مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

video

مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

sound

مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

Persian Version

مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

View:

241
مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

Download:

0
مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

Cites:

Information Journal Paper

Title

COMPARISON OF DYNAMIC ARTIFICIAL NEURAL NETWORK AND MULTIVARIATE LINEAR REGRESSION MODELS FOR INFLOW FORECASTING USING REMOTE SENSING DATA

Pages

  0-0

Abstract

 This study aims to compare the ability of DYNAMIC ARTIFICIAL NEURAL NETWORK (DANN) and MULTIVARIATE LINEAR REGRESSION (LR) in forecasting monthly inflow to SHAHCHERAGHI RESERVOIR in Semnan province, Iran. The input data consisted monthly flow discharge, precipitation, mean temperature and SNOW COVER AREA. SNOW COVER AREA was estimated using NOAA-AVHRR images, based on thresholds in histograms of different phenomena in visible and thermal channels. DYNAMIC ARTIFICIAL NEURAL NETWORKs were determined with one hidden layer, Levenberg-Marquardt as training function, and sigmoid as transfer function Moreover, five DANN and five LR models were run with different input data and the results were compared. Root mean square (RMSE), mean bias error (MBE), mean absolute relative error (MARE), maximum relative error (REmax) and R2 (coefficient of determination) are the criteria that were used for models evaluation. The best result is gained with three inputs (inflow discharge, precipitation and SNOW COVER AREA) by DANN. Regarding linear regression as a classic model in inflow forecasting, the improvement of the results by using DANN was obvious. The REmax of the selected DANN model was almost 85% less than REmax of the selected LR.

Multimedia

  • No record.
  • Cites

  • No record.
  • References

  • No record.
  • Cite

    APA: Copy

    BANIHABIB, MOHAMMAD EBRAHIM, & JAMALI, FARIMAH SADAT. (2010). COMPARISON OF DYNAMIC ARTIFICIAL NEURAL NETWORK AND MULTIVARIATE LINEAR REGRESSION MODELS FOR INFLOW FORECASTING USING REMOTE SENSING DATA. WATER AND SOIL SCIENCE (AGRICULTURAL SCIENCE), 20.1(2), 0-0. SID. https://sid.ir/paper/590504/en

    Vancouver: Copy

    BANIHABIB MOHAMMAD EBRAHIM, JAMALI FARIMAH SADAT. COMPARISON OF DYNAMIC ARTIFICIAL NEURAL NETWORK AND MULTIVARIATE LINEAR REGRESSION MODELS FOR INFLOW FORECASTING USING REMOTE SENSING DATA. WATER AND SOIL SCIENCE (AGRICULTURAL SCIENCE)[Internet]. 2010;20.1(2):0-0. Available from: https://sid.ir/paper/590504/en

    IEEE: Copy

    MOHAMMAD EBRAHIM BANIHABIB, and FARIMAH SADAT JAMALI, “COMPARISON OF DYNAMIC ARTIFICIAL NEURAL NETWORK AND MULTIVARIATE LINEAR REGRESSION MODELS FOR INFLOW FORECASTING USING REMOTE SENSING DATA,” WATER AND SOIL SCIENCE (AGRICULTURAL SCIENCE), vol. 20.1, no. 2, pp. 0–0, 2010, [Online]. Available: https://sid.ir/paper/590504/en

    Related Journal Papers

  • No record.
  • Related Seminar Papers

  • No record.
  • Related Plans

  • No record.
  • Recommended Workshops






    مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources
    مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources
    مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources
    مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources
    مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources
    File Not Exists.
    Move to top
    telegram sharing button
    whatsapp sharing button
    linkedin sharing button
    twitter sharing button
    email sharing button
    email sharing button
    email sharing button
    sharethis sharing button