Energies (Jan 2023)

Employing Machine Learning and IoT for Earthquake Early Warning System in Smart Cities

  • Mohamed S. Abdalzaher,
  • Hussein A. Elsayed,
  • Mostafa M. Fouda,
  • Mahmoud M. Salim

DOI
https://doi.org/10.3390/en16010495
Journal volume & issue
Vol. 16, no. 1
p. 495

Abstract

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An earthquake early warning system (EEWS) should be included in smart cities to preserve human lives by providing a reliable and efficient disaster management system. This system can alter how different entities communicate with one another using an Internet of Things (IoT) network where observed data are handled based on machine learning (ML) technology. On one hand, IoT is employed in observing the different measures of EEWS entities. On the other hand, ML can be exploited to analyze these measures to reach the best action to be taken for disaster management and risk mitigation in smart cities. This paper provides a survey on the different aspects required for that EEWS. First, the IoT system is generally discussed to provide the role it can play for EEWS. Second, ML models are classified into linear and non-linear ones. Third, the evaluation metrics of ML models are addressed by focusing on seismology. Fourth, this paper exhibits a taxonomy that includes the emerging ML and IoT efforts for EEWS. Fifth, it proposes a generic EEWS architecture based on IoT and ML. Finally, the paper addresses the application of ML for earthquake parameters’ observations leading to an efficient EEWS.

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