학술논문

Enabling Clean Energy Resilience with Machine Learning-Empowered Underground Hydrogen Storage
Document Type
Working Paper
Source
Subject
Computer Science - Machine Learning
Electrical Engineering and Systems Science - Systems and Control
Language
Abstract
To address the urgent challenge of climate change, there is a critical need to transition away from fossil fuels towards sustainable energy systems, with renewable energy sources playing a pivotal role. However, the inherent variability of renewable energy, without effective storage solutions, often leads to imbalances between energy supply and demand. Underground Hydrogen Storage (UHS) emerges as a promising long-term storage solution to bridge this gap, yet its widespread implementation is impeded by the high computational costs associated with high fidelity UHS simulations. This paper introduces UHS from a data-driven perspective and outlines a roadmap for integrating machine learning into UHS, thereby facilitating the large-scale deployment of UHS.
Comment: 10 pages, 4 figures, accepted proposal track paper at ICLR CCAI workshop