AO-PHAIFeb 1, 2024

Climate Trends of Tropical Cyclone Intensity and Energy Extremes Revealed by Deep Learning

arXiv:2402.00362v1h-index: 11
Originality Incremental advance
AI Analysis

This addresses the problem of projecting future TC impacts on society under climate change by providing objective data for climate studies, though it is incremental in applying deep learning to satellite imagery for trend analysis.

The study tackled the uncertainty in past tropical cyclone (TC) structure and energy trends due to limited observations by using deep learning to reconstruct a global TC wind profile dataset from 1981 to 2020, revealing that the proportion of major TCs increased by ~13% and extremely high-energy TCs by ~25% over four decades.

Anthropogenic influences have been linked to tropical cyclone (TC) poleward migration, TC extreme precipitation, and an increased proportion of major hurricanes [1, 2, 3, 4]. Understanding past TC trends and variability is critical for projecting future TC impacts on human society considering the changing climate [5]. However, past trends of TC structure/energy remain uncertain due to limited observations; subjective-analyzed and spatiotemporal-heterogeneous "best-track" datasets lead to reduced confidence in the assessed TC repose to climate change [6, 7]. Here, we use deep learning to reconstruct past "observations" and yield an objective global TC wind profile dataset during 1981 to 2020, facilitating a comprehensive examination of TC structure/energy. By training with uniquely labeled data integrating best tracks and numerical model analysis of 2004 to 2018 TCs, our model converts multichannel satellite imagery to a 0-750-km wind profile of axisymmetric surface winds. The model performance is verified to be sufficient for climate studies by comparing it to independent satellite-radar surface winds. Based on the new homogenized dataset, the major TC proportion has increased by ~13% in the past four decades. Moreover, the proportion of extremely high-energy TCs has increased by ~25%, along with an increasing trend (> one standard deviation of the 40-y variability) of the mean total energy of high-energy TCs. Although the warming ocean favors TC intensification, the TC track migration to higher latitudes and altered environments further affect TC structure/energy. This new deep learning method/dataset reveals novel trends regarding TC structure extremes and may help verify simulations/studies regarding TCs in the changing climate.

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