Index

Abstract

Several thunderstorm indicators (TI) and thermodynamic features were evaluated and compared by simulating a thunderstorm (TS) event over Sylhet (24.89° N, 91.86° E), Bangladesh that occurred from 1429 UTC to 1441 UTC on 29 March 2018 using the Advanced Research dynamics solver of Weather Research and Forecasting model (WRF-ARW). The model was run to conduct a simulation for 36 hours utilizing six-hourly Global Final Analysis (FNL) datasets from 0600 UTC of 29 March 2018 to 1200 UTC of 30 March 2018 as initial and lateral boundary conditions. The domain was nested in two different ways: (a) two domains of 15 and 3 km horizontal resolution, and (b) three domains of 12, 6 and 3 km horizontal resolution. These domains were nested with varying outer-domain horizontal grid spacing but a constant 3km inner-domain resolution in order to reasonably verify the effect of nesting on the approximation of the thermodynamic indicators by WRF-ARW. The model outputs were generated with a 10-minute interval for the innermost domain. These outputs were analyzed numerically and graphically using Grid Analysis and Display System (GrADS). Model evaluations of mean sea level pressure (MSLP), maximum and minimum temperature, relative humidity (RH) and 24-hour rainfall were compared with available observational data obtained from Bangladesh Meteorological Department (BMD) to validate the model performance in each case. Based on the analyses and comparisons, it is found that the estimated values in the case of three-way nesting were better indicators of the likelihood of a TS event over that area.

Keywords: Thunderstorm, Bangladesh, WRF-ARW model, Nested domain, Thunderstorm indicators, Numerical weather prediction.

Received: 28 January 2021 / Revised: 22 February 2021 / Accepted: 16 March 2021/ Published: 7 April 2021  

Contribution/ Originality

This study is one of the very few studies that estimate several important thunderstorm indicators of a thunderstorm event over Bangladesh using the WRF-ARW model. This paper’s major contribution is the comparative analysis of those indicators based on different nested domain configurations.


1. INTRODUCTION

How the Earth’s atmosphere works and changes have eluded humans for a long time – not only for curiosity but also because many aspects of human life are directly related to weather. That’s why scientists did – and are still doing – a tremendous amount of research to understand and predict its complex behavior. Thunderstorm (TS) is one of the most complicated and devastating phenomena in it. TS is caused by vigorous convective dynamics and characterized by lightning and thunder associated with stormy winds, heavy rainfall, hail and tornadoes. It is very common over Bangladesh (20°34´ N to 26°38´ N and 88°01´ E to 92°41´ E) during the pre-monsoon season. TS is locally known as ‘Kal-baishakhi’ in Bengali: ‘Kal’ means something dangerous and evil signifying the heavy damage to life and property due to TS and ‘baishakhi’ indicates the month of ‘Baishakh’ – the first month of the Bengali calendar (from mid-April to mid-May) during which TS occurs most frequently. Bangladesh has an estimate of 60 to 100 TS days per year [1] and it is the 3rd most violent hazard affecting lives and properties in Bangladesh [2].

Due to the smaller spatial and temporal continuance of TS than other large scale weather phenomena like tropical cyclone or monsoon together with the inherent non-linear nature of the dynamics of TS, forecasting it – even over a particular region – has always been one of the most daunting challenges for meteorologists. Recently, the introduction of Numerical Weather Prediction (NWP) systems to aid conventional techniques has improved TS forecasting to a great extent. The physics and dynamics of a TS can be understood by simulating various associated thermodynamic features with the help of NWP systems such as the Global Forecast System (GFS) and WRF model. Such attempts with high-resolution mesoscale models over the Indo-Bangla region has been made mainly in the past fifteen years. Vaidya [3] studied the simulation of a pre-monsoon thunderstorm over the east coast of India using mesoscale models. Chatterjee, et al. [4] used mesoscale model MM5 to simulate two hailstorm events over the Gangetic Plain of West Bengal. The authors found that the model MM5 with suitable modification to the cloud microphysics scheme of Schultz has the ability to simulate hailstorms considerably. The Nonhydrostatic Mesoscale Model (NMM) core of the WRF was used to perform a simulation of a severe thunderstorm event by Litta and Mohanty [5]. Basnayake [6] studied the observations and WRF simulations of pre-monsoon nor’westers in 2009 over Bangladesh and adjoining regions in the neighborhood. Rajeevan, et al. [7] investigated the sensitivity of four different microphysics (MP) schemes in WRF simulation of a severe thunderstorm event over Gadanki (southeast India). This study showed large sensitivity of the microphysics schemes in the simulations of thunderstorms by the WRF model. Das [8] analyzed the effect of observational data assimilation in the WRF model on the simulation of thunderstorms in his SMRC [9] also studied the sensitivity of physical parameterization schemes in the simulation of mesoscale convective systems associated with squall events using the WRF-ARW model. Simulations of TS events over the East Indian region using WRF-NMM and WRF-ARW cores were compared by Litta, et al. [10]. Ahasan, et al. [11] performed a simulation of a TS event that occurred over Srimangal, Bangladesh at 1200 UTC on 21 May 2011 using WRF-ARW model. Their simulation overestimated the 24-hour rainfall by 46.72% compared to the observation recorded by Bangladesh Meteorological Department (BMD). Bandyopadhyay, et al. [12] discussed the dynamics of severe weather events over the SAARC region. Ahasan and Debsarma [13] studied the impact of data assimilation in simulation of a squall line that occurred on 11 May 2011 over Bangladesh using WRF model. However, the effect of nesting on the simulation of TS over Bangladesh has not yet been done.

In this paper, six TS indicators, as well as several thermodynamic features, are evaluated by simulating the TS event that occurred over Sylhet (24.89° N, 91.86° E) from 1429 UTC to 1441 UTC on 29 March 2018 using the WRF-ARW model. Two different ways of nesting for the study region were used: one consisting of two domains of 15 km (outer) and 5 km (inner), and another consisting of three domains of 12 km (outer), 9 km (middle) and 3 km (inner). Over each innermost domain, six thunderstorm indicators namely, Convective Available Potential Energy (CAPE), Storm Relative Helicity (Hs-r), K Index (KI), Total Totals Index (TT), reflectivity, and 500 hPa wind were evaluated and compared numerically. Graphical analyses were done using GrADS. Along with these six indicators, mean sea level pressure (MSLP), relative humidity (RH), temperature and rainfall were simulated, analyzed and compared graphically with observational data obtained from Bangladesh Meteorological Department (BMD).

2. METHODOLOGY

2.1. Data

Six-hourly Global Final Analysis (FNL) datasets, formatted as the second version of General Regularly-distributed Information in Binary form (GRIB2), from 0600UTC of 29 March 2018 to 1200UTC of 30 March 2018 were used during the simulation as the initial and lateral boundary conditions. These data are prepared by National Center for Environmental Prediction (NCEP) on 1° by 1° grid operationally every six hours from the Global Data Assimilation System (GDAS). GDAS continuously collects observational data from the Global Telecommunications System (GTS), and other sources, for many analyses. These analyses are available on the surface, at 26 mandatory pressure levels from 1000 hPa to 10 hPa, in the surface boundary layer and at some sigma layers, the tropopause and a few others. On the other hand, available observations of MSLP, maximum and minimum temperature, RH and rainfall amount of the event day were collected from the archive of BMD to validate the model derived simulation.

2.2. WRF Model Configuration

The WRF model is a non-hydrostatic mesoscale model developed for simulation and prediction of atmospheric phenomena of different scales, emphasizing horizontal grid lengths of a few kilometers or less [14]. It has two dynamics solvers: Advanced Research WRF (ARW) and Nonhydrostatic Mesoscale Model (NMM). ARW (version 4.1) developed by the National Center for Atmospheric Research (NCAR) [15] is implemented during this study. The two different types of nesting used in this study are shown in Figure 1(a-b).

Figure-1(a). Two nested domains, (b) Three nested domains.

Table-1. Details of the domain configuration used in this study.

 
(a)
(b)
Type
Nested
Nested
Number of domains
Two
Three
Central coordinate
23.5° N, 90.5° E
23.5° N, 90.5° E
Total covered area
D12:
17.30°N – 29.42°N,
83.58°E – 97.42°E
D13:
17.38°N – 29.35°N,
83.55°E – 97.45°E
D22:
19.90°N – 27.00°N,
86.92°E – 94.08°E
D23:
19.25°N – 27.61°N,
85.88°E – 95.11°E
D33:
20.24°N – 26.68°N,
87.27°E – 93.72°E
Horizontal resolution
D12: 15km × 15km
D22: 3km × 3km
D13: 12km × 12km
D23: 6km × 6km
D33: 3km × 3km
Grid size
D12: 95 × 91 × 40
D22: 245 × 265 × 40
D13: 119 × 112 × 40
D23: 158 × 156 × 40
D33: 220 × 240 × 40
Integration time step
D12: 75 seconds
D22: 15 seconds
D13: 60 seconds
D23: 30 seconds
D33: 15 seconds
Output data interval
D12: 50 min
D22: 10 min
D13: 80 min
D23: 40 min
D33: 10 min

Table-2. Details of the WRF Model configuration used in this study.

Dynamics
WRF core ARW
Input data type NCEP–FNL
Input data interval 6 hours
Map projection Mercator
Vertical coordinates Pressure coordinate
No. of vertical levels 40
Time integration scheme Runge-Kutta 3rd order method (RK-3)
Spatial differencing scheme Centered difference 6th order formula
Physics
Microphysics Kessler scheme
PBL parameterization Yonsei University (YSU) scheme
Surface layer physics Revised MM5 scheme
Land-surface model Unified Noah LSM
Short-wave radiation Dudhia scheme
Long-wave radiation RRTM scheme
Cumulus parameterization Kain–Fritsch (new Eta) scheme

3. GOVERNING EQUATIONS

The basic form of the atmospheric governing equations are as follows:

The ARW dynamics solver of the WRF model integrates the compressible, non-hydrostatic Euler equations. The equations are cast into flux form using transformation of variables that conserves all the properties following [16] and then reformulated using a terrain-following mass vertical coordinate [17].  After the inclusion of moisture effect, curvature terms and Coriolis effects, they are further augmented to include the projections to the sphere. Finally, the governing equations are recast into a perturbed form using perturbation variables to reduce truncation and rounding-off errors in calculations before constructing the discrete solver.

4. SYNOPTIC CONDITION OF THE CASE STUDY

According to the records of BMD, a squall took place over Sylhet from 1429 UTC to 1320 UTC on 29 March 2018. A trough of westerly low was observed over Sylhet and the neighborhood on the event day. Mean Sea Level Pressure (MSLP) at 1200 UTC was observed to be 1004.6 hPa at Sylhet station. Powerful stormy wind was observed to be blowing from the west to the east with a maximum speed of 92  (50 knots). An amount of 21 millimeters of rainfall was recorded at that station over the 24 hours of that day.

5. SIMULATION

5.1. CAPE

CAPE is the short form of ‘Convective Available Potential Energy’. It is a measure of the amount of energy available for convection. Mathematically, CAPE is calculated by integrating vertically the local buoyancy of a parcel from the level of free convection (LFC) to the equilibrium level (EL) according to the American Meteorological Society [18] as follows:

5.2. Storm Relative Helicity (Hs-r)

Storm relative helicity, abbreviated Hs-r, is an important TS index that estimates the potential of a thunderstorm to achieve a rotating updraft when there exists an environmental vertical wind shear profile.

It accumulates the effects of storm-relative winds and the horizontal vorticity that is generated by the vertical shear of the horizontal wind within the inflow layer of a storm. We simulated Hs-r at 1km and 3km levels in D22 and D33 which are shown in figure 3 and 4 respectively.

5.3. K Index

The K index (KI) is a measure that expresses the potential of thunderstorms based on the lapse rate of temperature with respect to height, and the amount of low-level moisture in the atmosphere. K over 30°C indicates better potential for thunderstorms with heavy rain. WRF simulated K values are shown in Figure 5 (a, b) for D22 and in Figure 5 (c, d) for D33.

It is found that, in D22, K index is mostly 0-10°C over Sylhet and 10-20 in the surrounding areas as shown in Figure 5 (a, b). On the other, Figure 5 (c, d) for D33 shows a K index of 15-20°C over Sylhet and 25-35°C in the close neighborhood. That is, KI values for D33 is more indicative of potential TS than that of D22.

5.4. Total Totals Index

The Total Totals Index, abbreviated as TT, consists of two components: Vertical Totals (VT) and Cross Totals (CT). The VT represents the lapse rate between 850 and 500 hPa level and the CT is the difference between normal and dewpoint temperature at 850 hPa level. Thus, TT accounts for static stability as well as 850 hPa moisture. TT values above 45°C indicate possible TS and more than 55°C TT suggests severe TS most likely.

TT values simulated by the WRF model are shown in figure 6. In the case of D22, as shown in Figure 6 (a, b), 48-54°C TT is simulated over Sylhet and its adjoining northern areas while in the case of D33 it is in the range 45-50°C. Therefore, the D22 estimate of this index is a better indicator of TS event over this area than that of D33.

5.5. Reflectivity

Simulated Composite RADAR Reflectivity, simply called Reflectivity, forecasts what a weather radar may be showing considering the amount of water forecast to be in the atmosphere. It has a unit of dBZ which stands for decibel relative to Z. It’s a dimensionless unit in the logarithmic scale used in weather radar to compare the equivalent reflectivity factor (Z) of a remote object to the return of a droplet of rain [19].

It is a fairly good indicator of convection and the subsequent development of thunderstorms. Values above 40 dBZ indicate the likelihood of storms with hail and thunder. WRF simulated dBZ values at 500 hPa level are shown in Figure 7. We have also simulated vertical cross-sections of dBZ values along 24.89°N which are shown in Figure 8.

6. COMPARISONS

6.1. Thunderstorm Indicators

An overview of the average of WRF-simulated values of the discussed TS indicators over Sylhet and its neighborhood (from 24.5°N to 25.5°N and 91.5°E to 92.5°E) at 1440 UTC of 29 March 2018 for both domain D22 and D33 is given in Table 3.

Table-3. Overview of the average WRF-simulated values.

6.2. Observations

In order to further validate the model performance, simulated values of MSLP, RH, maximum and minimum temperature, and 24-hour rainfall of the event day is compared with the available observations from BMD. The comparison is shown in Figure 10.

Figure-10.  Comparison of model simulations in D22 and D33 with BMD observations: (a) Mean sea level pressure (in hPa), (b) Maximum and minimum temperature (in °C), (c) Relative humidity (in %), and (d) 24-hour rainfall (in mm).

Figure 10 (a) shows that although both D22 and D33 underestimated the actual observations of MSLP, D33 estimates were much closer to the observed values. In Figure 10 (b), however, it is seen that both D22 and D33 overestimated the temperature values in maximum and minimum cases but D33 showed very close approximations. In the case of RH, D22 estimates were much less than the actual records at each time step while the estimations in D33 fluctuated in the close neighborhood of the observations as shown in Figure 10 (c). Finally, in Figure 10(d), it is found that D33 estimated an amount of around 23 mm rainfall which is much closer to the actual record (21 mm) than that of D22 (around 17 mm). Therefore, it can be said that in each of the comparisons, WRF simulations in D33 were much closer to the actual observations than that of D22.

7. CONCLUSION

From Table 3 and the comparisons with observations in figure 10 (a-d), it can be concluded that the WRF-ARW model simulations of the TS event over Sylhet were better in D33 for almost all of the indicators except for CAPE. That is, the model performed relatively well when the simulations were made over three nested domains instead of two though the horizontal resolution of the innermost domain was 3 km in both cases. Also, the total covered area of the outermost domain was nearly the same. However, it should be noted that before arriving at any conclusive decisions, more case studies over this region need to be analyzed using the WRF model.

Funding: This study received no specific financial support.  

Competing Interests: The authors declare that they have no competing interests.

Acknowledgement: All authors contributed equally to the conception and design of the study.

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