Innovative approach to prognostic plant growth modeling in SWAT+ for forest and perennial vegetation in tropical and Sub-Tropical climates

The growth of vegetation in ecosystems is influenced by hydro-climatic factors and biogeochemical cycles. Accurately modeling annual vegetation growth dynamics is essential for eco-hydrological modeling to estimate watershed hydrologic balance and nutrient cycling under changing environmental condit...

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Main Authors: Tadesse A. Abitew, Jeffrey Arnold, Jaehak Jeong, Allan Jones, Raghavan Srinivasan
Format: Article
Language:English
Published: Elsevier 2023-08-01
Series:Journal of Hydrology X
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2589915523000093
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author Tadesse A. Abitew
Jeffrey Arnold
Jaehak Jeong
Allan Jones
Raghavan Srinivasan
author_facet Tadesse A. Abitew
Jeffrey Arnold
Jaehak Jeong
Allan Jones
Raghavan Srinivasan
author_sort Tadesse A. Abitew
collection DOAJ
description The growth of vegetation in ecosystems is influenced by hydro-climatic factors and biogeochemical cycles. Accurately modeling annual vegetation growth dynamics is essential for eco-hydrological modeling to estimate watershed hydrologic balance and nutrient cycling under changing environmental conditions. The Soil and Water Assessment Tool (SWAT) and its upgraded version SWAT+ are process-oriented river basin models widely used. However, the temperature-based approach to plant growth simulation in tropical regions has limitations due to the importance of soil moisture availability as a key driver of plant growth. This study proposes an innovative approach that incorporates a proxy soil moisture availability index based on monthly rainfall and potential evapotranspiration ratio. This approach identifies the start of the growing season within prescribed transition months and controls leaf drop rate throughout the year, a crucial process during leaf senescence. We evaluated the reliability of this approach by comparing SWAT+ simulated Leaf Area Index (LAI), evapotranspiration (ET), and net primary productivity (NPP) with benchmark remote sensing-based datasets for three landcover classes in the Mara River Basin (Kenya/Tanzania). Our results demonstrate that the improved plant growth module in SWAT+ developed in this study can simulate temporal vegetation growth dynamics of evergreen forest, savanna grassland, and shrubland land cover types consistently with good correlations (r > 0.5) and low average bias (<10%). Thus, the SWAT+ model with the enhanced plant growth module can be a robust tool for investigating the coupled carbon, nutrient, and water cycling in tropical and sub-tropical climates.
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spelling doaj.art-a399a21bfca24fe78e9ac800f7198f582023-09-07T04:44:41ZengElsevierJournal of Hydrology X2589-91552023-08-0120100156Innovative approach to prognostic plant growth modeling in SWAT+ for forest and perennial vegetation in tropical and Sub-Tropical climatesTadesse A. Abitew0Jeffrey Arnold1Jaehak Jeong2Allan Jones3Raghavan Srinivasan4Blackland Research and Extension Center, Texas A&M AgriLife, Temple, TX, USA; Corresponding author.Grassland Soil and Water Res. Lab, USDA-ARS, Temple, TX, USABlackland Research and Extension Center, Texas A&M AgriLife, Temple, TX, USABlackland Research and Extension Center, Texas A&M AgriLife, Temple, TX, USABlackland Research and Extension Center, Texas A&M AgriLife, Temple, TX, USAThe growth of vegetation in ecosystems is influenced by hydro-climatic factors and biogeochemical cycles. Accurately modeling annual vegetation growth dynamics is essential for eco-hydrological modeling to estimate watershed hydrologic balance and nutrient cycling under changing environmental conditions. The Soil and Water Assessment Tool (SWAT) and its upgraded version SWAT+ are process-oriented river basin models widely used. However, the temperature-based approach to plant growth simulation in tropical regions has limitations due to the importance of soil moisture availability as a key driver of plant growth. This study proposes an innovative approach that incorporates a proxy soil moisture availability index based on monthly rainfall and potential evapotranspiration ratio. This approach identifies the start of the growing season within prescribed transition months and controls leaf drop rate throughout the year, a crucial process during leaf senescence. We evaluated the reliability of this approach by comparing SWAT+ simulated Leaf Area Index (LAI), evapotranspiration (ET), and net primary productivity (NPP) with benchmark remote sensing-based datasets for three landcover classes in the Mara River Basin (Kenya/Tanzania). Our results demonstrate that the improved plant growth module in SWAT+ developed in this study can simulate temporal vegetation growth dynamics of evergreen forest, savanna grassland, and shrubland land cover types consistently with good correlations (r > 0.5) and low average bias (<10%). Thus, the SWAT+ model with the enhanced plant growth module can be a robust tool for investigating the coupled carbon, nutrient, and water cycling in tropical and sub-tropical climates.http://www.sciencedirect.com/science/article/pii/S2589915523000093SWAT+Watershed ModellingVegetation growth modelingRemote sensing, tropical/subtropical climate
spellingShingle Tadesse A. Abitew
Jeffrey Arnold
Jaehak Jeong
Allan Jones
Raghavan Srinivasan
Innovative approach to prognostic plant growth modeling in SWAT+ for forest and perennial vegetation in tropical and Sub-Tropical climates
Journal of Hydrology X
SWAT+
Watershed Modelling
Vegetation growth modeling
Remote sensing, tropical/subtropical climate
title Innovative approach to prognostic plant growth modeling in SWAT+ for forest and perennial vegetation in tropical and Sub-Tropical climates
title_full Innovative approach to prognostic plant growth modeling in SWAT+ for forest and perennial vegetation in tropical and Sub-Tropical climates
title_fullStr Innovative approach to prognostic plant growth modeling in SWAT+ for forest and perennial vegetation in tropical and Sub-Tropical climates
title_full_unstemmed Innovative approach to prognostic plant growth modeling in SWAT+ for forest and perennial vegetation in tropical and Sub-Tropical climates
title_short Innovative approach to prognostic plant growth modeling in SWAT+ for forest and perennial vegetation in tropical and Sub-Tropical climates
title_sort innovative approach to prognostic plant growth modeling in swat for forest and perennial vegetation in tropical and sub tropical climates
topic SWAT+
Watershed Modelling
Vegetation growth modeling
Remote sensing, tropical/subtropical climate
url http://www.sciencedirect.com/science/article/pii/S2589915523000093
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