2022
DOI: 10.1155/2022/6955271
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Hybrid Technique to Improve the River Water Level Forecasting Using Artificial Neural Network-Based Marine Predators Algorithm

Abstract: Water level (WL) forecasting has become a difficult undertaking due to spatiotemporal fluctuations in climatic factors and complex physical processes. This paper proposes a novel hybrid machine learning model based on an artificial neural network (ANN) and the Marine Predators algorithm (MPA) for modeling monthly water levels of the Tigris River in Al-Kut, Iraq. Data preprocessing techniques are employed to enhance data quality and determine the optimal input model. Historical data for water level and climatic… Show more

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Cited by 5 publications
(2 citation statements)
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References 68 publications
(90 reference statements)
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“…The forecasting performance of SVR is mainly affected by C and gamma (Ngo N et al, 2022), so we used optimization algorithms to optimize these two parameters. Based on previous literature and the performance of the three optimization algorithms in this paper, for fairness, we have the same settings for all three algorithms (Lu et al, 2022;Mohammed S et al, 2022;Sharma and Shekhawat et al, 2022;Su X et al, 2022): iterations: 30; population: 20; and lower and upper bound [0.1,1]. In the Bagging algorithm, the main factors that affect its performance include base learners and data samples (Mohammed and Kora et al, 2023).…”
Section: Parameter Settingmentioning
confidence: 99%
“…The forecasting performance of SVR is mainly affected by C and gamma (Ngo N et al, 2022), so we used optimization algorithms to optimize these two parameters. Based on previous literature and the performance of the three optimization algorithms in this paper, for fairness, we have the same settings for all three algorithms (Lu et al, 2022;Mohammed S et al, 2022;Sharma and Shekhawat et al, 2022;Su X et al, 2022): iterations: 30; population: 20; and lower and upper bound [0.1,1]. In the Bagging algorithm, the main factors that affect its performance include base learners and data samples (Mohammed and Kora et al, 2023).…”
Section: Parameter Settingmentioning
confidence: 99%
“…Previous research on predicting water level using forecasting techniques using the Long Short-Term Memory algorithm was carried out by (Baek et al, 2020;Shuofeng et al, 2021;Kardhana et al, 2022;Kusudo et al, 2022;Noor et al, 2022). Other research uses the Artificial Neural Network algorithm (Kartini et al, 2021;Mohammed et al, 2022;Jayathilake et al, 2023). Apart from that, there are also those that use the GRA-NARX Neural Network algorithm (Liu et al, 2022), Multilayer Perceptron Neural Network, Elman Neural Network (Deng et al, 2022) and Transformer Neural Network (Xu et al, 2023).…”
Section: Introductionmentioning
confidence: 99%