Southwest Pacific tropical cyclone development classification utilizing machine learning and synoptic composites

被引:2
|
作者
Bhowmick, Rupsa [1 ]
Trepanier, Jill C. [1 ]
Haberlie, Alex M. [1 ]
机构
[1] Louisiana State Univ, Dept Geog & Anthropol, Baton Rouge, LA 70803 USA
关键词
composite maps; machine learning classification; Southwest Pacific Ocean basin; Tropical cyclone development; SEA-SALT AEROSOL; AUSTRALIAN REGION; INTERANNUAL VARIABILITY; ANTHROPOGENIC AEROSOLS; SOUTHERN-OSCILLATION; DATA ASSIMILATION; INTENSITY CHANGE; WESTERN PACIFIC; DECISION-TREE; CLIMATE;
D O I
10.1002/joc.7457
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
This study evaluates the ability of machine learning algorithms to classify tropical depressions (TDs) and tropical storms (TSs) in the western region of the southwest Pacific Ocean (SWPO). Decision rules are generated to predict the environment required for a depression to fully develop into a mature storm, and the most influential predictors in the classification decision are ranked. TD and TS are discriminated based on a maximum sustained wind speed threshold (>= 17 ms(-1)). Various aerosol, thermodynamic, and dynamic parameters are extracted closest to the initiation point of each non-developing and developing sample. The covariates associated with each labelled sample are used to train a decision tree and random forest model. Results using a testing dataset suggest the random forest approach more accurately distinguishes between non-developing and developing samples. The classification accuracy of the decision tree and random forest are 72% and 91%, respectively. Random forest outperformed the decision tree by providing higher accuracy in test data. The most important variables for binary classification are sea salt aerosol optical depth (AOD), 1,000 mb relative humidity, and sea surface temperature. AOD is a quantitative estimate of the aerosols presents in the air through the extinction of a ray of light as it passes through the atmosphere. Mean composite maps constructed in an unsupervised manner have been created for the most important variables identified by the random forest classifier during TD and TS events to highlight the difference in geophysical and aerosol variables' climatology during the two different classifications. This work will advance the risk management strategies for northeastern Australia and other SWPO basin islands to control their tropical cyclone related losses through prioritizing forecasting variables that are the strongest predictors of the strengthening of tropical depressions into tropical cyclones.
引用
收藏
页码:4187 / 4213
页数:27
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