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Fulfilling the information need after an earthquake: statistical modelling of citizen science seismic reports for predicting earthquake parameters in near realtime
Author(s) -
Finazzi Francesco
Publication year - 2020
Publication title -
journal of the royal statistical society: series a (statistics in society)
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.103
H-Index - 84
eISSN - 1467-985X
pISSN - 0964-1998
DOI - 10.1111/rssa.12577
Subject(s) - earthquake scenario , induced seismicity , seismology , variable (mathematics) , citizen science , globe , urban seismic risk , population , computer science , earthquake prediction , spatial analysis , earthquake simulation , geography , geology , seismic hazard , remote sensing , mathematics , medicine , mathematical analysis , botany , demography , sociology , ophthalmology , biology
Summary When an earthquake affects an inhabited area, a need for information immediately arises among the population. In general, this need is not immediately fulfilled by official channels which usually release expert‐validated information with delays of many minutes. Seismology is among the research fields where citizen science projects succeeded in collecting useful scientific information. More recently, the ubiquity of smartphones is giving the opportunity to involve even more citizens. This paper focuses on seismic intensity reports collected through smartphone applications while an earthquake is occurring. The aim is to provide a framework for predicting and updating in near realtime earthquake parameters that are useful for assessing the effect of the earthquake. This is done by using a multivariate space–time model based on time‐varying coefficients and a spatial latent variable. As a case‐study, the model is applied to more than 2 seismic reports globally collected over a period of around 4 years by the Earthquake Network citizen science project. It is shown how the time‐varying coefficients are needed to adapt the model to an information content that changes with time, and how the spatial latent variable can capture the local seismicity and the heterogeneity in the people's response across the globe.