Abstract

River flow modeling plays a crucial role in water resource management and ensuring its sustainability. Therefore, in recent years, in addition to the prediction of hydrological processes through modeling, applicable and highly reliable methods have also been used to analyze the sustainability of water resources. Artificial neural networks and deep learning-based hybrid models have been used by scientists in river flow predictions. Therefore, in this study, we propose a hybrid approach, integrating long-short-term memory (LSTM) networks and a genetic algorithm (GA) for streamflow forecasting. The performance of the hybrid model and the benchmark model was taken into account using daily flow data. For this purpose, the daily river flow time series of the Beyderesi-Kılayak flow measurement station (FMS) from September 2000 to June 2019 and the data from Yazıköy from December 2000 to June 2018 were used for flow measurements on the Euphrates River in Turkey. To validate the performance of the model, the first 80% of the data were used for training, and the remaining 20% were used for the testing of the two FMSs. Statistical methods such as linear regression was used during the comparison process to assess the proposed method’s performance and to demonstrate its superior predictive ability. The estimation results of the models were evaluated with RMSE, MAE, MAPE, STD and R2 statistical metrics. The comparison of daily streamflow predictions results revealed that the LSTM-GA model provided promising accuracy results and mainly presented higher performance than the benchmark model and the linear regression model.

Highlights

  • Accepted: 31 December 2021Water is one of the most crucial resources for the survival of all living creatures onEarth

  • The performance of the hybrid model against linear regression seems to be for Yazıköy flow measurement station (FMS)

  • The performance of the hybrid model against linear regression seems to quite successful whenwhen the statistical metrics given given in Table are examined

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Summary

Introduction

Water is one of the most crucial resources for the survival of all living creatures on. Since the amount of water on Earth is constant, the need for water increases in line with the population rate. Planning and managing water resources as accurately as possible has recently become one of the essential issues in hydrology. Drought and their effects on the water level negatively impact humans’ lives. The existence and quality of water, which is necessary in every aspect of human life, is crucial [1]. Increasing water demand due to drought, climate change, unplanned consumption, industrialization and agricultural use puts pressure on clean water resources. One of the critical measures required to ensure sustainability is forecasting river flows. The annual maximum flood peak discharge forecasting using hermite projection pursuit regression with SSO and LS method.

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