Predicting earthquake magnitude error with regression, decision tree & random forest

As important as it is challenging, earthquake prediction plays an integral part in minimizing the catastrophic impact from earthquakes. In Japan, earthquake prediction leads the way by utilizing cutting-edge prediction technology that is applied to the Earthquake Early Warning (EEW) system to provid...

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Bibliographic Details
Main Author: Antony, Tommy
Other Authors: Zhang Limao
Format: Final Year Project (FYP)
Language:English
Published: Nanyang Technological University 2020
Subjects:
Online Access:https://hdl.handle.net/10356/142048
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author Antony, Tommy
author2 Zhang Limao
author_facet Zhang Limao
Antony, Tommy
author_sort Antony, Tommy
collection NTU
description As important as it is challenging, earthquake prediction plays an integral part in minimizing the catastrophic impact from earthquakes. In Japan, earthquake prediction leads the way by utilizing cutting-edge prediction technology that is applied to the Earthquake Early Warning (EEW) system to provide enough time for people to evacuate to a safe place. This early warning system has achieved a hit rate of 56% as of 2011, with 44% of the time earthquakes can be underestimated or overestimated by a large degree. Such inaccuracy can create panic in the country and cause unease or disastrous effect for the country in the long term. As such, studying the magnitude error can be a way to minimizing the error and reducing inaccuracy. Until recently, there has yet been a study conducted on magnitude error by the machine learning methods. Therefore, this research aims to reduce the magnitude error by predicting the possible error. These are achieved by utilizing the regression, decision tree and random forest analysis. These models are constructed based on the available parameters (magnitude, depth, number of stations, etc.). Subsequently, the result showed a high correlation between magnitude error and the number of recording stations available, which intuitively can reduce the magnitude error value through increasing the number of recording stations. Through the evaluation using the statistical features of the models, two optimal models are selected as the main results of this research.
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spelling ntu-10356/1420482020-06-15T05:17:34Z Predicting earthquake magnitude error with regression, decision tree & random forest Antony, Tommy Zhang Limao School of Civil and Environmental Engineering limao.zhang@ntu.edu.sg Engineering::Civil engineering::Construction technology As important as it is challenging, earthquake prediction plays an integral part in minimizing the catastrophic impact from earthquakes. In Japan, earthquake prediction leads the way by utilizing cutting-edge prediction technology that is applied to the Earthquake Early Warning (EEW) system to provide enough time for people to evacuate to a safe place. This early warning system has achieved a hit rate of 56% as of 2011, with 44% of the time earthquakes can be underestimated or overestimated by a large degree. Such inaccuracy can create panic in the country and cause unease or disastrous effect for the country in the long term. As such, studying the magnitude error can be a way to minimizing the error and reducing inaccuracy. Until recently, there has yet been a study conducted on magnitude error by the machine learning methods. Therefore, this research aims to reduce the magnitude error by predicting the possible error. These are achieved by utilizing the regression, decision tree and random forest analysis. These models are constructed based on the available parameters (magnitude, depth, number of stations, etc.). Subsequently, the result showed a high correlation between magnitude error and the number of recording stations available, which intuitively can reduce the magnitude error value through increasing the number of recording stations. Through the evaluation using the statistical features of the models, two optimal models are selected as the main results of this research. Bachelor of Engineering (Civil) 2020-06-15T05:17:34Z 2020-06-15T05:17:34Z 2020 Final Year Project (FYP) https://hdl.handle.net/10356/142048 en CT-16 application/pdf Nanyang Technological University
spellingShingle Engineering::Civil engineering::Construction technology
Antony, Tommy
Predicting earthquake magnitude error with regression, decision tree & random forest
title Predicting earthquake magnitude error with regression, decision tree & random forest
title_full Predicting earthquake magnitude error with regression, decision tree & random forest
title_fullStr Predicting earthquake magnitude error with regression, decision tree & random forest
title_full_unstemmed Predicting earthquake magnitude error with regression, decision tree & random forest
title_short Predicting earthquake magnitude error with regression, decision tree & random forest
title_sort predicting earthquake magnitude error with regression decision tree random forest
topic Engineering::Civil engineering::Construction technology
url https://hdl.handle.net/10356/142048
work_keys_str_mv AT antonytommy predictingearthquakemagnitudeerrorwithregressiondecisiontreerandomforest