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Interannual Variability of Precipitation for the Centro de Lançamento de Alcântara in ENSO-Neutral Years

ABSTRACT:

The interannual variability of precipitation in El Niño/Southern Oscillation-neutral years was studied for the Centro de Lançamento de Alcântara region. Monthly precipitation, sea surface temperature, wind at 925 hPa and outgoing longwave radiation data from various gridded datasets for the 1951-2010 period (60 years) were used. The data grouping was based on terciles. For the Centro de Lançamento de Alcântara in El Niño/Southern Oscillation-neutral years, March is the month of the rainy quarter (March to May) when the interhemispheric gradient of the sea surface temperature anomalies over the Atlantic (GRAD) and the atmospheric circulation at 925 hPa over the Centro de Lançamento de Alcântara were able to best explain the variability of precipitation. In this month, the wind direction at 925 hPa was the factor that explained the highest fraction of precipitation variance (40%), followed by GRAD (30%) and the wind magnitude (20%). For the Centro de Lançamento de Alcântara, in general, above-average precipitation was related to weak north-northeasterly low-level winds and southward GRAD, while below-average precipitation was related to strong east-northeasterly low-level winds and northward GRAD. These features were related to an eastward expansion of the Amazon convection towards the northern Northeast Brazil and might be related to a slight southward displacement of the Intertropical Convergence Zone in above-average precipitation years.

KEYWORDS:
Precipitation anomaly; Low-level wind direction; Meridional dipole

INTRODUCTION

The interannual variability of precipitation in the northern Northeast Brazil (NNEB) has been studied extensively over the last decades. Since sea surface temperature anomalies (SSTAs) play a key role in the climatic predictability of tropical regions (Shukla 1998Shukla J (1998) Predictability in the midst of chaos: a scientific basis for climate forecasting. Science 282(5389):728-731. doi: 10.1126/science.282.5389.728
https://doi.org/10.1126/science.282.5389...
), numerous papers have focused on the relation between the precipitation variability in the NNEB and the SSTAs in the tropical Pacific and Atlantic oceans (review in Kayano and Andreoli 2009Kayano M, Andreoli RV (2009) Clima da Região Nordeste do Brasil. In: Cavalcanti IFA, Ferreira NJ, Justi da Silva MGA, Silva Dias MAF, editors. Tempo e clima no Brasil. São Paulo: Oficina de Textos. p. 213-233.). For the tropical Pacific, the influence would occur through the El Niño/Southern Oscillation (ENSO) phenomenon; for the tropical Atlantic, through the interhemispheric SSTA gradient (GRAD).

The main features of ENSO are SSTAs in the central and eastern equatorial Pacific linked to the Southern Oscillation, which is an east-west seesaw pattern in surface pressure over the tropical Pacific (Trenberth and Hoar 1996Trenberth KE, Hoar TJ (1996) The 1990-1995 El Niño-Southern Oscillation event: longest on record. Geophys Res Lett 23(1):57-60. doi: 10.1029/95GL03602
https://doi.org/10.1029/95GL03602...
; Kane 1997Kane RP (1997) Prediction of droughts in north-east Brazil: Role of ENSO and use of periodicities. Int J Climatol 17(6):655-665. doi: 10.1002/(SICI)1097-0088(199705)17:6<655::AIDJOC144>3.0.CO;2-1
https://doi.org/10.1002/(SICI)1097-0088(...
). In the ENSO-warm (cold) phase, also called El Niño (La Niña), positive (negative) SSTAs are found in the central and eastern equatorial Pacific. The general relation between the ENSO phases and the precipitation variability in the NNEB - warm (cold) phase associated to below- (above-) average precipitation - is well known (e.g. Ropelewski and Halpert 1987Ropelewski C, Halpert M (1987) Global and regional scale precipitation patterns associated with the El Niño/Southern Oscillation. Mon Weather Rev 115(8):1606-1626. doi: 10.1175/1520-0493(1987)115<1606:GARSPP>2.0.CO;2
https://doi.org/10.1175/1520-0493(1987)1...
).

In the ENSO-neutral phase, i.e. without the occurrence of El Niño or La Niña, the ascending (descending) branch of the Walker cell is located over the warmer (colder) surface waters in western (eastern) tropical Pacific. These two branches are connected by easterly trade winds over the tropical Pacific. Cold waters from the ocean upwelling along the west coast of South America spread westward towards central Pacific. In the ENSO-warm (cold) phase, there is weakening (intensification) of the trade winds and the coastal upwelling, leading to positive (negative) SSTAs in eastern Pacific and to an anomalous ascending (descending) motion over this region, which is partially balanced by an anomalous descending (ascending) motion over the NNEB. Since anomalous descending (ascending) motion means less (more) favorable conditions to deep convection, precipitation over the NNEB decreases (increases). These processes explain how the ENSO phases could influence the precipitation in the NNEB. However, in general, this influence is clearer only for the more intense El Niño and La Niña events (Kane 1997Kane RP (1997) Prediction of droughts in north-east Brazil: Role of ENSO and use of periodicities. Int J Climatol 17(6):655-665. doi: 10.1002/(SICI)1097-0088(199705)17:6<655::AIDJOC144>3.0.CO;2-1
https://doi.org/10.1002/(SICI)1097-0088(...
; Andreoli et al. 2004Andreoli RV, Kayano MT, Guedes RL, Oyama MD, Alves MAS (2004) A influência da temperatura da superfície do mar dos oceanos Pacífico e Atlântico na variabilidade de precipitação em Fortaleza. Rev Bras Meteorol 19(2):113-122.; Lucena et al. 2011Lucena DB, Gomes Filho MF, Servain J (2011) Avaliação do impacto de ventos climáticos extremos nos oceanos Pacífico e Atlântico sobre a estação chuvosa no Nordeste do Brasil. Rev Bras Meteorol 26(2):297-312. doi: 10.1590/S0102-77862011000200013
https://doi.org/10.1590/S0102-7786201100...
; Marques and Fortes 2012Marques RC, Fortes MA (2012) Estudo da variabilidade interanual da precipitação no Centro de Lançamento de Alcântara (CLA). Proceedings of the XVII Congresso Brasileiro de Meteorologia; Gramado, Brazil.).

For the tropical Atlantic, numerical simulations (Moura and Shukla 1981Moura AD, Shukla J (1981) On the dynamics of droughts in Northeast Brazil: observations, theory, and numerical experiments with a general circulation model. J Atmos Sci 38(12):2653-2675. doi: 10.1175/1520-0469(1981)038<2653:OTDODI>2.0.CO;2
https://doi.org/10.1175/1520-0469(1981)0...
) and observational analysis (Hastenrath and Heller 1977Hastenrath S, Heller L (1977) Dynamics of climatic hazards in northeast Brazil. Q J Roy Meteor Soc 103(435):77-92. doi: 10.1002/qj.49710343505
https://doi.org/10.1002/qj.49710343505...
; Nobre and Shukla 1996Nobre P, Shukla J (1996) Variations of sea surface temperature, wind stress, and rainfall over the tropical Atlantic and South American. J Climate 9(10):2464-2479. doi: 10.1175/1520-0442(1996)009<2464:VOSSTW>2.0.CO;2
https://doi.org/10.1175/1520-0442(1996)0...
) indicated that precipitation anomalies in the NNEB would be associated with a meridional dipole of SSTAs, called the Atlantic dipole. It was regarded as an ocean-atmosphere coupled mode of variability on decadal timescales (Chang et al. 1997Chang P, Ji L, Li H (1997) A decadal climate variation in the tropical Atlantic Ocean from thermodynamic air-sea interactions. Nature 385(6):516-518. doi: 10.1038/385516a0
https://doi.org/10.1038/385516a0...
), and it would affect the precipitation in NNEB through anomalies in the position and intensity of the Intertropical Convergence Zone (ITCZ). The concept of Atlantic dipole evolved to the GRAD (Enfield et al. 1999Enfield DB, Mestas-Nuñez AM, Mayer DA, Cid-Serrano L (1999) How ubiquitous is the dipole relationship in tropical Atlantic sea surface temperature? J Geophys Res 104(C4):7841-7848. doi: 10.1029/1998JC900109
https://doi.org/10.1029/1998JC900109...
; Andreoli et al. 2004Andreoli RV, Kayano MT, Guedes RL, Oyama MD, Alves MAS (2004) A influência da temperatura da superfície do mar dos oceanos Pacífico e Atlântico na variabilidade de precipitação em Fortaleza. Rev Bras Meteorol 19(2):113-122.). During the NNEB rainy season, a southward GRAD - due to positive SSTAs in the tropical South Atlantic and/or negative in the tropical North Atlantic - would be related to lower (higher) surface pressure in the tropical South Atlantic (North Atlantic), weaker (stronger) southeast (northeast) trade winds, southward displacement of the trade winds confluence axis and above average precipitation in the NNEB. For a northward GRAD, the opposite features would occur, ending up with below-average precipitation in the NNEB.

Due to the importance of both tropical oceans, numerous papers have focused on the interaction between ENSO and the variability in tropical Atlantic (Saravanan and Chang 2000Saravanan R, Chang P (2000) Interaction between Tropical Atlantic variability and El Niño-Southern Oscillation. J Climate 13(13):2177-2194. doi: 10.1175/1520-0442(2000)013<2177:IBTAVA>2.0.CO;2
https://doi.org/10.1175/1520-0442(2000)0...
; Andreoli and Kayano 2007Andreoli RV, Kayano M (2007) A importância relativa do Atlântico Tropical Sul e Pacífico Leste na variabilidade de precipitação do Nordeste do Brasil. Rev Bras Meteorol 22(1):63-74.; Münnich and Neelin 2005Münnich M, Neelin JD (2005) Seasonal influence of ENSO on the Atlantic ITCZ and equatorial South America. Geophys Res Lett 32(21):1-4. doi: 10.1029/2005GL023900
https://doi.org/10.1029/2005GL023900...
; Giannini et al. 2004Giannini A, Saravanan R, Chang P (2004) The preconditioning role of tropical Atlantic variability in the development of the ENSO teleconnection: implications for the prediction of Nordeste rainfall. Clim Dynam 22(8):839-855. doi: 10.1007/s00382-004-0420-2
https://doi.org/10.1007/s00382-004-0420-...
). This interaction does exist, but there is also considerable independence between them, which justifies considering the ENSO phases (warm/cold) and the GRAD direction (northward/southward) as distinct variables related to the precipitation anomalies in the NNEB. Which one is more important? Although higher correlation is found between the precipitation anomalies and the GRAD direction (Moura et al. 2009Moura GBA, Aragão JOR, Melo JSP, Silva APN, Giongo PR, Lacerda FF (2009) Relationship between the rainfall of the eastern Northeast of Brazil and ocean temperature. Rev Bras Eng Agríc Ambient 13(4):462-469. doi: 10.1590/S1415-43662009000400014
https://doi.org/10.1590/S1415-4366200900...
), Andreoli and Kayano (2007)Andreoli RV, Kayano M (2007) A importância relativa do Atlântico Tropical Sul e Pacífico Leste na variabilidade de precipitação do Nordeste do Brasil. Rev Bras Meteorol 22(1):63-74. point out that the ENSO phase and the GRAD direction act to reinforce or inhibit the precipitation anomalies (e.g. for El Niño conditions, northward GRAD would intensify the negative precipitation anomalies in the NNEB rainy season).

In the present study, we focus on the variability of precipitation for a specific region in the NNEB: the Centro de Lançamento de Alcântara (CLA) region, located at the northern coast of Brazil. From the CLA, the space vehicles developed at the Instituto de Aeronáutica e Espaço, such as sounding rockets (VS-30, VS-40, VSB-30, among others) and the satellite launch vehicle (VLS), are launched. Since these space vehicles are not designed to withstand adverse meteorological conditions, such as rain and/or lightning occurrence, the knowledge of the interannual variability of precipitation is important for the planning of rocket launching missions (Marques and Fisch 2005Marques RC, Fisch GF (2005) As atividades de Meteorologia Aeroespacial no Centro Técnico Aeroespacial (CTA). Bol Soc Bras Meteorol 29(3):21-26.).

In the CLA, the rainy season extends from February to mid-June, when the ITCZ reaches its southernmost position and the rainiest months are March and April, when precipitation is on average higher than 300 mm/month (Marques and Baungartner 2008Marques RC, Baungartner C (2008) Estudos das variáveis meteorológicas associadas a posição da ZCIT do Atlântico, durante a estação chuvosa no Centro de Lançamento de Alcântara (CLA). Proceedings of the XV Congresso Brasileiro de Meteorologia; São Paulo, Brazil.). The rainy season features - onset and demise day, as well as total precipitation amount - show a pronounced interannual variability. Previous studies suggest that this variability would be related to oceanic factors, such as the ENSO phases and the GRAD direction, and to dynamical factors, such as the meridional position of the Atlantic ITCZ and the low-level circulation over the CLA. For instance, Pinheiro and Oyama (2013)Pinheiro UA, Oyama MD (2013) Rainy season features for the Alcântara Launch Center. J Aerosp Technol Manag 5(4):439-448. doi: 10.5028/jatm.v5i4.266
https://doi.org/10.5028/jatm.v5i4.266...
showed that anomalies in the rainy season onset, for specific years, would be related to the ENSO phase, GRAD direction and meridional position of the Atlantic ITCZ. Marques and Fortes (2012)Marques RC, Fortes MA (2012) Estudo da variabilidade interanual da precipitação no Centro de Lançamento de Alcântara (CLA). Proceedings of the XVII Congresso Brasileiro de Meteorologia; Gramado, Brazil. showed that the relation between ENSO-warm (cold) phase and below- (above-) average precipitation in the CLA would hold only in intense El Niño or La Niña events occurring in the rainiest months.

In ENSO-neutral years, preliminary studies indicate that the variability of precipitation in the CLA, comparing contrasting years (few above- and below-average years), would depend on the combined action of GRAD direction and meridional position of the Atlantic ITCZ (Marques et al. 2013Marques RC, Alves MA, Oyama MD (2013) Variabilidade interanual da precipitação no Centro de Lançamento de Alcântara em anos neutros no Pacífico. Proceedings of the V Simpósio Internacional de Climatologia, Florianópolis, Brazil.; Pereira and Marques 2014Pereira RA, Marques RC (2014) Influência do Atlântico Tropical na precipitação do CLA em anos neutros no Pacífico. Proceedings of the XVIII Congresso Brasileiro de Meteorologia; Recife, Brazil.). Marques and Correa (2014)Marques RC, Correa FN (2014) A relação do vento com as chuvas no Centro de Lançamento de Alcântara, em anos de El Niño, La Niña e Neutro. Proceedings of the XVIII Congresso Brasileiro de Meteorologia; Recife, Brazil. showed that, independently from the GRAD direction, the low-level circulation over the CLA is related to the precipitation anomalies: weak (strong) northeasterly (easterly) winds would favor (inhibit) precipitation occurrence.

This research aims to study the factors related to the variability of precipitation in the CLA for the ENSO-neutral phase. Two factors are addressed here: the GRAD direction (oceanic factor) and the low-level circulation over the CLA (dynamical factor). The variability of the meridional position of the Atlantic ITCZ is not considered, because it is largely explained by the variability of the GRAD direction (Carvalho 2011Carvalho MAV (2011) Variabilidade da largura e intensidade da Zona de Convergência Intertropical Atlântica: aspectos observacionais e de modelagem. (Master's thesis). São José dos Campos: Instituto Nacional de Pesquisas Espaciais.). Differently from the previous studies (Marques et al. 2013Marques RC, Alves MA, Oyama MD (2013) Variabilidade interanual da precipitação no Centro de Lançamento de Alcântara em anos neutros no Pacífico. Proceedings of the V Simpósio Internacional de Climatologia, Florianópolis, Brazil.; Pereira and Marques 2014Pereira RA, Marques RC (2014) Influência do Atlântico Tropical na precipitação do CLA em anos neutros no Pacífico. Proceedings of the XVIII Congresso Brasileiro de Meteorologia; Recife, Brazil.; Marques and Correa 2014Marques RC, Correa FN (2014) A relação do vento com as chuvas no Centro de Lançamento de Alcântara, em anos de El Niño, La Niña e Neutro. Proceedings of the XVIII Congresso Brasileiro de Meteorologia; Recife, Brazil.), the present study uses longer datasets as well as standardizes the method to classify the anomalies and obtain more comprehensive and detailed results.

DATA AND METHODOLOGY

DATA

Monthly precipitation, sea surface temperature, wind at 925 hPa and outgoing longwave radiation (OLR) data from various gridded datasets (Table 1) were used. The datasets were provided by Earth System Research Laboratory/National Oceanic and Atmospheric Administration (ESRL/NOAA):

Table 1
Brief description of the datasets used in this study.
  • For the wind data, the 925 hPa level is used because it is a mandatory level representative of the lowest atmospheric layer.

  • For the CLA, time series of precipitation and wind at 925 hPa are obtained from the gridded data. Precipitation values are computed as the area average over the four grid points that surround the CLA (Pinheiro and Oyama 2013Pinheiro UA, Oyama MD (2013) Rainy season features for the Alcântara Launch Center. J Aerosp Technol Manag 5(4):439-448. doi: 10.5028/jatm.v5i4.266
    https://doi.org/10.5028/jatm.v5i4.266...
    ), whereas wind values refer to the (45ºW; 2.5ºS) grid-point values. The computing procedures are not the same because the precipitation and wind data are given on different grids (Table 1), and the idea is to locate the CLA approximately at the center of the area for which the data is representative.

  • The SSTAs are obtained considering 1951-2010 as the base period. The Niño 3 index is computed as the average SSTA over the 150ºW-90ºW; 6ºS-6ºN area. GRAD is defined as TNA minus TSA, where TNA (tropical North Atlantic) is the average SSTA over the 60ºW-20ºW; Equator-20ºN area and TSA (tropical South Atlantic), over the 30ºW-10ºE; 20ºS-Equator area. Northward (southward) GRAD refers to positive (negative) difference. The definition of the indices follows Andreoli and Kayano (2007)Andreoli RV, Kayano M (2007) A importância relativa do Atlântico Tropical Sul e Pacífico Leste na variabilidade de precipitação do Nordeste do Brasil. Rev Bras Meteorol 22(1):63-74..

The precipitation data from the Global Precipitation Climatology Centre (GPCC) have been used in climate studies (Schneider et al. 2014Schneider U, Becker A, Finger P, Meyer-Christoffer A, Ziese M, Rudolf B (2014) GPCC's new land surface precipitation climatology based on quality-controlled in situ data and its role in quantifying the global water cycle. Theor Appl Climatol 115(1-2):15-40. doi: 10.1007/s00704013-0860-x
https://doi.org/10.1007/s00704013-0860-x...
) and also in studies focusing on the South America precipitation variability (Kayano et al. 2011Kayano M, Andreoli RV, Souza R (2011) Evolving anomalous SST patterns leading to ENSO extremes: relations between the tropical Pacific and Atlantic Oceans and the influence on the South American rainfall. Int J Climatol 31(8):1119-1134. doi: 10.1002/joc.2135
https://doi.org/10.1002/joc.2135...
). For the CLA, GPCC data are compared to the Climate Prediction Center (CPC)/NOAA data, which were used by Pinheiro and Oyama (2013)Pinheiro UA, Oyama MD (2013) Rainy season features for the Alcântara Launch Center. J Aerosp Technol Manag 5(4):439-448. doi: 10.5028/jatm.v5i4.266
https://doi.org/10.5028/jatm.v5i4.266...
to obtain the rainy season features for the CLA. For the total precipitation in the rainy quarter (March, April and May), there is close agreement between the time series in the 1979-2010 period, which is the common period for both datasets (Fig. 1). The differences are small (< 10%), except in few specific years (e.g. 1991 and 2007), and the linear correlation between the two datasets is high (Pearson correlation coefficient ≅ 0.97). Therefore, the use of GPCC data for the CLA is appropriate.

Figure 1
Accumulated precipitation over the CLA for the rainy quarter (March to May) from 1979 to 2010. Values obtained from the GPCC dataset (black line); and from the CPC/NOAA dataset (green line).

METHODOLOGY

The data grouping was based on terciles. For a given month, the terciles for each variable - precipitation and wind (direction and magnitude at 925 hPa) for the CLA, as well as oceanic indices (Niño 3 and GRAD) - are computed. For instance, for March, considering the data in ascending order, the first (P33) and second terciles of precipitation (P67) are 320 and 402 mm, respectively (Table 2). Then, the 60-years data (1951-2010) are grouped in 3 categories:

Table 2
Categories for each variable.
  • 20 years when precipitation is lower than P33 (belowaverage years).

  • 20 years when precipitation is higher than P33 and lower than P67 (normal years).

  • 20 years when precipitation is higher than P67 (aboveaverage years).

Table 2 shows the terciles and categories for all the variables. From the visual inspection of the results (Table 3), it is possible to find out the categories related to below- and above-average precipitation categories (pink and green cells in Table 2, respectively).

Table 3
Monthly values for March in the ENSO-neutral phase.

The procedure of grouping precipitation data using terciles was done by Kayano and Andreoli (2006)Kayano M, Andreoli RV (2006) Relationships between rainfall anomalies over northeastern Brazil and the El Niño-Southern Oscillation. J Geophys Res 111(D13): doi: 10.1029/2005JD006142
https://doi.org/10.1029/2005JD006142...
. Here, the procedure is extended to the all variables to standardize the method to classify the anomalies. For the oceanic indices, the tercile-based procedure may lead to differences, relative to the literature, in the classification of the categories (ENSO phase and/or GRAD direction) for a given month:

  • For the Niño 3 index, the classification of the ENSO phases in March from the tercile-based procedure follows a simple rule: warm phase when the index is above +0.10 ºC; cold phase, below -0.25 ºC (Table 2). This procedure differs from the usual methods to identify the ENSO phases. For instance, Kayano and Andreoli (2006)Kayano M, Andreoli RV (2006) Relationships between rainfall anomalies over northeastern Brazil and the El Niño-Southern Oscillation. J Geophys Res 111(D13): doi: 10.1029/2005JD006142
    https://doi.org/10.1029/2005JD006142...
    used the Niño 3 index to identify the ENSO phases following the criterion proposed by Trenberth (1997)Trenberth KE (1997) The definition of El Niño. Bull Amer Meteor Soc 78(12):2771-2777. doi: 0.1175/1520-0477(1997)078<2771:TDOENO>2.0.CO;2
    https://doi.org/0.1175/1520-0477(1997)07...
    : warm phase when the detrended and smoothed (5-month running mean) values remain, for at least 6 consecutive months, above +0.5 ºC; cold phase, below -0.5 ºC. The tercile-based procedure has the advantage of not including the short warm/cold periods (< 6 consecutive months) in the neutral phase category, but has the limitation of not distinguishing between the intraseasonal and interannual variabilities.

  • For GRAD, the thresholds adopted here for March (-0.21 ºC and +0.25 ºC; Table 2) are close to those used by Andreoli and Kayano (2007)Andreoli RV, Kayano M (2007) A importância relativa do Atlântico Tropical Sul e Pacífico Leste na variabilidade de precipitação do Nordeste do Brasil. Rev Bras Meteorol 22(1):63-74. for the December to February quarter (± 0.20 ºC).

  • The differences may also result from the use of distinct base periods.

Composites of SSTA, circulation at 925 hPa and OLR for below- and above-average precipitation years in the ENSOneutral phase (Table 3) are obtained. For a given variable, the statistical significance of the composite differences is evaluated by applying the Student's t-test. The confidence level is 90%. For the wind, the statistical significance is evaluated for the components (zonal and meridional wind) separately.

Given two variables, y and x, the coefficient of determination (R2) measures the maximum fraction of the variance of y which could be explained by a linear model in x (y = ax + b, a and b constants) (Costa Neto 1977Costa Neto PLO (1977) Estatística. São Paulo: Edgard Blücher.). Here, R2 is used to single out the factors (among wind direction, wind magnitude and GRAD) that would be more important to explain the variability of precipitation in the CLA for the ENSO-neutral phase.

RESULTS AND DISCUSSION

Before focusing on the ENSO-neutral phase, the general relation between the ENSO phases and the variability of precipitation for the CLA is examined. Figure 2 shows the probability of above or below-average precipitation in the rainy quarter (March to May) for the three ENSO phases.

Figure 2
Probability of (a) below- or (b) above-average precipitation from January to June for the three ENSO phases.

  • The probability of below-average precipitation is lower (20 - 25%) for La Niña years, intermediate (30 - 35%) for ENSO-neutral years and clearly higher (45 - 50%) for El Niño years (Fig. 2a).

  • The probability of above-average precipitation is similar for La Niña and ENSO-neutral years (35 - 50%), and clearly lower (15%) for El Niño years (Fig. 2b).

Therefore, in the rainy quarter, low probability - less than 20% - of below- (above-) average precipitation is found for La Niña (El Niño) years. For the ENSO-neutral years, there is no clear preference for one of the categories (below- or above-average precipitation).

The average and standard deviation of the monthly precipitation are not substantially affected when, instead of using all years to compute the statistics, only the ENSO-neutral years are used (Fig. 3). This is an intriguing result, because by removing one factor of interannual variability (the ENSO phase), a lower variability (i.e. lower standard deviation) would be expected. So, what are the factors that induce (or are related to) the high variability of precipitation for the ENSO-neutral phase? As mentioned earlier, the influence of three factors - GRAD, low-level wind magnitude and direction - is analyzed.

Figure 3
Average (AVG, solid line) and standard deviation (STD, dashed line) of the monthly precipitation (mm) from January to June. For a given month, the AVG and STD were computed using all the 60 values (from 1951 to 2010; green) or only the 20 values for the ENSO-neutral phase (black).

The fraction of precipitation variance explained by each factor (measured by the coefficient of determination, R2) is shown in Fig. 4. For a given factor, there is considerable variation of the fraction over the months, but two general features are noticeable: for all factors, the highest fraction occurs in March, followed by a marked decrease in April. Therefore, in the rainy quarter, March is the month when all factors are able to best explain the variability of precipitation. Moreover, another interesting and novel result is that, for March, the low-level wind direction is the factor that explains the highest fraction of precipitation variance (R2 ∼ 40%), followed by GRAD (30%) and the wind magnitude (20%).

Figure 4
Fraction of precipitation variance explained by each factor: direction (GRAD), wind magnitude (MAG) and direction (DIR) at 925 hPa — from January to June in the ENSO-neutral phase.

The values of precipitation, GRAD, wind magnitude and direction at 925 hPa in March for ENSO-neutral years are shown in Table 3. In general, above-average precipitation (green shaded cells) is related to weak north-northeasterly (NNE) low-level winds and southward (negative) GRAD; below-average precipitation (pink shaded cells), to strong east-northeasterly (ENE) lowlevel winds and northward (positive) GRAD. Exceptions to this general relationship do occur. For instance, in 1972 (1978), below(above-) average precipitation occurs, but GRAD is southward (northward), and the precipitation anomaly sign is consistent only with the wind magnitude and direction anomalies. Next, the composites (average fields) of SSTA, circulation at 925 hPa and OLR in March for below- and above-average precipitation years in the ENSO-neutral phase are shown to provide a broader view of the general relationship obtained for the CLA.

The composites of SSTA are shown in Fig. 5. A clear statistically significant dipole pattern between TNA and TSA is found in both composites, showing the usefulness of the meridional dipole concept (Moura and Shukla 1981Moura AD, Shukla J (1981) On the dynamics of droughts in Northeast Brazil: observations, theory, and numerical experiments with a general circulation model. J Atmos Sci 38(12):2653-2675. doi: 10.1175/1520-0469(1981)038<2653:OTDODI>2.0.CO;2
https://doi.org/10.1175/1520-0469(1981)0...
) for the purposes of the present study. When precipitation is above (below) the average, TNA is negative (positive) and TSA, positive (negative); therefore, GRAD is southward (northward). This result is consistent with the literature (Giannini et al. 2004Giannini A, Saravanan R, Chang P (2004) The preconditioning role of tropical Atlantic variability in the development of the ENSO teleconnection: implications for the prediction of Nordeste rainfall. Clim Dynam 22(8):839-855. doi: 10.1007/s00382-004-0420-2
https://doi.org/10.1007/s00382-004-0420-...
; Kayano and Andreoli 2006Kayano M, Andreoli RV (2006) Relationships between rainfall anomalies over northeastern Brazil and the El Niño-Southern Oscillation. J Geophys Res 111(D13): doi: 10.1029/2005JD006142
https://doi.org/10.1029/2005JD006142...
; Andreoli and Kayano 2007Andreoli RV, Kayano M (2007) A importância relativa do Atlântico Tropical Sul e Pacífico Leste na variabilidade de precipitação do Nordeste do Brasil. Rev Bras Meteorol 22(1):63-74.). In both composites, however, substantial negative SSTAs are found in the Niño 1+2 region, close to the west coast of equatorial South America. It means that the ENSO-neutral phase, defined here considering the Niño 3 index, could be including numerous cases of La Niña onset, and it could also explain the smaller differences between the ENSO-neutral and cold phases in Fig. 2 (particularly for the probability of above-average precipitation).

Figure 5
Composites of SSTA (ºC) for (a) below- and (b) above-average precipitation years in the ENSO-neutral phase. The SSTA differences between the two panels are statistically significant at the 90% confidence level within the areas enclosed by the thick blue contours. The CLA location is indicated by the small box at the northern coast of Brazil.

The composites of atmospheric circulation at 925 hPa are shown in Fig. 6. The large-scale circulation shows an easterly ITCZ-related confluence zone located between the north and south subtropical highs that turns counter-clockwise and becomes northeasterly when crossing the NNEB coast.

Figure 6
Composites of circulation at 925 hPa for (a) below- and (b) above-average precipitation years, as well as the difference between them (c), in the ENSO-neutral phase. Shading refers to atmospheric convergence (10-6/s). The zonal and meridional wind differences are statistically signifi cant at the 90% confi dence level within the areas enclosed by the thick blue and red contours, respectively (c). The CLA location is indicated by the small box at the northern coast of Brazil.

Over the NNEB, for the below-average years, there is smooth confluence of the streamlines towards the central South America (Fig. 6a), and ENE winds are found over the CLA; for the above-average years, the counter-clockwise turning of the atmospheric flow is increased, the streamlines converge (Fig. 6b) and NNE winds are found over the CLA. These circulation differences are statistically significant (for both wind components, zonal and meridional) over the NNEB coast. The additional counter-clockwise turning of the wind direction over the CLA for above-average precipitation years is related to the pronounced convergence anomaly that comes out over the NNEB (Fig. 6c). This convergence anomaly extends zonally towards the Atlantic, and divergence anomaly is found immediately to the north of it; this dipole pattern suggests that the ITCZ is slightly displaced to the south in above-average precipitation years, which is consistent with the more intense north Atlantic subtropical high and also to the dipole pattern related to the southward GRAD (negative SSTAs over TNA, and positive over TSA; Fig. 5b).

The composites of OLR are shown in Fig. 7. Deep convection is found over South America and the ITCZ, while dry zones are found over the subtropical highs. The convergence anomaly over the NNEB for the above-average years is related to the eastward expansion of the Amazon convection towards the NNEB (Figs. 7a and 7b), leading to a large statistically significant negative OLR anomaly over the NNEB (Fig. 7c). The slight southward displacement of the ITCZ, suggested by the convergence/divergence anomalies at 925 hPa (Fig. 6c) and the southward GRAD (Fig. 5b), is also consistent with the symmetric dipole pattern of the OLR anomalies over the equatorial Atlantic (although this pattern lacks statistical significance). The OLR difference field also shows a statistically significant reduction in deep convection over the northwestern and southern South America.

Figure 7
Composites of OLR (W/m2) for (a) below- and (b) above-average precipitation years, as well as the difference between them (c), in the ENSO-neutral phase. The OLR differences are statistically signifi cant at the 90% confi dence level within the areas enclosed by the thick blue contours. The CLA location is indicated by the small box at the northern coast of Brazil.

Regarding the predictability, considering GRAD and wind direction at 925 hPa in February as predictors of the precipitation in March, the use of linear multiple regression leads to R2 ∼ 46% (adjusted R2 ∼ 40%; Fig. 8). This is a preliminary but promising result. Previously, it was showed that R2 for each factor separately at lag-0 ranged from 20 to 40% (Fig. 4). At lag-1, a decrease in R2 would be expected; however, considering the GRAD and wind direction jointly, about half of the precipitation variance would continue to be explained. Therefore, for the ENSO-neutral phase, precipitation in March could be reasonably predicted one month ahead from the GRAD and low-level wind direction in February.

Figure 8
Comparison between the estimated and observed precipitation in March for the ENSO-neutral phase.

CONCLUSION

The interannual variability of precipitation in ENSOneutral years was studied for the CLA region. Even considering only these neutral years, the interannual variability is pronounced (and close to the total variability). In the rainy quarter (March to May), March is the month when GRAD direction and low-level circulation are able to best explain the variability of precipitation. In this month, the wind direction at 925 hPa is the factor that explains the highest fraction of precipitation variance (40%), followed by GRAD (30%) and the wind magnitude (20%). For the CLA, in general, above average precipitation is related to weak NNE low-level winds and southward (negative) GRAD; belowaverage precipitation, to strong ENE low-level winds and northward (positive) GRAD.

The circulation at 925 hPa in March shows a northeasterly atmospheric flow crossing the NNEB coast from the equatorial Atlantic. For the below-average years, there is smooth confluence of the streamlines from the NNEB towards the central South America, and ENE winds are found over the CLA. For the above-average years, the streamlines turn counter-clockwise and converge over the NNEB, leading to NNE winds over the CLA. These circulation differences are statistically significant over the NNEB coast. The convergence anomaly over the NNEB is related to the eastward expansion of the Amazon convection, and this expansion explains the occurrence of above-average precipitation over the CLA. This is also explained, on the other hand, by the formation of a statistically significant meridional dipole pattern of negative (positive) SSTAs in TNA (TSA), which might be related to a slight southward displacement of the ITCZ. This integrated picture expands and synthesizes the results of previous studies (Marques et al. 2013Marques RC, Alves MA, Oyama MD (2013) Variabilidade interanual da precipitação no Centro de Lançamento de Alcântara em anos neutros no Pacífico. Proceedings of the V Simpósio Internacional de Climatologia, Florianópolis, Brazil.; Pereira and Marques 2014Pereira RA, Marques RC (2014) Influência do Atlântico Tropical na precipitação do CLA em anos neutros no Pacífico. Proceedings of the XVIII Congresso Brasileiro de Meteorologia; Recife, Brazil.; Marques and Correa 2014Marques RC, Correa FN (2014) A relação do vento com as chuvas no Centro de Lançamento de Alcântara, em anos de El Niño, La Niña e Neutro. Proceedings of the XVIII Congresso Brasileiro de Meteorologia; Recife, Brazil.) and shows how the dynamical and oceanic factors shape the variability of precipitation in ENSO-neutral years. Moreover, for these neutral years, a preliminary but promising result showed that precipitation in March could be reasonably predicted one month ahead from the GRAD and low-level wind direction in February.

REFERENCES

  • Andreoli RV, Kayano M (2007) A importância relativa do Atlântico Tropical Sul e Pacífico Leste na variabilidade de precipitação do Nordeste do Brasil. Rev Bras Meteorol 22(1):63-74.
  • Andreoli RV, Kayano MT, Guedes RL, Oyama MD, Alves MAS (2004) A influência da temperatura da superfície do mar dos oceanos Pacífico e Atlântico na variabilidade de precipitação em Fortaleza. Rev Bras Meteorol 19(2):113-122.
  • Carvalho MAV (2011) Variabilidade da largura e intensidade da Zona de Convergência Intertropical Atlântica: aspectos observacionais e de modelagem. (Master's thesis). São José dos Campos: Instituto Nacional de Pesquisas Espaciais.
  • Chang P, Ji L, Li H (1997) A decadal climate variation in the tropical Atlantic Ocean from thermodynamic air-sea interactions. Nature 385(6):516-518. doi: 10.1038/385516a0
    » https://doi.org/10.1038/385516a0
  • Costa Neto PLO (1977) Estatística. São Paulo: Edgard Blücher.
  • Enfield DB, Mestas-Nuñez AM, Mayer DA, Cid-Serrano L (1999) How ubiquitous is the dipole relationship in tropical Atlantic sea surface temperature? J Geophys Res 104(C4):7841-7848. doi: 10.1029/1998JC900109
    » https://doi.org/10.1029/1998JC900109
  • Giannini A, Saravanan R, Chang P (2004) The preconditioning role of tropical Atlantic variability in the development of the ENSO teleconnection: implications for the prediction of Nordeste rainfall. Clim Dynam 22(8):839-855. doi: 10.1007/s00382-004-0420-2
    » https://doi.org/10.1007/s00382-004-0420-2
  • Hastenrath S, Heller L (1977) Dynamics of climatic hazards in northeast Brazil. Q J Roy Meteor Soc 103(435):77-92. doi: 10.1002/qj.49710343505
    » https://doi.org/10.1002/qj.49710343505
  • Kalnay E, Kanamitsu M, Kistler R, Collins W, Deaven D, Gandin L, Iredell M, Saha S, White G, Woollen J, Zhu Y, Leetmaa A, Reynolds R, Chelliah M, Ebisuzaki W, Higgins W, Janowiak J, Mo KC, Ropelewski C, Wang J, Jenne R, Joseph D (1996) The NCEP/NCAR 40-Year Reanalysis Project. Bull Amer Meteor Soc 77(3):437-471. doi: 10.1175/1520-0477(1996)077<0437:TNYRP>2.0.CO;2
    » https://doi.org/10.1175/1520-0477(1996)077<0437:TNYRP>2.0.CO;2
  • Kane RP (1997) Prediction of droughts in north-east Brazil: Role of ENSO and use of periodicities. Int J Climatol 17(6):655-665. doi: 10.1002/(SICI)1097-0088(199705)17:6<655::AIDJOC144>3.0.CO;2-1
    » https://doi.org/10.1002/(SICI)1097-0088(199705)17:6<655::AIDJOC144>3.0.CO;2-1
  • Kayano M, Andreoli RV (2006) Relationships between rainfall anomalies over northeastern Brazil and the El Niño-Southern Oscillation. J Geophys Res 111(D13): doi: 10.1029/2005JD006142
    » https://doi.org/10.1029/2005JD006142
  • Kayano M, Andreoli RV (2009) Clima da Região Nordeste do Brasil. In: Cavalcanti IFA, Ferreira NJ, Justi da Silva MGA, Silva Dias MAF, editors. Tempo e clima no Brasil. São Paulo: Oficina de Textos. p. 213-233.
  • Kayano M, Andreoli RV, Souza R (2011) Evolving anomalous SST patterns leading to ENSO extremes: relations between the tropical Pacific and Atlantic Oceans and the influence on the South American rainfall. Int J Climatol 31(8):1119-1134. doi: 10.1002/joc.2135
    » https://doi.org/10.1002/joc.2135
  • Kistler R, Kalnay E, Collins W, Saha S, White G, Woollen J, Chelliah M, Ebisuzaki W, Kanamitsu M, Kousky V, van den Dool H, Jenne R, Fiorino M (2001) The NCEP-NCAR 50-year reanalysis: monthly means CDROM and documentation. B Am Meteorol Soc 82(2):247-267. doi: 10.1175/1520-0477(2001)082<0247:TNNYRM>2.3.CO;2
    » https://doi.org/10.1175/1520-0477(2001)082<0247:TNNYRM>2.3.CO;2
  • Liebmann B (1996) Description of a complete (interpolated) outgoing longwave radiation dataset. Bull Am Meteorol Soc 77(6):1275-1277.
  • Lucena DB, Gomes Filho MF, Servain J (2011) Avaliação do impacto de ventos climáticos extremos nos oceanos Pacífico e Atlântico sobre a estação chuvosa no Nordeste do Brasil. Rev Bras Meteorol 26(2):297-312. doi: 10.1590/S0102-77862011000200013
    » https://doi.org/10.1590/S0102-77862011000200013
  • Marques RC, Alves MA, Oyama MD (2013) Variabilidade interanual da precipitação no Centro de Lançamento de Alcântara em anos neutros no Pacífico. Proceedings of the V Simpósio Internacional de Climatologia, Florianópolis, Brazil.
  • Marques RC, Baungartner C (2008) Estudos das variáveis meteorológicas associadas a posição da ZCIT do Atlântico, durante a estação chuvosa no Centro de Lançamento de Alcântara (CLA). Proceedings of the XV Congresso Brasileiro de Meteorologia; São Paulo, Brazil.
  • Marques RC, Correa FN (2014) A relação do vento com as chuvas no Centro de Lançamento de Alcântara, em anos de El Niño, La Niña e Neutro. Proceedings of the XVIII Congresso Brasileiro de Meteorologia; Recife, Brazil.
  • Marques RC, Fisch GF (2005) As atividades de Meteorologia Aeroespacial no Centro Técnico Aeroespacial (CTA). Bol Soc Bras Meteorol 29(3):21-26.
  • Marques RC, Fortes MA (2012) Estudo da variabilidade interanual da precipitação no Centro de Lançamento de Alcântara (CLA). Proceedings of the XVII Congresso Brasileiro de Meteorologia; Gramado, Brazil.
  • Moura AD, Shukla J (1981) On the dynamics of droughts in Northeast Brazil: observations, theory, and numerical experiments with a general circulation model. J Atmos Sci 38(12):2653-2675. doi: 10.1175/1520-0469(1981)038<2653:OTDODI>2.0.CO;2
    » https://doi.org/10.1175/1520-0469(1981)038<2653:OTDODI>2.0.CO;2
  • Moura GBA, Aragão JOR, Melo JSP, Silva APN, Giongo PR, Lacerda FF (2009) Relationship between the rainfall of the eastern Northeast of Brazil and ocean temperature. Rev Bras Eng Agríc Ambient 13(4):462-469. doi: 10.1590/S1415-43662009000400014
    » https://doi.org/10.1590/S1415-43662009000400014
  • Münnich M, Neelin JD (2005) Seasonal influence of ENSO on the Atlantic ITCZ and equatorial South America. Geophys Res Lett 32(21):1-4. doi: 10.1029/2005GL023900
    » https://doi.org/10.1029/2005GL023900
  • Nobre P, Shukla J (1996) Variations of sea surface temperature, wind stress, and rainfall over the tropical Atlantic and South American. J Climate 9(10):2464-2479. doi: 10.1175/1520-0442(1996)009<2464:VOSSTW>2.0.CO;2
    » https://doi.org/10.1175/1520-0442(1996)009<2464:VOSSTW>2.0.CO;2
  • Pereira RA, Marques RC (2014) Influência do Atlântico Tropical na precipitação do CLA em anos neutros no Pacífico. Proceedings of the XVIII Congresso Brasileiro de Meteorologia; Recife, Brazil.
  • Pinheiro UA, Oyama MD (2013) Rainy season features for the Alcântara Launch Center. J Aerosp Technol Manag 5(4):439-448. doi: 10.5028/jatm.v5i4.266
    » https://doi.org/10.5028/jatm.v5i4.266
  • Ropelewski C, Halpert M (1987) Global and regional scale precipitation patterns associated with the El Niño/Southern Oscillation. Mon Weather Rev 115(8):1606-1626. doi: 10.1175/1520-0493(1987)115<1606:GARSPP>2.0.CO;2
    » https://doi.org/10.1175/1520-0493(1987)115<1606:GARSPP>2.0.CO;2
  • Saravanan R, Chang P (2000) Interaction between Tropical Atlantic variability and El Niño-Southern Oscillation. J Climate 13(13):2177-2194. doi: 10.1175/1520-0442(2000)013<2177:IBTAVA>2.0.CO;2
    » https://doi.org/10.1175/1520-0442(2000)013<2177:IBTAVA>2.0.CO;2
  • Schneider U, Becker A, Finger P, Meyer-Christoffer A, Ziese M, Rudolf B (2014) GPCC's new land surface precipitation climatology based on quality-controlled in situ data and its role in quantifying the global water cycle. Theor Appl Climatol 115(1-2):15-40. doi: 10.1007/s00704013-0860-x
    » https://doi.org/10.1007/s00704013-0860-x
  • Shukla J (1998) Predictability in the midst of chaos: a scientific basis for climate forecasting. Science 282(5389):728-731. doi: 10.1126/science.282.5389.728
    » https://doi.org/10.1126/science.282.5389.728
  • Smith TM, Reynolds RW, Peterson TC, Lawrimore J (2008) Improvements to NOAA's Historical Merged Land-Ocean Surface Temperature Analysis (1880-2006). J Climate 21(10):2283-2296. doi: 10.1175/2007JCLI2100.1
    » https://doi.org/10.1175/2007JCLI2100.1
  • Trenberth KE (1997) The definition of El Niño. Bull Amer Meteor Soc 78(12):2771-2777. doi: 0.1175/1520-0477(1997)078<2771:TDOENO>2.0.CO;2
    » https://doi.org/0.1175/1520-0477(1997)078<2771:TDOENO>2.0.CO;2
  • Trenberth KE, Hoar TJ (1996) The 1990-1995 El Niño-Southern Oscillation event: longest on record. Geophys Res Lett 23(1):57-60. doi: 10.1029/95GL03602
    » https://doi.org/10.1029/95GL03602

Publication Dates

  • Publication in this collection
    Jul-Sep 2015

History

  • Received
    04 Mar 2015
  • Accepted
    29 June 2015
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