Environmental Surveillance through Machine Learning-Empowered Utilization of Optical Networks

Author:

Awad Hasan1ORCID,Usmani Fehmida12,Virgillito Emanuele1ORCID,Bratovich Rudi3,Proietti Roberto1,Straullu Stefano4ORCID,Aquilino Francesco4ORCID,Pastorelli Rosanna3,Curri Vittorio1

Affiliation:

1. Department of Electronics and Telecommunications, Polytechnic University of Turin, 10129 Turin, Italy

2. School of Electrical Engineering and Computer Science (SEECS), National University of Sciences & Technology (NUST), Islamabad 45400, Pakistan

3. SM-Optics, 20093 Cologno Monzese, Italy

4. LINKS Foundation, 10129 Turin, Italy

Abstract

We present the use of interconnected optical mesh networks for early earthquake detection and localization, exploiting the existing terrestrial fiber infrastructure. Employing a waveplate model, we integrate real ground displacement data from seven earthquakes with magnitudes ranging from four to six to simulate the strains within fiber cables and collect a large set of light polarization evolution data. These simulations help to enhance a machine learning model that is trained and validated to detect primary wave arrivals that precede earthquakes’ destructive surface waves. The validation results show that the model achieves over 95% accuracy. The machine learning model is then tested against an M4.3 earthquake, exploiting three interconnected mesh networks as a smart sensing grid. Each network is equipped with a sensing fiber placed to correspond with three distinct seismic stations. The objective is to confirm earthquake detection across the interconnected networks, localize the epicenter coordinates via a triangulation method and calculate the fiber-to-epicenter distance. This setup allows early warning generation for municipalities close to the epicenter location, progressing to those further away. The model testing shows a 98% accuracy in detecting primary waves and a one second detection time, affording nearby areas 21 s to take countermeasures, which extends to 57 s in more distant areas.

Funder

SM-Optics and the Ministry of University and Research 305

Publisher

MDPI AG

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