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Differentiable Physics-informed Graph Networks

About

While physics conveys knowledge of nature built from an interplay between observations and theory, it has been considered less importantly in deep neural networks. Especially, there are few works leveraging physics behaviors when the knowledge is given less explicitly. In this work, we propose a novel architecture called Differentiable Physics-informed Graph Networks (DPGN) to incorporate implicit physics knowledge which is given from domain experts by informing it in latent space. Using the concept of DPGN, we demonstrate that climate prediction tasks are significantly improved. Besides the experiment results, we validate the effectiveness of the proposed module and provide further applications of DPGN, such as inductive learning and multistep predictions.

Sungyong Seo, Yan Liu• 2019

Related benchmarks

TaskDatasetResultRank
Multi-step forecastingSD
MSE0.6714
14
One-step forecastingSD
MSE0.5149
14
Multi-step forecastingLA
MSE0.8677
14
One-step forecastingLA
MSE0.4435
14
One-step predictionLA area temperature (test)
MSE0.4435
5
One-step predictionSD area temperature (test)
MSE0.5149
5
Climate PredictionClimate Data LA to SD (inductive)
MSE0.5729
4
Climate PredictionClimate Data SD to LA (inductive)
MSE0.7222
4
Multistep predictionLA area temperature (test)
MSE0.8677
4
Multistep predictionSD area temperature (test)
MSE0.6714
4
Showing 10 of 10 rows

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