Abstract

The South Korean government has recently focused on environmental protection efforts to improve water quality which has been degraded by nonpoint sources of water pollution from runoff. In order to take care of environmental issues, many physically-based models have been used. However, the physically-based models take a large amount of work to carry out site simulations, and there is a need to find faster and more efficient approaches. For an alternative approach for sediment management using the physically-based models, the machine learning-based models were used for estimating sediment trapping efficiency of vegetative filter strips. The seven nonlinear regression algorithms of machine learning models (e.g., decision tree, multilayer perceptron, k-nearest neighbors, support vector machine, random forest, AdaBoost and gradient boosting) were applied to select the model which best estimates the sediment trapping efficiency of vegetative filter strips. The sediment trapping efficiencies calculated by the machine learning models showed similar results as those of vegetative filter strip modeling system (VFSMOD-W) model. As a result of the accuracy evaluation among the seven machine learning models, the multilayer perceptron model-derived the best fit with VFSMOD-W model. It is expected that the sediment trapping efficiency of the vegetative filter strips in various cases in agricultural fields in South Korea can be predicted easier, faster and accurately by the machine learning models developed in this study. Machine learning models can be used to evaluate sediment trapping efficiency without complicated physically-based model design and high computational cost. Therefore, decision makers can maximize the quality of their outputs by minimizing their efforts in the decision-making process.

Highlights

  • The South Korean government has recently focused on environmental protection efforts to improve water quality which has been degraded by nonpoint sources (NPSs) of water pollution from runoff because of runoff transporting sediment from NPSs

  • The machine learning models tested in this study were highly successful in replicating the results of the VFSMOD-W simulations across a wide range of conditions

  • The results from Multilayer Perceptron (MLP) and gradient boosting models showed high prediction accuracy indicating MLP with Nash-Sutcliffe Efficiency (NSE) of 1, Root Mean Squared Errors (RMSE) of 0.37% and MAPE of 0.53% and gradient boosting with NSE of 0.99, RMSE of 0.89% and MAPE of 0.78%

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Summary

Introduction

The South Korean government has recently focused on environmental protection efforts to improve water quality which has been degraded by nonpoint sources (NPSs) of water pollution from runoff because of runoff transporting sediment from NPSs. A large amount of sediment control has focused on agricultural fields using a wide range of hydraulic structures, such as debris barriers, sediment filters and sediment chambers [1]. Of these approaches, vegetative filter strips (VFS) has been popular and suggested as the best management practices (BMPs) for reducing contaminant in surface runoff [2]. The VFS approach is designed to mimic natural sediment traps on the landscape, and slow the speed of runoff by filtration, deposition and infiltration to filter a substantial amount of NPS water pollution from agricultural runoff. Vegetative filter strips (VFSs) can be an effective, long-term, economical approach for environmental management [4,5]

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