Marknadens största urval
Snabb leverans

Artificial Neural Network in Water Engineering

Artificial Neural Network in Water Engineeringav Shahide Dehghan
Om Artificial Neural Network in Water Engineering

Forecasts of future events are required in many of the activities associated with the planning and operation of the components of a water resource system. For the hydrologic component, there is a need for both short and long-term forecasts of hydrologic time series in order to optimize the system or to plan for future expansion or reduction. This presents the comparison of different artificial neural network (ANN) techniques in short-term continuous and intermittent daily streamflow forecasting and daily suspended sediment forecasting. Three different ANN techniques, namely, feed forward back propagation (FFBP), generalized regression neural networks (GRNN) and radial basis function-based neural networks (RBF) are applied to the hydrologic data. In general, the forecasting performance of ANN techniques is found to be superior to the other conventional statistical and stochastic methods in terms of the selected performance criteria.

Visa mer
  • Språk:
  • Engelska
  • ISBN:
  • 9786206151005
  • Format:
  • Häftad
  • Sidor:
  • 72
  • Utgiven:
  • 14. mars 2023
  • Mått:
  • 150x5x220 mm.
  • Vikt:
  • 125 g.
  Fri leverans
Leveranstid: 2-4 veckor
Förväntad leverans: 23. december 2024
Förlängd ångerrätt till 31. januari 2025

Beskrivning av Artificial Neural Network in Water Engineering

Forecasts of future events are required in many of the activities associated with the planning and operation of the components of a water resource system. For the hydrologic component, there is a need for both short and long-term forecasts of hydrologic time series in order to optimize the system or to plan for future expansion or reduction. This presents the comparison of different artificial neural network (ANN) techniques in short-term continuous and intermittent daily streamflow forecasting and daily suspended sediment forecasting. Three different ANN techniques, namely, feed forward back propagation (FFBP), generalized regression neural networks (GRNN) and radial basis function-based neural networks (RBF) are applied to the hydrologic data. In general, the forecasting performance of ANN techniques is found to be superior to the other conventional statistical and stochastic methods in terms of the selected performance criteria.

Användarnas betyg av Artificial Neural Network in Water Engineering



Gör som tusentals andra bokälskare

Prenumerera på vårt nyhetsbrev för att få fantastiska erbjudanden och inspiration för din nästa läsning.