2024
DOI: 10.11591/ijece.v14i1.pp960-970
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Multi-task learning using non-linear autoregressive models and recurrent neural networks for tide level forecasting

Nerfita Nikentari,
Hua-Liang Wei

Abstract: Tide level forecasting plays an important role in environmental management and development. Current tide level forecasting methods are usually implemented for solving single task problems, that is, a model built based on the tide level data at an individual location is only used to forecast tide level of the same location but is not used for tide forecasting at another location. This study proposes a new method for tide level prediction at multiple locations simultaneously. The method combines nonlinear autore… Show more

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