电离层
地震学
地震预报
计算机科学
地质学
地球物理学
作者
Saima Siddiqui,Monika Thakur,Neetu Paliwal,Suman Choudhary
出处
期刊:International journal of geological and geotechnical engineering
[Journals PUB]
日期:2023-01-01
标识
DOI:10.37628/jgget.v9i2.861
摘要
This research explores the relationship between seismic events and predictive indicators, focusing on machine learning-based strategies for early earthquake prediction. It dissects existing prediction approaches, highlighting ionospheric anomalies' correlation with seismic occurrences, particularly preceding earthquakes of magnitudes higher than 5.5. By identifying a lack of comprehensive long-term analyses in the field, the study emphasizes future trends in machine learning-driven EQ-PD techniques using GPS-TEC data for real-time anomaly detection. The methodology involves seismic hazard monitoring in Turkish coal mines, leveraging specialized equipment and diverse machine-learning algorithms for enhanced prediction accuracy. The study's core involves analyzing seismic wave datasets alongside real-time ionospheric data to evaluate the EQ-PD approach. Utilizing FFT seismic wave analysis, precursor detection, and machine learning-based classification, this research underscores the EQ-PD technique's potential for early earthquake prediction. The findings present a robust framework amalgamating seismic wave analysis, ionospheric anomaly detection, and machine learning, offering promise for practical application in mitigating earthquake impacts.
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