Loosely Conditioned Emulation of Global Climate Models With Generative Adversarial Networks

Alexis Ayala, Christopher Drazic, Brian Hutchinson, Ben Kravitz, and Claudia Tebaldi 1 Computer Science Department, Western Washington University, Bellingham, WA 2 Computing & Analytics Division, Pacific Northwest National Laboratory, Richland, WA 3 Earth and Atmospheric Sciences Department, Indiana University, Bloomington, IN 4 Joint Global Change Research Institute, Pacific Northwest National Laboratory, College Park, MD

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