Twitter earthquake detection: earthquake monitoring in a social world

The U.S. Geological Survey (USGS) is investigating how the social networking site Twitter, a popular service for sending and receiving short, public text messages, can augment USGS earthquake response products and the delivery of hazard information. Rapid detection and qualitative assessment of shak...

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Bibliographic Details
Main Authors: Daniel C. Bowden, Paul S. Earle, Michelle Guy
Format: Article
Language:English
Published: Istituto Nazionale di Geofisica e Vulcanologia (INGV) 2011-06-01
Series:Annals of Geophysics
Subjects:
Online Access:http://www.annalsofgeophysics.eu/index.php/annals/article/view/5364
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spelling doaj-0e5a7e4c470645729bfd9177bc8efca12020-11-24T23:28:16ZengIstituto Nazionale di Geofisica e Vulcanologia (INGV)Annals of Geophysics1593-52132037-416X2011-06-0154610.4401/ag-5364Twitter earthquake detection: earthquake monitoring in a social worldDaniel C. BowdenPaul S. EarleMichelle GuyThe U.S. Geological Survey (USGS) is investigating how the social networking site Twitter, a popular service for sending and receiving short, public text messages, can augment USGS earthquake response products and the delivery of hazard information. Rapid detection and qualitative assessment of shaking events are possible because people begin sending public Twitter messages (tweets) with in tens of seconds after feeling shaking. Here we present and evaluate an earthquake detection procedure that relies solely on Twitter data. A tweet-frequency time series constructed from tweets containing the word “earthquake” clearly shows large peaks correlated with the origin times of widely felt events. To identify possible earthquakes, we use a short-term-average, long-term-average algorithm. When tuned to a moderate sensitivity, the detector finds 48 globally-distributed earthquakes with only two false triggers in five months of data. The number of detections is small compared to the 5,175 earthquakes in the USGS global earthquake catalog for the same five-month time period, and no accurate location or magnitude can be assigned based on tweet data alone. However, Twitter earthquake detections are not without merit. The detections are generally caused by widely felt events that are of more immediate interest than those with no human impact. The detections are also fast; about 75% occur within two minutes of the origin time. This is considerably faster than seismographic detections in poorly instrumented regions of the world. The tweets triggering the detections also provided very short first-impression narratives from people who experienced the shaking.http://www.annalsofgeophysics.eu/index.php/annals/article/view/5364Earthquake monitoring, Instruments and techniques, Data processing, Seismological data, Twitter, Social Media, General or miscellaneous
collection DOAJ
language English
format Article
sources DOAJ
author Daniel C. Bowden
Paul S. Earle
Michelle Guy
spellingShingle Daniel C. Bowden
Paul S. Earle
Michelle Guy
Twitter earthquake detection: earthquake monitoring in a social world
Annals of Geophysics
Earthquake monitoring, Instruments and techniques, Data processing, Seismological data, Twitter, Social Media, General or miscellaneous
author_facet Daniel C. Bowden
Paul S. Earle
Michelle Guy
author_sort Daniel C. Bowden
title Twitter earthquake detection: earthquake monitoring in a social world
title_short Twitter earthquake detection: earthquake monitoring in a social world
title_full Twitter earthquake detection: earthquake monitoring in a social world
title_fullStr Twitter earthquake detection: earthquake monitoring in a social world
title_full_unstemmed Twitter earthquake detection: earthquake monitoring in a social world
title_sort twitter earthquake detection: earthquake monitoring in a social world
publisher Istituto Nazionale di Geofisica e Vulcanologia (INGV)
series Annals of Geophysics
issn 1593-5213
2037-416X
publishDate 2011-06-01
description The U.S. Geological Survey (USGS) is investigating how the social networking site Twitter, a popular service for sending and receiving short, public text messages, can augment USGS earthquake response products and the delivery of hazard information. Rapid detection and qualitative assessment of shaking events are possible because people begin sending public Twitter messages (tweets) with in tens of seconds after feeling shaking. Here we present and evaluate an earthquake detection procedure that relies solely on Twitter data. A tweet-frequency time series constructed from tweets containing the word “earthquake” clearly shows large peaks correlated with the origin times of widely felt events. To identify possible earthquakes, we use a short-term-average, long-term-average algorithm. When tuned to a moderate sensitivity, the detector finds 48 globally-distributed earthquakes with only two false triggers in five months of data. The number of detections is small compared to the 5,175 earthquakes in the USGS global earthquake catalog for the same five-month time period, and no accurate location or magnitude can be assigned based on tweet data alone. However, Twitter earthquake detections are not without merit. The detections are generally caused by widely felt events that are of more immediate interest than those with no human impact. The detections are also fast; about 75% occur within two minutes of the origin time. This is considerably faster than seismographic detections in poorly instrumented regions of the world. The tweets triggering the detections also provided very short first-impression narratives from people who experienced the shaking.
topic Earthquake monitoring, Instruments and techniques, Data processing, Seismological data, Twitter, Social Media, General or miscellaneous
url http://www.annalsofgeophysics.eu/index.php/annals/article/view/5364
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