Long term cloud cover trends over the U.S. from ground based data and satellite products



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Long term cloud cover trends over the U.S. from ground based data and satellite products Hye Lim Yoo 12 Melissa Free 1, Bomin Sun 34 1 NOAA Air Resources Laboratory, College Park, MD, USA 2 Cooperative Institute for Climate and Satellites, University of Maryland, College Park, MD, USA 3 NOAA/NESDIS/Center for Satellite Applications and Research 4 I. M. Systems Group Inc., Rockville, MD, USA Acknowledgement: Michael J. Foster, Andrew Heidinger, Karl Göran Karlsson Jan 8, 2015 Air Resources Laboratory 1

Introduction: importance of clouds Aerosols Radiation Cloud Temperature Precipitation Air Resources Laboratory 2

Introduction: previous studies Previous work Time period Data Trend Angell 1990 1950-1988 100 NWS stations 2 %/decade Plantico et al. 1990 1948-1987 24 NWS stations 3.6 %/decade Sun 2003 1948-1999 225 stations 0.55 %/decade Elliott and Angell 1997 1973-1993 100 NWS stations 0.2 %/decade Dai et al. 2006 1976-2004 124 military sites 1.4 %/decade The surface cloud observations have provided the only historical record for establishing long term cloud climatology, evaluating satellite cloud observations and model simulations. To know recent trends in cloudiness, we need to examine homogeneities in surface cloud record after the early 1990s. Air Resources Laboratory 3

Introduction: motivation Automated Surface Observation Systems (ASOS) introduction Problems 1. We can see apparent discontinuities induced by the introduction of ASOS at NWS site. 2. These discontinuities are often not removed in climate dataset. We need long term homogeneityadjusted surface climate records (visual cloud observation) to assess satellite products and model simulations. Air Resources Laboratory 4

Data: data production procedure 1. DSI 3280 for NWS stations (54) before 2005 and Integrated Surface Data after 2005. The ISD data is adjusted to match the rest of the dataset. 2. The changed METAR reporting system (July 1996) is applied to DATSAV3 for military stations (101) starting with 1949. 3. Use observations made every 3 hours in daytime to create monthly means. Removed data that was clearly from ASOS, not human observations. 4. Examine time series in comparison with precipitation days and diurnal temperature range (DTR) to determine accept or reject the adjustments. Dai et al. 2006 (military) Unadjusted ISD data (mil+nws) Final adjusted data Trends 1976 2004 1.4 %/decade* 1.5 %/decade* 0.05 %/decade Adjusted data has lower trends. Air Resources Laboratory 5

Data: data location NWS stations: 54 & Military stations: 101 = 155 sites Air Resources Laboratory 6

Data: station data improvement Original 0.54 Final 0.77 Original 0.73 Final 0.81 Air Resources Laboratory 7

Data: used satellite dataset ISCCP PATMOS-x PATMOS-x DCD CLARA-A1 Time period 1984 2007 1982 2009 1982 2012 1982 2009 Observation time 9 AM, 3 PM 7:30AM, 1:30PM Day and night Resolution 2.5 x 2.5 1.0 x 1.0 1.0 x 1.0 0.25 x 0.25 ISCCP: International Satellite Cloud Climatology Project PATMOS-x: AVHRR Pathfinder Atmospheres Extended PATMOS DCD: AVHRR Pathfinder Atmospheres Extended diurnally corrected daily CLARA-A1: CM SAF Cloud Albedo and Radiation Air Resources Laboratory 8

Result: regional mean cloud cover 65.8 % 65.8 % 61.8 % 61.8 % 65.4 % 65.4 % 65.2 % 65.2 % 44.6 % 44.6 % Satellite station 46.7 % 46.7 % 64.9% % 57.4 % 58.9 % 57.4 % 58.9 % Cloud cover from station data Region ISCCP 3pm PATMOS 1:30 pm PATMOS DCD CLARA day Central (15) 4.7 5.3 6.7 2.0 E.N. Central (6) 5.5 4.1 3.7 0.3 Northeast (19) 7.2 3.9 4.7 2.3 Northwest (9) 9.4 7.7 4.5 2.8 South (28) 4.5 3.7 8.1 1.6 Southeast (43) 6.0 1.3 6.4 3.9 Southwest (12) 14.3 6.6 2.1 12.6 West (19) 16.3 9.6 2.1 5.0 W.N. Central (4) 9.8 7.4 3.2 0.6 Air Resources Laboratory 9

Result: cloud cover trends Annual mean U.S cloud cover anomalies from satellite data collocated with U.S weather stations trends are for 1982 2009, except for ISCCP which is for 1984 2007. Air Resources Laboratory 10

Result: cloud cover trends for eastern Northeast ISCCP 3pm: 0.77, PATMOS 1:30pm: 0.75, PATMOS DCD: 1.1, CLARA: 2.8, Station: 0.19 Southeast ISCCP 3pm: 1.8, PATMOS 1:30pm: 1.6, PATMOS DCD: 2.1, CLARA: 4.3, Station: 0.60 Air Resources Laboratory 11

Southwest Result: cloud cover trends for western ISCCP 3pm: 1.5, PATMOS 1:30pm: 2.2, PATMOS DCD: 1.9, CLARA: 8.9, Station: 1.0 May result from false cloud detection due to bright surface type West ISCCP 3pm: 1.4, PATMOS 1:30pm: 1.1, PATMOS DCD: 1.3, CLARA: 5.2, Station: 0.35 Large standard deviation for two regions. Air Resources Laboratory 12

Result: trends for 1984-2007 (%/dec) Products JJA SON All months NWS+Military 0.49 1.66 0.40 ISCCP 3 pm 1.63 1.56 0.98 PATMOS 1:30 pm 0.86 1.52 0.55 PATMOS DCD 0.53 2.16 0.82 CLARA A1 day 6.83 4.35 4.98 JJA: June July August, SON: September October November The station data has the strong negative trend in fall and slight positive trend in summer. Overall, PATMOS x products are the closest to the station data. Air Resources Laboratory 13

Result: correlations with DTR & preci. DTR: Diurnal Temperature Range from Historical Climatology Network (HCN) at NCDC. For military stations, we used gridded adjusted HCN data. Precipitation data: NWS cooperative weather stations (COOP) (Groisman et al. 2004) kindly provided by Pasha Groisman of NCDC. Air Resources Laboratory 14

Summary Homogeneity adjusted weather observations reduce trends in US total cloud cover than those in original dataset and increases the agreement between the cloud cover time series and those of physically related climate variables such as DTR and precipitation days. Trends for 1984 2007 are all negative in both adjusted station and satellite products but satellite products are more negative than those from station data. Overall we find good agreement between inter annual variability in most of the satellite data and that in our station data, with PATMOS x products showing the best match and less well with ISCCP. 1. Time varying biases in U.S. total cloud cover data (2013), Journal of Atmospheric and Oceanic Technology, 30, 2838 2849. 2. Trends in U.S. Total Cloud Cover from a Homogeneity Adjusted Dataset (2014), J. Climate, 27, 4959 4969. 3. Observed variability and trends in U.S. cloud cover: ISCCP, PATMOS x, and CLARA A1 compared to homogeneity adjusted weather observations, submitted to Journal of Climate. Air Resources Laboratory 15

Back up slides Air Resources Laboratory 16

Collocated grids US all grids Air Resources Laboratory 17