Online urban-waterlogging monitoring based on a recurrent neural network for classification of microblogging text

<p>With the global climate change and rapid urbanization, urban flood disasters spread and become increasingly serious in China. Urban rainstorms and waterlogging have become an urgent challenge that needs to be monitored in real time and further predicted for the improvement of urbanization c...

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Main Authors: H. Liu, Y. Hao, W. Zhang, H. Zhang, F. Gao, J. Tong
Format: Article
Language:English
Published: Copernicus Publications 2021-04-01
Series:Natural Hazards and Earth System Sciences
Online Access:https://nhess.copernicus.org/articles/21/1179/2021/nhess-21-1179-2021.pdf
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spelling doaj-ce8c1dc967994032a4a01c91fd6f021f2021-04-06T07:30:07ZengCopernicus PublicationsNatural Hazards and Earth System Sciences1561-86331684-99812021-04-01211179119410.5194/nhess-21-1179-2021Online urban-waterlogging monitoring based on a recurrent neural network for classification of microblogging textH. LiuY. HaoW. ZhangH. ZhangF. GaoJ. Tong<p>With the global climate change and rapid urbanization, urban flood disasters spread and become increasingly serious in China. Urban rainstorms and waterlogging have become an urgent challenge that needs to be monitored in real time and further predicted for the improvement of urbanization construction. We trained a recurrent neural network (RNN) model to classify microblogging posts related to urban waterlogging and establish an online monitoring system of urban waterlogging caused by flood disasters. We manually curated more than 4400 waterlogging posts to train the RNN model so that it can precisely identify waterlogging-related posts of Sina Weibo to timely determine urban waterlogging. The RNN model has been thoroughly evaluated, and our experimental results showed that it achieved higher accuracy than traditional machine learning methods, such as the support vector machine (SVM) and gradient boosting decision tree (GBDT). Furthermore, we build a nationwide map of urban waterlogging based on recent 2-year microblogging data.</p>https://nhess.copernicus.org/articles/21/1179/2021/nhess-21-1179-2021.pdf
collection DOAJ
language English
format Article
sources DOAJ
author H. Liu
Y. Hao
W. Zhang
H. Zhang
F. Gao
J. Tong
spellingShingle H. Liu
Y. Hao
W. Zhang
H. Zhang
F. Gao
J. Tong
Online urban-waterlogging monitoring based on a recurrent neural network for classification of microblogging text
Natural Hazards and Earth System Sciences
author_facet H. Liu
Y. Hao
W. Zhang
H. Zhang
F. Gao
J. Tong
author_sort H. Liu
title Online urban-waterlogging monitoring based on a recurrent neural network for classification of microblogging text
title_short Online urban-waterlogging monitoring based on a recurrent neural network for classification of microblogging text
title_full Online urban-waterlogging monitoring based on a recurrent neural network for classification of microblogging text
title_fullStr Online urban-waterlogging monitoring based on a recurrent neural network for classification of microblogging text
title_full_unstemmed Online urban-waterlogging monitoring based on a recurrent neural network for classification of microblogging text
title_sort online urban-waterlogging monitoring based on a recurrent neural network for classification of microblogging text
publisher Copernicus Publications
series Natural Hazards and Earth System Sciences
issn 1561-8633
1684-9981
publishDate 2021-04-01
description <p>With the global climate change and rapid urbanization, urban flood disasters spread and become increasingly serious in China. Urban rainstorms and waterlogging have become an urgent challenge that needs to be monitored in real time and further predicted for the improvement of urbanization construction. We trained a recurrent neural network (RNN) model to classify microblogging posts related to urban waterlogging and establish an online monitoring system of urban waterlogging caused by flood disasters. We manually curated more than 4400 waterlogging posts to train the RNN model so that it can precisely identify waterlogging-related posts of Sina Weibo to timely determine urban waterlogging. The RNN model has been thoroughly evaluated, and our experimental results showed that it achieved higher accuracy than traditional machine learning methods, such as the support vector machine (SVM) and gradient boosting decision tree (GBDT). Furthermore, we build a nationwide map of urban waterlogging based on recent 2-year microblogging data.</p>
url https://nhess.copernicus.org/articles/21/1179/2021/nhess-21-1179-2021.pdf
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AT wzhang onlineurbanwaterloggingmonitoringbasedonarecurrentneuralnetworkforclassificationofmicrobloggingtext
AT hzhang onlineurbanwaterloggingmonitoringbasedonarecurrentneuralnetworkforclassificationofmicrobloggingtext
AT fgao onlineurbanwaterloggingmonitoringbasedonarecurrentneuralnetworkforclassificationofmicrobloggingtext
AT jtong onlineurbanwaterloggingmonitoringbasedonarecurrentneuralnetworkforclassificationofmicrobloggingtext
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