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Analog forecasting of extreme-causing weather patterns using deep learning

26 July 2019
Ashesh Chattopadhyay
Ebrahim Nabizadeh
Pedram Hassanzadeh
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Abstract

Numerical weather prediction (NWP) models require ever-growing computing time/resources, but still, have difficulties with predicting weather extremes. Here we introduce a data-driven framework that is based on analog forecasting (prediction using past similar patterns) and employs a novel deep learning pattern-recognition technique (capsule neural networks, CapsNets) and impact-based auto-labeling strategy. CapsNets are trained on mid-tropospheric large-scale circulation patterns (Z500) labeled 0−40-40−4 depending on the existence and geographical region of surface temperature extremes over North America several days ahead. The trained networks predict the occurrence/region of cold or heat waves, only using Z500, with accuracies (recalls) of 69%−45%69\%-45\%69%−45% (77%−48%)(77\%-48\%)(77%−48%) or 62%−41%62\%-41\%62%−41% (73%−47%)(73\%-47\%)(73%−47%) 1−51-51−5 days ahead. CapsNets outperform simpler techniques such as convolutional neural networks and logistic regression. Using both temperature and Z500, accuracies (recalls) with CapsNets increase to ∼80%\sim 80\%∼80% (88%)(88\%)(88%), showing the promises of multi-modal data-driven frameworks for accurate/fast extreme weather predictions, which can augment NWP efforts in providing early warnings.

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