Radar-based Hail-producing Storm Detection Using Positive Unlabeled Classification

Machine learning methods have been widely used in many fields of weather forecasting. However, some severe weather, such as hailstorm, is difficult to be completely and accurately recorded. These inaccurate data sets will affect the performance of machine-learning-based forecasting models. In this p...

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Main Authors: Junzhi Shi, Ping Wang, Di Wang, Huizhen Jia
Format: Article
Language:English
Published: Faculty of Mechanical Engineering in Slavonski Brod, Faculty of Electrical Engineering in Osijek, Faculty of Civil Engineering in Osijek 2020-01-01
Series:Tehnički Vjesnik
Subjects:
Online Access:https://hrcak.srce.hr/file/347085
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spelling doaj-56fb93c73aa44b74a8348e69c94e27af2020-11-25T04:04:23ZengFaculty of Mechanical Engineering in Slavonski Brod, Faculty of Electrical Engineering in Osijek, Faculty of Civil Engineering in Osijek Tehnički Vjesnik1330-36511848-63392020-01-01273941950Radar-based Hail-producing Storm Detection Using Positive Unlabeled ClassificationJunzhi Shi0Ping Wang1Di Wang2Huizhen Jia3School of Electrical and Information Engineering, Tianjin University, Tianjin, 300072, ChinaSchool of Electrical and Information Engineering, Tianjin University, Tianjin, 300072, ChinaSchool of Electrical and Information Engineering, Tianjin University, Tianjin, 300072, ChinaTianjin Bureau of Meteorology, Tianjin 300074, ChinaMachine learning methods have been widely used in many fields of weather forecasting. However, some severe weather, such as hailstorm, is difficult to be completely and accurately recorded. These inaccurate data sets will affect the performance of machine-learning-based forecasting models. In this paper, a weather-radar-based hail-producing storm detection method is proposed. This method utilizes the bagging class-weighted support vector machine to learn from partly labeled hail case data and the other unlabeled data, with features extracted from radar and sounding data. The real case data from three radars of North China are used for evaluation. Results suggest that the proposed method could improve both the forecast accuracy and the forecast lead time comparing with the commonly used radar parameter methods. Besides, the proposed method works better than the method with the supervised learning model in any situation, especially when the number of positive samples contaminated in the unlabeled set is large.https://hrcak.srce.hr/file/347085hailstormmachine learningpositive unlabeled learningweather forecastingweather radar
collection DOAJ
language English
format Article
sources DOAJ
author Junzhi Shi
Ping Wang
Di Wang
Huizhen Jia
spellingShingle Junzhi Shi
Ping Wang
Di Wang
Huizhen Jia
Radar-based Hail-producing Storm Detection Using Positive Unlabeled Classification
Tehnički Vjesnik
hailstorm
machine learning
positive unlabeled learning
weather forecasting
weather radar
author_facet Junzhi Shi
Ping Wang
Di Wang
Huizhen Jia
author_sort Junzhi Shi
title Radar-based Hail-producing Storm Detection Using Positive Unlabeled Classification
title_short Radar-based Hail-producing Storm Detection Using Positive Unlabeled Classification
title_full Radar-based Hail-producing Storm Detection Using Positive Unlabeled Classification
title_fullStr Radar-based Hail-producing Storm Detection Using Positive Unlabeled Classification
title_full_unstemmed Radar-based Hail-producing Storm Detection Using Positive Unlabeled Classification
title_sort radar-based hail-producing storm detection using positive unlabeled classification
publisher Faculty of Mechanical Engineering in Slavonski Brod, Faculty of Electrical Engineering in Osijek, Faculty of Civil Engineering in Osijek
series Tehnički Vjesnik
issn 1330-3651
1848-6339
publishDate 2020-01-01
description Machine learning methods have been widely used in many fields of weather forecasting. However, some severe weather, such as hailstorm, is difficult to be completely and accurately recorded. These inaccurate data sets will affect the performance of machine-learning-based forecasting models. In this paper, a weather-radar-based hail-producing storm detection method is proposed. This method utilizes the bagging class-weighted support vector machine to learn from partly labeled hail case data and the other unlabeled data, with features extracted from radar and sounding data. The real case data from three radars of North China are used for evaluation. Results suggest that the proposed method could improve both the forecast accuracy and the forecast lead time comparing with the commonly used radar parameter methods. Besides, the proposed method works better than the method with the supervised learning model in any situation, especially when the number of positive samples contaminated in the unlabeled set is large.
topic hailstorm
machine learning
positive unlabeled learning
weather forecasting
weather radar
url https://hrcak.srce.hr/file/347085
work_keys_str_mv AT junzhishi radarbasedhailproducingstormdetectionusingpositiveunlabeledclassification
AT pingwang radarbasedhailproducingstormdetectionusingpositiveunlabeledclassification
AT diwang radarbasedhailproducingstormdetectionusingpositiveunlabeledclassification
AT huizhenjia radarbasedhailproducingstormdetectionusingpositiveunlabeledclassification
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