CCSNet.ai Web App Launch - A Deep Learning Modeling Suite for CO2 Storage
Event Details:
Location
Stanford Center for Carbon Storage
Online Virtual Presentation
United States
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This webinar introduces the brand new CCSNet.ai web application, which provides instantaneous modeling predictions for CO2 storage problems. Numerical simulation is an essential tool for many applications involving subsurface flow and transport, yet often suffers from computational challenges due to the multi-physics nature, highly non-linear governing equations, inherent parameter uncertainties, and the need for high spatial resolutions to capture multi-scale heterogeneity. We developed CCSNet, a general-purpose deep-learning modeling suite that can act as an alternative to conventional numerical simulators for carbon capture and storage (CCS) problems where CO2 is injected into saline aquifers in 2d-radial systems. CCSNet consists of a sequence of deep learning models producing all the outputs that a numerical simulator typically provides, including saturation distributions, pressure buildup, dry-out, fluid densities, mass balance, solubility trapping, and sweep efficiency. The results are 1,000 to 10,000 times faster than conventional numerical simulators.