Assessing effect of best management practices in unmonitored watersheds using the coupled SWAT-BiLSTM approach.

Xianqi Zhang, Yu Qi, Haiyang Li, Shifeng Sun, Qiuwen Yin
Author Information
  1. Xianqi Zhang: Water Conservancy College, North China University of Water Resources and Electric Power, Zhengzhou, 450046, China.
  2. Yu Qi: Water Conservancy College, North China University of Water Resources and Electric Power, Zhengzhou, 450046, China. 978665082@qq.com.
  3. Haiyang Li: Water Conservancy College, North China University of Water Resources and Electric Power, Zhengzhou, 450046, China.
  4. Shifeng Sun: Water Conservancy College, North China University of Water Resources and Electric Power, Zhengzhou, 450046, China.
  5. Qiuwen Yin: Water Conservancy College, North China University of Water Resources and Electric Power, Zhengzhou, 450046, China.

Abstract

In order to enhance the simulation of BMPs (Best Management Practices) reduction effects in unmonitored watersheds, in this study, we combined the physically-based hydrological model Soil & Water Assessment Tool (SWAT) and the data-driven model Bi-directional Long Short-Term Memory (Bi-LSTM), using the very-high-resolution (VHR) Land Use and Land Cover (LULC) dataset SinoLC-1 as data input, to evaluate the feasibility of constructing a water environment model for the Ba-River Basin (BRB) in central China and improving streamflow prediction performance. In the SWAT-BiLSTM model, we calibrated the top five SWAT parameters sorted by P-Value, allowing SWAT to act as a transfer function to convert meteorological data into base flow and storm flow, serving as the data input for the Bi-LSTM model. This optimization improved the Bi-LSTM's learning process for the relationship between the target and explanatory variables. The daily streamflow prediction results showed that the hybrid model had 9 regions rated as "Very good," 2 as "Good," 2 as "Satisfactory," and 1 as "Unsatisfactory" among the 14 regions. The model achieved an NSE of 0.86, R of 0.85, and PBIAS of -2.71% for the overall daily streamflow prediction performance during the verification period of the BRB. This indicates that the hybrid model has high predictive accuracy and no significant systematic bias, providing a sound hydrodynamic environment for water quality simulation. The simulation results of different BMPs scenarios showed that in the scenarios with only one BMP measure, stubble mulch had the best reduction effect, with average reductions of 17.83% for TN and 36.17% for TP. In the scenarios with a combination of multiple BMP measures, the combination of stubble mulch, soil testing and formula fertilization, and vegetative filter strip performed the best, achieving average reductions of 42.71% for TN and 50.40% for TP. The hybrid model provides a novel approach to simulate BMPs' reduction effects in regions without measured hydrological data and has the potential for wide application in BMP-related decision-making.

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