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Publication Date
8 January 2021

ClimateNet: An Expert-Labeled Open Dataset and Deep Learning Architecture for Enabling High-Precision Analyses of Extreme Weather

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Science

Identifying, detecting, and localizing extreme weather events is a crucial first step in understanding how they may vary under different climate change scenarios. Pattern recognition tasks such as classification, object detection, and segmentation (i.e., pixel-level classification) have remained challenging problems in the weather and climate sciences. Given the success of deep learning (DL) in tackling similar problems in computer vision, we advocate a DL-based approach. DL, however, works best in the context of supervised learning – when labeled datasets are readily available. Reliable labeled training data for extreme weather and climate events is scarce. In this work, we use the curated ClimateNet dataset to train a state-of-the-art DL model for pixel-level identification – i.e., segmentation – of tropical cyclones (TCs) and atmospheric rivers (ARs). We then apply the trained DL model to historical and climate change scenarios simulated by the Community Atmospheric Model (CAM5.1) and show that the DL model accurately segments the data into TCs and ARs.

Impact

We show how the segmentation results can be used to conduct spatially and temporally precise analytics by quantifying distributions of extreme precipitation conditioned on event types (TC or AR) at regional scales. The key contribution of this work is that it paves the way for DL-based automated, high-fidelity, and highly precise analytics of climate data using a curated expert-labeled dataset – ClimateNet.

Summary

In this study, we demonstrate that deep learning models trained on curated expert-labeled climate data – using ClimateNet – are powerful tools for segmenting extreme weather patterns in climate datasets, enabling precision climate data analytics. While our study has been conducted for two important extreme weather patterns (TCs and ARs) in simulation datasets, we believe that this methodology can be applied to a much broader class of patterns and applied to observational and reanalysis data products via transfer learning.

Point of Contact
Katie Dagon
Institution(s)
National Center for Atmospheric Research (NCAR)
Funding Program Area(s)
Publication