Participatory Sensing Data Tweets for Micro-Urban Real-Time Resiliency Monitoring and Risk Management

Real-time urban climate monitoring provides useful information that can be utilized to help urban management personnel to monitor and adapt their precautionary measures to extreme events, including urban heatwaves. Fortunately, recently created social media platforms, such as Twitter, furnish real-t...

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Main Authors: Daisuke Murakami, Gareth W. Peters, Yoshiki Yamagata, Tomoko Matsui
Format: Article
Language:English
Published: IEEE 2016-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/7378404/
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spelling doaj-7a9a7f17616647fd86ebf6240552f2162021-03-29T19:39:05ZengIEEEIEEE Access2169-35362016-01-01434737210.1109/ACCESS.2016.25169187378404Participatory Sensing Data Tweets for Micro-Urban Real-Time Resiliency Monitoring and Risk ManagementDaisuke Murakami0Gareth W. Peters1Yoshiki Yamagata2Tomoko Matsui3Center for Global Environmental Research, National Institute for Environmental Studies, Tsukuba, JapanDepartment of Statistical Science, University College London, London, U.K.Center for Global Environmental Research, National Institute for Environmental Studies, Tsukuba, JapanDepartment of Statistical Modeling, The Institute of Statistical Mathematics, Tachikawa, JapanReal-time urban climate monitoring provides useful information that can be utilized to help urban management personnel to monitor and adapt their precautionary measures to extreme events, including urban heatwaves. Fortunately, recently created social media platforms, such as Twitter, furnish real-time and high-resolution spatial information that may be useful for climate condition estimation. The objective of this paper was to utilize geotagged tweets (participatory sensing data) for urban temperature analysis. We first detected tweets related to heat (heat-tweets). Then, we examined the relationships between monitored temperatures and heat-tweets through a statistical model framework based on copula modeling methods. We demonstrate that there are strong relationships between heat-tweets and temperatures recorded at an intra-urban scale, which are revealed by our analysis of Tokyo city and its suburbs. Subsequently, we investigated the application of heat-tweets for informing spatiotemporal Gaussian process interpolation of temperatures as an application example of heat-tweets. We utilized a combination of spatially sparse weather monitoring sensor data, which comprise infrequently available moderate resolution imaging spectroradiometer remote sensing data and spatially and temporally dense lower quality geotagged Twitter data. A spatial best linear unbiased estimation technique was applied. The results suggest that tweets provide the useful auxiliary information for urban climate assessment.https://ieeexplore.ieee.org/document/7378404/TwittertemperaturecopulaheatwaveS-BLUE
collection DOAJ
language English
format Article
sources DOAJ
author Daisuke Murakami
Gareth W. Peters
Yoshiki Yamagata
Tomoko Matsui
spellingShingle Daisuke Murakami
Gareth W. Peters
Yoshiki Yamagata
Tomoko Matsui
Participatory Sensing Data Tweets for Micro-Urban Real-Time Resiliency Monitoring and Risk Management
IEEE Access
Twitter
temperature
copula
heatwave
S-BLUE
author_facet Daisuke Murakami
Gareth W. Peters
Yoshiki Yamagata
Tomoko Matsui
author_sort Daisuke Murakami
title Participatory Sensing Data Tweets for Micro-Urban Real-Time Resiliency Monitoring and Risk Management
title_short Participatory Sensing Data Tweets for Micro-Urban Real-Time Resiliency Monitoring and Risk Management
title_full Participatory Sensing Data Tweets for Micro-Urban Real-Time Resiliency Monitoring and Risk Management
title_fullStr Participatory Sensing Data Tweets for Micro-Urban Real-Time Resiliency Monitoring and Risk Management
title_full_unstemmed Participatory Sensing Data Tweets for Micro-Urban Real-Time Resiliency Monitoring and Risk Management
title_sort participatory sensing data tweets for micro-urban real-time resiliency monitoring and risk management
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2016-01-01
description Real-time urban climate monitoring provides useful information that can be utilized to help urban management personnel to monitor and adapt their precautionary measures to extreme events, including urban heatwaves. Fortunately, recently created social media platforms, such as Twitter, furnish real-time and high-resolution spatial information that may be useful for climate condition estimation. The objective of this paper was to utilize geotagged tweets (participatory sensing data) for urban temperature analysis. We first detected tweets related to heat (heat-tweets). Then, we examined the relationships between monitored temperatures and heat-tweets through a statistical model framework based on copula modeling methods. We demonstrate that there are strong relationships between heat-tweets and temperatures recorded at an intra-urban scale, which are revealed by our analysis of Tokyo city and its suburbs. Subsequently, we investigated the application of heat-tweets for informing spatiotemporal Gaussian process interpolation of temperatures as an application example of heat-tweets. We utilized a combination of spatially sparse weather monitoring sensor data, which comprise infrequently available moderate resolution imaging spectroradiometer remote sensing data and spatially and temporally dense lower quality geotagged Twitter data. A spatial best linear unbiased estimation technique was applied. The results suggest that tweets provide the useful auxiliary information for urban climate assessment.
topic Twitter
temperature
copula
heatwave
S-BLUE
url https://ieeexplore.ieee.org/document/7378404/
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AT yoshikiyamagata participatorysensingdatatweetsformicrourbanrealtimeresiliencymonitoringandriskmanagement
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