1 / 45

R. N. Hoffman , C. Grassotti, J. M. Henderson, S. M. Leidner, G. Modica, and T. Nehrkorn

Controlling the Evolution of a Simulated Hurricane through Optimal Perturbations: Initial Experiments Using a 4-D Variational Analysis System. R. N. Hoffman , C. Grassotti, J. M. Henderson, S. M. Leidner, G. Modica, and T. Nehrkorn Atmospheric and Environmental Research Lexington, MA.

tarala
Download Presentation

R. N. Hoffman , C. Grassotti, J. M. Henderson, S. M. Leidner, G. Modica, and T. Nehrkorn

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. Controlling the Evolution of a Simulated Hurricane through Optimal Perturbations: Initial Experiments Using a 4-D Variational Analysis System R. N. Hoffman, C. Grassotti, J. M. Henderson, S. M. Leidner, G. Modica, and T. Nehrkorn Atmospheric and Environmental Research Lexington, MA

  2. Thanks • Supported by NIAC • NASA Institute for Advanced Concepts • Tools & data • MM5/4d-VAR • NCAR/NCEP gridded data H. Iniki 1992 (NWS image)

  3. Today’s talk • Experiments to control hurricanes • A different approach to weather control–not just hurricanes • Based on the sensitivity of the atmosphere • The same reason why it is so difficult to predict the weather!

  4. Theoretical basis • The earth’s atmosphere is chaotic • Chaos implies a finite predictability time limit no matter how well the atmosphere is observed and modeled • Chaos also implies sensitivity to small perturbations • A series of small but precise perturbations might control the evolution of the atmosphere

  5. Objectives of our project • Develop a method to calculate the atmospheric perturbations needed to control a hurricane • Quantify the size of the perturbations needed to do this • Estimate the requirements of a weather control system

  6. Current NWP operational practice • NWP centers have developed forecast techniques that capitalize on the sensitivity of the atmosphere • 4D variational data assimilation • Generation of ensembles • Adaptive observations

  7. Current Practice 1: 4D variational data assimilation • 4D-Var fits all available observations during a time window (6 or 12 hours) with a model forecast • The fit to the observations is balanced against the fit to the a priori or first guess from a previous forecast • We use a variant of 4D-Var in our experiments

  8. Why hurricanes? • Public interest: Threat to life and property • History: Project Stormfury (1963) • Sensitive to initial conditions • MM5/4d-VAR: Available tools

  9. Our Case Study Hurricane Iniki (1992) • Landfall at Kauai at 0130 UTC 12 September • Hurricane Iniki from 0600 UTC 11 September to 1200 UTC 12 September 1992 is shown in the following movie

  10. Iniki Simulation 750-hPa Relative Humidity

  11. Determination of perturbations • Optimal control theory • 4d-Var methodology baseline • Modified control vector: temperature only • Refined cost function: property damage

  12. Mesoscale model • The MM5 computation grid is 200 by 200, with a 20 km grid spacing, and ten layers in the vertical • Physics are either • Simplified parameterizations of the boundary layer, cumulus convection, stratiform cloud, and radiative transfer; or • Enhanced parameterizations of these physical processes and a multi-layer soil model

  13. 4D variational data assimilation • 4D-Var adjusts initial conditions to fit all available observations during a 6 or 12 hour time window • The fit to the observations is balanced against the fit to the a priori or first guess from a previous forecast • We use a variant of 4D-Var in our experiments

  14. J is the cost function P is the perturbed forecast G is the goal G is the target at t=T and the initial unperturbed state at t=0 S is a set of scales S depends only on variable and level x is temperature or a wind component i, j, and k range over all the grid points Standard 4D-Var cost function J = ∑xijkt [(Pxijk(t)–Gxijk(t))/Sxk]2

  15. ‘Optimal’ Defined • Optimal is defined as simultaneously minimizing both the goal mismatch and the size of the initial perturbation as measured by the sum of squared differences

  16. Modified control vector • Control vector can be restricted by variable and by geographic region • Temperature only • Locations far from the eye wall

  17. Refined cost function • JD = ∑ijt Dij(t) Cij • C is the replacement cost • D is the fractional wind damage • D = 0.5 [1 + cos(π(V1-V)/(V1-V0))] • D=0 for V<V0 = 25 m/s • D=1 for V>V1 = 90 m/s • Evaluated every 15 min. for hours 4–6

  18. Minimization

  19. Experiments • Hurricane Andrew MM5 simulations starting at 00 UTC 24 Aug 1992 • Initial conditions from an earlier 6 h forecast; NCEP reanalysis; bogus vortex • 4d-Var over 6 h (ending 06 UTC 24 Aug); 20 km grid; temperature increments only; simple physics • Simulations for unperturbed vs. controlled; 20 km simple physics vs. 7 km enhanced physics

  20. Initial conditionsProperty values

  21. Temperature perturbations

  22. Surface wind field evolution

  23. Control vector sensitivity

  24. Temperature increments

  25. Temperature perturbations(controlled minus unperturbed)

  26. Time evolutionof perturbations

  27. Surface wind field evolution Unperturbed Controlled

  28. Time evolution 00 UTC

  29. Time evolution 06 UTC

  30. Time evolution 12 UTC

  31. Time evolution 18 UTC

  32. High resolution

  33. Summary • Perturbations calculated by 4d-Var • Control path, intensity of simulated hurricane • Power requirements are huge • Higher resolution, longer lead times may help • Very large scale SSP could meet the requirements

  34. Use in Forecasting • 4dVAR can assess the likelihood of a specific event that requires immediate action, such as damaging winds along the Hudson Valley • Exigent, adj: • 1: requiring immediate aid or action • 2: requiring or calling for much

  35. Background cost function • Exigent forecasting: Normal NWP Jb should be used. Related to the probability of the initial conditions. • Weather control: Jb should be replaced with the cost in terms of available resources of generating the perturbations.

  36. Hurricane WxMod • Energetics • Biodegradable oil • Pump cold water up to the surface • Dynamic perturbations • Stormfury: cloud seeding • Space based heating

  37. Space based heating • Solar reflectors: bright spots on the night side and shadows on the day side • Space solar power (SSP): microwave downlink could provide a tunable atmospheric heat source

  38. NASA artwork by Pat Rawlings/SAIC Space solar power

  39. Microwave spectrum • Water and oxygen are the main gaseous absorbers • H2O lines at 22, 183 GHz • H2O continuum • O2 lines at 60, 118 GHz • Frequency and bandwidth control the heating profile

  40. Microwave heating rates

  41. Power requirements • Heating rates calculated for 1500 W/m2 • Equal to 6 GW/(2 km)2 • Current experiments require similar heating rates over an area 100s times larger • Longer lead times, higher resolution will reduce these requirements significantly. • By changing the storm’s environment at longer lead times can we prevent its forming, track, or intensity.

  42. The future • More realistic experiments: resolution, physics, perturbations • Future advances in several disciplines will lead to weather control capabilities • The first experiments will not be space based control of landfalling hurricanes! • Can legal and ethical questions be answered

  43. More complicating factors • The control must be effected at significant time lags • The difficulty of effecting control • The problem of defining “optimal” • For inhabitants of New Orleans, eliminating a hurricane threat to that city may take precedence over all else

  44. Future WxMod • Improved models, observations, and assimilation systems will advance to the point where forecasts are: • much improved, and • include an estimate of uncertainty • Thus allowing advance knowledge that a change should be detectable in particular cases

  45. end • Contact: • rhoffman at aer dot com • www.niac.usra.edu • Background: • R. N. Hoffman. Controlling the global weather. Bull. Am. Meteorol. Soc., 83(2):241--248, Feb. 2002.

More Related