1. Prediction of salinity intrusion in the east Upputeru estuary of India using hybrid metaheuristic algorithms
- Author
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Mantena, Sireesha, Mahammood, Vazeer, and Rao, Kunjam Nageswara
- Abstract
Saltwater intrusion is a significant problem in the coastal estuaries of India. Moreover, monitoring and forecasting salinity intrusion is crucial for sustainable water resources management. This research aims to apply and compare the performance of hybrid metaheuristic algorithms for predicting saltwater intrusion in the east Upputeru estuary of India. To attain this goal, extreme learning machines (ELM) coupled with three metaheuristic algorithms, such as artificial bee colony (ABC), particle swarm optimization (PSO), and invasive weed optimization (IWO) algorithms use only groundwater salinity data and location attributes. Additionally, various levels wavelets transform (WT) were employed to improve the prediction results along with the ELM features. The input data is composed of 184 data points in each year of 2017, 2018, 2020, and 2021. Yearly salinity was measured during the pre-monsoon consideration from March to May. The coefficient of determination (R2) and Root Mean Squared Error (RMSE) is used to evaluate the performances of the prediction models. The research results indicated that the hybrid model, such as WT-IWO-ELM, achieved high performance for salinity forecasting with R2= 0.99 and RMSE = 0.65 for the testing period. The prediction results revealed that the hybrid soft computing models with WT outperformed other models regarding prediction performance. Moreover, it was concluded that choosing of appropriate level of WT has a significant impact on model performance.
- Published
- 2024
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