ALESSIO VERDONE

Dottore di ricerca

ciclo: XXXVII


relatore: prof. Massimo Panella,

Titolo della tesi: Advanced Deep Learning Methodologies for Renewable Energy Sources

Artificial Intelligence and Renewable Energy Sources represent two fields with immense potential to impact the upcoming years: the former enhances data-driven tasks through advanced learning and automation, while Renewable Energy Sources offer sustainable and clean alternatives to traditional fossil fuels. Integrating renewable sources into the global energy landscape has become essential for achieving decarbonization targets; however, the inherent variability and unpredictability of renewable resources, such as solar and wind, pose substantial challenges to their efficient deployment and integration into existing energy grids. Deep learning has already proven to be an effective tool in solving complex tasks across various domains, continuously evolving and improving through advances in architectures, training techniques, and computational resources. Its ability to leverage large amounts of data enables the extraction of intricate patterns and representations, with ongoing developments further enhancing its adaptability, efficiency, and generalization capabilities in increasingly challenging applications. This doctoral thesis investigates the potential of advanced deep learning methodologies in the renewable energy sector, examining their effectiveness across multiple tasks to address key challenges in the field. The research focuses on three core areas: forecasting renewable energy production, detecting anomalies in time series data, and enhancing explainability within energy networks, providing a comprehensive analysis of their capabilities and impact. Furthermore, this doctoral research expanded its focus beyond the primary domain, exploring methodologies that complement Artificial Intelligence, such as quantum computing, and validating advanced architectures like Graph Neural Networks and Data Attribution techniques in entirely different contexts, e.g. high-energy physics or telecommunication. By integrating Artificial Intelligence with cutting-edge technologies across diverse application domains, this work highlights the power of interdisciplinary research in driving innovation and unlocking new opportunities for scientific advancement. These advancements not only address immediate practical issues but also contribute novel theoretical frameworks that push the boundaries of current understanding in the field. In fact, the dual approach of this research, balancing practical application with theoretical innovation, ensures that the findings are both impactful in real-world scenarios and instrumental in advancing academic discourse. By resolving existing challenges and simultaneously laying the groundwork for future theoretical advancements, this work offers a comprehensive and multifaceted contribution to the field of Deep Learning and renewable energy.

Produzione scientifica

11573/1737805 - 2025 - A review of solar and wind energy forecasting: From single-site to multi-site paradigm
Verdone, Alessio; Panella, Massimo; De Santis, Enrico; Rizzi, Antonello - 01a Articolo in rivista
rivista: APPLIED ENERGY (Oxford, United Kingdom: Elsevier Applied Science -London: Applied Science Publishers, 1975-.) pp. 1-19 - issn: 0306-2619 - wos: WOS:001485923400002 (0) - scopus: 2-s2.0-105003948353 (0)

11573/1730179 - 2024 - On the exploration of graph state-space models for spatio-temporal renewable energy forecasting
Verdone, A.; Scardapane, S.; Araneo, R.; Panella, M. - 04b Atto di convegno in volume
congresso: 24th EEEIC International Conference on Environment and Electrical Engineering and 8th I and CPS Industrial and Commercial Power Systems Europe, EEEIC/I and CPS Europe 2024 (Rome; Italy)
libro: Proceedings - 24th EEEIC International Conference on Environment and Electrical Engineering and 8th I and CPS Industrial and Commercial Power Systems Europe, EEEIC/I and CPS Europe 2024 - (979-8-3503-5518-5)

11573/1693989 - 2024 - Explainable spatio-temporal Graph Neural Networks for multi-site photovoltaic energy production
Verdone, A.; Scardapane, S.; Panella, M. - 01a Articolo in rivista
rivista: APPLIED ENERGY (Oxford, United Kingdom: Elsevier Applied Science -London: Applied Science Publishers, 1975-.) pp. 1-13 - issn: 0306-2619 - wos: WOS:001102802800001 (19) - scopus: 2-s2.0-85175323427 (25)

11573/1710446 - 2024 - Temporal Graph Neural Networks and Explainability for Future Energy Scenarios
Verdone, A.; Scardapane, S.; Panella, M. - 04d Abstract in atti di convegno
congresso: XXXVIII Riunione Annuale dei Ricercatori di Elettrotecnica (Bari, Italia)
libro: Memorie ET2024 - ()

11573/1687679 - 2023 - Neural Graphs: An Effective Solution for the Resource Allocation in NFV Sites interconnected by Elastic Optical Networks
Eramo, V.; Lavacca, F. G.; Valente, F.; Filippetti, V.; Rosato, A.; Verdone, A.; Panella, M. - 04b Atto di convegno in volume
congresso: 23rd International Conference on Transparent Optical Networks, ICTON 2023 (rou)
libro: International Conference on Transparent Optical Networks - (979-8-3503-0303-2)

11573/1658030 - 2022 - Multi-site Forecasting of Energy Time Series with Spatio-Temporal Graph Neural Networks
Verdone, A.; Scardapane, S.; Panella, M. - 04b Atto di convegno in volume
congresso: 2022 International Joint Conference on Neural Networks, IJCNN 2022 (Padova, Italy)
libro: Proceedings of the International Joint Conference on Neural Networks - (978-1-7281-8671-9)

11573/1710439 - 2022 - Spatiotemporal graph neural network per energy forecasting e anomaly detection
Verdone, A.; Scardapane, S.; Panella, M. - 04d Abstract in atti di convegno
congresso: XXXVI Riunione Annuale dei Ricercatori di Elettrotecnica (Ancona, Italia)
libro: Memorie ET2022 - ()

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