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An Analysis of Thermodynamics, Dynamics, and Environments of Microbursts Atmospheric Dynamics, Storms and Radar Kyle Ziolkowski ID: 7700294 Due: April 4, 2013 2 Introduction Microbursts are small but powerful downdrafts that descend from convective clouds and radiate outward in all directions. They are a mesoscale atmospheric phenomenon, averaging around 4 kilometres in diameter or less and can produce damaging winds as high as 75 m s-1 (270km/hr) (Rinehart, 2010). With such high and dynamic winds, microbursts can be a potential threat to life and property and are especially dangerous to aviation. Since 1975, more than 500 people have been killed in aircraft accidents directly caused by microburst activity (Marilyn M. Wolfson, Richard L. Delanoy, Barbara E. Forman, Robert G. Hallowell, Margita L. Pawlak, and Peter D. Smith, 1994). For these reasons, it is important to understand the fine processes such as the dynamics and thermodynamic structure of microbursts to characterize their evolution and environment. By further understanding these characteristics we are now able to forecast and detect microbursts in real time, as well as warn and educate the aviation community for potential wind shear threats. The focus of this paper will be on the thermodynamics, dynamics and environment in which microbursts form, as it relates to the forecasting and detection of microbursts. Thermodynamics and Dynamics There are three primary processes that lead to the formation of microbursts, which include evaporative cooling / sublimination, melting, and liquid water loading (Rinehart, 2010). All of these processes lead to negative buoyancy of the air within 3 the thunderstorm and develop a powerful concentrated downdraft that penetrates the base of the storm and rushes towards the surface. The root cause of a microburst comes down to buoyancy and how buoyancy is shape shifted within a thunderstorm. It is evaporative cooling, melting and liquid water loading which causes these changes. Below the buoyancy equation is given, ๐๐ค ๐๐๐ฃ =๐ ๐๐ก ๐๐ฃ๐ Where the change in virtual temperature (dTv) is the parcelโs virtual temperature minus the environmental virtual temperature divided by the environmental virtual temperature (Tve) and g is the gravitational constant. From this one should notice that the causes of vertical acceleration are attributed to buoyancy differences within the storm (Medlin, Cullen 2006). Since we now know that buoyancy is a major factor in vertical accelerations within storms, we can now examine the processes that lead to negative buoyancy that ultimately cause the formation of enhanced downdrafts. Evaporative cooling is one of the processes that attributes to cooling of the air and thus negative buoyancy. Evaporative cooling is a process whereby the surrounding air is cooled by the change of state from liquid water to water vapor. This process requires energy, because going from a liquid to a gas means that there is an increase in molecular energy, and thus energy is required to go from a liquid state to a gaseous state (Rinehart 2010). So as water droplets descend into a subsaturated layer of dry air, they begin to evaporate and cool the surrounding air by 4 removal of sensible heat. Since cold air is more dense than the surrounding warm air, it will begin to descend. Melting works in a similar way as evaporative cooling except the change of state is from ice to water. Within thunderstorms, saturated air is carried to high altitudes via strong updrafts and is transported above the freezing level allowing ice particles to form as hail, snow and graupel. As the ice particles begin to descend they will begin to melt, attributing to cooling of the surrounding air within lower parts of the storm below the 0โ isotherm line (Pryor, Ellrod, 2004). Similar to evaporative cooling and melting is sublimination. This is the transformation of ice to a gas and generates more cooling because of the greater amount of energy required to go from a lower energy state of a solid to the higher energy state of a gas (Vasquez, 2009). Liquid water loading also contributes to the formation of microbursts and is a process that operates by descending precipitation within a thunderstorm. As the precipitation falls, it drags the air along with it creating a downdraft (Rinehart, 2010). Most precipitation that falls within clouds produces some sort of downward motion associated with it due to precipitation loading or drag (Rinehart 2010). When one or all of these processes is present within a thunderstorm, a microburst is formed, often moderately small in spatial scale due to the concentration of these processes (Rinehart 2010). Microbursts, in general, fall almost vertically. Consider the analogy to that of turning on your bathroom water tap. Imagine the water leaving your tap, and once the water hits the bottom of the sink it spreads out in all directions, microbursts work in a similar manner. When the 5 air reaches the ground it cannot go down any further and thus radiates outwards in all directions and at equal speeds (assuming static conditions of the storm and microburst). Now consider the dynamics of a travelling microburst on its descent, radiating outwards once in contact with the ground, as well as the dynamics of potential wind speeds. If we consider flow against a flat plain, as the air approaches the surface, the vertical component of the wind velocity will begin to decelerate because of interference with the ground and the horizontal component will begin to accelerate outwards from the impact centre (Caracena, Holle, Doswell, 2005). This model paints a picture for the microburst to ground interaction and can be seen in figure 1. Once the horizontal component begins and radiates outwards, past studies have observed pressure noses or โmesohighsโ that have developed within the microburst. Different from other downdrafts, microbursts pressure noses have a tighter stronger gradient with the outside environment and are relatively short in duration (Caracena, et. al 2005). Often a 2 to 5 mb increase is noted with the passing of the microburst outflow and due to the relative high pressure ring that is developed at the centre of impact, flow is directed outwards towards a ring of lower pressure around the microburst outflow (Caracena, et al. 2005). Another dynamical feature important to microbursts is horizontal vortex tubes (or rotors) that develop on the leading edge of the microbursts outflow and can be seen in figure 1. This horizontal vortex tube has a cyclonic curvature and low pressure develops within the axis of rotation, which dynamically enhances the pressure gradient across the microburst (Caracena, et. al 2005). The cyclonic flow 6 develops a return flow on the backside of the ring which enhances the outflow, while upward motion is found on the leading edge and may be visible by curling rings of dust or precipitation spray in ideal conditions (Caracena, et. al 2005). This phenomena may explain why microbursts intensify as they expand with distance from the centre of impact due to stretching of the horizontal vortex ring which would intensify the low pressure at its axis while, theoretically, the outflow should weaken due to friction (Caracena, et. al 2005). It is these circulations in combination with the downdraft that become problematic for aircraft. Rapid changes in wind speed and direction will cause complications for aircrafts taking off or landing and can be a potentially deadly situation (Keen, Thatcher, 2010). This highlights the importance and research of conditions necessary for microburst generation. Environment and Forecasting There are three main types of microbursts which are wet, dry and the hybrid of both wet and dry microbursts, each forming under their own specific conditions (Caracena, et al, 2005). Each of these microbursts are formed in different environments and thus different conditions need to be recognized in order to evaluate which type of microburst a forecaster will be dealing with. Each type of microburst will be discussed individually about their specific environments and conditions that will alert forecasters to their potential. a. Wet Microbursts Wet microbursts are primarily caused by dry air entrainment into the mid levels of the storm, as well as precipitation loading, and are often observed in moist, 7 tropical environments (Rinehart, 2010). These types of microbursts are characterized by precipitation fully extending down to ground level, accompanied by high level winds and torrential rain (Rinehart 2010). Figure 2 shows a sample sounding for a typical wet microburst situation. Wet microburst environments are often associated with deep low level moisture (high theta-e), anywhere from 800 to 700mb deep with a region of dry air above (low theta-e), and high precipitable water (Atkins, Wakimoto, 1991). The low level lapse rates are nearly pseudoadiabatic with steep mid level lapse rates above, and high values of CAPE are needed to ensure sufficient penetration of moisture into the dry air aloft and to enhance precipitation loading within the storm (Pryor, et al, 2004). The dry air aloft is instrumental to the development of negative buoyancy to initiate a downburst due to evaporation and (or) sublimination of precipitation particles, which will draw sensible heat from the surrounding atmosphere (Vasquez, 2009). Hail/graupel have often been observed and are assumed to be a major contributor to negative buoyancy by sublimination aloft and melting in the lower parts of the storm (Scharfenberg, 2003). So vertically deep updrafts are vital to wet microburst formation and 50+ dBZ cores are prime areas for wet microburst formation where hail and heavy precipitation is likely (Medlin, 2006). By observing soundings we can pinpoint the potential for wet microburst formation. Additionally, algorithms have been developed to further verify wet microburst potential and give the forecaster additional information on maximum wind gust potential. Such an algorithm is the GOES sounder derived product Wet Microburst Severity Index (WMSI). This index incorporates theta-e deficit and CAPE 8 to alert forecasters to the potential of wet microbursts and fill in gaps where soundings are unavailable. ๐๐๐๐ผ = (๐๐๐ถ๐ด๐๐ธ)(๐๐๐๐๐ฅ โ ๐๐๐๐๐ ) 1000 Where, theta-e max is the maximum theta-e at the surface minus the minimum theta-e in the mid levels and MUCAPE represents most unstable CAPE (Pryor, et al, 2004). Theta-e deficit is important for differences in moisture between the two levels and helps characterize the thermal energy of latent heat (Pryor, et al, 2004). Significant statistical evidence has shown that there is a correlation between GOES WMSI values and surface convective wind gusts associated with wet microbursts (Pryor, et al 2004). An example of the GOES WMSI product can be seen in figure 3 with a corresponding table of values showing the maximum expected wind gusts. b. Dry Microbursts Dry microbursts differ from wet microbursts such that at the surface they are unaccompanied by precipitation. Virga is often observed beneath the thunderstorm base, which is a visual cue that evaporation/sublimination of rain and ice particles is taking place beneath the base of the storm (Rinehart, 2010). The only visual evidence of the presence of a dry microburst at ground level is dust and debris that is being lofted by the leading edge of the microburst. These types of microbursts are most common in the high plains and higher altitude locations where drier conditions exist (Pryor, et al, 2004). Figure 4 shows a typical dry microburst sounding, also referred to as an โinverted-Vโ sounding (Vasquez, 2009). Dry microbursts occur in dry environments 9 where the convective condensation level is high (as high as 500mb), meaning high cloud bases, low surface dewpoints extending at least 3km deep, low CAPE, dry adiabatic lapse rate in the low levels, shallow moisture in the mid levels, and convective instability (NOAA, 2011). The primary generation of a dry microburst is evaporative cooling in the sub-cloud layer, which induces negative buoyancy (Pryor, et al, 2004). Due to the dry air in the low levels of the atmospheric boundary layer, precipitation particles will evaporate, cooling the surrounding air. This is the reverse of the wet microburst environment to a greater degree where all of the precipitation is evaporated, thus virga is visible when a dry microburst is occurring (NOAA, 2011). An algorithm commonly used in the forecasting of dry microbursts is the Dry Microburst Index (DMI). ๐ท๐๐ผ = ฮ + (๐ โ ๐๐ )700 โ (๐ โ ๐๐ )500 Where ฮ is the 700-500mb lapse rate and the other terms are the dewpoint depressions for the 700 and 500mb levels respectively. This index assists in locating areas for dry microburst potential and is also a GOES sounder product similar to that of the WMSI (Pryor, et al 2004). c. Hybrid Microbursts Dry air aloft and dry air in the low levels are favorable environments for wet and dry microbursts respectively. However, a different environment exists where a combination of both wet and dry microbursts have been observed generating a downdraft known as a hybrid microburst (Pryor, 2011). These types of microbursts develop in deep convective situations that will generate heavy precipitation but also 10 have a dry sub-cloud layer beneath the base of the thunderstorm which significantly helps in evaporation of precipitation (Pryor, 2011). This type of intermediate environment requires significant CAPE values, a deep dry adiabatic lapse rate below the cloud base typically near the 700mb level, and a dry (low theta-e) layer above a moist mid level layer (Caracena, et al, 2005). A sample sounding for this type of environment is shown in figure 5 where there is an inverted-V shape with an area of high CAPE. Strong buoyancy that is associated with this type of environment will likely be associated with large hail and graupel which can further complicate and augment the negative buoyancy with the elevated dry layer being a possible source of microburst initiation (Caracena, et al, 2005). A current index that is under development is the Hybrid Microburst Index, which is once again a GOES sounder derived product. HMI incorporates sub-cloud lapse rates (G), dewpoint depressions between the typical convective cloud base (670mb) and the sub-cloud layer (850mb) (Pryor, 2011). This typical cloud base was chosen to be the intermediate level between the wet microburst LCL (850mb) and the LCL for dry microbursts (500mb). ๐ป๐๐ผ = ๐บ + (๐ โ ๐๐ )850 โ (๐ โ ๐๐ )670 Large values of HMI result from nearly dry adiabatic lapse rates in the low levels and large dewpoint depression differences between the typical convective cloud base and the sub-cloud layer (Pryor, 2011). This index has shown to be useful and has a strong correlation between wet and dry microbursts as well and can be used as a supplement for WMSI and DMI (Pryor, 2011). 11 Radar is a useful tool for observing microbursts and can alert aviation to their presence. Microbursts are reasonably symmetrical at the surface and will exhibit a couplet on velocity imagery that is aligned perpendicular to the beam (Rinehart, 2010). A strong, divergent signature (figure 7) will be visible on velocity products accompanied by strong reflectivities on base reflectivity (Rinehart, 2010). In the case of dry microbursts where no precipitation is visible, often debris that is lofted, insects, or birds can make dry microbursts visible on radar (Rinehart, 2010). Conclusion To summarize, microbursts are dangerous meteorological phenomena that can cause significant damage and danger to property, aviation and life. Past research and current ongoing research is important to obtain a further understanding of microbursts to ensure public and aviation safety through applying knowledge obtained from studies to forecasting. Through working on this paper, applying my own views, I find that possibly looking at short fat areas of CAPE and contrasting them to longer broad areas of CAPE may differentiate severe microburst events to general events. Reason being is short fat areas of CAPE have been linked to stronger accelerating updrafts due to sooner realization of positive buoyant energy from an ascending parcel. Also through researching I did not come across any papers that looked at these situations for Northern Plains environments, which may differ from more Southern Plains and Gulf coast situations. This reinforces that more research is needed on such a phenomena as well as, education and public awareness of such events is important for personal safety. 12 Figure 1. Figure 1: Structure of a microburst and the horizontal vortex rings. Source http://www.propertyinsurancecoveragelaw.com/tags/microbursts/ 13 Figure 2. Figure 2: Wet microburst sounding taken from Met Ed. Source (http://www.meted.ucar.edu/mesoprim/skewt/micro2.htm ) 14 Figure 3. Figure 3: WMSI and corresponding table example from the SE U.S.A. (Pryor, et. al 2004) WMSI < 10 10 - 49 50 - 79 > 80 Wind Gusts (kt) Convection/Microbursts Unlikely < 35 kts 35 - 49 kts > 50 kts 15 Figure 4. Figure 4: Dry microburst sounding. Source (http://www.meted.ucar.edu/mesoprim/skewt/micro3.htm) 16 Figure 5. Figure 5: Hybrid microburst sounding. Source (NOAA, 2011) http://www.srh.noaa.gov/ama/?n=microbursts 17 Figure 6. Figure 6: HMI and corresponding table. This example is for a Great Plains event from 2005. (Pryor, 2011) Table 1. Downburst risk corresponding to HMI values HMI Box Color Downburst risk <8 Red Downbursts Unlikely > or =8 Green Downbursts Likely > or =16 Yellow Downbursts Likely Orange High Risk of Downbursts > 24 18 Figure 7. Figure 7: Divergence on base velocity imagery. This image was taken form the NWS archives in Kansas City/Pleasant Hill MO from an event that took place on Wednesday August 11, 2010. (NWS, 2010) http://www.crh.noaa.gov/eax/?n=microburst_aug112010 19 References Atkins Nolan T, Wakimoto Roger M. โWet Microburst Activity Over The Southeastern United States: Implications for Forecastingโ Weather and Forecasting Vol. 6 (1991). Online. Retrieved 18 Mar. 2013. http://journals.ametsoc.org/doi/pdf/10.1175/15200434%281991%29006%3C0470%3AWMAOTS%3E2.0.CO%3B2 Caracena Fernando, Holle Roland L, Doswell Charles A III. (2005) Microbursts-A handbook for visual identification. Online. Retrieved March 19, 2013. [Available online at http://www.cimms.ou.edu/~doswell/microbursts/Handbook.html .] Keen Terry, Thatcher Steve. โExperiential Learning Using Case Studies of Aircraft Accidents in Aviation Meteorology Coursesโ World Transactions on Engineering and Technology Education Vol. 8 (2010). Online. Retrieved March 18 2013. http://www.wiete.com.au/journals/WTE&TE/Pages/Vol.8,%20No.1%20(2010)/4Keen-23.pdf Medlin Jeffery M, Cullen Jack. โA Thermodynamic Investigation of the Early Afternoon Wet Microburst Pre-Storm Environment Over Southern Alabama and the Western Florida Panhandleโ National Weather Digest Vol. 30 (2006). Online. Retrieved March 3 2013. http://www.crh.noaa.gov/sharedoc/unr3/Vol30-Issue1Dec2006/Pg61-Medlin.pdf 20 NOAA, Downbursts National Weather Service, Nashville Tennessee. March 21, 2011 http://www.srh.noaa.gov/ohx/?n=downbursts Pryor Kenneth L, Ellrod Garry P. โRecent Improvements to the GOES Microburst Productsโ Weather and Forecasting Vol. 19 (2004). Online. Retrieved March 17 2013. http://journals.ametsoc.org/doi/pdf/10.1175/15200434(2004)019%3C0582%3ARITTGM%3E2.0.CO%3B2 Pryor Kenneth L. โForecasting Convective Downburst Potential Over the United States Great Plainsโ Center for Satellite Applications and Research (NOAA/NESDIS). Online. Retrieved March 20, 2013. http://arxiv.org/pdf/physics/0511245.pdf Rinehart, Ronald E. Radar for Meteorologists Rinehart Publications, 2010. Scharfenberg Kevin A. โPolarmetric Radar Signature in Microburst-Producing Thunderstormsโ Cooperative Institute for Mesoscale Meteorology Studies, University of Oklahoma (2003). Online. Retrieved 27 Feb, 2013. https://ams.confex.com/ams/pdfpapers/64413.pdf Vasquez, Tim. Severe Storm Forecasting Weather Graphics Technologies, 2010. 21 Wolfson Marilyn M, Delanoy Richard L, Forman Barbara E, Hallowell Robert G, Pawlak Margita L, Smith Peter P. โAutomated Microburst Wind-Shear Predictionโ The Lincoln Laboratory Journal Vol. 7 (1994). Online. Retrieved Jan. 14 2013. http://www.ll.mit.edu/mission/aviation/publications/publication-files/journalarticles/Wolfson_1994_JA-7199.pdf