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Proceeding Paper

Climatic Variability of Precipitation Simulated by a Regional Dynamic Model in Tropical South America †

by
Cláudio M. Santos e Silva
1,*,
Bergson Guedes Bezerra
1,
Pedro Rodrigues Mutti
1,
Paulo Sergio Lucio
1,
Keila Rêgo Mendes
2,
Daniele Rodrigues
3,
Cristiano Prestrelo Oliveira
1,
Felipe Medeiros
1,
Maria Leidinice Silva
1,
Layara Campelo dos Reis
4,
Glayson Francisco Bezerra das Chagas
1,
Weber Andrade Gonçalves
1 and
Lara de Melo Barbosa Andrade
1
1
Departamento de Ciências Atmosféricas e Climáticas, Programa de Pós Graduação em Ciências Climáticas, Universidade Federal do Rio Grande do Norte, Natal 59078-970, Brazil
2
Instituto Chico Mendes de Biodiversidade, Brasília 70670-350, Brazil
3
Programa de Pós Graduação em Ciências Climáticas Teresina, Univesidade Federal do Piuauí, Teresina 64049-550, Brazil
4
Instituto Federal do Piuauí—Campus de Floriano, Floriano 64800-000, Brazil
*
Author to whom correspondence should be addressed.
Presented at the 5th International Electronic Conference on Atmospheric Sciences, 16–31 July 2022; Available online: https://ecas2022.sciforum.net/.
Environ. Sci. Proc. 2022, 19(1), 61; https://doi.org/10.3390/ecas2022-12821
Published: 14 July 2022
(This article belongs to the Proceedings of The 5th International Electronic Conference on Atmospheric Sciences)

Abstract

:
The present study aimed to analyze the seasonal and interannual variability of simulated rainfall over two contrasting regions of tropical South America. Unlike several previous studies, our analyses were focused on areas with different rainfall regimes within two major regions: the Amazon Basin (AMZ) and northeast Brazil (NEB). For this purpose, we used the RegCM4.6 climate model and performed two continuous 30-year simulations (1981–2010) with a 50 km grid spacing. In the EXP_EM simulation, we used the convection parameterization of Emanuel (1991), and in the EXP_GR experiment, we used Grell’s parameterization (1993). Differences between simulations and observations were assessed using the Student’s t-test, with a p-value > 0.01. The mean bias and Willmott’s coefficient of agreement were calculated. Considering these metrics, the EXP_EM simulation presented an overall advantage over the EXP_GR simulation.

1. Introduction

Studies conducted from the Regional Climate Models (RCMs) in South America are mostly performed with different versions of the Regional Climate Model (RegCM) [1]. A comprehensive review [2] of the main results and future perspectives of the works performed with RCMs in South America were recently presented and, in this context, our motivation is the challenge of simulating the intraregional variability of rainfall in the Amazon Basin (AMZ) and in the northeast of Brazil (NEB), since they are two important areas in Brazil, from a climatic and economic perspective.
Furthermore, the climates of these regions have distinct characteristics and a remarkable variability regarding rainfall regime. Thus, the analysis of the simulated precipitation over subregions in these areas allows a broader and updated assessment of the reliability of the RegCM4 in tropical South America.
The AMZ has a mostly humid tropical climate, while in NEB, the climate is predominantly semiarid [3], except for the eastern coastal areas and its northern portion. Regarding precipitation climatology, the AMZ can be divided into six homogeneous subregions [4]. NEB, on the other hand, is characterized by five areas with different precipitation regimes [5]. Despite these particularities, trend analyses indicate changes in climate extreme indices both in the AMZ and NEB [6], mainly for indices associated with maximum and minimum temperatures [7,8].
The objective of the present study is to analyze the spatio-temporal climate variability of two 30-year simulations (1981–2010) performed by the RegCM4 model (version 4.6) in homogeneous rainfall areas of the AMZ and NEB.

2. Material and Methods

We used daily interpolated data from a regular grid of 25 km × 25 km covering the entire territory of Brazil [9], obtained from information collected by a network of rain gauges managed by different research and water resources management institutes in Brazil. These data have been used in different studies in the tropical region of South America, i.e., for the characterization of extreme indices trends of the AMZ and NEB [7].
Simulations were performed with the RegCM version 4.6, which is a regional dynamic model originally developed in the late 1980s. The model has gone through profound transformations and improvements over time, and includes relatively sophisticated cloud microphysics processes [1].
We selected 11 areas to evaluate the model’s simulations. This selection was based on previous studies that used the multivariate cluster analysis technique based on the monthly climatological averages of accumulated precipitation in each region. In the AMZ, six homogeneous rainfall regions were defined (A1, A2, ..., A6) [4]. In NEB, there are five homogeneous rainfall regions (N1, N2, ..., N5) [5]. The assessment of the simulations was carried out considering the daily and monthly series of the average precipitation in each area. Estimations over the ocean were excluded from the calculations because data from [9] were available only for continental regions.
In order to evaluate the simulations, statistical analyses were performed considering: Student’s t-test for differences between simulated and observed mean values with p-value > 0.01; (ii) calculation of the bias for the evaluation of under- or overestimation of precipitation; (iii) calculation of the indicator of agreement (d) via the Willmott index [10].

3. Results

The averages, standard deviations, and the results of the t-test for equal means are presented in Table 1. In general, the results of the simulations were statistically different from the observations. However, results are consistent regarding temporal (difference between dry and wet periods) and spatial (higher values in the AMZ if compared to NEB) distribution. Only the EXP_EM experiment presented statistically equal means to the observations, particularly during the dry period in areas N2, N3, A2, A3 and A6. In the wet season, only simulations in areas N2 and N5 for the EXP_EM experiment were statistically equal to observations. When analyzing the average rainfall in all areas of NEB and the AMZ, one can observe that the EXP_EM experiment was able to satisfactory reproduce rainfall over NEB in both the wet and dry seasons. The same did not occur for the AMZ, although the average values retrieved by this simulation were more similar to observations if compared to the EXP_GR experiment.
The bias and the index d for each area (and each season) are presented in Table 2. Rainfall was underestimated (bias < 0) in all areas of NEB and the AMZ in the EXP_GR simulation, with areas N3 (bias = −5.08 mm/day) and A3 (bias = −8.67 mm/day) standing out. The EXP_EM experiment underestimated observed rainfall throughout all AMZ subregions during the wet season. On the other hand, it overestimated precipitation in areas N1 and N2. If we consider mean rainfall in all NEB subregions, EXP_EM overestimated observations by approximately 0.35 mm/day. A clear relationship between higher d index values and lower bias can be noticed. At the same time, the d index for the EXP_EM experiment was consistently higher than for EXP_GR, indicating that EXP_EM presents better overall results when analyzing bias and the Wilmott’s coefficient.

4. Discussion

Regarding precipitation rates, the results of our experiments are consistent with the literature cited in Table 1, indicating an underestimation of precipitation during the wet and dry season in the AMZ. Previous studies indicated underestimations in NEB during both seasons, which is consistent with the results retrieved with the Grell’s parameterization (REG_GR experiment) [11,12]. Simulations with the REG_EM experiment largely agree with multiple simulations carried out in South America [13], which reported overestimations of rainfall during the wet season and underestimations during the dry season.
Another strength of the REG_EM experiment in the NEB is observed by analyzing the coefficient d, which was higher in the present study compared to the results reported by [13]. These authors argued that the results retrieved using multiple models could have been influenced by the effect of the domain size in the NEB region. Therefore, the choice of a domain that contemplates a larger part of the tropical Atlantic basin may have positively influenced the simulations. This hypothesis is consistent with other studies (e.g., [14,15]) reporting that precipitating systems acting on the eastern coast of Brazil originate at the South Tropical Atlantic, typically assuming the characteristics of easterly waves disturbances.

5. Conclusions

The purpose of this research was to perform an objective evaluation of precipitation simulated by two 30-year experiments (1981–2010) performed with the RegCM4.6 model on the tropical region of South America. Our focus was to analyze results of subregions in the AMZ and NEB, which are contrasting regions regarding climatic characteristics: precipitation in the AMZ is higher than in NEB. A dry bias was observed over almost the entire AMZ region, and a wet bias was observed over the N1 region in NEB, which is closer to the zone of influence of the ITCZ. The simulation performed using Emanuel’s parameterization presented advantages over the Grell’s parameterization experiment regarding precipitation rates and variability.
Regardless of the experiment, simulations were less accurate in the AMZ, especially in the Equatorial region. In NEB, the model showed good agreement with observations, especially in regions closer to subtropical latitudes (N4 and N5). The simulations were able to reproduce the interannual variability of precipitation, with droughts associated with the occurrence of hot phases of the El Niño Southern Oscillation and with the interhemispheric gradient in the Tropical Atlantic pointing to the north.
The EXP_EM experiment also seems to retrieve better results if compared to findings reported in previous studies, especially those that used Grell’s parameterization, such as studies developed in the context of the CLARIS-LPB project. Thus, our results indicate that the use of Emanuel’s parameterization in long-term simulation studies over the AMZ and NEB may be beneficial and improve results.

Author Contributions

Conceptualization, C.M.S.e.S. and C.P.O.; methodology, B.G.B., P.R.M., K.R.M. and D.R.; validation, F.M., M.L.S., L.C.d.R. and G.F.B.d.C.; formal analysis, C.M.S.e.S., B.G.B., P.R.M., L.d.M.B.A. and P.S.L.; writing—original draft preparation, C.M.S.e.S. and P.R.M.; writing—review and editing, C.M.S.e.S., B.G.B., W.A.G. and P.R.M.; project administration, C.M.S.e.S. and P.S.L. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by National Council for Scientific and Technological Development (CNPq), grant number 310781/2020-5.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

References

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Table 1. Average, standard deviation, and the result of Student’s t-test for equal means. Values in bold indicate that the numerical experiment simulation is equal to the observation with p-value > 0.01. Precipitation is expressed in mm/day.
Table 1. Average, standard deviation, and the result of Student’s t-test for equal means. Values in bold indicate that the numerical experiment simulation is equal to the observation with p-value > 0.01. Precipitation is expressed in mm/day.
AreaWet PeriodDry Period
OBSEXP_GREXP_EMOBSEXP_GREXP_EM
N14.69 (±1.38)1.53 (±0.30)7.70 (±4.07)0.86 (±0.40)1.29 (±0.14)1.47 (±0.88)
N24.95 (±1.61)2.13 (±0.57)5.94 (±2.14)0.33 (±0.15)0.16 (±0.08)0.41 (±0.40)
N37.91 (±1.58)2.81 (±0.94)6.07 (±1.74)0.77 (±0.30)0.20 (±0.12)0.57 (±0.54)
N43.84 (±1.21)1.75 (±0.59)3.58 (±1.35)0.69 (±0.17)0.25 (±0.06)0.35 (±0.21)
N53.39 (±1.51)1.60 (±0.68)3.30 (±1.49)1.13 (±0.29)0.61 (±0.12)0.79 (±0.34)
A110.09 (±0.88)2.93 (±0.17)3.97 (±0.79)6.39 (±0.80)2.11 (±0.46)4.27 (±0.52)
A29.35 (±1.39)2.51 (±1.04)5.75 (±1.19)3.60 (±1.06)1.13 (±0.38)3.57 (±0.71)
A311.05 (±1.58)1.82 (±0.96)6.65 (±2.18)2.10 (±0.60)0.31 (±0.26)2.39 (±1.29)
A49.48 (±0.94)3.09 (±0.91)3.87 (±0.53)2.59 (±0.52)0.55 (±0.21)1.24 (±0.29)
A59.61 (±1.34)2.80 (±1.10)5.84 (±1.04)1.24 (±0.34)0.10 (±0.08)0.77 (±0.27)
A68.57 (±1.24)3.56 (±0.79)4.63 (±0.69)0.77 (±0.35)0.25 (±0.12)0.64 (±0.17)
Table 2. Bias and the Willmott’s coefficient (d) between simulated and observed values in the different regions of the Amazon (AMZ) and northeast Brazil (NEB) and in each studied period (wet and dry).
Table 2. Bias and the Willmott’s coefficient (d) between simulated and observed values in the different regions of the Amazon (AMZ) and northeast Brazil (NEB) and in each studied period (wet and dry).
AreaWet PeriodDry Period
EXP_GREXP_EMEXP_GREXP_EM
BiasdBiasdBiasdBiasd
N1−3.060.163.050.510.470.230.640.51
N2−2.780.280.980.67−0.170.320.090.50
N3−5.080.29−1.810.62−0.560.26−0.180.47
N4−2.090.53−0.250.72−0.440.20−0.340.41
N5−1.960.59−0.230.83−0.510.39−0.320.68
A1−6.750.23−5.210.30−4.260.25−2.420.34
A2−6.760.18−3.410.36−2.430.32−0.360.47
A3−8.670.21−4.120.42−1.810.200.130.50
A4−6.530.22−5.620.19−2.000.17−1.330.57
A5−7.030.25−3.550.36−1.150.20−0.470.36
A6−5.170.32−3.870.35−0.520.30−0.150.38
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MDPI and ACS Style

Santos e Silva, C.M.; Bezerra, B.G.; Mutti, P.R.; Lucio, P.S.; Mendes, K.R.; Rodrigues, D.; Oliveira, C.P.; Medeiros, F.; Silva, M.L.; dos Reis, L.C.; et al. Climatic Variability of Precipitation Simulated by a Regional Dynamic Model in Tropical South America. Environ. Sci. Proc. 2022, 19, 61. https://doi.org/10.3390/ecas2022-12821

AMA Style

Santos e Silva CM, Bezerra BG, Mutti PR, Lucio PS, Mendes KR, Rodrigues D, Oliveira CP, Medeiros F, Silva ML, dos Reis LC, et al. Climatic Variability of Precipitation Simulated by a Regional Dynamic Model in Tropical South America. Environmental Sciences Proceedings. 2022; 19(1):61. https://doi.org/10.3390/ecas2022-12821

Chicago/Turabian Style

Santos e Silva, Cláudio M., Bergson Guedes Bezerra, Pedro Rodrigues Mutti, Paulo Sergio Lucio, Keila Rêgo Mendes, Daniele Rodrigues, Cristiano Prestrelo Oliveira, Felipe Medeiros, Maria Leidinice Silva, Layara Campelo dos Reis, and et al. 2022. "Climatic Variability of Precipitation Simulated by a Regional Dynamic Model in Tropical South America" Environmental Sciences Proceedings 19, no. 1: 61. https://doi.org/10.3390/ecas2022-12821

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