Title of article :
Application of the relevance vector machine to canal flow prediction in the Sevier River Basin
Author/Authors :
John Flake، نويسنده , , Todd K. Moon، نويسنده , , Mac McKee، نويسنده , , Jacob H. Gunther، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Pages :
7
From page :
208
To page :
214
Abstract :
This work addresses management of water for irrigation in arid regions where significant delays between the time of order and the time of delivery present major difficulties. Motivated by improvements to water management that will be facilitated by an ability to predict water demand, it employs a data-driven approach to developing canal flow prediction models using the relevance vector machine (RVM), a probabilistic kernel-based learning machine. A search is performed across model attributes including input set, kernel scale parameter and model update scheme for models providing superior prediction capability using the RVM. Models are developed for two canals in the Sevier River Basin of southern Utah for prediction horizons of up to 5 days.
Keywords :
Irrigation canals , Flow rate modeling , Forecasting , Water demand , Supervised machine learning
Journal title :
Agricultural Water Management
Serial Year :
2010
Journal title :
Agricultural Water Management
Record number :
1326181
Link To Document :
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