Discovering state-parameter mappings in subsurface models using generative adversarial networks

30 Oct 2018Alexander Y. Sun

A fundamental problem in geophysical modeling is related to the identification and approximation of causal structures among physical processes. However, resolving the bidirectional mappings between physical parameters and model state variables (i.e., solving the forward and inverse problems) is challenging, especially when parameter dimensionality is high... (read more)

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