STAGE-DISCHARGE MODELING USING SUPPORT VECTOR MACHINES

Authors

  • A. Goel Civil Engineering, National Institute of Technology Kurukhshetra
  • Mahesh Pal Civil Engineering, National Institute of Technology Kurukshetra. INDI
Abstract:

Establishment of rating curves are often required by the hydrologists for flow estimates in the streams, rivers etc. Measurement of discharge in a river is a time-consuming, expensive, and difficult process and the conventional approach of regression analysis of stage-discharge relation does not provide encouraging results especially during the floods. P

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Journal title

volume 25  issue 1

pages  1- 10

publication date 2012-01-01

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