Temel Kavramlar
Integrating machine learning into underground hydrogen storage (UHS) can facilitate large-scale deployment of this promising long-term energy storage solution to mitigate the intermittency of renewable energy sources.
Özet
The content discusses the potential of using machine learning (ML) to enable efficient and widespread implementation of underground hydrogen storage (UHS) as a solution for addressing the intermittency of renewable energy sources.
Key highlights:
- UHS is emerging as a vital technology for storing excess renewable energy as hydrogen and retrieving it during periods of high demand or low renewable generation. However, the high computational costs of high-fidelity UHS simulations have impeded its large-scale deployment.
- Applying ML to UHS can provide a promising strategy to accelerate UHS performance prediction. However, there are unique challenges in translating existing GCS (geological carbon sequestration) ML methods to the UHS setting due to the more complex operational dynamics of UHS.
- Three key challenges are identified: 1) developing successful auto-regressive models to leverage time extrapolation and monitoring data, 2) modifying GCS architectures to predict both spatial distributions and critical scalar performance metrics, and 3) creating models that produce real-time high-resolution UHS predictions to capture the complex behavior of hydrogen plumes.
- Preliminary results using U-Net models show that auto-regressive models can outperform static models in predicting hydrogen saturation and pressure, though error accumulation remains a concern that requires further investigation.
- The content also highlights the need for high-resolution modeling to accurately capture the behavior of hydrogen plumes, especially in geological formations with preferential flow paths, which can significantly expand the plume footprint.
İstatistikler
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.
In 2022, renewables contributed 13.1% to the US's primary energy consumption and 21.5% to its utility-scale electricity generation.
By 2024, countries like Spain, Germany, and Ireland are expected to generate over 40% of their annual electricity from wind and solar photovoltaics.
Alıntılar
"Underground hydrogen (H2) storage (UHS) is emerging as a vital technology for mitigating the intermittency of renewable energy sources."
"Traditionally, the prediction of UHS performance relies on high-fidelity physics-based reservoir simulations. These simulations accurately predict the H2 movement and pressure changes in geological formations during UHS operations. However, they are extremely computationally intensive, thus delaying the pace of large-scale UHS deployment."