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Increasing Frequency of Anomalous Precipitation Events in Japan Detected by a Deep Learning Autoencoder

Hiroyuki Murakami, Thomas L. Delworth, William Cooke, Sarah Kapnick, Pang‐Chi Hsu

2022Earth s Future11 citationsDOIOpen Access PDF

Abstract

Abstract The frequency of large‐scale anomalous precipitation events associated with heavy precipitation has been increasing in Japan. However, it is unclear if the increase is due to anthropogenic warming or internal variability. Also, it is challenging to develop an objective methodology to identify anomalous events because of the large variety of anomalous precipitation cases. In this study, we applied a deep learning technique to objectively detect anomalous precipitation events in Japan for both observations and simulations using high‐resolution climate models. The results show that the observed increases in anomalous heavy precipitation events in Western Japan during 1977–2015 were not made only by internal variability but the increases in anthropogenic forcing played an important role. Such events will continue to increase in frequency this century. The increases are attributable to the increasing frequency of tropical cyclones and enhanced frontal rainbands near Japan. These results highlight the mitigation challenge posed by the increasing occurrence of unprecedented precipitation events in the future.

Topics & Concepts

PrecipitationClimatologyEnvironmental scienceForcing (mathematics)AutoencoderAtmospheric sciencesMeteorologyGeologyGeographyDeep learningComputer scienceMachine learningClimate variability and modelsTropical and Extratropical Cyclones ResearchMeteorological Phenomena and Simulations