Hydrological Modelling and Sustainable Management of Murredu and Peddavagu Watersheds in India Using Geospatical and Artificial Intelligence Techniques
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Abstract
Water is a vital resource for life, essential for drinking, agriculture, industry, and
newlineecosystems. This study focuses on the Murredu and Peddavagu tributaries of the Godavari
newlineRiver, aiming to improve water efficiency and protect these watersheds for future generations.
newlineUsing the soil and water assessment tool (SWAT), artificial intelligence (AI), and other
newlinemethods, the research analysed rainfall-runoff behavior, identified artificial recharge sites, and
newlineprioritised sub-watersheds for sustainable management. The study employed the SWAT model
newlinefor monthly rainfall-runoff modelling in the Murredu (1996 2005) and Peddavagu (1987
newline2010) watersheds, identifying 17 and 18 sensitive parameters, respectively, using the soil and
newlinewater assessment tool-calibration and uncertainty programming (SWAT-CUP). For the
newlineMurredu watershed, the model demonstrated strong performance during calibration
newline(coefficient of determination (R²) = 0.77, Nash-Sutcliffe efficiency (NSE) = 0.77, root-meansquare
newlineerror (RMSE) = 7.59 m³/s, mean absolute error (MAE) = 4.4 m³/s, RMSE-observations
newlinestandard deviation ratio (RSR) = 0.48, percent bias (PBIAS) = -13.34) and validation (R² =
newline0.84, NSE = 0.80, RMSE = 10.67 m³/s, MAE = 6.83 m³/s, RSR = 0.44, PBIAS = -13.3), with
newlineevapotranspiration (612.3 mm/year) accounting for 49.85% of water loss and surface runoff
newlineaveraging 178.5 mm/year. Similarly, in the Peddavagu watershed, calibration (R² = 0.63, NSE
newline= 0.62, RMSE = 50.64 m³/s, MAE = 19.65 m³/s, RSR = 0.61, PBIAS = -0.10) and validation
newline(R² = 0.75, NSE = 0.71, RMSE = 27.59 m³/s, MAE = 12.14 m³/s, RSR = 0.53, PBIAS = -11.11)
newlineresults indicated evapotranspiration (571.6 mm/year) as the largest water balance component
newline(49.24% loss), with surface runoff averaging 224.13 mm/year. The SWAT model effectively
newlinepredicted low flows but struggled with peak flow estimation in both watersheds, underscoring
newlinethe importance of evapotranspiration and surface runoff variability for sustainable water
newlineresource management.
newlineThe SWAT model, while effective for rainfall-runoff model