James Cotton, Mary Forsythe IWW14, Jeju City, South Korea.

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Presentation transcript:

Migration to a Forecast Independent Quality Indicator and Further QC Changes @ Met Office James Cotton, Mary Forsythe IWW14, Jeju City, South Korea. 23-27 April 2018 www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Motivation QC essential for NWP: remove data of “bad” quality, also data that cannot be simulated by NWP model AMVs supplied with Quality Indicator (QI) values Spatial/temporal consistency QI1 (with first-guess check against ECMWF, GFS, JMA,..) QI2 (without first-guess check) Ideally observations independent from model.. but QI1 used thus far (protect from large HA errors) 1) Migrate from QI1 to QI2 to remove check against (other centres) NWP forecast 2) Update thresholds Aim www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Does QI2 have skill? GOES-13 IR Met-10 IR Him-8 WV EUM Metop-B 50 30 70 Providers have different range of QI disseminated QI2 less useful at discriminating “bad” data.. But still useful for MSG QI2 has greater proportion (than QI1) with very high QI values MSG has downward trend in RMSVD, but “spikes” GOES slight trend for QI > 60, Himawari flat www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Met Office thresholds: before Satellite QI Channel Extra-tropics (High/Mid/Low) Tropics GOES-13/15 QI1 IR WV 85/80/80 80 90 Meteosat-8/10 VIS 65 Himawari-8 85 Metop (EUM) - VIIRS* QI2 60 LeoGeo 70 Use QI1 for all data, except VIIRS Vary by channel, latitude band, height level Very high QI1 threshold in the tropics.. Essentially assimilating ~NWP forecast information www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Met Office thresholds: now Satellite QI Channel Threshold Active? GOES-13/15 QI2 All 50 N Meteosat-8/10 “ 85 Y Himawari-8 70 Metop 60 VIIRS Other polar Use QI2 Vary only by satellite GOES and Himawari-8 – just prevent unexpected data with lower QI appearing www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Impact experiment – round 1 “Relaxed” thresholds with QI2 allows 20% more AMVs used Large changes in mean tropical wind field at 850 hPa Background (T+6) u/v wind fit to AMVs is degraded by ~8% Allowing larger innovations through Background fit to other obs is also slightly worse, including ~1% for SEVIRI radiances Forecast RMSE neutral vs observations, SH/NH 500 hPa height worse vs ECMWF analyses www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Mean Wind Analyses Wind 850 hPa Wind 250 hPa Experiment (QI2 “relaxed” thresholds) - Reference (QI1 strict thresholds) Him-8 Met-10 Wind 850 hPa Wind 250 hPa www.metoffice.gov.uk © Crown Copyright 2017, Met Office Changes largest for data where QI most useful –MSG , very little change in Himawari region

Tighten the background check Can we ensure the overall quality of AMVs remains similar in migration from QI1 to QI2? Stricter QI2 thresholds aren’t going to help Tighten background check against own model.. but we just removed model check via QI1?? Not ideal, but our own model, tuneable, and currently quite relaxed After QC + BgChk www.metoffice.gov.uk © Crown Copyright 2017, Met Office

RMS Sensitivity to Background check Stricter Bg. Check still allows many more AMVs vs QI1 Reference count Tightening background check efficient way to improve O-B Reference RMS values Tighter Bg. Check www.metoffice.gov.uk © Crown Copyright 2017, Met Office

QI2 “relaxed” thresholds, tighter Bg. Check vs. Reference Impact experiment – round 2 Relaxed thresholds with QI2, but tighter BgCheck still allows 18-19% more AMVs (vs Ref) Background u/v wind fit to AMVs is now more similar Reduced by 2% for u Increased by 0.5% for v Background fit to other obs is neutral, except SEVIRI CSR channels 9 and 10 (surface) QI2 “relaxed” thresholds, tighter Bg. Check vs. Reference www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Wind direction O-B Degradation in SEVIRI-9/10 CSR linked to an increase in assimilated AMV O-B in same areas Indian Ocean and to the west of Africa near the equator low wind speed regions (average speed < ~5 m/s) www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Wind direction O-B after min. speed After applying minimum speed check of 4 m/s (AMV and model speed) www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Impact experiment – round 3 Relaxed thresholds with QI2, tighter BgCheck, and slow speed check still allows 11-13% more AMVs (vs Ref) Background u/v wind fit to AMVs remains similar to round 2 Reduced by 2% for u Increased by 1.0% for v Background fit to Geo clear-sky radiance improved (versus experiment without speed check) for GOES, SEVIRI, AHI, but in summer season only.. Forecast RMS errors mostly beneficial, esp. tropical winds 250 hPa www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Forecast RMSE: Winter 2016/17 TR W250 # significant impacts 60 positive 13 negative TR T2m www.metoffice.gov.uk © Crown Copyright 2017, Met Office Truth: Surface, Sonde, Aircraft (W250) Truth: ECMWF

Truth: Surface, Sonde, Aircraft (W250) Forecast RMSE: Summer 2016 TR W250 # significant impacts 65 positive 20 negative TR T2m www.metoffice.gov.uk © Crown Copyright 2017, Met Office Truth: Surface, Sonde, Aircraft (W250) Truth: ECMWF

Conclusions I QI2 (without Fc) has little skill in discriminating ‘bad’ data Revised thresholds are much lower – no filtering applied for GOES and Himawari Allows much larger volume for assimilation, large change in low level wind analyses in tropics, but results in degraded O-B fit Needed to tighten check against Met Office background winds – remove small number of observations such that overall AMV O-B remains about the same in going from QI1 to QI2 Found background fit to geostationary radiance (SEVIRI 9/10) still degraded - use minimum wind speed threshold to remove AMV and Bg. speeds < 4 m/s Forecast RMSE scores mostly beneficial – improvements seen for Winds 250 hPa in Tropics at day 1-2 www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Conclusions II Changes operational with OS40, 13 Feb 2018 For now we only have QI to work with, but with “new” AMV Bufr format we will have much more information supplied with the observations E.g. cloud top pressure error, optical thickness, OE cost,.. www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Thank you for listening (View from flight between Seoul and Jeju) www.metoffice.gov.uk © Crown Copyright 2017, Met Office www.metoffice.gov.uk © Crown Copyright 2017, Met Office

SEVIRI CSR O-B change vs reference Without Min Speed Check With Min Speed Check Summer Winter www.metoffice.gov.uk © Crown Copyright 2017, Met Office

Bayesian background check ‘Good’ observations with normally distributed errors have Gaussian distribution with unbiased errors and variance V ‘Bad’ observations with gross errors have uniform density, k Background forecast assumed to have Gaussian errors Let G denote the presence of gross errors, Ḡ denote the absence of gross errors The overall probability density of observed value yo given background value yb is Variance of O-B values (excluding gross errors) www.metoffice.gov.uk © Crown Copyright 2017, Met Office