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jakob-schloer edited this page Sep 2, 2020
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The computational expensive cloud resolving model, SPCAM, is surrogated by training a deep neural network (NNCAM).
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Once trained, the NNCAM runs 20 times faster
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The NNCAM captures the mean climate well
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NNCAM learned to conserve energy
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The network is able to interpolate between different temperature scenarios but fails on extrapolation
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NNCAM outperforms a parametrized surrogate model, CTRLCAM
Method:
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NN with 9 layers and 256 nodes per layer
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dimension of data point: x=94, y=65 with 140 mio training points
Question and Discussion:
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Probabilistic surrogate model, e.g. GP, include prior knowledge
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from qualitative to quantitative uncertainty or error estimation
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real world data instead of simulations, why are sparce or missing data a problem?