Große Auswahl an günstigen Büchern
Schnelle Lieferung per Post und DHL

Implementation of Deep Learning Technique for Streamflow Prediction

Implementation of Deep Learning Technique for Streamflow Predictionvon Sarmad Latif Sie sparen 18% des UVP sparen 18%
Über Implementation of Deep Learning Technique for Streamflow Prediction

The control and management of water resources is greatly aided by dams and reservoirs, which have benefited human societies in many ways. These benefits include enhanced human health, increased food production, access to clean water for domestic and industrial use, economic growth, irrigation, the production of hydropower, and flood control. An important non-engineering step to verify flood-control measures and improve water supply efficiency is accurate inflow forecasting. Furthermore, as inflow is the primary input into reservoirs, precise inflow prediction can provide recommendations for reservoir development and management. The purpose of this study is to compare how deep learning algorithms and traditional machine learning algorithms are used to reservoir inflow prediction. LSTM, as an effective deep learning model, outperformed other conventional machine learning models in forecasting reservoir inflow. The findings of the current study could be in direct interest for global water organizations, public and private water sectors around the world.

Mehr anzeigen
  • Sprache:
  • Englisch
  • ISBN:
  • 9786206844822
  • Einband:
  • Taschenbuch
  • Seitenzahl:
  • 188
  • Veröffentlicht:
  • 13. Dezember 2023
  • Abmessungen:
  • 150x12x220 mm.
  • Gewicht:
  • 298 g.
  Versandkostenfrei
  Versandfertig in 1-2 Wochen.

Beschreibung von Implementation of Deep Learning Technique for Streamflow Prediction

The control and management of water resources is greatly aided by dams and reservoirs, which have benefited human societies in many ways. These benefits include enhanced human health, increased food production, access to clean water for domestic and industrial use, economic growth, irrigation, the production of hydropower, and flood control. An important non-engineering step to verify flood-control measures and improve water supply efficiency is accurate inflow forecasting. Furthermore, as inflow is the primary input into reservoirs, precise inflow prediction can provide recommendations for reservoir development and management. The purpose of this study is to compare how deep learning algorithms and traditional machine learning algorithms are used to reservoir inflow prediction. LSTM, as an effective deep learning model, outperformed other conventional machine learning models in forecasting reservoir inflow. The findings of the current study could be in direct interest for global water organizations, public and private water sectors around the world.

Kund*innenbewertungen von Implementation of Deep Learning Technique for Streamflow Prediction



Ähnliche Bücher finden
Das Buch Implementation of Deep Learning Technique for Streamflow Prediction ist in den folgenden Kategorien erhältlich:

Willkommen bei den Tales Buchfreunden und -freundinnen

Jetzt zum Newsletter anmelden und tolle Angebote und Anregungen für Ihre nächste Lektüre erhalten.