1 / 17

An Investigation on Minimization Algorithm for Nhm-4dvar

An Investigation on Minimization Algorithm for Nhm-4dvar. 1. 2. KURODA Tohru , KAWABATA Takuya 1)JST Cooperative System for Supporting Priority Research 2)2nd Lab, Forecast Research Department, MRI. Introduction.

dalmar
Télécharger la présentation

An Investigation on Minimization Algorithm for Nhm-4dvar

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. An Investigation on Minimization Algorithm for Nhm-4dvar 1 2 KURODA Tohru, KAWABATA Takuya 1)JST Cooperative System for Supporting Priority Research 2)2nd Lab, Forecast Research Department, MRI

  2. Introduction • Nhm-4dvar is the 4-dimensional variational data assimilation system being developed by Forecast Research Division, based on JMANHM, aiming for the cloud-resolution data assimilation. • Nhm-4dvar searches the optimal value of control variable x s.t. x minimizes the cost function F(x), by use of the information of gradient ∇F(x). • After calculating ∇F(x) with adjoint model, L-BFGS optimization algorithm is applied in present version. • By introducing the physical process, non-differentiable functions may appear. Then, the optimization assuming smooth function may suffer from the irregularity. Acutually, Nhm-4dvar is facing with the difficulty.

  3. Deformation of Cost Functioninduced by physical process. Non- differentiable L-BFGS

  4. Choices • Smoothing NHM • Global Algorithm (GA, Sim.Anealing, etc) Large development Cost! Is there any choice else still using ∇F(x) and adjoint codes?

  5. Motivation To reduce non-differentiable cost function Using descent algorism, Non Smooth Optimization (NSO) • Bundle algorithm (ex. Zhang,et al. 2000) • Random Gradient Sampling • ....

  6. Zhang(2000), L-BFGS Optimization

  7. Zhang(2000), Bundle Optimization

  8. Convex Analysis ・Classification Bundle Algorithm L-BFGS Non- differentiable ------ Convex func. ------- Non-convex Convex algorithm with Non-convex Setting

  9. Subgradient(劣勾配) Example. At non-differentiable point x=0, “Subdifferential consists of 2 subgradients.” “Not differentiable, But Directional differentiable”

  10. Example: Descent Direction at non-differentiable point Directional derivative ,and do line-search in the direction of d. Solve Several Gradients may give some useful information.

  11. Background of Bundle Algorithm • Since 1976 • Several Implementations ( N1CV2, N2FC1,PBUN, CPROX,ETC) and the benchmarking reports exist. • Given by C.Lemarechal, we can test N1CV2. • Summary of MERIT introducing bundle solvers; • We only have to change the optimization procedure, • without changing the main framework. • 2) We can examine the existing optimization solvers.

  12. Reduce f(y) ! <=Bundle Information Serious Step Null Step Descent Failure is considered to be because of insufficiency of Bundle A.Frangioni, Ph.D. Thesis, the University of Pisa,1997

  13. Nhm-4dvar Test1-1 • Moisture: Vapor-advection, no physical process. • Grids: horizontal 22x22, vertical 40 (N1CV2) Functioncalls of Bundle is more than twice of L-BFGS.

  14. Nhm-4dvar Test1-2 • Moisture: Vapor-advection • Grids: horizontal 22x22, vertical 40 (N1CV2)

  15. Nhm-4dvar Test2-1 • Moisture: Vapor-advection  ・Window : 10min • Grids: horizontal 122x122, vertical 40, Nerima Heavy Rain Case. • DT=10sec, itend=60. Analysis at it=60 is depicted below. L-BFGS BUNDLE

  16. Nhm-4dvar Test2-1 • Window : 10min  ・ Grids: horizontal 122x122, vertical 40 (FunctionCalls/Iteration) Function Call Per Iteration(Descent) L-BFGS1.5 BUNDLE 2.4

  17. Summary and Future Work • Nhm-4dvar with Bundle Algorithm is under investigation, using N1CV2, in order to deal with the assimilation of physical process. • Demonstration on the vapor advection assimilation seems to be valid. Examination of availability for larger window case and Parameter tuning for N1CV2 are the present tasks. • Although bundle Algorithm showed the expensive calculation cost, we hope that the resulting analysis is so optimal as to correspond to the cost. • Demonstration for the Warm Rain assimilation is the coming task. • Other NSO solvers including non-convex bundle algorithms can be tested in the future.

More Related