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Pesquisa Agropecuária Brasileira

Print version ISSN 0100-204XOn-line version ISSN 1678-3921

Pesq. agropec. bras. vol.54  Brasília  2019  Epub Apr 11, 2019

http://dx.doi.org/10.1590/s1678-3921.pab2019.v54.00057 

AGROMETEOROLOGY

Agricultural zoning of climate risk for Physalis peruviana cultivation in Southeastern Brazil

Zoneamento agrícola de risco climático para o cultivo de Physalis peruviana no Sudeste do Brasil

Lucas Eduardo de Oliveira Aparecido(1)  * 
http://orcid.org/0000-0002-4561-6760

Rafael Madureira Batista(1) 

José Reinaldo da Silva Cabral de Moraes(2) 
http://orcid.org/0000-0002-8567-4893

Cícero Teixeira Silva Costa(1) 
http://orcid.org/0000-0003-0111-5021

Adriana Ferreira de Moraes-Oliveira(3) 
http://orcid.org/0000-0002-3939-9587

(1) Instituto Federal de Mato Grosso do Sul, Campus Naviraí, Rua Hilda, no 203, Conjunto Habitacional Boa Vista, CEP 79950-000 Naviraí, MS, Brazil. E-mail: lucas.aparecido@ifms.edu.br, rafamad@hotmail.com, cicero.costa@ifms.edu.br

(2) Universidade Estadual Paulista, Faculdade de Ciências Agrárias e Veterinárias, Departamento de Ciências Exatas, Avenida Professor Paulo Donato Castellane, s/no, CEP 14884-900 Jaboticabal, SP, Brazil. E-mail: reinaldojmoraes@gmail.com

(3) Universidade Estadual Paulista, Faculdade de Ciências Agrárias e Veterinárias, Departamento de Economia, Avenida Professor Paulo Donato Castellane, s/no, CEP 14884-900 Jaboticabal, SP, Brazil. E-mail: adriana_fmoraes@hotmail.com


Abstract:

The objective of this work was to elaborate the agricultural zoning of climatic risk (ZARC) for Physalis peruviana, through the thermal and water requirements of the crop in Southeastern Brazil. Air temperature (TAIR) and precipitation (PYEAR) data from 1,530 meteorological stations covering the entire region were used. Regions were considered climatically favorable to Physalis peruviana when TAIR was between 13 and 18ºC and PYEAR between 1,000 and 2,000 mm per year. Regions where TAIR was above 30ºC or less than 13ºC were considered inapt. Maps were created with this information and used to identify climatic characteristics and to establish the agricultural aptitude classes, termed apt, inapt, and marginal for the cultivation of Physalis peruviana. The Southeastern region of Brazil showed a thermal variation from 16.5 to 22.6°C and water amplitude from 800 to 2,800 mm. ZARC shows that 10% of Southeastern Brazil is climatically apt for the cultivation of Physalis peruviana, corresponding to the following regions of Brazilian states: central and southern Minas Gerais, western Rio de Janeiro and Espírito Santo, and eastern and southern São Paulo.

Index terms: climate risk; agrometeorology; modeling; big data

Resumo:

O objetivo deste trabalho foi elaborar o zoneamento agrícola de risco climático (ZARC) para Physalis peruviana, por meio das exigências térmicas e hídricas da cultura na região Sudeste do Brasil. Foram utilizados dados de temperatura do ar (TAR) e precipitação (PANO) de 1.530 estações meteorológicas que contemplam toda a região. As regiões foram consideradas climaticamente favoráveis a Physalis peruviana quando a TAR foi entre 13 e 18ºC e a PANO entre 1.000 e 2.000 mm por ano. As regiões com TAR acima de 30ºC ou abaixo de 13ºC foram consideradas inaptas. Os mapas foram construídos a partir dessas informações e usadas para identificar as características climáticas e estabelecer as classes de aptidão agrícola, denominadas aptas, inaptas e marginais para o cultivo de Physalis peruviana. A região Sudeste apresentou variação térmica de 16,5 a 22,6°C e amplitude hídrica de 800 a 2.800 mm. O ZARC mostra que 10% da região Sudeste do Brasil são climaticamente aptos ao cultivo do Physalis peruviana, o que corresponde às regiões: Central e Sul de Minas Gerais, Oeste do Rio de Janeiro e do Espírito Santo e Leste e Sul de São Paulo.

Termos para indexação: risco climático; agrometeorologia; modelagem; big data

Introduction

Physalis (Physalis peruviana) is a non-native species that has been increasingly cultivated in Brazil (Palomino et al., 2011). Native to the Andes mountains of Peru, South America (Fischer & Almanza-Merchán, 1993), it belongs to the family Solanaceae, and can grow up to 2 m height (Ligarreto et al., 2005). Fruit production per plant at harvest is estimated to be between 2 and 3 kg, and the productive period until harvest can last 8 months, during which the branches, flowers, and fruit are simultaneously produced (Lima et al., 2012).

The ideal temperature for physalis cultivation ranges between 13 and 18°C, and this species is productive up to 30°C (Salazar et al., 2008a; Fischer et al., 2014); however, above this temperature, flowering and, consequently, fruit production, are subject to severe reductions. The ideal hydrologic regime for cultivation of physalis is between 1,000 to 2,000 mm, with equal distribution throughout the year, and air relative humidity to prevent fruit deterioration should be between 70 and 80% (Fischer, 2000; Rufato et al., 2008). Precipitation values above this range stimulate excess vegetative growth, and increase the incidence of diseases.

Climatic risk zoning (ZARC) is obtained using the predominant meteorological information of a region together with the bioclimatic characteristics of the cultivated crop species. Wollmann & Galvani (2013) described a ZARC as the delimitation of regions that are considered apt for the development of an agricultural crop, taking into consideration macroscale and regional climate conditions, as well as the thermal and hydrological demands of the species. Studies have been conducted on climate zoning for physic nut (Jatropha curcasL.) in the state of Goiás (Pena et al., 2016), banana in Rio Doce valley in the state of Minas Gerais (Coelho et al., 2016), and for açaí in the state of Espírito Santo (Gasparini et al., 2015). A ZARC can have a wide applicability for a large part of agricultural crops in a specific region, but to date no studies have been done for physalis.

A ZARC is important for identifying regions that are apt, inapt, or marginal, and can aid to reduce risks involved with agricultural activities (Aparecido et al., 2018), thus increasing the level of confidence of producers that cultivate the plant species analyzed by ZARC. Physalis is a species that is relatively new to the Southeastern Brazil, and has been steadily increasing in planted areas. A large portion of the harvest is consumed in Brazil and is also exported to Colombia (Salazar et al., 2008a; López Enríquez et al., 2016), but there is a lack of studies that analyze whether or not the predominant climatic conditions of Southeastern Brazil are apt for the development of physalis.

The objective of this work was to elaborate a ZARC based on the thermal and hydrological characteristics of physalis for the Southeast of Brazil.

Materials and Methods

The data for average air temperature (TAIR) and monthly rainfall (PYEAR) representing the pattern for the period 1950 to 2015 were obtained from 1,530 meteorological stations spread across Southeastern Brazil (Figure 1). This region has an area of approximately 924,620 km², in which the predominant Köppen and Geiger (1928) climate classes are: Af, Am, Aw, Cfa, Cfb, Cwa, and Cwb (Alvares et al., 2014).

Figure 1. Agrometeorological stations used in the climatic risk agricultural zoning for physalis in the Southeastern Brazil. Source: Inmet (2015)

The climatic variables TAIR and PYEAR were defined in accordance with the cultivation characteristics of physalis (Fischer, 2000; Salazar et al., 2008b). Using a combination of different climatic variables based on the scientific literature (Fischer, 2000; Rufato et al., 2008; Salazar et al., 2008a), the climate zoning classes were established for physalis (Figure 2).

Figure 2. Classification criteria for adaptability of physalis based on agroclimatic attributes: TAR, annual average air temperature (ºC), and PANO, annual rainfall (mm). 

The studied regions were considered climatically favorable for physalis when TAIR was between 13 and 18ºC, and PYEAR was between 1,000 and 2,000 mm per year. Regions where TAIR was above 30ºC or less than 13ºC were considered inapt (Fischer, 2000; Rufato et al., 2008; Salazar et al., 2008a; Fischer et al., 2014).

Areas considered marginal had the following restrictions: 1st, TAIR between 18 and 30ºC, vigorous vegetation; 2nd, TAIR between 13 and 18ºC and PYEAR >2,000 mm, excess presence of diseases; 3rd, TAIR between 13 and 18ºC and PYEAR <2,000 mm, water deficit (Fischer, 2000; Rufato et al., 2008; Salazar et al., 2008a). The interposition of these data was conducted using the tool “raster.calculator”.

With the establishment of the apt, inapt, and marginal climate classes for the ZARC, the hydrological balance was calculated following Thornthwaite & Mather (1955), to refine the characterization of each climate class.

In order to calculate the hydrological balance, the potential evapotranspiration (ETP) was calculated according to Thornthwaite (1948):

ETP=ETp×COR; {ETp=16×(10×TairI)a; if 0Tair<26.5oCETp=415.85+32.24×Tair0.43Tair2; if Tair26.5oCI=n=112(0.2×Tair)1.514;a=0.49239+1.7912x102×I7.71x105×I2+6.75x107×I3;COR=N12×NDP30;

in which: ETP is the potential evapotranspiration (mm per month); ETp is the reference evapotranspiration; COR is a correction factor in function of the real number of days, and of the monthly photoperiod; TAIR is the average monthly temperature; I is an index that expresses the level of heat of the region; a is the regional thermal index; NDP is the number of days of the period, and N is the average photoperiod for the month.

After the calculation of ETP, the components of the hydrological balance (water deficiency - DEF, and excess - SUR) were calculated for all sites:

if(PETP)i<0={NACi=NACi1+(P+ETP)iSTOi=WCe(NACi)WC;if(PETP)i0={STOi=(P+ETP)i+STOi1NACi=WCln(STOi)WC;ALTi=STOiSTOi1;AETi={P+|ALTi|, if ALT<0ETPi, if ALT0;DEF=PETAET;SURi={0,if ALT <0(PETP)iALTi, if WC=0;

in which: ETP is the potential evapotranspiration (mm per month); WC is the available water capacity (mm); STO is the soil-water storage (mm); NAC is the sum of rainfall - potential evapotranspiration (mm); DEF is the deficit of water in the soil-plant-atmosphere system (mm); SUR is the excess water in the soil-plant-atmosphere system (mm); ALT is the soil-water storage for the actual month - the soil-water storage for the previous month (mm); and i is the monthly period.

The calculated hydrological balance used the capacity of available water (CAD) between 60-100 mm, which is a value that represents the effective rooting depth of physalis and is expressed by the following equation CAD = (ϴCC - ϴPMP) x 1.2 x 600; in which: ϴCC is the humidity based on the mass at field capacity; ϴPMP is the humidity based on the mass at the wilting point.

Geographic information system (GIS) technology was used to analyze the spatial interpolation of the TAIR and PYEAR values for all sites spread across the Southeastern Brazil. This analysis was conducted using kriging (Krige, 1951) with neighboring data points with a resolution of 0.25º (27.75 km) in a spherical model.

The interposition of climate information (TAIR and PYEAR) was conducted using the tool “raster.calculator”, along with the data interpolation for the construction of the ZARC of physalis for the Southeastern Brazil.

Results and Discussion

Southeastern Brazil has a thermal variation between 16.5 and 22.6°C and average thermal amplitude of 6°C. The highest TAIR occurred in the area of Triângulo Mineiro that consists of parts of the northeast of the state of São Paulo, the north of the state of Minas Gerais, and the east of the state of Espírito Santo, with values above 22.6ºC. The lowest TAIR are concentrated in the south of the state of Minas Gerais, where values below 16.5ºC were recorded (Figure 3 A). This TAIR variation was also described by Alvares et al. (2014). The PYEAR had a large variability across Southeastern Brazil (Figure 3 B). The lowest values for PYEAR were <800 mm per year (Figure 3 C) and occurred in the Jequitinhonha valley and in the northern of the state of Minas Gerais. The highest PYEAR were <2,800 mm per year in the Paraíba valley (in the São Paulo state), as well as in a small area of the Sul Fluminense region, and in the Mantiqueira mountains in the area of Alto Paranaíba (in the Minas Gerais state). In the most Southeastern Brazil, the PYEAR varied between 1,200 and 1,600 mm year (Figure 3 B). This PYEAR variation was also described by Aparecido et al. (2017).

Figure 3. Map of the spatial variability of air temperature (A), rainfall (B), and distribution of temperature and precipitation (C), in the Southeastern Brazil. 

The ZARC for Physalis peruviana shows that the south and metropolitan regions of Minas Gerais, the western of Rio de Janeiro and Espírito Santo states, and the eastern and southern of São Paulo state, are the areas with the most favorable climate conditions for the success of physalis plantations (Figure 4). The remainder of the analyzed regions was considered marginal, as these areas showed at least one restriction to physalis cultivation.

Figure 4. Agricultural climate risk zoning for physalis in the Southeastern Brazil. 

Out of the total area, 10% of the Southeastern Brazil was considered apt for physalis cultivation, and the areas with TAIR above the ideal (1st restriction) represent 80% of the Southeastern Brazil. In these areas physalis would be restricted due to the need of closing its stomata, consequently causing a reduction of gas exchange and evapotranspiration, and these effects would reduce plant productivity (Taiz & Zeiger, 2017). To cultivate physalis in areas with high TAIR, it would be necessary to adopt strategies to reduce climate adversity, such as the use of polyethylene shading screens, or mixtures of different crops such as shrubs or trees to reduce TAIR. Areas with high indices of disease due to excess PYEAR represent 1% of the Southeast region of Brazil. In these areas, the solution is to use a system with an efficient drainage or protection, able to control the entry of water into the system, for the physalis plantation (semi-enclosed greenhouses). In regions with recurring water deficits due to low values of PYEAR (9%), irrigation systems are recommended, in order to satisfy the crop-water requirements.

Areas deemed apt for physalis cultivation have a PYEAR of 1,560 mm (Figure 5 A), with a slight water deficit during the July and August (Figure 5 E). The regions with restrictions due to high TAIR show water deficit from April to September (Figure 5 F), and TAIR average of 20ºC (Figure 5 B). Areas with high PYEAR, as is the case for the coastal region of the state of São Paulo, have rainfall indices near 2,400 mm per year (Figure 5 C) and surplus above 1,300 mm per year (Figure 5 G).

Figure 5. Seasonal variation of monthly air temperature and monthly rainfall for areas considered apt (A), and marginal (B = first restriction, high temperatures; C = second restriction, excess diseases; D = third restriction, water deficit), and climate hydrological balance for areas considered apt (E), and marginal (F = first restriction, high air temperatures; G = second restriction, excess diseases; H = third restriction, water deficit), for the agricultural zoning of climate risk for physalis in Southeastern Brazil. 

The north of the state of Minas Gerais, and the Jequitinhonha valley and Mucuri were regions that characterized as being marginal because they have PYEAR of 900 mm per year (Figure 5 D) and a large water deficit from February to October (Figure 5 H). Water stress due to deficit is one of the meteorological variables with the largest negative correlation with productivity of agricultural crops (Martins et al., 2015). Not only the presence of high-water deficits causes stomatal closing, but they cause also a reduction of evapotranspiration (Aparecido et al., 2017), which has - as a direct consequence - a reduction of net photosynthesis (Larcher, 2006). Sinclair & Ludlow (1986) highlight that besides reducing transpiration, water stress can also affect the growth and development of agricultural crops.

Conclusions

  1. Climatic risk zoning for Physalis peruviana show that 10% of the Southeastern Brazil is apt for cultivation of this plant; the areas considered most apt are the center/southern parts of the state of Minas Gerais; the western portions of the states of Rio de Janeiro and Espírito Santo, and the southern and eastern of the state of São Paulo.

  2. The largest restriction to the development of Physalis peruviana is the high-air temperature, a condition which is present in 80% of the studied area.

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Received: August 18, 2017; Accepted: March 01, 2018

*Corresponding author: lucas.aparecido@ifms.edu.br

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