1 / 13

Evaluation of Various Datasets for Tropical Storm Climatology

Evaluation of Various Datasets for Tropical Storm Climatology. Asuka Suzuki. Tropical Storm Climatology. New Field – “Merging mesoscale phenomena and climate into one” Many Questions TS ↔ climate interactions TS variabilities and trends “What are tropical storms anyways?” Many Challenges

rupert
Download Presentation

Evaluation of Various Datasets for Tropical Storm Climatology

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. Evaluation of Various Datasets for Tropical Storm Climatology Asuka Suzuki

  2. Tropical Storm Climatology • New Field – “Merging mesoscale phenomena and climate into one” • Many Questions • TS ↔ climate interactions • TS variabilities and trends • “What are tropical storms anyways?” • Many Challenges • Sparse observations • Bringing models with different scales together

  3. Datasets for TS Climatology Studies • Problems with existing datasets • Tracking datasets • Only says date, location, wind speed, and minimum pressure • Not uniform • Aircraft observations • Sparse in temporal resolution • Not available globally • TS Climatology Studies call for: • High spatial/temporal resolution • Good correlation with tracking datasets • Excellent sensitivity to global/regional long-term variabilities • Candidates Reanalysis

  4. Evaluation of Reanalysis Datasets (1) Get date and location of each storm at maximum intensity (by wind) from Best Track (2) Go in to reanalysis data, define 20x20 degrees box around the storm center (3) Is there distinctive SLP minima? (4) Determine maximum wind speed If Yes,

  5. Results: Some TS don’t show up on SLP • NCEP has the lowest detection • ERA keeps high detection (due to high spatial resolution) • JRA does good till 1991, but drops significantly afterwards

  6. Results: Winds are just too weak Max Wind Detected • None of the reanalysis datasets produce high winds

  7. Results: The Winner is… • Combine min SLP detectivity and max wind • Find TS that: • Have distinctive SLP minima • Have max wind ≥10m/s • JRA does the best till ~1994, ERA is the best afterwards

  8. WeatherResearch &ForecastingNestedRegionalClimateModel • 36x36km resolution for Tropics (30S~45N) • Jan 1, 1996 ~ Jan 1, 2001 (4 times daily) • Input data: NCEP/NCAR Reanalysis, AMIP SST data • It’s a straight model output • Don’t know where TS’s are • Need numerical definition of TS • How well did WRF-NRCM capture tropical storms? • How many? • Where and when? • How strong?

  9. TS detection methodology • New storm detection • Find SLP local minima • |Max relative vorticity| > 5x10-5s-1 • Max wind speed > 18m/s • General wind pattern • Warm core • Pre-existing storm continuity • Distinctive SLP local minima within 20o of last storm location • Max wind speed > 18m/s • Warm core Updates storm location A storm satisfies continuity requirement for at least 48 hours • Make sure there is no overlap by newly found storms and pre-existing storms • Build a tracking data with date, time, location (lat, lon), max wind, and min SLP Tropical Storm

  10. u<0 v<0 v>0 u>0 TS detection methodology • Max wind requirement • Maximum wind speed @1000hPa within 2x2 degrees box surrounding the storm center exceeds 18m/s • General wind circulation requirement • Winds@1000hPa follows circulating pattern • Warm core requirement • Average T@500hPa of core area exceeds that of surrounding Tc

  11. Results: Right Places, but Too Many • Boundary condition problem in Southern hemisphere Total 161 106

  12. Results: Nice Timing, Good Intensity Red: WRF-NRCM Blue: Best Track Pretty good job in terms of “seasonal timing” Maximum wind does not get too high (which is expected), but so much better than reanalysis

  13. Conclusion & Discussion • Reanalysis datasets can resolve TS somewhat, yet winds are just not high enough • WRF-NRCM output showed some promising results • Evaluation/detection methods • No standard measure in evaluating datasets for TS climatology • No standard numerical definitions for TS • Unreliable tracking datasets?

More Related