A Process-Oriented Method for Tracking Rainstorms with a Time-Series of Raster Datasets

Extreme rainstorms have important socioeconomic consequences, but understanding their fine spatial structures and temporal evolution still remains challenging. In order to achieve this, in view of an evolutionary property of rainstorms, this paper designs a process-oriented algorithm for identifying...

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Main Authors: Cunjin Xue, Jingyi Liu, Guanghui Yang, Chengbin Wu
Format: Article
Language:English
Published: MDPI AG 2019-06-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/9/12/2468
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spelling doaj-b981467ef37542fcb03471c6037dd1152020-11-24T22:01:14ZengMDPI AGApplied Sciences2076-34172019-06-01912246810.3390/app9122468app9122468A Process-Oriented Method for Tracking Rainstorms with a Time-Series of Raster DatasetsCunjin Xue0Jingyi Liu1Guanghui Yang2Chengbin Wu3Key Laboratory of Digital Earth Science, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100094, ChinaKey Laboratory of Digital Earth Science, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100094, ChinaKey Laboratory of Digital Earth Science, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100094, ChinaKey Laboratory of Digital Earth Science, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100094, ChinaExtreme rainstorms have important socioeconomic consequences, but understanding their fine spatial structures and temporal evolution still remains challenging. In order to achieve this, in view of an evolutionary property of rainstorms, this paper designs a process-oriented algorithm for identifying and tracking rainstorms, named PoAIR. PoAIR uses time-series of raster datasets and consists of three steps. The first step combines an accumulated rainfall time-series and spatial connectivity to identify rainstorm objects at each time snapshot. Secondly, PoAIR adopts the geometrical features of eccentricity, rectangularity, roundness, and shape index, as well as the thematic feature of the mean rainstorm intensity, to match the same rainstorm objects in successive snapshots, and then tracks the same rainstorm objects during a rainstorm evolution sequence. In the third step, an evolutionary property of a rainstorm sequence is used to extrapolate its spatial location and geometrical features at the next time snapshot and reconstructs a rainstorm process by linking rainstorm sequences with an area-overlapping threshold. Experiments on simulated datasets demonstrate that PoAIR performs better than the Thunderstorm Identification, Tracking, Analysis and Nowcasting algorithm (TITAN) in both rainfall tracking and identifying the splitting, merging, and merging-splitting of rainstorm objects. Additionally, applications of PoAIR to Integrated Multi-satellitE Retrievals for Global Precipitation Mission (GPM/IMERG) final products covering mainland China show that PoAIR can effectively track rainstorm objects.https://www.mdpi.com/2076-3417/9/12/2468process-oriented trackingrainstorm objectevolution sequenceraster datasets
collection DOAJ
language English
format Article
sources DOAJ
author Cunjin Xue
Jingyi Liu
Guanghui Yang
Chengbin Wu
spellingShingle Cunjin Xue
Jingyi Liu
Guanghui Yang
Chengbin Wu
A Process-Oriented Method for Tracking Rainstorms with a Time-Series of Raster Datasets
Applied Sciences
process-oriented tracking
rainstorm object
evolution sequence
raster datasets
author_facet Cunjin Xue
Jingyi Liu
Guanghui Yang
Chengbin Wu
author_sort Cunjin Xue
title A Process-Oriented Method for Tracking Rainstorms with a Time-Series of Raster Datasets
title_short A Process-Oriented Method for Tracking Rainstorms with a Time-Series of Raster Datasets
title_full A Process-Oriented Method for Tracking Rainstorms with a Time-Series of Raster Datasets
title_fullStr A Process-Oriented Method for Tracking Rainstorms with a Time-Series of Raster Datasets
title_full_unstemmed A Process-Oriented Method for Tracking Rainstorms with a Time-Series of Raster Datasets
title_sort process-oriented method for tracking rainstorms with a time-series of raster datasets
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2019-06-01
description Extreme rainstorms have important socioeconomic consequences, but understanding their fine spatial structures and temporal evolution still remains challenging. In order to achieve this, in view of an evolutionary property of rainstorms, this paper designs a process-oriented algorithm for identifying and tracking rainstorms, named PoAIR. PoAIR uses time-series of raster datasets and consists of three steps. The first step combines an accumulated rainfall time-series and spatial connectivity to identify rainstorm objects at each time snapshot. Secondly, PoAIR adopts the geometrical features of eccentricity, rectangularity, roundness, and shape index, as well as the thematic feature of the mean rainstorm intensity, to match the same rainstorm objects in successive snapshots, and then tracks the same rainstorm objects during a rainstorm evolution sequence. In the third step, an evolutionary property of a rainstorm sequence is used to extrapolate its spatial location and geometrical features at the next time snapshot and reconstructs a rainstorm process by linking rainstorm sequences with an area-overlapping threshold. Experiments on simulated datasets demonstrate that PoAIR performs better than the Thunderstorm Identification, Tracking, Analysis and Nowcasting algorithm (TITAN) in both rainfall tracking and identifying the splitting, merging, and merging-splitting of rainstorm objects. Additionally, applications of PoAIR to Integrated Multi-satellitE Retrievals for Global Precipitation Mission (GPM/IMERG) final products covering mainland China show that PoAIR can effectively track rainstorm objects.
topic process-oriented tracking
rainstorm object
evolution sequence
raster datasets
url https://www.mdpi.com/2076-3417/9/12/2468
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