Abstract: The paper examines the implementation of neural network methods for predicting peak water levels during the period of spring ice drift by the example of the Sukhona, Northern Dvina, and Pechora rivers. All considered neural network methods have shown high efficiency according to the criteria recommended by the Hydrometcenter of Russia and surpassed regression dependencies in the skill of forecasts. When using the method of training artificial neural networks, the standard error of prediction is reduced by approximately 10–20% as compared with regression dependencies.
Original languageEnglish
Pages (from-to) 354-362
Number of pages9
JournalRussian Meteorology and Hydrology
Volume49
Issue number4
DOIs
StatePublished - 1 Apr 2024

    Research areas

  • Dvina-Pechora basin, neural networks, peak water levels, prediction

ID: 125278722