P1.17 SENSITIVITY OF THE RETRIEVAL OF STRATOCUMULUS CLOUD LIQUID WATER AND PRECIPITATION FLUX TO DOPPLER RADAR PARAMETERS

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P1.17 SENSITIVITY OF THE RETRIEVAL OF STRATOCUMULUS CLOUD LIQUID WATER AND PRECIPITATION FLUX TO DOPPLER RADAR PARAMETERS Yefim L. Kogan*, Zena N. Kogan, and David B. Mechem Cooperative Institute for Mesoscale Meteorological Studies, University of Oklahoma, Norman OK 1. INTRODUCTION We analyze errors in retrievals of cloud liquid water content ( and precipitation flux (R based on three different sets of parameters: a radar reflectivity, Z, b radar reflectivity and Doppler velocity, V d, and c radar reflectivity and Doppler velocity spectrum width, σ d. As radar reflectivity represents the sixth moment of the drop size distribution (DSD, one can expect it to be correlated with other moments of the DSD, such as liquid water content (third moment of DSD, or drizzle flux R, which in stratocumulus clouds is proportional to the fourth DSD moment. Thus, a number of studies have been devoted to retrievals of and R in boundary layer stratocumulus based on radar reflectivity Z alone. The success of the retrievals depended on cloud type, but even more on the absence of drizzle, both in the cloud and below cloud base. The retrieval of is rather straightforward in non-drizzling stratocumulus where cloud spectra are mostly unimodal and the contribution to reflectivity from the large droplet tail of the spectrum is minimal. A simple Z-Q relation in this case is justified (Sauvageot and Omar, 1987; Frisch et al., 1995; Fox and Illingworth, 1997 Z=a b (1 Here parameters a and b depend on the assumptions about the drop number concentration and the shape of spectrum. Our evaluation is based on the concept of the Observing System Simulation Experiments (OSSEs (Parsons and Dudhia, 1996. Based on this concept, cloud radar parameters are obtained from data generated by the high- * Corresponding author: Yefim Kogan, 1 E. Boyd, room 111, CIMMS, Univ. of Oklahoma, Norman, OK 7319, USA; tel. (45 325-678, email: ykogan@ou.edu resolution CIMMS LES model with Explicit MicroPhysics (CIMMS LES EMP. Applying the OSSE framework for stratocumulus clouds, we quantitatively evaluate the errors of several cloud liquid water and drizzle flux retrievals. As both V d and σ d are defined as intrinsic parameters of the DSD and, thus, neglect the contribution from air turbulence in the sensed volume, our assessment should be considered as the lower limit on the retrieval errors. 2. MODEL AND DATA The CIMMS LES model explicitly predicts CCN and DSD functions (Kogan et al. 1995; model results have been tested against and found in good agreement with integrated observations of microphysical, radiative, and turbulence parameters (Khairoutdinov and Kogan 1999. The drizzle parameterization derived based on the model data was also validated against a large number of observational data sets (Wood, 2, Wood et al, 22. We simulated several cases of stratocumulus clouds observed during the ASTEX field experiment in clean and polluted air masses. The simulated cloud layers represented cases with different intensities of drizzle in the cloud (drizzle is defined as drops larger than 25 microns in radius. The range of cloud and drizzle parameters is shown in Fig.1 for separate datasets representing light (LD, moderate (MD and heavy (HD drizzle spectra. As cloud layer evolves quite significantly during the three to six hour-long simulations, these datasets were further subdivided into subsets corresponding to a particular time of cloud evolution (e.g. LD5 refers to light drizzle case at 5 hrs into simulation. From each simulation we extracted about 4, to 6, DSD which comprised datasets used for deriving cloud parameters, as well as benchmarks for retrieval performance assessment.

Precipitation flux (mm/day Drop concentration (cm -3 4. 3.5 3. 2.5 2. 1.5 1..5-3 -25-2 -15-1 -5 2 18 16 14 12 1 8 6 4 2 LD1 LD1 LD2 LD5 LD2 MD1 MD2 MD2 LD5 MD1 HD2 Mean reflectivity (dbz HD2 HD3 6 7 8 9 1 11 12 13 14 15 Mean radius (microns Fig. 1. Range of cloud parameters in the analyzed cases of stratocumulus cloud layers. The black square represents the mean, while the error bars show the standard deviation of the parameter. HD3 the fraction of reflectivity which comes from the drizzle part of the spectrum (FZ Qr is <1%. Obviously this is the main reason for the success of one-parameter (1P retrieval in this case. Ql (g/m 3.8.7.6.5.4.3.2.1 y = exp(2.271+.14*z d R 2 =.94 Ql=9.7 Z m.61-35 -3-25 -2-15 Z (dbz Fig. 2. The scattergram of cloud liquid water as a function of reflectivity Z for the light drizzle case LD. in g m -3, Z d in dbz, Z m in mm 6 m -3. R 2 is the square of correlation coefficient often referred to as coefficient of determination (COD. 3. RESULTS 3.1. Errors in the retrieval of cloud liquid water For the LD case, the scattergram of cloud liquid water as a function of reflectivity Z in Fig. 2 demonstrates that can be reasonably well represented as a function of Z m (Z m is reflectivity in mm 6 m -3, while Z d is in dbz. The best fit in the form: = 9.7 Z m.61 (2 Cumulative fraction, % 1 9 8 7 6 5 4 3 2 1-2 -1 1 2 3 4 5 is quite accurate with the correlation coefficient R 2 =.941. Less than 1% of the data has errors outside the (-1%, +2% interval for the whole range of (see Fig. 3. The success of the retrieval in this case is primarily due to the relatively simple unimodal shape of the rather narrow drop spectra with relative drop spectrum dispersion σ of about.25 (see Table 1. The mean drop radius, R m, for the LD case is rather small (7.5 µm and the mean precipitation flux is.3 mm/d. Note that the Q r fraction in the liquid water content (FQ Qr is less than.1% and Fig. 3. The cumulative distribution of retrieval errors for the LD case. The retrieval of liquid water content is more problematic in drizzling clouds, primarily because the correlation between and Z weakens when DSDs contain a larger fraction of drizzle drops which contribute increasingly to reflectivity (78% for HD, see Table 1. Analysis of the MD dataset reveals a significant scatter in the - Z scattergram indicating that retrievals of based on Z alone are rather inaccurate (R 2 =

.756. However, the accuracy of the retrieval can be substantially increased when information on Doppler velocity is included. The top panel in Fig. 4 shows that a relationship in the following form results in a rather small degree of scatter and a quite accurate retrieval of (R 2 =.969. = exp (2.63+.179 Z d -.146 V d (3 [qm -3 ] Retrieved [qm -3 ] Retrieved.8.7.6.5.4.3.2.1.8.6.4.2 = exp(2.63 +.179 Z d -.146 V d R 2 =.969.1.2.3.4.5.6.7.8 =exp(.7 + 5 Z d - 9 V d -.5 R 2 =.618 [qm -3 ] Exact.1.2.3.4.5.6.7.8 [qm -3 ] Exact Fig. 4. The retrieval of cloud liquid water as a function of reflectivity and Doppler velocity, (V d. Top the moderate drizzle case MD, bottom - the heavy drizzle case HD. in g m -3, Z d in dbz, V d in cms -1. The retrieval based on Z alone in the heavily drizzling case HD is very poor (R 2 =.181. Including V d in the HD case (bottom panel in Fig. 4 results in a significantly improved retrieval (R 2 =.618 relative to that based on Z alone. However, the scatter in the HD case is larger than in MD case and R 2 has decreased from.969 to.618. As evident from Table 1, the more numerous and larger drizzle drops in the HD case contribute appreciably both to Z and V d, (mean fraction of drizzle contribution to Z increased from 17 to 78%; however, the mean fraction of Q r in increased only from 4 to 14%. 2 18 16 14 12 1 8 6 4 2-2 -4-6 = exp (2.63+.179 Z d -.146 V d -8.1.2.3.4.5.6 [g m -3 ] MD = exp (.7 + 5 Z d - 9 V d -.5 HD Fig. 5. The errors of retrieval of cloud liquid water as a function of. The solid and dashed black lines are the MD and HD mean errors; the shading areas represent the mean plus/minus one standard deviation. Light/dark gray shading corresponds to the HD/MD case, respectively. The retrieval errors are not uniformly distributed over the range of (Fig. 5. They can be as large as 1% for small values of near cloud base; however, for larger values of the standard deviation of the errors in the HD case is less than 2-3%. For the moderate drizzle case MD the standard deviation of the errors is less than 1% for >.2 gm -3 and less than 3% for the whole range of. The dependence of errors on drizzle is quite evident from histograms shown in Fig. 6. For heavy drizzle case about 35% of data points have errors larger than 25%, while for the medium drizzle case only 3% have errors this large. The use of Doppler spectrum width σ d instead of Doppler velocity affects the accuracy of the retrieval rather insignificantly (Fig. 7, thus demonstrating that both Doppler parameters have approximately the same informational potential for microphysical retrieval. The decision which to use should be based on such considerations as, e.g., which parameter has smaller contribution from the air turbulence component, signal-to-noise ratio, etc.

Fraction.6.5.4.3.2.1 = exp (2.63+.179 Z d -.146 V d MD = exp (.7 + 5 Z d - 9 V d -.5 HD For the heavy drizzle case HD R 2 increased from.794 for the 1P retrieval based on Z only to.962 when the 2P retrieval based on Z and V d is used (Fig. 8. The standard deviation of errors in this case is approximately in the 2-4% range for the 1P retrieval but decreases to about 1% for the 2P retrieval (Fig. 9. As in the case of retrieval, the errors of 2P retrievals based on Z-V d and Z-σ d (not-shown fall approximately into the same range. -1-75 -5-25 25 5 75 1 125 15 175 2 Fig. 6. The comparison of retrieval errors in the MD and HD cases based on two-parameters Z d and V d. 3.2. Errors in the retrieval of drizzle flux The retrieval of drizzle flux R using Z and V d, is more robust than retrieval of, obviously because R, Z, and V d, all represent higher moments of the DSD (M 4, M 6, and the ratio M 7 /M 6, respectively. Thus, strong correlations between them are expected, and this is indeed the case for MD and HD datasets. In the moderate drizzle case MD the use of a 2P retrieval based on Z and V d yields a nearly perfect correlation (R 2 =.997. In this moderate drizzle case the errors are less than 5% in the whole drizzle flux range, except for drizzle rates less than.2 mm d -1. Fraction.5.4.3.2.1 = exp (.7+43 Z d - 55*σ d -.58 R 2 =.556 = exp (.7 + 5 Z d - 9 V d -.5 R 2 =.618-1 -75-5 -25 25 5 75 1 125 15 175 2 Fig. 7. The comparison of retrieval errors in the HD case based on two-parameters: Z d -V d (dashed and Z d -σ d (solid. Drizzle flux retrieved (mm/day Drizzle flux retrieved (mm/day 1 9 8 7 6 5 4 3 2 1 1 2 3 4 5 6 7 8 9 1 1 9 8 7 6 5 4 3 2 1 R=exp(1.61+.122 Z d R 2 =.794 R=exp(3.33+.24 Z d - 21 V d R 2 =.962 1 2 3 4 5 6 7 8 9 1 Exact drizzle flux (mm/day Fig. 8. The scatter plot of the retrieved vs exact drizzle flux for the HD case based on one and two (Z-V d parameters (to reduce clatter only a fraction of data points is shown. CONCLUSIONS We performed simulations of marine stratocumulus clouds observed during the Atlantic Stratocumulus Transition Experiment using the CIMMS large-eddy simulation model with size-resolving microphysics. Drop size distributions (DSD from these simulations represented a wide range of drizzling conditions and were used to evaluate the errors of

retrievals of cloud microphysical parameters based on radar reflectivity, Doppler velocity and Doppler spectrum width. For stratocumulus clouds with negligible amount of drizzle, the retrieval of cloud liquid water based on radar reflectivity alone is quite accurate and the parameters of the -Z relationship are in good agreement with the retrieval obtained from ASTEX observations by Fox and Illingworth (1997. When drizzle is present, is poorly retrieved based on Z alone; however the retrieval is substantially improved when Doppler velocity or Doppler spectrum width is included. For values larger than.2 g m -3, the standard deviation of errors is less than 1% in the moderate drizzle case; in the heavy drizzle case the errors are less than 2-3%. The use of Doppler spectrum width σ d instead of Doppler velocity decreases the accuracy of the retrieval only insignificantly, demonstrating that both Doppler parameters have approximately the same potential for improving microphysical retrievals. 2 18 16 14 12 1 8 6 4 2-2 -4-6 R=exp (1.61 +.122 Z d -8 1 2 3 4 5 6 R[mm/day] HD case, Z only R=exp (3.33+.24 Z d - 21 V d HD case, Z and V d Fig. 9. The errors of drizzle flux retrieval for the HD case. The black and white lines are the 1P and 2P mean errors; the shading areas represent the mean plus/minus one standard deviation. Light/dark gray shading corresponds to the 1P and 2P retrievals, respectively. The retrieval of precipitation flux R is generally more robust than, evidently because R (proportional in stratocumulus clouds to the fourth moment of the DSD is more closely correlated with the drizzle portion of the DSD than is. In stratocumulus with heavy drizzle (R > 2 mm d -1 Z-R relationships can also be substantially improved by using the two parameter retrievals. Errors of the two parameter retrieval for the moderate drizzle case are less than 5%. For the heavy drizzle case, employing the two parameter retrieval reduces the standard deviation of errors of the 1P retrieval from the 2-4% range to about 1%. We emphasize that our error estimates represent the theoretical lower bound on retrieval errors, because the actual errors will inevitably increase, first and foremost, from uncertainties in estimation contributions from air turbulence. If the latter can be constrained and minimized (as in Babb et al., 1999; Kollias et al. 21; O Connor et al. 25, then the informational potential of radar reflectivity and Doppler parameters may be sufficient for substantial improvement in retrievals of cloud liquid water and precipitation flux under a wide range of drizzling conditions. Acknowledgments. This research was supported by the Office of Science (BER, U.S. Department of Energy, Grant No. DE-FG2-5ER6462, the ONR Grants N14-3-1-34 and N14-5-1-55. REFERENCES Babb, D. M., J. Verlinde, and B. A. Albrecht, 1999: Retrieval of cloud microphysical parameters from 94-GHz radar Doppler power spectra. J. Atmos. Oceanic Technol., 16, 489 53. Fox, N. I., and A. J. Illingworth, 1997: The retrieval of stratocumulus cloud properties by ground-based cloud radar, J. Appl. Meteorol., 36, 485-492. Frisch, A. S., C. W. Fairall, and J. B. Snider, 1995: Measurements of stratus cloud and drizzle parameters in ASTEX with a Ka-band Doppler radar and a microwave radiometer, J. Atmos. Sci., 52, 2788-2799. Khairoutdinov, M. F., and Y. L. Kogan, 1999: A Large Eddy Simulation Model with Explicit Microphysics: Validation Against Aircraft Observations of a Stratocumulus-Topped Boundary Layer, J. Atmos. Sci., 56, 2115-2131. Kogan, Y. L., M. P. Khairoutdinov, D. K. Lilly, Z. N. Kogan, and Q. Liu, 1995: Modeling of stratocumulus cloud layers in a large eddy simulation model with explicit microphysics. J. Atmos. Sci., 2923-294. Kollias, P., B. A. Albrecht, R. Lhermitte, and A. Savtchenko, 21: Radar observations of updrafts, downdrafts, and turbulence in fair-

weather cumuli. J. Atmos. Sci., 58, 175 1766. O Connor, E. J., R. J. Hogan and A. J. Illingworth, 25: Retrieving stratocumulus drizzle parameters using Doppler radar and lidar. J. Appl. Meteorol., 44, No. 1, pp. 14 27. Parsons, D.B., and J. Dudhia, 1996: Observing System Simulation Experiments and Objective Analysis Tests in Support of the Goals of the Atmospheric Radiation Measurement Program. Monthly Weather Review: Vol. 125, No. 1, pp. 2353 2381 Sauvageot, H., and J. Omar, 1987: Radar reflectivity of cumulus clouds, J. Atmos. Oceanic Technol., 4, 264-272. Wood, R., 2. The validation of drizzle parametrizations using aircraft data. Proceedings of the 13th International Conference on Clouds and Precipitation, Reno, NV, USA, 14 18 August. Wood, R., Field, P.R., and W.R. Cotton, 22, Autoconversion rate bias in stratiform boundary layer cloud parameterizations, Atmos. Res., 65, 19-128. Table 1. Mean and standard deviation (in brackets of drop spectra parameters for light (LD, moderate (MD and heavy (HD drizzling cases. and Q r is liquid and drizzle water content, N c and N d is total and drizzle concentration, R m and σ is the mean radius and relative dispersion of drop spectrum, R drizzle flux, V d Doppler velocity, Z d reflectivity in dbz, FQ Qr and FZ Qr fractions of and Z m from Q r, respectively. Parameter L D M D H D (g m -3.33 (.15.32 (.14.34 (.16 R m (m 7.5 (1.2 11.2 (1.7 12.1 (2.4 N c (cm -3 153 (35 34 (12 3 (8 σ.25 (7.34 (6.34 (.1 Q r (g m -3 <1 12 (18 47 (42 FQ Qr 1 (3 3.9 (5.5 14.1 (9.1 N d (cm -3 <1 16 (.22.33 (.38 R (mm d -1.31 (.18.84 (.45 2.3 (1.5 Z d (dbz -24.8 (3.3-17.8 (2.9-9.3 (5.5 FZ Qr.31 (.42 16.6 (12.7 77.7 (21.8 V d (cm s -1 1.35 (.2 4.8 (1.7 47. (26.5