Deep convolutional neural network to predict ground water level

In contrast to the atmosphere and fresh surface water, which can only briefly store water, the natural water cycle may use groundwater as a “reservoir” that stores water for extended periods. Even though there is a considerable degree of variation and complexity in the subsurface environment, ther...

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Main Authors: Zamani, Abu Sarwar, Hassan Abdalla Hashim, Aisha, Gopi, Arepalli, Moholkar, Kavita, Rizwanullah, Mohammed, Altaee, Rasool
Format: Article
Language:English
English
Published: 3 2023
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Online Access:http://irep.iium.edu.my/106404/7/106404_Deep%20convolutional%20neural%20network%20to%20predic.pdf
http://irep.iium.edu.my/106404/8/106404_Deep%20convolutional%20neural%20network%20to%20predic_Scopus.pdf
http://irep.iium.edu.my/106404/
https://link.springer.com/article/10.1007/s41324-023-00537-x
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spelling my.iium.irep.1064042023-09-06T08:33:06Z http://irep.iium.edu.my/106404/ Deep convolutional neural network to predict ground water level Zamani, Abu Sarwar Hassan Abdalla Hashim, Aisha Gopi, Arepalli Moholkar, Kavita Rizwanullah, Mohammed Altaee, Rasool TK7885 Computer engineering In contrast to the atmosphere and fresh surface water, which can only briefly store water, the natural water cycle may use groundwater as a “reservoir” that stores water for extended periods. Even though there is a considerable degree of variation and complexity in the subsurface environment, there is a minimal availability of data from the field. Both of these challenges were faced by those who used models that were based on actual reality. Statistical modelling gradually improved the accuracy of the model’s calibration. Groundwater has become an increasingly important resource for supplying the water requirements of a rising global population. The fact that there is such a large stockpile allows it to be used once again, even during dry seasons or droughts. This article presents a deep convolutional neural network-based model for predicting groundwater levels. As part of the experimental setup, 174 satellite pictures of groundwater are included in the input data set. Images are preprocessed using the CLAHE method. The CNN, SVM, and AdaBoost methods make up the classification model. The results have shown that CNN can classify things correctly 98.5 per cent of the time. Precision and Recall rate of Deep CNN is also better for ground water image classification. 3 2023-08-25 Article PeerReviewed application/pdf en http://irep.iium.edu.my/106404/7/106404_Deep%20convolutional%20neural%20network%20to%20predic.pdf application/pdf en http://irep.iium.edu.my/106404/8/106404_Deep%20convolutional%20neural%20network%20to%20predic_Scopus.pdf Zamani, Abu Sarwar and Hassan Abdalla Hashim, Aisha and Gopi, Arepalli and Moholkar, Kavita and Rizwanullah, Mohammed and Altaee, Rasool (2023) Deep convolutional neural network to predict ground water level. Spatial Information Research. pp. 1-9. ISSN 2366-3286 E-ISSN 2366-3294 https://link.springer.com/article/10.1007/s41324-023-00537-x doi:10.1007/s41324-023-00537-x
institution Universiti Islam Antarabangsa Malaysia
building IIUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider International Islamic University Malaysia
content_source IIUM Repository (IREP)
url_provider http://irep.iium.edu.my/
language English
English
topic TK7885 Computer engineering
spellingShingle TK7885 Computer engineering
Zamani, Abu Sarwar
Hassan Abdalla Hashim, Aisha
Gopi, Arepalli
Moholkar, Kavita
Rizwanullah, Mohammed
Altaee, Rasool
Deep convolutional neural network to predict ground water level
description In contrast to the atmosphere and fresh surface water, which can only briefly store water, the natural water cycle may use groundwater as a “reservoir” that stores water for extended periods. Even though there is a considerable degree of variation and complexity in the subsurface environment, there is a minimal availability of data from the field. Both of these challenges were faced by those who used models that were based on actual reality. Statistical modelling gradually improved the accuracy of the model’s calibration. Groundwater has become an increasingly important resource for supplying the water requirements of a rising global population. The fact that there is such a large stockpile allows it to be used once again, even during dry seasons or droughts. This article presents a deep convolutional neural network-based model for predicting groundwater levels. As part of the experimental setup, 174 satellite pictures of groundwater are included in the input data set. Images are preprocessed using the CLAHE method. The CNN, SVM, and AdaBoost methods make up the classification model. The results have shown that CNN can classify things correctly 98.5 per cent of the time. Precision and Recall rate of Deep CNN is also better for ground water image classification.
format Article
author Zamani, Abu Sarwar
Hassan Abdalla Hashim, Aisha
Gopi, Arepalli
Moholkar, Kavita
Rizwanullah, Mohammed
Altaee, Rasool
author_facet Zamani, Abu Sarwar
Hassan Abdalla Hashim, Aisha
Gopi, Arepalli
Moholkar, Kavita
Rizwanullah, Mohammed
Altaee, Rasool
author_sort Zamani, Abu Sarwar
title Deep convolutional neural network to predict ground water level
title_short Deep convolutional neural network to predict ground water level
title_full Deep convolutional neural network to predict ground water level
title_fullStr Deep convolutional neural network to predict ground water level
title_full_unstemmed Deep convolutional neural network to predict ground water level
title_sort deep convolutional neural network to predict ground water level
publisher 3
publishDate 2023
url http://irep.iium.edu.my/106404/7/106404_Deep%20convolutional%20neural%20network%20to%20predic.pdf
http://irep.iium.edu.my/106404/8/106404_Deep%20convolutional%20neural%20network%20to%20predic_Scopus.pdf
http://irep.iium.edu.my/106404/
https://link.springer.com/article/10.1007/s41324-023-00537-x
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score 13.149126