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By: Jeana Mascio. Radar Reflectivity (Z) and Rainfall (R) Relationships in Central Florida Part II. The Point. Want to be more accurate with estimating rainfall amounts from Z/R relationships. The Point. Want to be more accurate with estimating rainfall amounts from Z/R relationships
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By: Jeana Mascio Radar Reflectivity (Z) and Rainfall (R) Relationships in Central FloridaPart II
The Point Want to be more accurate with estimating rainfall amounts from Z/R relationships
The Point Want to be more accurate with estimating rainfall amounts from Z/R relationships Drop Size Distribution (DSD) variations in storms causes most inaccuracies
The Point Want to be more accurate with estimating rainfall amounts from Z/R relationships Drop Size Distribution (DSD) variations in storms causes most inaccuracies Use meteorological parameters that may infer DSD
The Point Want to be more accurate with estimating rainfall amounts from Z/R relationships Drop Size Distribution (DSD) variations in storms causes most inaccuracies Use meteorological parameters that may infer DSD Determine if these parameters can explain the discrepancies from Z/R relationship
The Point Want to be more accurate with estimating rainfall amounts from Z/R relationships Drop Size Distribution (DSD) variations in storms causes most inaccuracies Use meteorological parameters that may infer DSD Determine if these parameters can explain the discrepancies from Z/R relationship If results are found, could change the relationship
Drop Size Distribution (DSD) • Defines hydrometeor size, shape, orientation and phase • Each storm type, as well as phase of storm, has a different DSD • Affects Z/R relationship Both boxes have the same reflectivity measurement Box 2 will give the greater rainfall
Using the Horizontal Rain Gage • Horizontal gages collect different rain angles • Different directions represent the u- and v-components North = + v South = - v East = + u West = - u
How Horizontal Gage Works Example: If rain came directly from the North, this direction gage would only collect rain… only v-component would have a value.
Calculating Terminal Velocity Rain Angle Unknown… Rain rate Infer a terminal velocity Wind velocity
Finding Mean Drop Size • Calculated terminal velocities can give a mean drop size • Mean drop size gives information on the DSD
Terminal Velocity that best • matches 7/11 observations is • between 4 and 4.6 m/s
Terminal Velocity that best • matches 7/11 observations is • between 4 and 4.6 m/s • From previous table: • 4.03 m/s 1.0 mm mean drop size
Using Drop Size Data • Could classify measured drop sizes into storm types and storm phases if more data was collected • Use classification to compare to the Z/R relationship • Possible correlations to either an over- or under-estimation of rainfall from relationship
Use Lightning Metrics as a Proxy • Lightning Metrics : • Convective Available Potential Energy (CAPE) • Equilibrium Level temperature (EL) • Lightning Flash Rate (LFR) • All help to determine if storms are convectively active
CAPE Measured by upper-air balloon soundings • The potential an area of upper atmosphere has to produce convective storms • Higher CAPE convection more likely
EL Measured by upper-air balloon soundings • The estimated temperature of possible storm cloud-top
Lightning Flash Rate (LFR) • Measured by the U.S. National Lightning Detection Network Database (NLDN) • Collects location, time, polarity and amplitude of each cloud-to-ground strike • Methods: • Tabulated flash count for each system • Specified radius (5, 10 km) for varying circular areas
Comparing Metrics to Z/R • Compared data to rainfall rate departure = difference between the observed rainfall rate and rate that the reflectivities estimated by NWS relationship (shown with red arrows on a cut-off portion of Z/R relationship graph)
Comparing Metrics to Z/R • Compared data to rainfall rate departure • Best results came from CAPE and 10 km LFR • Divided CAPE/10 km LFR into 2 groups: • CAPE: high and low (dividing value = 2950 J/kg) • 10 km LFR: zero and some lightning
Statistical Analysis • Statistical T-tests completed for CAPE and 10 km LFR • Determined if there is any statistical difference between mean departures of groups for both metrics • P-value less than or equal to 0.05 allows rejection that groups are equal
CAPE T-test Results • No statistical support allows the statement that these two means are different
10 km LFR T-test Results • There is about 90% confidence that these two means are different • Not enough for the 0.05 confidence value
Conclusions • Rainfall rate mean departures for both groups in both metrics cannot be claimed different • But results of 10 km LFR were close to confidence value • No new Z/R relationships can be inferred from the results • Could study other seasons throughout entire year; different storm types • Measure DSD with a disdrometer
Questions? Next: Sarah Collins