热带气象学报2023,Vol.39Issue(6):825-837,13.DOI:10.16032/j.issn.1004-4965.2023.071
基于随机森林的组网雷达龙卷检测算法
TORNADO DETECTION ALGORITHM BASED ON RANDOM FOREST IN RADAR NETWORK
摘要
Abstract
In recent years,extreme severe weather has frequently occurred in China,causing heavy casualties and property losses.As a result,a growing focus has been on the early warning and forecasting of tornadoes and other small to medium-scale severe convective weather events as part of national disaster prevention and mitigation efforts.However,the current tornado detection algorithm exhibits limitations in terms of accuracy and warning time.This algorithm relies on the threshold judgment of the new generation weather radar base data in multiple elevation angles and volume scans to obtain the tornado vortex signature(TVS).The TVS algorithm's tornado warning forecasts are characterized by low accuracy,and the early warning time is short due to the sudden onset of tornadoes and their short generation and lysis duration.The integration of a machine learning algorithm with the multiple features of the tornado,including radar reflectivity,radial velocity,and velocity spectrum width,can effectively improve the accuracy and warning time of tornado recognition.In the present study,the tornado detection algorithm based on random forest(TDA-RF)utilizes CINRAD radar historical tornado data as the training set,classifies the training set through the random forest algorithm to generate a tornado prediction model,and employs the prediction model to detect tornadoes in real-time radar data.The test results show that the TDA-RF algorithm can effectively identify tornadoes of varying intensities.Compared with the TVS tornado detection algorithm,it can calculate the classification probability value of the tornado area.TDA-RF does not require the judgment of the spatiotemporal continuity of tornado features.It is less affected by false and invalid echoes,and the early warning time can reach up to 18 minutes.关键词
天气雷达/龙卷/随机森林/机器学习Key words
weather radar/tornado/random forest/machine learning分类
天文与地球科学引用本文复制引用
曾强宇,卿智鹏,陈亚军,王皓,周红根,刘寅..基于随机森林的组网雷达龙卷检测算法[J].热带气象学报,2023,39(6):825-837,13.基金项目
国家自然科学基金项目(U12342216、U20B2061) (U12342216、U20B2061)
国家重点研发计划项目(2018YFC1506100、2018YFC1506102) (2018YFC1506100、2018YFC1506102)
四川省科技厅项目(2020ZYD051、22ZDYF1935) (2020ZYD051、22ZDYF1935)
大气探测重点开放实验室项目((2021KLAS01M)共同资助 ((2021KLAS01M)