Application of coupling machine learning techniques and linear Bias scaling for optimizing 10-daily flow simulations, Swat River Basin

Author:

Syed Sibtain1,Syed Zain2,Mahmood Prince3,Haider Sajjad2,Khan Firdos4,Syed Muhammad Talha5,Syed Saqlain6

Affiliation:

1. a Department of IT & CS, Pak-Austria Fachhochschule: Institute of Applied Sciences and Technology, Mang, Haripur, Pakistan

2. b Department of Civil Engineering, National University of Science and Technology (NUST), H-12 Islamabad, Pakistan

3. c School of Engineering and Applied sciences, ISRA University (Islamabad campus), Farash town, Islamabad, Pakistan

4. d School of Natural Sciences (SNS), National University of Science and Technology (NUST), 44000 Islamabad, Pakistan

5. e Department of Space Sciences, Institute of Space Technology, Sector-H, DHA Phase II, Islamabad, Pakistan

6. f Department of Electrical Engineering, University of Engineering (UET), Peshawar, Pakistan

Abstract

Abstract Accurate hydrological simulations comply with the water (sixth) Sustainable Development Goals (SDGs). The study investigates the utility of ANN and SVR, as well as the post-simulation bias treatment of these simulations at Swat River basin, Pakistan. For this, climate variables were lag adjusted for the first time, then cross-correlated with the flow to identify the most associative delay time. In sensitivity analysis, seven combinations were selected as input with suitable hyperparameters. For SVR, grid search cross-validation determined the optimal set of hyper-parameters, while for ANN, neurons and hidden layers were optimized by trial and error. We ran model by using optimized hyperparameter configurations and input combinations. In comparison to SVRs (Root mean square error (RMSE) 34.2; mean absolute error (MAE) 3.0; CC 0.91) values, respectively, ANN fits the observations better than SVR with (RMSE 11.9; MAE 1.14; CC 0.99). Linear bias-corrected simulations greatly improved ANN performance (RMSE 3.98; MAE 0.625; CC 0.99), while the improvement was slight in the case of SVR (RMSE 35; MAE 0.58; CC 0.92). On seasonal scale, bias-corrected simulations remedy low- and high-flow seasonal discrepancies. Flow duration analysis results reveal deviation at low- and high-flow conditions by models, which were then reconciled by applying bias corrections.

Publisher

IWA Publishing

Subject

Water Science and Technology

Reference34 articles.

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