Comparison of Machine Learning Methods for Predicting Karst Spring Discharge in North China
Shu Cheng, Xiaojuan Qiao, Yaolin Shi, Dawei Wang

TL;DR
This study compares three machine learning methods—MLP, LSTM-RNN, and SVR—for predicting karst spring discharge, showing that neural networks outperform support vector regression in accuracy and robustness.
Contribution
The paper introduces a normalization preprocessing method and evaluates the performance of different machine learning models for spring discharge prediction in a karst area.
Findings
MLP achieved the lowest error metrics among the models.
Neural networks outperformed support vector regression.
MLP and LSTM-RNN are effective for spring discharge simulation.
Abstract
The quantitative analyses of karst spring discharge typically rely on physical-based models, which are inherently uncertain. To improve the understanding of the mechanism of spring discharge fluctuation and the relationship between precipitation and spring discharge, three machine learning methods were developed to reduce the predictive errors of physical-based groundwater models, simulate the discharge of Longzici Spring's karst area, and predict changes in the spring on the basis of long time series precipitation monitoring and spring water flow data from 1987 to 2018. The three machine learning methods included two artificial neural networks (ANNs), namely, multilayer perceptron (MLP) and long short-term memory-recurrent neural network (LSTM-RNN), and support vector regression (SVR). A normalization method was introduced for data preprocessing to make the three methods robust and…
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Taxonomy
TopicsHydrological Forecasting Using AI · Landslides and related hazards · Karst Systems and Hydrogeology
