Analysis of Damage to Buildings affected by the Tsunami in the Palu Coastal Area Using Deep Learning

Meilano, Irwan and Rahadian, Achmad Ikbal and Suwardhi, Deni and Suminar, Wulan and Atmaja, Fiza Wira and Pratama, Cecep and Sunarti, Euis and Haksama, Setya (2020) Analysis of Damage to Buildings affected by the Tsunami in the Palu Coastal Area Using Deep Learning. In: 3rd IEEE Asia-Pacific Conference on Geoscience, Electronics and Remote Sensing Technology, AGERS 2020, 7 December 2020, Jakarta.

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Abstract

Assessing the building damage after a tsunami is the first step to quantitatively learn about the amount of damage it caused. Indonesia is an archipelagic country, with two-thirds of its territory consisting of water. It has the second-longest coastline in the world, increasing the potential for tsunami damage in Indonesian territory. In this study, an analysis of building damage due to the tsunamis was carried out and Palu was assigned as the study location. Palu's coastal area suffered a tsunami on September 28, 2018, caused by an earthquake with a magnitude of 7.5. The location and the number of buildings were generated through object detection using deep learning from high-resolution satellite imagery data. Object detection was carried out using pre-trained YOLOv3 models that are trained using 315 satellite images as data sets and produce a model with a loss value of 33.15. Object detection was carried out on satellite imagery before and after the tsunami and produced building distribution data with an accuracy of 76.78 and 74.20, respectively. Comparisons of building data detected from the two satellite images were then analyzed using a tsunami height zone map to see the correlation between building damage and tsunami height. From spatial and correlations analysis, 1,547 damaged buildings were detected, giving the data a positive correlation type. Using the student's t-test, it was concluded that there was a significant correlation between building damage and tsunami height.

Item Type: Conference or Workshop Item (Paper)
Additional Information: Library Dosen
Uncontrolled Keywords: building damage; deep learning; Palu; satellite imagery; Tsunami
Subjects: T Technology > T Technology (General)
Divisions: Faculty of Engineering > Geodetic Engineering Department
Depositing User: Sri JUNANDI
Date Deposited: 28 Feb 2025 06:55
Last Modified: 28 Feb 2025 06:55
URI: https://ir.lib.ugm.ac.id/id/eprint/14979

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