Social Media Integration of Flood Data: A Vine Copula-Based Approach

04/05/2021
by   Lauren Ansell, et al.
0

Floods are the most common and among the most severe natural disasters in many countries around the world. As global warming continues to exacerbate sea level rise and extreme weather, governmental authorities and environmental agencies are facing the pressing need of timely and accurate evaluations and predictions of flood risks. Current flood forecasts are generally based on historical measurements of environmental variables at monitoring stations. In recent years, in addition to traditional data sources, large amounts of information related to floods have been made available via social media. Members of the public are constantly and promptly posting information and updates on local environmental phenomena on social media platforms. Despite the growing interest of scholars towards the usage of online data during natural disasters, the majority of studies focus exclusively on social media as a stand-alone data source, while its joint use with other type of information is still unexplored. In this paper we propose to fill this gap by integrating traditional historical information on floods with data extracted by Twitter and Google Trends. Our methodology is based on vine copulas, that allow us to capture the dependence structure among the marginals, which are modelled via appropriate time series methods, in a very flexible way. We apply our methodology to data related to three different coastal locations in the South cost of the UK. The results show that our approach, based on the integration of social media data, outperforms traditional methods, providing a more accurate evaluation and prediction of flood events.

READ FULL TEXT

page 6

page 7

page 8

page 24

research
10/08/2021

A New Data Integration Framework for Covid-19 Social Media Information

The Covid-19 pandemic presents a serious threat to people's health, resu...
research
04/24/2018

Floods impact dynamics quantified from big data sources

Natural disasters affect hundreds of millions of people worldwide every ...
research
12/10/2020

Social Media Alerts can Improve, but not Replace Hydrological Models for Forecasting Floods

Social media can be used for disaster risk reduction as a complement to ...
research
04/26/2020

Ensemble Deep Learning on Time-Series Representation of Tweets for Rumor Detection in Social Media

Social media is a popular platform for timely information sharing. One o...
research
06/06/2020

Social Media Analysis for Crisis Informatics in the Cloud

Social media analysis of disaster events is a critical task in crisis in...
research
05/19/2021

Using four different online media sources to forecast the crude oil price

This study looks for signals of economic awareness on online social medi...
research
07/03/2023

A novel approach for predicting epidemiological forecasting parameters based on real-time signals and Data Assimilation

This paper proposes a novel approach to predict epidemiological paramete...

Please sign up or login with your details

Forgot password? Click here to reset