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Download Observed and Simulated HIRS Diurnal Cycles
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The Diurnal Cycle in HIRS Brightness Temperatures I.A. MacKenzie1, A.V. Lindfors1,2, S.F.B. Tett1 and Lei Shi3 1The University of Edinburgh, UK 2The Finnish Meteorological Institute, Finland 3NOAA’s National Climatic Data Center, USA Motivation & Outline • Big Question: What does HIRS tell us about climate change? – Temperature & Water Vapour channels. – Expectation – greater warming with height & constant RH. • NOAA operational satellites have drifted in LECT – So unless correct for this (or trust models diurnal cycle) will alias in diurnal cycle to multi-decadal signal. • Derive satellite based estimate of HIRS diurnal cycle based on uneven sampling • Compute same from models. • Compare – – Models any good? – Is uneven sampling adequate? • Papers: Lindfors et al, 2011 JAOT & MacKenzie et al, 2012, J. Climate Local ascending equator crossing (LECT) times for the HIRS satellites. NOAA platforms have changes in LECT which, if uncorrected, would alias diurnal cycle into climate records. To correct need to know what the diurnal cycle is. 20022007 Earlier work used model simulations but 2002-2007 has 4 satellites operating at different LECT (1417) Approach Fit to the brightness temperatures as a function of local time leading two diurnal harmonics and mean. Harmonics have amplitude and phase information. Do this from data for all available data for the period 2002-2007. Aim being to generate a climatological dataset. (t t1) 2 (t t 2) Tb a 0 a1 cos a 2 cos 12 12 (1) Tb - brightness temperature; a0 - mean/base Tb; a1, a2 - 24 and 12 hourly amplitudes; t1, t2 - phases Data • Use corrected data from NOAA – all data corrected to NOAA-12 using SNO’s (polar regions) • To get high temperatures also correct (for monthly average) equatorial ocean surface region within 20S20N and 160W-100W where diurnal variation, confirmed by climate model simulations, is at minimum. • Corrections are temperature dependant. • Only use near-nadir observations • Clear sky • Require at least 10 observations in each quarter of the day • Work with all data gridded to 2.5 x 2.5. Example fit for July in the Sahara Channel 8 fit Uncertainty estimates • Use the standard deviations from the fit for each satellite and ascending/decending node. • Then Monte-carlo with no diurnal cycle and repeat calculations. • Uncertainties at the 95% level for a1 and a2 vary by position (reflecting different data coverage) but are 0.2K over the tropical and sub-tropics and increase to 1-2K at high latitudes. • To reduce uncertainties do analysis on zonal values (land and sea separately) grouping together the same local times in the fits. • 95% is between 0 and 0.2K. Zonal fits Uncert NOAA-14 drift • NOAA-14 shows the most drift in LECT over a decade (or so) • So ask how much would the diurnal cycle contribute to changes? • Expected climate change signal is 0.20.3K/decade. For water vapour would expect essentially no change if RH constant holds. • From change in LECT and estimated diurnal cycle can compute max global-mean difference for each channel. Drift over NOAA-14 Errors (from MonteCarlo) are negligible. Expected impact large compared to expected climate change signal over a decade. Even over the oceans. Simulating HIRS Diurnal Cycle • Model sampling – same orbits and only data when HIRS instrument functioning. Clear sky when model cloud less than 40%. • Two models. HadGEM-2A (state-of-the-art) and HadAM3 (last-generation). Driven with HadISST SST and sea-ice. No diurnal SST cycle – so would not expect diurnal cycle over oceans. • RTTOV (v9.3) to compute brightness temperatures. Channels 1-12. NOAA-12 SRF for comparison with observations • CO2 increased linearly from 371 ppm to 384 ppm. Simulated and Observed Diurnal Tb Range Shown is globalaverage max – min for each channel. Sea Land Amplitude falls approximately exponentially with temp channel. Rises in Strat. WV range falls with height. Trop temp channels (land) in good agreement with obs. Sea weaker in models – surface diurnal cycle. Stratosphere is very model dependant. Problems with chan 12. Simulated Ratios a1 represented well in HIRS vs 1 hourly. a2 adequate – 1030% too large. Some issues with water vapour channels For model-data comparison suggests need to compare HIRS sampled model with observations. Conclusions • HIRS sampling provides reasonable estimate of “true” sampling. – Observational product ok though some differences in 2nd harmonic • Qualitative agreement between simulated and observed Clear Sky Tb. – Diurnal cycle largely controlled by large scale (surface) processes. • Quantitative differences though. – Model corrections for tropospheric temperatures OK. – Poor in stratosphere – ozone?? – And for key parameter: Upper Trop. Water Vapour (ch12). Models do not appear to be reliable enough to use to correct. • Really would like observations of diurnal cycle for (A)TOVS instruments. Can we use Metop-A at end-oflifetime to do this?