Sequential Tidal Height Prediction Using Artificial Neural Network

نویسنده

  • K. Raahemifar
چکیده

Traditionally, tidal prediction was carried out using the harmonic method, which is based on the identification of the harmonic constituents existing in the tidal record. Unfortunately, however, unless long tidal records are available at the tide gauges, some important tidal constituents may not be identified. This, in turn, deteriorates the accuracy of the tidal prediction. Additionally, tidal prediction is affected by the accuracy of the estimated amplitudes and phases of tidal constituents.

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تاریخ انتشار 2003