Structural Forecasting for Short-Term Tropical Cyclone Intensity Guidance

Author:

McNeely Trey12,Khokhlov Pavel3,Dalmasso Niccolò1,Wood Kimberly M.4,Lee Ann B.1

Affiliation:

1. a Department of Statistics and Data Science, Carnegie Mellon University, Pittsburgh, Pennsylvania

2. d Microsoft AI Development Acceleration Program, Cambridge, Massachusetts

3. b Machine Learning Department, Carnegie Mellon University, Pittsburgh, Pennsylvania

4. c Department of Geosciences, Mississippi State University, Mississippi State, Mississippi

Abstract

Abstract Because geostationary satellite (Geo) imagery provides a high temporal resolution window into tropical cyclone (TC) behavior, we investigate the viability of its application to short-term probabilistic forecasts of TC convective structure to subsequently predict TC intensity. Here, we present a prototype model that is trained solely on two inputs: Geo infrared imagery leading up to the synoptic time of interest and intensity estimates up to 6 h prior to that time. To estimate future TC structure, we compute cloud-top temperature radial profiles from infrared imagery and then simulate the evolution of an ensemble of those profiles over the subsequent 12 h by applying a deep autoregressive generative model (PixelSNAIL). To forecast TC intensities at hours 6 and 12, we input operational intensity estimates up to the current time (0 h) and simulated future radial profiles up to +12 h into a “nowcasting” convolutional neural network. We limit our inputs to demonstrate the viability of our approach and to enable quantification of value added by the observed and simulated future radial profiles beyond operational intensity estimates alone. Our prototype model achieves a marginally higher error than the National Hurricane Center’s official forecasts despite excluding environmental factors, such as vertical wind shear and sea surface temperature. We also demonstrate that it is possible to reasonably predict short-term evolution of TC convective structure via radial profiles from Geo infrared imagery, resulting in interpretable structural forecasts that may be valuable for TC operational guidance. Significance Statement This work presents a new method of short-term probabilistic forecasting for tropical cyclone (TC) convective structure and intensity using infrared geostationary satellite observations. Our prototype model’s performance indicates that there is some value in observed and simulated future cloud-top temperature radial profiles for short-term intensity forecasting. The nonlinear nature of machine learning tools can pose an interpretation challenge, but structural forecasts produced by our model can be directly evaluated and, thus, may offer helpful guidance to forecasters regarding short-term TC evolution. Since forecasters are time limited in producing each advisory package despite a growing wealth of satellite observations, a tool that captures recent TC convective evolution and potential future changes may support their assessment of TC behavior in crafting their forecasts.

Funder

National Science Foundation

C3.ai Digital Transformation Institute

Publisher

American Meteorological Society

Subject

Atmospheric Science

Reference38 articles.

1. Chen, X., N. Mishra, M. Rohaninejad, and P. Abbeel, 2018: PixelSNAIL: An improved autoregressive generative model. Proc. 35th Int. Conf. on Machine Learning, Stockholm, Sweden, PMLR, 864–872, https://proceedings.mlr.press/v80/chen18h.html.

2. Combinido, J. S., J. R. Mendoza, and J. Aborot, 2018: A convolutional neural network approach for estimating tropical cyclone intensity using satellite-based infrared images. 24th Int. Conf. on Pattern Recognition (ICPR), Beijing, China, Institute of Electrical and Electronics Engineers, 1474–1480, https://doi.org/10.1109/ICPR.2018.8545593.

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4. DeMaria, M., 2018: SHIPS developmental database file format and predictor descriptions: Developmental Data. Colorado State University, accessed 10 August 2022, https://rammb.cira.colostate.edu/research/tropical_cyclones/ships/developmental_data.asp.

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