Abstract
Evaluation of appropriate physics parameterization schemes for the Weather Research and Forecasting (WRF) model is vital for accurately forecasting tropical cyclones. Three cyclones Nargis, Titli and Fani have been chosen to investigate the combination of five cloud microphysics (MP), three cumulus convection (CC), and two planetary boundary layer (PBL) schemes of the WRF model (ver. 4.0) with ARW core with respect to track and intensity to determine an optimal combination of these physical schemes. The initial and boundary conditions for sensitivity experiments are drawn from the National Centers for Environmental Prediction (NCEP) global forecasting system (GFS) data. Simulated track and intensity of three cyclonic cases are compared with the India Meteorological Department (IMD) observations. One-way analysis of variance (ANOVA) is applied to check the significance of the data obtained from the model. Further, Tukey’s test is applied for post-hoc analysis in order to identify the cluster of treatments close to IMD observations for all three cyclones. Results are obtained through the statistical analysis; average root means square error (RMSE) of intensity throughout the cyclone period and time error at landfall with the step-by-step elimination method. Through the elimination method, the optimal scheme combination is obtained. The YSU planetary boundary layer with Kain–Fritsch cumulus convection and Ferrier microphysics scheme combination is identified as an optimal combination in this study for the forecasting of tropical cyclones over the Bay of Bengal.
Similar content being viewed by others
Introduction
Tropical cyclones are mesoscale disturbances originating in the warm tropical Oceans. High sea surface temperatures, low atmospheric pressure, weak wind shear and high mid-tropospheric moisture favor the formation and intensification of tropical cyclones. The heavy precipitation, strong winds and associated storm surge are devastating over the coastal regions during and after landfall. Study of cyclones over Bay of Bengal from 1891 to 2010, depicted an increase in the number of severe cyclonic storms in the Bay of Bengal1. Balaji et al. in 20182 points that the shallow bathymetry, low lying coastal terrain, funnel shape of coastline and coastal population density accentuates the devastation during landfall.
Advanced Weather Research and Forecast (WRF) model is one of the state-of-the art numerical weather prediction (NWP) model, which serves as a vital tool for forecasting of tropical cyclones. The WRF model with ARW core have been used by numerous researchers to study the impact of model physics on track and intensity of cyclones over the north Indian ocean3,4,5,6,7,8. Various physics schemes namely, the planetary boundary layer (PBL), cumulus convection (CC) and cloud microphysics (MP), longwave and shortwave radiation, and land-surface schemes are employed during forecasting. Sensitivity studies have been conducted to identify the combination of suitable physics schemes for prediction of track and intensity of tropical cyclones over Bay of Bengal9,10,11,12,13,14,15,16. Those studies identify the schemes based on the bias in the mean square error and average track error. However, in the present study a methodology is developed using one-way analysis of variance (ANOVA)17 to test the significant difference among the various combination of schemes for intensity and track prediction over three severe cyclones of the Bay of Bengal (BoB). Further, Tukey’s post-hoc test18 is applied to identify the pairs of combination of schemes which are significantly close to IMD observations. From this process, the treatment combinations which are significantly different from IMD observations are eliminated and thus four cluster of treatments with respect to four variables (central pressure, maximum sustained wind, longitude and latitude) are obtained for every cyclone. These clusters of scheme combinations are then tested for the error at landfall time and average Root Mean Square Error (RMSE) of central pressure (CP) and maximum sustained wind (MSW) with respect to three cyclones and through elimination process optimal scheme is obtained.
Experimental design
In order to obtain reasonable optimal combination of schemes of WRF model, three severe cyclonic cases over Bay of Bengal (Nargis-2008; Titli-2018 and Fani-2019) are considered in this study. These cyclones are severe cyclones considered as a sample for the entire population of tropical cyclones in the Bay of Bengal. The optimization method tested for the sample can then be applied over the population. The sensitivity experiments are carried out with the combination of two PBL schemes (Yonsei University scheme and Mellor–Yamada–Janjic), three CC schemes (Kain–Fritsch, Betts–Miller–Janjic and Grell–Devenyi) and five MP schemes (Ferrier, WSM6, Thompson, Lin and Kessler) on three cyclonic cases. Thus, a total of 90 sensitivity experiments (2 PBL × 3 CC × 5 MP × 3 TCs) are performed using Weather Research and Forecasting model (WRF) with ARW core, version 4.0 (Table 1). The detailed description of WRF model physics and dynamics are given by Skamarock et al.19. The initial and boundary conditions are obtained from the National Centers for Environmental Prediction (NCEP) Global Analysis and Forecasting System (GFS) data available at 0.5° × 0.5° resolution, with time varying boundary conditions updated at every 6 h interval. The model is integrated over Bay of Bengal (4.37° S–27.44° N and 68.22°–107.78° E) having Mercator map projection with 9 km horizontal resolution and 35 vertical levels. The Arakawa C-grid grid staggering is used along with third-order time integration scheme and sixth-order advection scheme in both horizontal and vertical directions. Dudhia scheme20 and the Rapid Radiative Transfer Model (RRTM) scheme21 are used for short wave and long-wave parameterization respectively in all the sensitivity experiments. For the surface parameterization, the Noah land-surface scheme is considered. For all three cyclones, the model is initialized three days prior to the cyclone landfall and integrated upto 120 h. i.e. initial condition for cyclones Nargis, titli and Fani are considered respectively 28april2008-12UTC, 08oct2018-12UTC and 30april2019-12UTC The observed cyclone track and intensity from the India Meteorological Department (IMD) are used to estimate the track and intensity errors. In this study, central pressure (CP; hPa) and 10-m maximum sustained wind (MSW; ms−1) are used to estimate the intensity of tropical cyclone.
In this optimality study, the best performing combination of physics schemes have been investigated individually in relation to time at landfall, intensity (CP, MSW) and track (latitude, longitude) along the trajectory of cyclone. The physics schemes as well as their codes are presented in Table 1. The treatments are coded from 0 to 30, ‘0’ being the IMD observation. Treatment 1–30 are combinations ordered by considering the PBL scheme at first followed by CC scheme and MP scheme viz. treatment 1 will be a combination of first PBL-YSU with first CC-KF and MP Ferrier. The treatments 1 to 5 are formed by keeping the first PBL and first CC scheme constant and orderly varying the five MP schemes listed in Table 1. The treatments 6–10 are created with YSU PBL, second CC scheme viz. BMJ and varying the MP schemes. Similarly, all the other treatment combinations are created. The means of 31 treatments are compared in order to check the variability in the average effect of treatments using one-way ANOVA. Further, groups of treatments which provide values significantly close to treatment ‘0’ are determined using Tukey’s post-hoc test, while the other treatments are eliminated. The RMSE of CP and MSW are computed every 6 h and averaged over the entire duration of cyclone. The clusters of treatments obtained from the Tukey’s test are checked for RMSE and time error at landfall. The treatment which is consistently close to treatment 0 (IMD observations) for all the variables (CP, MSW, longitude and latitude) with respect to three cyclones with the elimination procedure, is termed as the optimal combination of scheme.
Results
Titli
One-way ANOVA provides results from which we can identify whether the average effect of treatments is similar to one another. For cyclone Titli, this analysis (Tables 2 and 3) resulted in rejecting the null hypothesis for intensity variables CP (F (30, 527) = 1.434, p = 0.066) and MSW (F (30, 527) = 3.107, p = 0.00). Similarly, the average effect of treatments vary from each other for variables Longitude (F (30, 527) = 1.607, p = 0.023) and Latitude (F (30, 527) = 2.710, p = 0.00) (Tables 4 and 5). For Titli, the group of treatments significantly close to treatment 0 for CP are 16, 9, 6, 12, 14, 1, 4, 5, 20 and 13; and MSW are treatments 10, 29, 28, 24, 22, 27, 1, 19, 2, 18, 4 and 3 respectively (Tables 14b and 15b). The treatments that are much the same as IMD observations are treatments 1, 12, 28, 14 and 3 for longitude and treatments 1, 4, 2, 3, 16 and 23 for latitude variable respectively. The treatments 1, 3 and 4 are consistently similar to treatment 0 with respect to all the variables. The root means square error (RMSE) was computed every six hourly and averaged over the entire simulation period for intensity variables. The treatments which were inconsistent in the intensity, and track variables have been disregarded when considering the treatments considerably near to treatment 0 for RMSE (CP and MSW) and time error at landfall. It is observed that treatments 1 and 3 with respect to CP while, treatment 1 for MSW provides least RMSE (2.13–2.91 hPa; 4.18 ms−1) (Fig. 1). Similarly, treatments 1 and 4 have time of landfall substantially close to treatment 0 (Fig. 2). Thus, for cyclone Titli, treatment 1 i.e., YSU-KF-Ferrier is obtained as the optimal combination.
Fani
In case of cyclone Fani, the null hypothesis is rejected for the average effect of the treatments with respect to Longitude, latitude, CP and MSW (Tables 6, 7, 8, 9). The mean effect of treatments significantly vary for these variables at (F (30, 465) = 1.423, p = 0.071); (F (30, 527) = 1.401, p = 0.080) and (F (30, 527) = 1.875, p = 0.004). Whereas, Table 7 depicts that the average effect of treatments for latitude are similar to each other at (F (30, 527) = 0.804, p = 0.762). The treatments 20, 18, 19, 1, 5, 17 and 2 are close to IMD observations for CP whereas, for MSW the treatments 1, 2, 4, 17, 3, 19 and 10 are significantly close to treatment 0 (Table 14a). For latitude variable it is seen that treatments close to IMD observations are 13, 21, 1, 8, 2 and 7; and that for longitude are 5, 20, 17, 18, 2 and 1 respectively (Table 15a). The treatments that are not in compliance for all the variables (intensity and track) are being overlooked. From the group of consistent treatments, treatment 1 and 2 result in lower values of RMSE for both CP (4.22–4.38 hPa) and MSW (1.54–1.65 ms−1) respectively (Fig. 1). The same result follows for landfall time error for cyclone Fani from Fig. 2. In Tilti treatment 1 is optimal and the same result is consistent in Fani.
Nargis
Tables 10, 11, 12 and 13 provides ANOVA results for cyclone Nargis. The null hypothesis is rejected for variables CP (F (30, 527) = 2.272 p = 0.00), MSW (F (30, 527) = 4.899, p = 0.00) and Latitude (F (30, 465) = 1.658, p = 0.017). Whereas, the null hypothesis is accepted for longitude at F (30, 465) = 1.658, p = 0.595. The Tukey’s test for CP variable suggests treatments 18, 2, 3, 19, 4, 5, 17 and 1; whereas, treatments 2, 18, 3, 5, 4, 17, 19 and 1 for MSW are significantly analogous to treatment 0. From Table 15c, the group of treatments 20, 5, 18, 2, 3, 19, 4, 16, 25, 6, 17, 7, 10 and 1 are in close proximity to IMD observations for longitude. In case of latitude, the treatments 9, 8, 13, 2, 1, 23, 5 and 20 are similar to treatment 0. After overlooking the inconsistent treatments in all the variables, the treatments 1 (2.25 hPa) and 5 (2.91 hPa) for CP and treatments 1 (2.05 ms−1) and 4 (2.04 ms−1) for MSW, result in lower values of RMSE respectively (Fig. 1). The time error at landfall is accurately forecasted by treatments 1 and 2 for cyclone Nargis (Fig. 2). Overall, the treatment 1 is consistent in the case of Titli, Fani and Nargis.
Discussion and conclusion
One way ANOVA has been conducted on the values obtained after the model simulation with thirty combinations of physics schemes (treatments 1–30) along with the IMD observations (treatment 0) for intensity and track variables. The results obtained from the one-way ANOVA shows that the average effect of treatments for all the variables (intensity and track) are significantly different between themselves. The observed significance level is less than α = 0.10 in the case of intensity and track variables for cyclone Titli, which suggests that average effect of all treatments can be differentiated within the considered CI. On the contrary, it is noticeable for cyclone Fani, average effect of all the treatments differs significantly for longitude, CP and MSW. The treatments for latitude variable are similar to one another in the 90% CI. The p values for CP and MSW of cyclone Nargis are less than α = 0.10; which implies that all the treatments differ significantly within themselves as well as with the observations. One way analysis of variance (ANOVA) rejects the null hypothesis for latitude whereas it accepts the same for longitude. This signifies that the treatment means are significantly different among themselves for latitude and do not vary in case of longitude. The basic purpose of the study is to identify which treatment combination is close to IMD observations. Therefore, Tukey’s test is used for post-hoc analysis.
Significant difference in mean effect of the treatments concludes that their simulated population means were equal at 90% confidence interval, and it was difficult to distinguish them from one another. Tukey’s post-hoc test is applied individually on the same variables for average effect of all treatments. This post-hoc test uses the “Honest Significant Difference”, a number that represents the distance between groups, to compare every mean with every other treatment mean. Less the difference, the more similar the treatments are to one another. In case of cyclone Titli, Tukey’s test analysis for CP exhibits least differences for treatment 9 and 6 with treatment 0, followed by treatment 12, 16, 13, 14, 20, 5, 4 and 1. Whereas, the treatments 10, 29, 28, 24, 22, 27, 1, 19, 2, 18, 4 and 3 are found to be substantially close to IMD observations for MSW (Table 14b). In case of latitude, the post-hoc analysis reveals that treatment 1, 4, 2, 3, 16 and 23; while for longitude the treatments 1, 12, 28, 14 and 3 are significantly close to treatment 0 respectively (Table 15b). The treatments 9, 6, 12, 14, 16, 13, 20, 5, 13, 10, 29, 28, 24, 22, 27, 19, 18, 28, 16, and 23 are excluded in optimization. These cluster of treatments display considerable difference as a result of Tukey’s test yet, due do the inconsistency in the occurrences all the variables they are eliminated. Out of the consistent cluster of treatments, the treatments 1 and 3 for CP and treatment 1 for MSW show least average RMSE values. The time error at landfall by treatments 1 and 4 are notably close to treatment 0. It can be noticed that treatment 1 consistently exhibits significantly close values to IMD, hence the combination of YSU PBL, Kain-Fritsch CC and Ferrier MP Scheme can be asserted as the optimal combination for cyclone Titli.
The treatments 20 and 18 show close relation with treatment 0 for CP, whereas treatment 1 and 2 are significantly close to treatment 0 for MSW in post-hoc analysis for cyclone Fani. The cluster of treatments 19, 1, 5, 17 and 2 for CP and treatments 4, 17, 3, 19 and 10 for MSW also display significantly closer values to that of IMD observations. The treatments 13, 21, 1, 8, 2 and 7 are considerably close to treatment 0 for latitude whereas, the group of treatments 5, 20, 17, 18, 2 and 1 are substantively similar to treatment 0 for longitude. The treatments other than these four clusters of treatments are excluded at this stage. After the elimination, the treatments which result in significantly lower values of RMSE (CP and MSW) and accuracy in time of landfall are noted. The treatments 1 and 2 display lesser values for RMSE of both CP and MSW. The time of landfall is also precisely captured by treatments 1 and 2 for cyclone Fani.
The analysis of CP for cyclone Nargis displays treatment 18 to be closest to treatment 0, followed by treatment 2, 3, 19, 4, 5 17, and 1 (Table 14c). But it does not imply that 5, 17 and 1 are less significant. For wind intensity, it may be observed that treatment 2 and 18 are closest to observations. Yet, treatments 3, 4, 9, 1 and 17 are considerably comparable to treatment 0. The treatments 20 and 5 for longitude and, treatments 9 and 8 for latitude have minimal difference with treatment 0. The group of treatments 18, 2, 3, 19, 4, 16, 25, 6, 17, 7, 10 and 1 are also in close proximity to IMD observations for longitude. Whereas, for latitude, the treatments 13, 2, 1, 23, 5 and 20 are similar to treatment 0. At this stage, the treatments which are inconsistent in all the variables are eliminated. Out of the remaining treatments, the treatments 1 and 5 for CP and treatments 1 and 4 for MSW are having average RMSE significantly close to IMD observations respectively. Accuracy in time of landfall is another vital factor to be considered while optimization. The treatments 1 and 2 have provided accuracy in the time error at landfall for cyclone Nargis. Yet, treatment 2 is eliminated as it does not comply with the RMSE in comparison to treatment 1. This makes treatment 1 the optimal scheme combination for cyclone Nargis. The present results strongly corroborate with the earlier studies on tropical cyclone simulations using the combination YSU PBL, KF CC and Ferrier MP9,10,22. Overall, based on the elimination process treatment 1 (YSU–KF–Ferrier) exhibits significantly close and persistence with the IMD observations.
Methods
The process of scrutinization of different combination of three physics schemes of WRF model is discussed in this section. The scheme combinations are accessed with respect to the intensity variables (CP; MSW) and track (longitude, latitude) individually on three cyclonic cases over the Bay of Bengal. Here, the tropical cyclone parameters (CP, MSW, longitude, latitude) represent the factors, and the scheme combination represent the treatments. The intensity variables are considered as they play an important role in determining the strength and stage of tropical cyclone whereas the position (longitude, latitude) is required to accurately depict the movement of cyclone. These four factors help the policy makers to predict the area of landfall, and the damage as a result of this catastrophe.
The 0th treatment is the IMD observation which is followed by the model results obtained from 30 combinations (treatments 1–30), which accounts to 31 treatments. The optimization algorithm to obtain the optimal physics scheme combination employed in the study are described as follows.
-
(1)
Firstly, one-way analysis of variance (ANOVA) is applied on 31 treatment combinations. Then significant difference has been obtained among these treatments for each variable (CP, MSW, longitude and latitude) corresponding to each cyclone; and it is found that there is a significant difference among the 31 treatment combinations.
-
(2)
Since there was a significant difference among the 31 different treatments so, pair of treatments which are significantly different are found out through Tukey’s test. This test has been applied individually on four variables of three cyclones respectively.
-
(3)
The treatments (treatments 1–30) which were consistently having no significant difference with IMD observations (treatment 0) were then tested for RMSE (CP and MSW). Average RMSE was computed over the whole TC period and the group of treatments which have significantly minimum values are found. Further, landfall time was also tested, and the treatments have been selected which were nearer to IMD observations.
-
(4)
Consistence occurrence of the treatment in all the above steps is treated as the optimal treatment.
One-way ANOVA is applied to compare two treatments, as it is necessary to identify whether the thirty-one treatments differ from each other with respect to the individual variables (CP, MSW, Longitude and Latitude). The statistical null hypothesis H0 and alternative hypothesis H1 are described as follows:
H0 The average effect all the 31 treatments are similar to one another.
H1 The average effect all the 31 treatments are significantly different.
To test the null hypothesis, One-way Analysis of Variance (ANOVA) is applied for all the factors and on all three tropical cyclone cases (Nargis, Titli and Fani). ANOVA uses F-test for statistical significance, which allows for comparison of multiple means at once. Thus, the error is computed for the whole set of comparisons rather than individual. If any of the treatment means is significantly different from the overall mean, then the null hypothesis is rejected. The hypothesis is checked at 90% confidence interval (CI). The p value is then compared to the critical value pα at degrees of freedom (k, N − k), where α is the significance level i.e., 0.10; k is the number of treatments, and N is the total sample size. If the p value is less than pα (k, N − k), then the null hypothesis is rejected.
If the null hypothesis is rejected then ANOVA identifies whether there are differences among the levels of individual variables viz. differences among the treatments for individual variables, but it will not specify which differences are significant. With the purpose to identify the difference between the treatments, Tukey’s Post-Hoc test is applied to test the following hypothesis.
H0 There is no significant difference between the average effect of any two treatments.
H1 There is a significant difference between the average effect of any two treatments.
Tukey’s test runs pairwise comparisons among each of the groups, and uses a conservative error estimate to find the groups which are statistically different from one another. The output of the Tukey’s test provides a table where treatments are arranged in order of error, from where one can identify the treatment closest to 0th viz. IMD observations. This post-hoc analysis is conducted respectively for all the four variables corresponding to the three cyclone cases.
From the results obtained from the Tukey’s test, a cluster of different treatments close to observations are obtained for individual cyclonic cases with their respective variables. Treatments that are identified close to observed values need to be checked for optimality. Since, inaccuracy in forecasting of landfall time error and its intensity could result in devastation of life and infrastructure over a region thus, the RMSE computed for the CP, MSW, and the time of landfall are looked into for respective treatments. The treatment which is consistently close to IMD observations in the cyclones is suggested as the optimum treatment through elimination process for the simulation of tropical cyclones over the Bay of Bengal (“Supplementary information”).
Statistical analysis
Statistical analyses are conducted using SPSS, version 22.0 (SPSS, Inc., Chicago, IL, United States). One way ANOVA is used to check the significance of observations obtained from model simulations with various combination of physics schemes hereafter termed as treatments. Results from ANOVA are reported with 90% confidence intervals and are deemed significant at p < 0.10. Tukey’s post-hoc test is further used to test the significant difference between any two treatment means.
References
Mohanty, U. C., Osuri, K. K., Pattanayak, S. & Sinha, P. An observational perspective on tropical cyclone activity over Indian seas in a warming environment. Nat. Hazards 63, 1319–1335 (2012).
Balaji, M., Chakraborty, A. & Mandal, M. Changes in tropical cyclone activity in north Indian Ocean during satellite era (1981–2014). Int. J. Climatol. 38, 2819–2837 (2018).
Douluri, D. L. & Annapurnaiah, K. Impact of microphysics schemes in the simulation of cyclone hudhud using WRF-ARW model. Int. J. Ocean. Oceanogr. 10, 49–59 (2016).
Choudhury, D. & Das, S. The sensitivity to the microphysical schemes on the skill of forecasting the track and intensity of tropical cyclones using WRF-ARW model. J. Earth Syst. Sci. 126, 1–10 (2017).
Mohan, P. R., Srinivas, C. V., Yesubabu, V., Baskaran, R. & Venkatraman, B. Tropical cyclone simulations over Bay of Bengal with ARW model: Sensitivity to cloud microphysics schemes. Atmos. Res. 230, 104651 (2019).
Janardhan Saikumar, P. & Ramashri, T. Impact of physics parameterization schemes in the simulation of Laila cyclone using the advanced mesoscale weather research and forecasting model. Int. J. Appl. Eng. Res. 12, 12645–12651 (2017).
Kanase, R. D. & Salvekar, P. S. Impact of physical parameterization schemes on track and intensity of severe cyclonic storms in Bay of Bengal. Meteorol. Atmos. Phys. 127, 537–559 (2015).
Raju, P. V. S., Potty, J. & Mohanty, U. C. Prediction of severe tropical cyclones over the Bay of Bengal during 2007–2010 using high-resolution mesoscale model. Nat. Hazards. 63, 1361–1374 (2011).
Osuri, K. K., Mohanty, U. C., Routray, A., Kulkarni, M. A. & Mohapatra, M. Customization of WRF-ARW model with physical parameterization schemes for the simulation of tropical cyclones over North Indian Ocean. Nat. Hazards 63, 1337–1359 (2012).
Raju, P. V. S., Potty, J. & Mohanty, U. C. Sensitivity of physical parameterizations on prediction of tropical cyclone Nargis over the Bay of Bengal using WRF model. Meteorol. Atmos. Phys. 113, 125–137 (2011).
Islam, T. et al. Tracking a tropical cyclone through WRF–ARW simulation and sensitivity of model physics. Nat. Hazards 76, 1473–1495 (2015).
Chandrasekar, R. & Balaji, C. Sensitivity of tropical cyclone Jal simulations to physics parameterizations. J. Earth Syst. Sci. 121, 923–946 (2012).
Srinivas, C. V., Bhaskar Rao, D. V., Yesubabu, V., Baskaran, R. & Venkatraman, B. Tropical cyclone predictions over the bay of bengal using the high-resolution advanced research weather research and forecasting (ARW) model. Q. J. R. Meteorol. Soc. 139, 1810–1825 (2013).
Singh, K. S. & Bhaskaran, P. K. Impact of PBL and convection parameterization schemes for prediction of severe land-falling Bay of Bengal cyclones using WRF-ARW model. J. Atmos. Solar-Terrestrial Phys. 165–166, 10–24 (2017).
Vijaya Kumari, K., Karuna Sagar, S., Viswanadhapalli, Y., Dasari, H. P. & Bhaskara Rao, S. V. Role of planetary boundary layer processes in the simulation of tropical cyclones over the Bay of Bengal. Pure Appl. Geophys. 176, 951–977 (2019).
Podeti, S. R. et al. Sensitivity of cloud microphysics on the simulation of a monsoon depression over the Bay of Bengal. Pure Appl. Geophys. 177, 5487–5505 (2020).
Fisher, R. A. Statistical Methods for Research Workers 336 (Oliver & Boyd, 1925).
Tukey, J. W. Exploratory Data Analysis 711 (Addison-Wesley, 1977).
Skamarock, W.C. et al. A description of the advanced research WRF model version 4. Natl. Cent. Atmos. Res, NCAR/TN-556+STR (2021).
Dudhia, J. Numerical study of convection observed during the winter monsoon experiment using a mesoscale two-dimensional model. J. Atmos. Sci. 46, 3077–3107 (1989).
Mlawer, E. J., Taubman, S. J., Brown, P. D., Iacono, M. J. & Clough, S. A. Radiative transfer for inhomogeneous atmospheres: RRTM, a validated correlated-k model for the longwave. J. Geophys. Res. Atmos. 102, 16663–16682 (1997).
Reddy, M. V., Prasad, S. B. S., Krishna, U. V. M. & Reddy, K. K. Effect of cumulus and microphysical parameterizations on the JAL cyclone prediction. Indian J. Radio Sp. Phys. 43, 103–123 (2014).
Acknowledgements
This work is supported by grants from the Department of Science & Technology (DST) SPLICE: Climate Change Program [DST/ CCP/ NCC & CV/ 138/ 2017(G)], India. The authors sincerely acknowledge the India Meteorological Department (IMD) for providing the best tracks of cyclones over Bay of Bengal and National Centers for Environmental Prediction (NCEP) for providing the GFS analysis data used in this study. We sincerely thank three anonymous reviewers for their constructive comments and suggestions which further improved the manuscript.
Author information
Authors and Affiliations
Contributions
All the authors were involved in the conceptualization of the problem. MS conducted the WRF control runs, analyzed the SPSS outcomes, prepared the initial draft of the manuscript. PVSR and JP are analyzed the results and finalized the manuscript.
Corresponding author
Ethics declarations
Competing interests
The authors declare no competing interests.
Additional information
Publisher's note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Supplementary Information
Rights and permissions
Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/.
About this article
Cite this article
Shenoy, M., Raju, P.V.S. & Prasad, J. Optimization of physical schemes in WRF model on cyclone simulations over Bay of Bengal using one-way ANOVA and Tukey’s test. Sci Rep 11, 24412 (2021). https://doi.org/10.1038/s41598-021-02723-z
Received:
Accepted:
Published:
DOI: https://doi.org/10.1038/s41598-021-02723-z
- Springer Nature Limited
This article is cited by
-
A Statistical Approach to Hyperparameter Tuning of Deep Learning for Construction Machine Classification
Arabian Journal for Science and Engineering (2024)
-
Mesoscale simulation of tropical cyclone Amphan over Bay of Bengal: inter comparison with NCEP and NCUM global models
Acta Geophysica (2024)
-
Kilometer-scale multi-physics simulations of heavy precipitation events in Northeast China
Climate Dynamics (2024)
-
Combinatorial Optimization of Physics Parameterization Schemes for Typhoon Simulation Based on a Simple Genetic Algorithm (SGA)
Journal of Meteorological Research (2024)
-
Assessment of model time step and domain resolution of WRF model to simulate the lightning over Bihar and Rajasthan, India
Modeling Earth Systems and Environment (2023)