Extended-Range Prediction with Low-Dimensional, Stochastic-Dynamic Models: A Data-driven Approach

نویسندگان

  • Michael Ghil
  • Mickaël D. Chekroun
  • Dmitri Kondrashov
  • Charles E. Young
  • Michael K. Tippett
  • Andrew Robertson
  • Suzana J. Camargo
  • Mark Cane
  • Dake Chen
  • Alexey Kaplan
  • Yochanan Kushnir
  • Adam Sobel
  • Mingfang Ting
  • Xiaojun Yuan
چکیده

Michael Ghil, Mickaël D. Chekroun and Dmitri Kondrashov Dept. of Atmospheric & Oceanic Sciences and Institute of Geophysics and Planetary Physics, University of California, Los Angeles, CA 603 Charles E. Young Dr., East, 3845 Slichter Hall Los Angeles, CA 90095-1567 Ghil phone: (310) 825-1038 fax: (310) 206-5219 email:[email protected] Chekroun phone: (310) 825-1038 fax: (310) 206-5219 email:[email protected] Kondrashov phone: (310) 825-1038 fax: (310) 206-5219 email:[email protected]

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12: Extended-Range Prediction with Low-Dimensional, Stochastic-Dynamic Models: a Data-driven Approach

Michael Ghil, Mickaël D. Chekroun and Dmitri Kondrashov Dept. of Atmospheric & Oceanic Sciences and Institute of Geophysics and Planetary Physics, University of California, Los Angeles, CA 603 Charles E. Young Dr., East, 3845 Slichter Hall Los Angeles, CA 90095-1567 Ghil phone: (310) 825-1038 fax: (310) 206-5219 email:[email protected] Chekroun phone: (310) 825-1038 fax: (310) 206-5219 email:...

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تاریخ انتشار 2013