A Statistical Investigation of the Dependence of Tropical Cyclone Intensity Change on the Surrounding Environment
Autor: | Jianqing Fan, Lingzhou Xue, Renzhi Jing, Emmi Yonekura, Yuyan Wang, Ning Lin |
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Rok vydání: | 2017 |
Předmět: |
Atmospheric Science
010504 meteorology & atmospheric sciences Intensity change Feature selection Regression analysis 01 natural sciences Linear function 010104 statistics & probability Nonlinear system 13. Climate action Climatology Environmental science Mixture modeling 0101 mathematics Tropical cyclone 0105 earth and related environmental sciences |
Zdroj: | Monthly Weather Review. 145:2813-2831 |
ISSN: | 1520-0493 0027-0644 |
DOI: | 10.1175/mwr-d-16-0368.1 |
Popis: | A progression of advanced statistical methods is applied to investigate the dependence of the 6-h tropical cyclone (TC) intensity change on various environmental variables, including the recently developed ventilation index (VI). The North Atlantic (NA) and western North Pacific (WNP) observations from 1979 to 2014 are used. As a first step, a model of the intensity change is developed as a linear function of 13 variables used in operational models, obtaining statistical R2 values of 0.26 for NA and 0.3 for WNP. Statistical variable selection techniques are then applied to significantly reduce the number of predictors (to 5–11), while keeping similar R2 values with linear or nonlinear models. Further reduction of the number of predictors (to 5–7) and significant improvement of R2 (0.41–0.53) are obtained with mixture modeling, indicating that the dependence of TC intensification on the environment is nonhomogeneous. Applying VI as the environmental predictor in the mixture modeling gives R2 results (0.41–0.74) similar to or better than those with more environmental variables, confirming that VI is a dominant environmental variable, although its effect on TC intensification is quite heterogeneous. However, the overall predictive R2 results of the mixture models are relatively low (2 values of 0.37 for NA and 0.36 for WNP. The predictability of these statistical models may be further improved by adding oceanic and inner-core process predictors. |
Databáze: | OpenAIRE |
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