroprese, InGeo, University “G. d’Annunzio” of Chieti-Pescara
Sergio Montelpare, InGeo, University “G. d’Annunzio” of Chieti-Pescara
Mariano Pierantozzi, InGeo, University “G. d’Annunzio” of Chieti-Pescara
Eugenio Vocaturo, CNR Nanotec, Italy
Ester Zumpano, DIMES, University of Calabria, Italy
Camilla Lops, InGeo, University “G. d’Annunzio” of Chieti-Pescara
Sanghoon Lee, College of Computing and Software Engineering, Kennesaw State University
Tommaso Ruga, DIMES University of Calabria, Italy
INFO