Classification of Tsunami Warning Level using Artificial Neural Network and its Comparison in Southern Java Region

The southern area of Java Island has a significant potential for tsunami events due to its position close to the ring of fire and the megathrust tsunami potential of its seismic gap study. A tsunami warning based on its category has become a solid standard in Tsunami Community Preparedness for Tsuna...

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Main Authors: Aldini, Ittaka, Hidayat, Risanuri, Permanasari, Adhistya Erna, Ramdhani, Andri
Format: Conference or Workshop Item PeerReviewed
Language:English
Published: 2022
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Online Access:https://repository.ugm.ac.id/283334/1/Classification_of_Tsunami_Warning_Level_using_Artificial_Neural_Network_and_its_Comparison_in_Southern_Java_Region.pdf
https://repository.ugm.ac.id/283334/
https://ieeexplore.ieee.org/document/10052907
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spelling id-ugm-repo.2833342023-11-20T06:32:04Z https://repository.ugm.ac.id/283334/ Classification of Tsunami Warning Level using Artificial Neural Network and its Comparison in Southern Java Region Aldini, Ittaka Hidayat, Risanuri Permanasari, Adhistya Erna Ramdhani, Andri Electrical and Electronic Engineering Engineering The southern area of Java Island has a significant potential for tsunami events due to its position close to the ring of fire and the megathrust tsunami potential of its seismic gap study. A tsunami warning based on its category has become a solid standard in Tsunami Community Preparedness for Tsunami Disaster Prevention. The widely accepted method for providing such Tsunami Warning Information is a non-linear tsunami simulation that requires a vast computation resource. In contrast, the tsunami travel time to the coast is short. Hence, the available time to issue the warning is minimal. This study aims to introduce the Artificial Neural Network (ANN) to alternately classify the Tsunami Warning Level in the Southern Area of Java Island with the case study using the Hypothetical Earthquake of Java Megathrust (Mw 6.0-8.8). The ANN applied to one of the models with the highest test accuracy picked from the available configuration model, combining two or six hidden layers, four activation functions, and two epochs. The investigations showed that 6HL-Leaky-RELU-18E is the chosen configuration model and had an excellent performance with a validation accuracy of 100%; and Precision, Recall, F1 Score of 1.00, 0.79, 0.87, respectively. When tested with the external dataset, it generated a test accuracy of 82 %, with 91.67% of site/tsunami warning status correctly predicted. 2022 Conference or Workshop Item PeerReviewed application/pdf en https://repository.ugm.ac.id/283334/1/Classification_of_Tsunami_Warning_Level_using_Artificial_Neural_Network_and_its_Comparison_in_Southern_Java_Region.pdf Aldini, Ittaka and Hidayat, Risanuri and Permanasari, Adhistya Erna and Ramdhani, Andri (2022) Classification of Tsunami Warning Level using Artificial Neural Network and its Comparison in Southern Java Region. In: 5th International Seminar on Research of Information Technology and Intelligent Systems, ISRITI 2022, 8-9 Desember 2022, Virtual, Online. https://ieeexplore.ieee.org/document/10052907
institution Universitas Gadjah Mada
building UGM Library
continent Asia
country Indonesia
Indonesia
content_provider UGM Library
collection Repository Civitas UGM
language English
topic Electrical and Electronic Engineering
Engineering
spellingShingle Electrical and Electronic Engineering
Engineering
Aldini, Ittaka
Hidayat, Risanuri
Permanasari, Adhistya Erna
Ramdhani, Andri
Classification of Tsunami Warning Level using Artificial Neural Network and its Comparison in Southern Java Region
description The southern area of Java Island has a significant potential for tsunami events due to its position close to the ring of fire and the megathrust tsunami potential of its seismic gap study. A tsunami warning based on its category has become a solid standard in Tsunami Community Preparedness for Tsunami Disaster Prevention. The widely accepted method for providing such Tsunami Warning Information is a non-linear tsunami simulation that requires a vast computation resource. In contrast, the tsunami travel time to the coast is short. Hence, the available time to issue the warning is minimal. This study aims to introduce the Artificial Neural Network (ANN) to alternately classify the Tsunami Warning Level in the Southern Area of Java Island with the case study using the Hypothetical Earthquake of Java Megathrust (Mw 6.0-8.8). The ANN applied to one of the models with the highest test accuracy picked from the available configuration model, combining two or six hidden layers, four activation functions, and two epochs. The investigations showed that 6HL-Leaky-RELU-18E is the chosen configuration model and had an excellent performance with a validation accuracy of 100%; and Precision, Recall, F1 Score of 1.00, 0.79, 0.87, respectively. When tested with the external dataset, it generated a test accuracy of 82 %, with 91.67% of site/tsunami warning status correctly predicted.
format Conference or Workshop Item
PeerReviewed
author Aldini, Ittaka
Hidayat, Risanuri
Permanasari, Adhistya Erna
Ramdhani, Andri
author_facet Aldini, Ittaka
Hidayat, Risanuri
Permanasari, Adhistya Erna
Ramdhani, Andri
author_sort Aldini, Ittaka
title Classification of Tsunami Warning Level using Artificial Neural Network and its Comparison in Southern Java Region
title_short Classification of Tsunami Warning Level using Artificial Neural Network and its Comparison in Southern Java Region
title_full Classification of Tsunami Warning Level using Artificial Neural Network and its Comparison in Southern Java Region
title_fullStr Classification of Tsunami Warning Level using Artificial Neural Network and its Comparison in Southern Java Region
title_full_unstemmed Classification of Tsunami Warning Level using Artificial Neural Network and its Comparison in Southern Java Region
title_sort classification of tsunami warning level using artificial neural network and its comparison in southern java region
publishDate 2022
url https://repository.ugm.ac.id/283334/1/Classification_of_Tsunami_Warning_Level_using_Artificial_Neural_Network_and_its_Comparison_in_Southern_Java_Region.pdf
https://repository.ugm.ac.id/283334/
https://ieeexplore.ieee.org/document/10052907
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