Abstract

An earthquake is a tremor felt on the surface of the earth created by the movement of the major pieces of its outer shell. Till now, many attempts have been made to forecast earthquakes, which saw some success, but these attempted models are specific to a region. In this paper, an earthquake occurrence and location prediction model is proposed. After reviewing the literature, long short-term memory (LSTM) is found to be a good option for building the model because of its memory-keeping ability. Using the Keras tuner, the best model was selected from candidate models, which are composed of combinations of various LSTM architectures and dense layers. This selected model used seismic indicators from the earthquake catalog of Bangladesh as features to predict earthquakes of the following month. Attention mechanism was added to the LSTM architecture to improve the model’s earthquake occurrence prediction accuracy, which was 74.67%. Additionally, a regression model was built using LSTM and dense layers to predict the earthquake epicenter as a distance from a predefined location, which provided a root mean square error of 1.25.

Highlights

  • Around 750,000 people have lost their lives and Earthquake is a natural catastrophe, which is occurred due another 125 million people were greatly affected due to to the impingement of tectonic plates. This leads to the earthquake events that occurred between the years 1998 and release of a great amount of the earth’s internal energy

  • Bangladesh is a small South Asian country

  • Artificial intelligence (AI), machine learning (ML) and deep learning (DL)-based methods are getting popular in future predictions

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Summary

Introduction

AI and ML have been widely applied to diverse fields for their predictive abilities, which include: biological data mining [20], cyber security [21], earthquake prediction [22], financial prediction [23], text analytics [24], [25] and urban planning [26] This includes methods to support COVID-19 [27] through analyzing lung images acquired by means of computed tomography [28], chest x-ray [29], safeguarding workers in workplaces [30], identifying symptoms using fuzzy systems [31], and supporting hospitals using robots [32]

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