A New Water Level Measurement Technique Using Artificial Intelligent

Flash floods are a growing concern worldwide, causing economic and social losses, increased death rates, and damage to infrastructure. The rapid nature of these disasters has led to delayed and inaccurate flood event information, causing public confusion and delays in response. This study aims t...

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Main Authors: Ibrahim, Lely Maisara, Alias, Nur Aisyah Jamilah, Ngatalin, Siti Najihah Umairah, Abdul Kadir, Muhammad Azraie
Format: Conference or Workshop Item
Language:en
Published: 2025
Subjects:
Online Access:http://eprints.uthm.edu.my/12530/1/P17889_e2ab609917f705c900ef134d8bff8cfc.pdf
http://eprints.uthm.edu.my/12530/
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author Ibrahim, Lely Maisara
Alias, Nur Aisyah Jamilah
Ngatalin, Siti Najihah Umairah
Abdul Kadir, Muhammad Azraie
author_facet Ibrahim, Lely Maisara
Alias, Nur Aisyah Jamilah
Ngatalin, Siti Najihah Umairah
Abdul Kadir, Muhammad Azraie
author_sort Ibrahim, Lely Maisara
building UTHM Library
collection Institutional Repository
content_provider Universiti Tun Hussein Onn Malaysia
content_source UTHM Institutional Repository
continent Asia
country Malaysia
description Flash floods are a growing concern worldwide, causing economic and social losses, increased death rates, and damage to infrastructure. The rapid nature of these disasters has led to delayed and inaccurate flood event information, causing public confusion and delays in response. This study aims to use AI to measure flood levels in real-time to improve flood information during flash floods. In this study, an Axia automobile as a model has been tested in an open space area. Then, box and manilla card is used as a level to mark the height of flood water, which is 15cm, 30cm, and up to 105cm. Data was collected by taking pictures of the vehicle from a distance of 620cm, 720cm, and 820cm. Teachable Machine applications has been used in this experiment to train the model for the data analysis. Image processing methods from the data have been used to identify flood elevation. Key findings show the true percentages and false percentages accuracy of AI measurements on water level and distances measurement. Accuracy of AI measurements for distance represent 80% accuracy for correct value and 20% for the wrong values. Other than that, for accuracy of AI measurements on water level shows 90.5% indicates the accurate percentage and 9.5% indicates the inaccurate percentages. Additionally, the comparison in measuring water level between two devices, which is camera and Iphone show that the camera achieves 87% is accurate meanwhile the Iphone reached 62% of accurate values. Good agreement shows based on findings. However, some areas need to be improved especially for Iphone devices.
format Conference or Workshop Item
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language en
publishDate 2025
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spelling my.uthm.eprints-125302025-03-19T00:35:06Z http://eprints.uthm.edu.my/12530/ A New Water Level Measurement Technique Using Artificial Intelligent Ibrahim, Lely Maisara Alias, Nur Aisyah Jamilah Ngatalin, Siti Najihah Umairah Abdul Kadir, Muhammad Azraie QE351-399.2 Mineralogy Flash floods are a growing concern worldwide, causing economic and social losses, increased death rates, and damage to infrastructure. The rapid nature of these disasters has led to delayed and inaccurate flood event information, causing public confusion and delays in response. This study aims to use AI to measure flood levels in real-time to improve flood information during flash floods. In this study, an Axia automobile as a model has been tested in an open space area. Then, box and manilla card is used as a level to mark the height of flood water, which is 15cm, 30cm, and up to 105cm. Data was collected by taking pictures of the vehicle from a distance of 620cm, 720cm, and 820cm. Teachable Machine applications has been used in this experiment to train the model for the data analysis. Image processing methods from the data have been used to identify flood elevation. Key findings show the true percentages and false percentages accuracy of AI measurements on water level and distances measurement. Accuracy of AI measurements for distance represent 80% accuracy for correct value and 20% for the wrong values. Other than that, for accuracy of AI measurements on water level shows 90.5% indicates the accurate percentage and 9.5% indicates the inaccurate percentages. Additionally, the comparison in measuring water level between two devices, which is camera and Iphone show that the camera achieves 87% is accurate meanwhile the Iphone reached 62% of accurate values. Good agreement shows based on findings. However, some areas need to be improved especially for Iphone devices. 2025-01-15 Conference or Workshop Item PeerReviewed text en http://eprints.uthm.edu.my/12530/1/P17889_e2ab609917f705c900ef134d8bff8cfc.pdf Ibrahim, Lely Maisara and Alias, Nur Aisyah Jamilah and Ngatalin, Siti Najihah Umairah and Abdul Kadir, Muhammad Azraie (2025) A New Water Level Measurement Technique Using Artificial Intelligent. In: MULTIDISCIPLINARY APPLIED RESEARCH AND INNOVATION. http://eprints.uthm.edu.my/12530/1/P17889_e2ab609917f705c900ef134d8bff8cfc.pdf
spellingShingle QE351-399.2 Mineralogy
Ibrahim, Lely Maisara
Alias, Nur Aisyah Jamilah
Ngatalin, Siti Najihah Umairah
Abdul Kadir, Muhammad Azraie
A New Water Level Measurement Technique Using Artificial Intelligent
title A New Water Level Measurement Technique Using Artificial Intelligent
title_full A New Water Level Measurement Technique Using Artificial Intelligent
title_fullStr A New Water Level Measurement Technique Using Artificial Intelligent
title_full_unstemmed A New Water Level Measurement Technique Using Artificial Intelligent
title_short A New Water Level Measurement Technique Using Artificial Intelligent
title_sort new water level measurement technique using artificial intelligent
topic QE351-399.2 Mineralogy
url http://eprints.uthm.edu.my/12530/1/P17889_e2ab609917f705c900ef134d8bff8cfc.pdf
http://eprints.uthm.edu.my/12530/
http://eprints.uthm.edu.my/12530/1/P17889_e2ab609917f705c900ef134d8bff8cfc.pdf
url_provider http://eprints.uthm.edu.my/