Storm-scale pseudo-GLM lightning assimilation and explicit lightning forecast implemented within the WRF- ARW model Alexandre Fierro, Blake Allen (CIMMS/NOAA-

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Storm-scale pseudo-GLM lightning assimilation and explicit lightning forecast implemented within the WRF- ARW model Alexandre Fierro, Blake Allen (CIMMS/NOAA- The University of Oklahoma) Edward Mansell, Donald MacGorman, Conrad Ziegler (National Severe Storms Lab) Ming Xue (Univ. OK/CAPS) GLM Science Meeting, Sept. 2013

I) Lightning Assimilation Projects: Two methods of lightning data assimilation are implemented: 1. Using lightning (time/location) to force convection initiation by nudging in water vapor where lightning is observed but convection is absent in the model. Forcing is maintained for 10s of minutes to achieve a model response to sustain the storms. (See Fierro et al. 2012, Mon. Wea. Rev.) Using ENTLN total lightning as stand-in for GLM. 2. Ensemble Kalman Filter to modulate convection (e.g., strengthen or weaken) in the ensemble members. Ensemble covariances provide adjustments to all state variables (e.g., temperature, water vapor, winds, liquid water and ice particles). Pseudo Geostationary Lightning Mapper (p-GLM) data (derived from LMA) are assimilated on 1-3 minute intervals.

Lightning assimiation nudging function Water vapor mixing Q v within the 0°C to -20°C layer was increased as a function of 9-km gridded flash rates N flash (X) and simulated graupel mass mixing ratio Q g and saturation vapor mixing ratio Q sat. Increasing Q v at constant temperature T increases buoyancy (virtual potential temperature θ v ) and ultimately generates an updraft. -Only applied whenever simulated RH ≤ A*Qsat and simulated Qg < 3 g/kg. -A controls minimum RH threshold (here 81%). -B and C control the slope (how fast to saturate) -D affects how much water vapor (Qv) is added at a given value of graupel mixing ratio (Qg). More graupel = less forcing Q g =

29 June 2012 Derecho Event Comparison of 3-km resolution forecasts at 22 UTC: No Assimilation (Control, 14 UTC starting time), 3D-var assim. of radar data (10-minute cycling, 14-16UTC), and lightning (ENTLN system) assimilation (14-16 UTC). Surface Temperature difference from reference value Simulated radar reflectivity

Real-time implementation into WRF-NSSL 4-km CONUS runs A quasi-operational system has been set up as a parallel forecast to the daily NSSL convection-allowing forecasts (4-km horizontal grid spacing), initialized at 00 UTC. Lightning data (ENTLN) are assimilated for the first two hours (0-2 UTC) of forecast to nudge in deep convection. Here again is the 2012 Derecho event in terms of convection initiation (CI) probability. The lightning assimilation spins up the ongoing severe convection (arrow) that fails to emerge from the initial condition alone in the control case.

Real -time example: 10 May 2013

Real -time example: 5 June 2013 Real-time runs should generate sufficient warm-season data for evaluation of forecast benefit.

Ensemble Kalman Filter (EnKF) Assimilation Figure: Observing Systems Simulation Experiment (OSSE): Example of a single lightning assimilation cycle damping a spurious storm cell in an ensemble member. Reduced updraft (vectors) and graupel mass (black contours) and radar reflectivity EnKF offers a means to an observation to adjust all state variables via covariances with a corresponding simulated observation (here, lightning flash extent rates) from the ensemble members. It cannot generate convection by itself, but can modulate convection forced by other means or help to suppress spurious deep convection.

Pseudo-GLM EnKF Assimilation -> Flash extent density ~ 80 min -1 -> Flash extent density ~ 1 min -1 May 8, :09Z Latitude Longitude Example of pseudo-GLM Flash extent density (FED) derived from Oklahoma LMA for 8 May 2003 tornadic supercell storm. P-GLM flash extent density observations were generated from Lightning Mapping Array (LMA) data, using a flash separation algorithm (MacGorman et al 2008) to specify individual flashes. Various linear relationships between graupel mass and flash rate, graupel echo volume and flash rate, and non-inductive charging and flash rate were tested. Good results for strong and weak convection tests were found with the relationship: FED = (0.017)*(graupel volume) Here, graupel volume is the sum of grid cells with graupel mixing ratio > 0.5 g/kg in a 16-km box centered on the p-GLM pixel. Ensemble has 40 members at 1-km horizontal resolution. Comparison assimilation tests with radar radial velocity were also performed. Cloud model is COMMAS with NSSL 2-moment microphysics.

Low-level analysis of radar reflectivity around the time of the first tornado (Moore/Oklahoma City, OK EF4 tornadic storm) Observed Reflectivity 22:09Z 22:10Z “Best” member reflectivity Some broadening of the storms is expected from the 8-km resolution of the pseudo-GLM data. Excessive coverage of high-reflectivity regions is not unexpected, but also is rather good for a simple linear lightning observation operator. P-GLM EnKF: 8 May 2003 Supercell

8 May 2003: 1 minute pGLM data assimilation vs. radar radial velocity assimilation radial velocity assimilation pGLM assimilation No data assimilation radial velocity assimilation pGLM assimilation No data assimilation Radar reflectivity error statistics Innovation = Ob - Model Mean

Ensemble probability of Vorticity > 0.01 s -1 at 1.25 km AGL from 2200 UTC to 2300 UTC, assimilating 1 minute pGLM data with graupel volume observation operator. Tornado track is given by thin black outline near center of plot. WDSS-II 0-2 km rotation track derived from KTLX radial velocity data from 2200 UTC to 2300 UTC. Tornado track given by green outline near center of plot. (From Yussouf et al. 2013)

Compute net space charge on all 6 hydrometeor species + “ion charge” (charge left over from, e.g., complete evaporation, etc.). Elliptic solver for the Electric field in 3-D (MPI Multigrid Poisson solver)--handles terrain. 2-D discharge based on Ziegler and McGorman (1994) with removal of charge being a function of hydrometeor surface area and local E magnitude. Recently successfully upgraded to 3-D MacGorman et al. (2001) discharge scheme with screening layer param from Ziegler et al. (1991). Lightning is hybridized IC/CG to reduce net charge in local region. The 2-D lightning model is overall computationally efficient and inexpensive (accounts for ~ 10-13% of CPU increase). While being arguably more realistic, 3-D lightning code is still quite CPU expensive (~ 300% CPU increase) II-WRF-ARW explicit charging/discharge model

Hurricane Isaac (2012) Forecast (dx= 3-km)

Hurricane Isaac (2012)– 3D discharge code (dx= 3-km)

Hurricane Isaac (2012) ctd Units of densities are per hour per 3km x 3km grid cell area

Summary: Lightning effectively identifies deep convection and is useful for forcing convection in the early hours of a forecast. Sustained nudging of water vapor forms updrafts and allows storms to develop in a balanced manner within the model. For simple convection initiation, it is more efficient, e.g., than 3D- VAR radar analysis. Spring 2013 forecasts using lightning nudging await evaluation (e.g., 24-hour rainfall) The Ensemble Kalman Filter method can modulate convection (e.g., strengthen or weaken) and help suppress spurious storms using lightning, radar, or other data. It requires an ensemble, which is computationally expensive, but eliminates the need to develop direct algorithmic adjustments of state variables (updraft, moisture, temperature, etc.) or complex 4D-var adjoint models. Ongoing work focusing on establishing physics-based total lightning predictors for hurricane intensity prediction (for NWP or statistical models such as SHIPS) based on explicit 3D lightning simulations. Planning very high resolution (~500 m) simulations to be conducted on massively parallel machines (e.g., Kraken XT-5) References: Fierro, A. O., E. R. Mansell, C.L. Ziegler, and D.R. MacGorman, 2012: Application of a Lightning Data Assimilation Technique in the WRF-ARW Model at Cloud-Resolving Scales for the Tornado Outbreak of 24 May 2011, Monthly Weather Review, vol. 120, Fierro, A. O., E.R. Mansell, C. Ziegler and D. R. MacGorman 2013: The implementation of an explicit charging and discharge lightning scheme within the WRF-ARW model: Benchmark simulations of a continental squall line, a tropical cyclone and a winter storm. Monthly Weather Review, Volume 141, Fierro, A. O., J. Gao, C. Ziegler, E.R. Mansell, D. R. MacGorman and S. Dembek 2013: Evaluation of a cloud scale lightning data assimilation technique and a 3DVAR method for the analysis and short term forecast of the 29 June 2012 derecho event. Monthly Weather Review-In Press.

15 April 2012 – 2D Bulk discharge code (dx= 3-km) Obs ENTLN Explicit lightning McCaul F1 OBS – NMQ-dBZ Model-dBZ 0600Z -WRF model able to capture evolution of this nocturnal squall line/MCS. -Good qualitative & quantitative agreement between ENTLN observations, McCaul diagnostic schemes and WRF lightning model. McCaul F2 Units of Flash origin densities (per hour per 3km x 3km grid cell area)

15 April ctd 0600Z Electrical variables E field magW, Qg, LWC