Cumulative infiltration and infiltration rate prediction using optimized deep learning algorithms: A study in Western Iran
Study region: Sixteen different sites from two provinces (Lorestan and Illam) in the western part of Iran were considered for the field data measurement of cumulative infiltration, infiltration rate, and other effective variables that affect infiltration process. Study focus: Soil infiltration is re...
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Format: | Article |
Language: | English |
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Elsevier
2021-06-01
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Series: | Journal of Hydrology: Regional Studies |
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Online Access: | http://www.sciencedirect.com/science/article/pii/S2214581821000549 |
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doaj-c06feaff7f2042cf9aa588ef1f8d315f |
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record_format |
Article |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mahdi Panahi Khabat Khosravi Sajjad Ahmad Somayeh Panahi Salim Heddam Assefa M Melesse Ebrahim Omidvar Chang-Wook Lee |
spellingShingle |
Mahdi Panahi Khabat Khosravi Sajjad Ahmad Somayeh Panahi Salim Heddam Assefa M Melesse Ebrahim Omidvar Chang-Wook Lee Cumulative infiltration and infiltration rate prediction using optimized deep learning algorithms: A study in Western Iran Journal of Hydrology: Regional Studies Cumulative infiltration Infiltration rate Deep learning CNN Metaheuristic Iran |
author_facet |
Mahdi Panahi Khabat Khosravi Sajjad Ahmad Somayeh Panahi Salim Heddam Assefa M Melesse Ebrahim Omidvar Chang-Wook Lee |
author_sort |
Mahdi Panahi |
title |
Cumulative infiltration and infiltration rate prediction using optimized deep learning algorithms: A study in Western Iran |
title_short |
Cumulative infiltration and infiltration rate prediction using optimized deep learning algorithms: A study in Western Iran |
title_full |
Cumulative infiltration and infiltration rate prediction using optimized deep learning algorithms: A study in Western Iran |
title_fullStr |
Cumulative infiltration and infiltration rate prediction using optimized deep learning algorithms: A study in Western Iran |
title_full_unstemmed |
Cumulative infiltration and infiltration rate prediction using optimized deep learning algorithms: A study in Western Iran |
title_sort |
cumulative infiltration and infiltration rate prediction using optimized deep learning algorithms: a study in western iran |
publisher |
Elsevier |
series |
Journal of Hydrology: Regional Studies |
issn |
2214-5818 |
publishDate |
2021-06-01 |
description |
Study region: Sixteen different sites from two provinces (Lorestan and Illam) in the western part of Iran were considered for the field data measurement of cumulative infiltration, infiltration rate, and other effective variables that affect infiltration process. Study focus: Soil infiltration is recognized as a fundamental process of the hydrologic cycle affecting surface runoff, soil erosion, and groundwater recharge. Hence, accurate prediction of the infiltration process is one of the most important tasks in hydrological science. As direct measurement is difficult and costly, and empirical models are inaccurate, the current study proposed a standalone, and optimized deep learning algorithm of a convolutional neural network (CNN) using gray wolf optimization (GWO), a genetic algorithm (GA), and an independent component analysis (ICA) for cumulative infiltration and infiltration rate prediction. First, 154 raw datasets were collected including the time of measuring; sand, clay, and silt percent; bulk density; soil moisture percent; infiltration rate; and cumulative infiltration using field survey. Next, 70 % of the dataset were used for model building and the remaining 30 % was used for model validation. Then, based on the correlation coefficient between input variables and outputs, different input combinations were constructed. Finally, the prediction power of each developed algorithm was evaluated using different visually-based (scatter plot, box plot and Taylor diagram) and quantitatively-based [root mean square error (RMSE), mean absolute error (MAE), the Nash-Sutcliffe efficiency (NSE), and percentage of bias (PBIAS)] metrics. New Hydrological Insights for the Region: Finding revealed that the time of measurement is more important for cumulative infiltration, while soil characteristics (i.e. silt content) are more significant in infiltration rate prediction. This shows that in the study area, silt parameter, which is the dominant constituent parameter, can control infiltration process more effectively. Effectiveness of the variables in the present study, in the order of importance are time, silt, clay, moisture content, sand, and bulk density. This can be related to the fact that most of study area is rangeland and thus, overgrazing leads to compaction of the silt soil that can lead to a slow infiltration process. Soil moisture content and bulk density are not highly effective in our study because these two factors do not significantly change across the study area. Findings demonstrated that the optimum input variable combination, is the one in which all input variables are considered. The results illustrated that CNN algorithms have a very high performance, while a metaheuristic algorithm enhanced the performance of a standalone CNN algorithm (from 7% to 28 %). The results also showed that a CNN-GWO algorithm outperformed the other algorithms, followed by CNN-ICA, CNN-GA, and CNN for both cumulative infiltration and infiltration rate prediction. All developed algorithms underestimated cumulative infiltration, while overestimating infiltration rates. |
topic |
Cumulative infiltration Infiltration rate Deep learning CNN Metaheuristic Iran |
url |
http://www.sciencedirect.com/science/article/pii/S2214581821000549 |
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doaj-c06feaff7f2042cf9aa588ef1f8d315f2021-05-30T04:43:37ZengElsevierJournal of Hydrology: Regional Studies2214-58182021-06-0135100825Cumulative infiltration and infiltration rate prediction using optimized deep learning algorithms: A study in Western IranMahdi Panahi0Khabat Khosravi1Sajjad Ahmad2Somayeh Panahi3Salim Heddam4Assefa M Melesse5Ebrahim Omidvar6Chang-Wook Lee7Division of Science Education, Kangwon National University, College of Education, # 4-301, Gangwondaehak-gil, Chuncheon-si, Gangwon-do, 24341, South Korea; Geoscience Platform Division, Korea Institute of Geoscience and Mineral Resources (KIGAM), 124, Gwahak-ro Yuseong-gu, Daejeon, 34132, South KoreaDepartment of Watershed Management Engineering, Ferdowsi University of Mashhad, Mashhad, IranDepartment of Civil and Environmental Engineering and Construction, University of Nevada, Las Vegas, USAYoung Researchers and Elites Club, North Tehran Branch, Islamic Azad University, Tehran, IranLaboratory of Research in Biodiversity Interaction Ecosystem and Biotechnology, University 20 Août 1955, Route El Hadaik, BP 26, Skikda, AlgeriaDepartment of Earth and Environment, Florida International University, Miami, USADepartment of Watershed Management Engineering, University of Kashan, Kashan, IranDivision of Science Education, Kangwon National University, College of Education, # 4-301, Gangwondaehak-gil, Chuncheon-si, Gangwon-do, 24341, South Korea; Corresponding author.Study region: Sixteen different sites from two provinces (Lorestan and Illam) in the western part of Iran were considered for the field data measurement of cumulative infiltration, infiltration rate, and other effective variables that affect infiltration process. Study focus: Soil infiltration is recognized as a fundamental process of the hydrologic cycle affecting surface runoff, soil erosion, and groundwater recharge. Hence, accurate prediction of the infiltration process is one of the most important tasks in hydrological science. As direct measurement is difficult and costly, and empirical models are inaccurate, the current study proposed a standalone, and optimized deep learning algorithm of a convolutional neural network (CNN) using gray wolf optimization (GWO), a genetic algorithm (GA), and an independent component analysis (ICA) for cumulative infiltration and infiltration rate prediction. First, 154 raw datasets were collected including the time of measuring; sand, clay, and silt percent; bulk density; soil moisture percent; infiltration rate; and cumulative infiltration using field survey. Next, 70 % of the dataset were used for model building and the remaining 30 % was used for model validation. Then, based on the correlation coefficient between input variables and outputs, different input combinations were constructed. Finally, the prediction power of each developed algorithm was evaluated using different visually-based (scatter plot, box plot and Taylor diagram) and quantitatively-based [root mean square error (RMSE), mean absolute error (MAE), the Nash-Sutcliffe efficiency (NSE), and percentage of bias (PBIAS)] metrics. New Hydrological Insights for the Region: Finding revealed that the time of measurement is more important for cumulative infiltration, while soil characteristics (i.e. silt content) are more significant in infiltration rate prediction. This shows that in the study area, silt parameter, which is the dominant constituent parameter, can control infiltration process more effectively. Effectiveness of the variables in the present study, in the order of importance are time, silt, clay, moisture content, sand, and bulk density. This can be related to the fact that most of study area is rangeland and thus, overgrazing leads to compaction of the silt soil that can lead to a slow infiltration process. Soil moisture content and bulk density are not highly effective in our study because these two factors do not significantly change across the study area. Findings demonstrated that the optimum input variable combination, is the one in which all input variables are considered. The results illustrated that CNN algorithms have a very high performance, while a metaheuristic algorithm enhanced the performance of a standalone CNN algorithm (from 7% to 28 %). The results also showed that a CNN-GWO algorithm outperformed the other algorithms, followed by CNN-ICA, CNN-GA, and CNN for both cumulative infiltration and infiltration rate prediction. All developed algorithms underestimated cumulative infiltration, while overestimating infiltration rates.http://www.sciencedirect.com/science/article/pii/S2214581821000549Cumulative infiltrationInfiltration rateDeep learningCNNMetaheuristicIran |