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Using eXtreme Gradient BOOSTing to Predict Changes in Tropical Cyclone Intensity over the Western North Pacific

机译:使用eXtreme梯度升压法预测北太平洋西部热带气旋强度的变化

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Coastal cities in China are frequently hit by tropical cyclones (TCs), which result in tremendous loss of life and property. Even though the capability of numerical weather prediction models to forecast and track TCs has considerably improved in recent years, forecasting the intensity of a TC is still very difficu thus, it is necessary to improve the accuracy of TC intensity prediction. To this end, we established a series of predictors using the Best Track TC dataset to predict the intensity of TCs in the Western North Pacific with an eXtreme Gradient BOOSTing (XGBOOST) model. The climatology and persistence factors, environmental factors, brainstorm features, intensity categories, and TC months are considered inputs for the models while the output is the TC intensity. The performance of the XGBOOST model was tested for very strong TCs such as Hato (2017), Rammasum (2014), Mujiage (2015), and Hagupit (2014). The results obtained show that the combination of inputs chosen were the optimal predictors for TC intensification with lead times of 6, 12, 18, and 24 h. Furthermore, the mean absolute error (MAE) of the XGBOOST model was much smaller than the MAEs of a back propagation neural network (BPNN) used to predict TC intensity. The MAEs of the forecasts with 6, 12, 18, and 24 h lead times for the test samples used were 1.61, 2.44, 3.10, and 3.70 m/s, respectively, for the XGBOOST model. The results indicate that the XGBOOST model developed in this study can be used to improve TC intensity forecast accuracy and can be considered a better alternative to conventional operational forecast models for TC intensity prediction.
机译:中国的沿海城市经常遭受热带气旋(TC)的袭击,这导致巨大的生命和财产损失。尽管近年来数值天气预报模型预报和跟踪TC的能力已大大提高,但预报TC的强度仍然非常困难。因此,有必要提高TC强度预测的准确性。为此,我们使用Best Track TC数据集建立了一系列预测因子,以超梯度渐增(XGBOOST)模型预测北太平洋西部的TC强度。气候和持久性因素,环境因素,头脑风暴特征,强度类别和TC月份被视为模型的输入,而输出为TC强度。 XGBOOST模型的性能已针对非常强大的TC进行了测试,例如Hato(2017),Rammasum(2014),Mujiage(2015)和Hagupit(2014)。获得的结果表明,所选输入的组合是TC强化的最佳预测指标,交货时间为6、12、18和24 h。此外,XGBOOST模型的平均绝对误差(MAE)远小于用于预测TC强度的反向传播神经网络(BPNN)的MAE。对于XGBOOST模型,使用的测试样本的预测交货时间为6、12、18和24小时的MAE分别为1.61、2.44、3.10和3.70 m / s。结果表明,在本研究中开发的XGBOOST模型可用于提高TC强度预测的准确性,并且可以被认为是用于TC强度预测的常规操作预测模型的更好替代方案。

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