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TN Prediction Results for Miho Watershed using SWAT-DL

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DataCite Commons2025-04-04 更新2025-04-16 收录
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# SWAT-ML and Deep Learning Model Results for TN Prediction in Miho Watershed This dataset contains simulation results and training datasets related to the prediction of Total Nitrogen (TN) concentrations using a hybrid SWAT-ML model and deep learning models (LSTM, GRU) for the Miho watershed. ## 1. Files Included ### [A] SWAT-ML Model Results (Outlet) - tn_train_pred_0323.csv: Training period predictions for TN at the outlet. - Columns: Date2, TN - tn_test_pred_0323.csv: Testing period predictions for TN at the outlet. - Columns: Date2, TN ### [B] Model Input Dataset - Miho10_dataset_mod.csv: Input dataset used for training the SWAT-ML model. Includes input features such as SWAT outputs and previous precipitation. - Columns: Date, SWAT_Flow, SWAT_Sed, SWAT_ORGN, SWAT_ORGP... ### [C] LSTM Model Results (Node-wise) - Miho3_results_LSTM.csv: LSTM-based TN prediction results at Miho3 site. - Columns: Unnamed: 0, org, pred - Miho5_results_LSTM.csv: LSTM-based TN prediction results at Miho5 site. - Columns: Unnamed: 0, org, pred - Miho6_results_LSTM.csv: LSTM-based TN prediction results at Miho6 site. - Columns: Unnamed: 0, org, pred - Miho9_results_LSTM.csv: LSTM-based TN prediction results at Miho9 site. - Columns: Unnamed: 0, org, pred ### [D] GRU Model Results (Node-wise) - Miho3_results_GRU.csv: GRU-based TN prediction results at Miho3 site. - Columns: Unnamed: 0, org, pred - Miho5_results_GRU.csv: GRU-based TN prediction results at Miho5 site. - Columns: Unnamed: 0, org, pred - Miho6_results_GRU.csv: GRU-based TN prediction results at Miho6 site. - Columns: Unnamed: 0, org, pred - Miho9_results_GRU.csv: GRU-based TN prediction results at Miho9 site. - Columns: Unnamed: 0, org, pred ## 2. Notes - All prediction results are saved in CSV format, containing at least a Date column and predicted TN values. - This dataset is part of a study on integrating process-based models (SWAT) with machine learning (ML/DL) models to improve nitrogen load prediction accuracy across multiple locations in a watershed. ## 3. Contact For questions regarding the dataset, please contact: **Yongeun Park** Professor. Department of Civil and Environmental Engineering, Konkuk University-Seoul, Republic of Korea Email: yepark@konkuk.ac.kr
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Mendeley Data
创建时间:
2025-04-02
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