METHODS FOR PREDICTING SEISMIC ACTIVITY AND PREPARING FOR EARTHQUAKES USING MODERN TECHNOLOGIES

Authors

  • Kayumov Odiljon Abduraufovich Fergana Polytechnic Institute

Keywords:

Earthquake prediction, seismic activity, machine learning, LSTM, CNN, early warning systems, temporal-spatial data analysis, AI in geosciences, predictive modeling, disaster preparedness.

Abstract

This study explores the application of advanced AI techniques, particularly Long Short-Term Memory (LSTM) and Convolutional Neural Networks (CNN), for earthquake prediction. By analyzing temporal and spatial seismic patterns, these models achieve a combined prediction accuracy of 75%, outperforming traditional methods. With a 30% reduction in latency and a 20% decrease in false positives, the AI models show promise for enhancing early warning systems. Despite data limitations in less-monitored regions, the findings suggest significant potential for global seismic preparedness through AI-driven solutions.

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Published

2024-11-09

How to Cite

Kayumov Odiljon Abduraufovich. (2024). METHODS FOR PREDICTING SEISMIC ACTIVITY AND PREPARING FOR EARTHQUAKES USING MODERN TECHNOLOGIES. Web of Technology: Multidimensional Research Journal, 2(11), 18–24. Retrieved from https://webofjournals.com/index.php/4/article/view/2108

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Section

Articles