Recent Advances in Internet of Things Solutions for Early Warning Systems: A Review

Author:

Esposito MarcoORCID,Palma LorenzoORCID,Belli AlbertoORCID,Sabbatini LuisianaORCID,Pierleoni PaolaORCID

Abstract

Natural disasters cause enormous damage and losses every year, both economic and in terms of human lives. It is essential to develop systems to predict disasters and to generate and disseminate timely warnings. Recently, technologies such as the Internet of Things solutions have been integrated into alert systems to provide an effective method to gather environmental data and produce alerts. This work reviews the literature regarding Internet of Things solutions in the field of Early Warning for different natural disasters: floods, earthquakes, tsunamis, and landslides. The aim of the paper is to describe the adopted IoT architectures, define the constraints and the requirements of an Early Warning system, and systematically determine which are the most used solutions in the four use cases examined. This review also highlights the main gaps in literature and provides suggestions to satisfy the requirements for each use case based on the articles and solutions reviewed, particularly stressing the advantages of integrating a Fog/Edge layer in the developed IoT architectures.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference99 articles.

1. Early Warning System Definition by United Nations Office for Disaster Reductionhttps://www.undrr.org/terminology/early-warning-system

2. Public Warning Applications: Requirements and Examples

3. Community Early Warning Systems

4. Sendai Framework for Disaster Risk Reductionhttps://www.undrr.org/publication/sendai-framework-disaster-risk-reduction-2015-2030

5. Sendai Framework Analytics on Target G: Early Warning and Risk Informationhttps://sendaimonitor.undrr.org/analytics/global-target/16/8

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