Self-organizing maps of typhoon tracks allow for flood forecasts up to two days in advance

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Abstract

Typhoons are among the greatest natural hazards along East Asian coasts. Typhoon-related precipitation can produce flooding that is often only predictable a few hours in advance. Here, we present a machine-learning method comparing projected typhoon tracks with past trajectories, then using the information to predict flood hydrographs for a watershed on Taiwan. The hydrographs provide early warning of possible flooding prior to typhoon landfall, and then real-time updates of expected flooding along the typhoon’s path. The method associates different types of typhoon tracks with landscape topography and runoff data to estimate the water inflow into a reservoir, allowing prediction of flood hydrographs up to two days in advance with continual updates. Modelling involves identifying typhoon track vectors, clustering vectors using a self-organizing map, extracting flow characteristic curves, and predicting flood hydrographs. This machine learning approach can significantly improve existing flood warning systems and provide early warnings to reservoir management.

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Chang, L. C., Chang, F. J., Yang, S. N., Tsai, F. H., Chang, T. H., & Herricks, E. E. (2020). Self-organizing maps of typhoon tracks allow for flood forecasts up to two days in advance. Nature Communications, 11(1). https://doi.org/10.1038/s41467-020-15734-7

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