Sampling with Ensembles: a Critical Review
ID:9 View Protection:ATTENDEE Updated Time:2022-07-02 15:32:47 Hits:895 Invited speech

Start Time:2022-07-28 08:50(Asia/Shanghai)

Duration:20min

Session:S1 数值预报模式发展与应用 » S1-2议题1数值预报模式发展与应用28日上午

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Abstract
Forecasts of chaotic systems like the atmosphere become contaminated, then dominated by noise unrelated to the true state of the system. Ensemble forecasting is designed to sample the space of forecast error. At most centers, integrations from perturbed initial conditions have augmented or replaced higher resolution control forecasts started from the best initial condition. Beyond alternative scenarios, ensembles provide a wide range of probabilistic and other products.Random perturbations have a statistically equal projection in each independent phase space direction. Hence in the high dimensional space of atmospheric dynamics, even if statistically indistinguishable from error fields, perturbations have a very small projection on the actual realization of error; the bulk of the variance adds noise in other directions. This results in a cloud of solutions not around, but further displaced from reality. Initial error is doubled, causing a 20-hour drop in forecast skill, equivalent to using NWP output from 8 years ago. This behavior is observed in operational, perfect, and statistically simulated ensembles, suggesting it is not caused by methodological problems. Instead, the failure is due to fundamental limitations in sampling the multidimensional space of atmospheric dynamics. 
Keywords
集合预报
Speaker
冯杰
研究员 复旦大学大气与海洋科学系

Submission Author
杰冯 复旦大学大气与海洋科学系
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Important Date
  • Conference Date

    Jul 27

    2022

    to

    Jul 28

    2022

  • Jun 30 2022

    Draft paper submission deadline

  • Jul 19 2022

    Registration deadline

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中国气象学会