A Performance Comparison of Various Artificial Intelligence Approaches for Estimation of Sediment of River Systems
Sediment is a universal issue that is generated in the river catchment and affects the river flow, reservoir capacity, hydropower generation and dam structure. This paper aims to present the result of experimentation in sediment load estimation using various machine learning algorithms as a powerful...
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Main Authors: | Hayder G., Solihin M.I., Kushiar K.F.B. |
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Other Authors: | 56239664100 |
Format: | Article |
Published: |
Polish Society of Ecological Engineering (PTIE)
2023
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