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Scientia Agricola

On-line version ISSN 1678-992X

Sci. agric. (Piracicaba, Braz.) vol.76 no.2 Piracicaba March/Apr. 2019

https://doi.org/10.1590/1678-992x-2017-0196 

Soils and Plant Nutrition

Developing a Soil Physical Quality Index (SPQi) for lowlands under different deployment times of no-tillage

Diony Alves Reis1  * 
http://orcid.org/0000-0003-4270-2978

Claudia Liane Rodrigues de Lima1 
http://orcid.org/0000-0002-9105-6338

Adilson Luís Bamberg2 
http://orcid.org/0000-0002-3068-9836

1Universidade Federal de Pelotas/FAEM - Depto. de Solos, Campus Universitário s/n - 96050-500 - Pelotas, RS - Brasil

2Embrapa Clima Temperado, Rod. BR 392, km 78 - 96010971 - Pelotas, RS - Brasil


ABSTRACT:

Soil physical quality in lowlands from the Pampa biome under no-tillage (NT) plays an important role; therefore, this study aimed to establish a soil physical quality index (SPQi) from a minimum data set to detect the effects of different deployment times of NT in an Albaqualf. The comparison of areas with one (NT1), three (NT3), five (NT5) and seven (NT7) years of notillage was established using as reference a non-cultivated field plot (NC) for at least thirty years, nearby the sites under NT. Soil samples with undisturbed and disturbed structure were collected to determine the physical quality indicators and soil organic matter (SOM) fractions. The factor analysis (FA) was used to identify and select a minimum data set. The SPQi was elaborated by using the deviations of the measured indicators at different deployment times of NT in relation to NC. The SPQi showed sensibility to identify and explain soil physical quality changes with different deployment times of NT. In well-drained lands, higher deployment times of no-tillage promote the physical quality of lowlands.

Keywords: factor analysis; minimum data set; management systems; lowland soils

Introduction

In Brazil, the Pampa biome occurs in Rio Grande do Sul State (RS), where 5.4 million hectares are lowlands, and Albaqualf is the predominant class (Parfitt et al., 2014). Albaqualf has high agricultural and economic importance due to its physical characteristics. The presence of a subsurface layer almost impermeable, with expansive clays and low macro/microporosity ratio, favor irrigated rice and livestock. Thus, the agricultural growth of the region is strongly dependent on understanding soil physical properties in this environment.

Rainfed crops have been recently introduced into these soils, mostly cultivated under conventional tillage (CT) (Reis et al., 2016). The soybean has been an alternative for the traditional flooded rice-livestock sequence, but there is a concern with the sustainability of this production model, as no-tillage (NT) has proven more profitable and environmentally favorable in rainfed agriculture (Crittenden et al., 2015; Fernández-Romero et al., 2016; Raiesi and Kabiri, 2016) than other management systems.

Impacts of management systems on soil physical quality (SPQ) have been studied by the S index (Dexter, 2004), but its inconsistency has also been highlighted (van Lier, 2014; Moncada et al., 2015). In this sense, soil quality indices (SQI) were developed based on the appropriate selection of soil quality indicators to compose a minimum data set (MDS) (Karlen and Stott, 1994; Karlen et al., 2001; Lima et al., 2008; Maia, 2013; Chen et al., 2013; Yao et al., 2013; Zornoza et al., 2015; Zhang et al., 2016; Rojas et al., 2016).

In MDS, attributes can be chosen by statistical methods (Paz-Kagan et al., 2014; Raiesi and Kabiri, 2016; Obade and Lal, 2016), such as the factor analysis (FA), which reduces redundant information from the original data set and groups soil attributes highly interrelated in a smaller group of representative and independent attributes (Zhang et al., 2016; Raiesi and Kabiri, 2016), helping to understand the effects of changing from CT to the NT system on soil physical quality.

Thus, given the agricultural importance of lowlands from the Pampa biome, this study aimed to establish an MDS to develop a soil physical quality index (SPQi) and evaluate its sensitivity to different deployment times of NT in Albaqualf from southern Brazil.

Materials and Methods

The study was carried out at the Lowland Experimental Station - Embrapa Temperate Agriculture, located in Capão do Leão, RS, Brazil (31°49′04.13” S, 52°27′53.77” W, 14 m above sea level). The climate is Cfa, according to Köppen classification (Alvares et al., 2013), a hot mesothermal climate, with average temperature of coldest month between 3 and 18 °C. Average monthly rainfall is not below 60 mm, always humid, and average temperature of the hottest month higher than 22 °C. The soil was classified as Albaqualf (NRCS, 2010) with 460 g kg−1 of sand, 370 g kg−1 of silt and 170 g kg−1 of clay within 0.0 to 0.2 m top layer.

The surface soil layer of the experimental area was historically managed under conventional tillage (CT). For this study, four experimental plots were selected and homogenized before NT deployment through chisel plowing and soil acidity correction by superficial incorporation of dolomitic limestone using disc harrows. Then, different cover crops (Table 1) were established posteriorly, using 2 kg N ha−1, 26.2 kg P ha−1 and 49.8 kg ha−1 of mineral fertilizer to summer crops and 15 kg N ha−1, 26.2 kg P ha−1, 49.8 kg ha−1 (base fertilization) and 100 kg N ha−1 (cover fertilization) to summer and winter grasses. Furthermore, spontaneous plants were not fertilized.

Table 1 Crop sequence cultivated in an Albaqualf under different deployment times of no-tillage (NT). 

Deployment times of NT Growing season
2007/08 2008/09 2009/10 2010/11 2011/12 2012/13
NT1 Ma Wh + Ma
NT3 Mi Rg + Sp + Sb Wh + Sb Wh + Sb
NT5 Ma Rg + Sp + Sb Wh + Sg Rg + Sp + Sb Wh + Sb Rg + Sp + Sb
NT7 Ma Wh + Sf Wh + Ma Rg + Sp + Sg Rg + Sp + Sb Rg + Sp + Sb

*NT1: one; NT3: three; NT5: five and NT7: seven years of no-tillage (NT) deployment, respectively. Ma = mayze (Zea mays L.); Wh = Wheat (Triticum aestivum); Rg = ryegrass (Lolium multiflorum); Sp = plants of spontaneous development; Sb = soybean (Glycine max); Sg = sorghum (Sorghum bicolor); Sf = sunflower (Helianthus anuus).

The study consists of five treatments, four NT [one (NT1), three (NT3), five (NT5) and seven (NT7) years under no-till] and a control treatment consisting of a 30-yr non-cultivated (NC) field located near the no-till treatments.

Soil samples with disturbed and undisturbed structure were collected from the 0.00 to 0.03; 0.03 to 0.06; 0.06 to 0.10 and 0.10 to 0.20 m soil layers. The sampled layers were defined in terms of their susceptibility to physical and hydric changes that originated from tillage and root systems activity of cultivated crops over the time.

Soil samples with undisturbed structure were collected with steel cylinders of 0.05 m diameter and 0.03 m height, totaling 240 samples (three cylinders for each layer × four soil layers × four replicates × five treatments). The soil samples were used to determine total porosity (TP), macroporosity (Ma), microporosity (Mi) (0.006 MPa to distinguish Ma and Mi by the tension table method), soil penetration resistance (PR) (Rousseau et al., 2013; D'Hose et al., 2014), bulk density (Bd) (Merrill et al., 2013) and soil compressive parameters, preconsolidation pressure (σp), bulk density at preconsolidation pressure (Bdσp), compression index (CI) (Krümmelbein et al., 2010), degree of compactness (Kondo and Dias Junior, 1999), at σp (DCσp, %) and at 1.600 kPa (DC1.600) (Reichert et al., 2016).

Soil samples with disturbed structure were collected, totaling 80 samples (one soil sample × four soil layers × four replicates × five treatments), to determine size classes of water-stable aggregates Ci, where i represents 1, 2, 3, 4, 5 classes (C1 = 9.51 to 4.76 mm; C2 = 4.75 a 2.00 mm; C3 = 1.99 a 1.00 mm; C4 = 0.99 a 0.50 mm; C5 = 0.49 a 0.25 mm and C6 < 0.25 mm), Macroaggregates (Macro), Microaggregates (Micro), mean weight diameter of aggregates (MWD) (Kemper and Rosenau, 1986; Palmeira et al., 1999; Yoder, 1936), the free light fraction (FLF), the occluded light fraction (OLF) and the heavy fraction (HF) of organic matter contained in soil aggregates by performing the densimetric fractionation of soil organic matter (SOM) (Imaz et al., 2010).

The total organic carbon content (TOC) was determined (dry combustion - Perkin Elmer elemental analyzer) in the densimetric fractions, and the carbon pool index (CPI), the carbon lability index (CLI) and the carbon management index (CMI) were quantified.

The dataset included 24 indicators: TP, Ma, Mi, PR, Bd, σp, CI, Bdσp, DCσp, DC1600, C2, C3, C4, C5, Macroaggregates, Microaggregates, MWD, FLF, OLF, HF, TOC, CPI, CLI and CMI. The soil attributes were subjected to the factor analysis (FA) to identify highly correlated indicators for subsequent establishment of a minimum data set by eliminating attributes considered as redundant.

The FA was carried out using covariance (raw data) and correlation (standardized data) matrix. Variables with sampling adequacy (Kaiser Criterion) < 0.5 were eliminated from the FA. Using the correlation matrix, factors with eigenvalues > 1 were retained and subjected to varimax rotation to maximize correlation between factors and measured attributes and to constitute the minimum data set (Yao et al., 2013; Mueller et al., 2013; Mota et al., 2014). The FA, the Communality and the SPQi were performed by PROC FACTOR and PROC ANOVA in SAS (Statistical Analyses System Institute, version 9.2).

The Measure of Sampling Adequacy (MSA) indicates the proportion of variance in the variables caused by underlying factors. Values close to 1.0 (the measures can range from 0 to 1) generally indicate that the FA may be useful with the data while values lower than 0.5 indicate that the FA is probably not be suitable (Beavers et al., 2013).

Equation 1 was used to calculate the MSA value:

MSAijrij2ijrij2+ijaij2 1

MSA represents the ratio of the squared correlation between variables to the squared partial correlation between variables (Kaiser, 1974), where: rij is the correlation coefficient observed between variables i and j; aij is the partial correlation coefficient between the same variables that is, simultaneously, an estimate of the correlation between the factors. The αij is probably close to zero because factors are orthogonal to each other.

The deviations of the measured attribute values in the areas under different deployment times of NT in relation to the reference values measured in the non-cultivated field (NC) were calculated according to equation 2:

zi=xx¯s 2

where: zi is the standardized value selected by the FA with mean (μ) and standard deviation (σ) equals to zero and one, respectively; x is the value of the soil attribute evaluated in the sites with different deployment times of NT; x¯ and s is the mean and the standard deviation, respectively, of the soil attribute evaluated in NC.

To estimate the values of quality index (QIi) of the each evaluated soil attribute, we used equations 3, 4 and 5 for the conditions “more is better”, “less is better” and “midpoint optimum”, respectively, with β = exp(−1,7145zi) (Maia, 2013).

The curve for the condition “more is better” has positive derivative and is used in indicators that improve soil quality, for example, total porosity, total organic carbon, etc.; “midpoint optimum” has positive derivative until a maximum value and is used in indicators that positively affect soil quality until certain values that, if passed, cause negative influence such as bulk density, penetration resistance, etc. The curve for the condition “less is better” has negative derivative and is used in indicators that negatively affect the soil quality index, such as compactness degree (Chen et al., 2013; Nakajima et al., 2015; Zhang et al., 2016).

QI=11+β 3
QI=β1+β 4
QI=(1+β)2 5

The soil physical quality index (SPQi) in each evaluated site was calculated by equation 6:

SPQi=i=nnOIin 6

where: QIi is the quality index of the evaluated characteristic and n is the number of evaluated characteristics. Soil quality evaluated with QIi′ or the conditions “more is better”, “less is better” and “midpoint optimum” and without changes compared to the reference site has QIi equal to one. Thus, values farther from one mean higher changes in relation to NC and reflecting these changes in SPQi (Maia, 2013; Chen et al., 2013; Nakajima et al., 2015; Zhang et al., 2016).

Results and Discussion

The analysis of 24 soil quality indicators of Albaqualf resulted in significant correlation (p < 0.05) in 172 of 276 soil attribute pairs (Table 2). Highest positive correlation coefficients (r ≥ 0.80) were obtained for TP × Mi, FLF × TOC, HF × TOC, HF × CPI, C3 × C4, CLI × CMI, while the highest negative correlation was observed between Macro and Micro (r = 0.97). The carbon content in OLF showed negative correlation with PR (r > 0.60), suggesting that compaction reduces the carbon content between and within aggregates and favors the soil degradation process. In contrast, the TOC presented positive correlation with Ma (r = 0.77).

Table 2 Correlation between attributes of an Albaqualf under different deployment times of no-tillage (NT) in 0.00 to 0.20 m soil layer (n = 192). 

Mi Bd PR Macro MWD FLF OLF HF TOC CI σp BDσp DCσp DC1600 Ma C2 C3 C4 C5 Micro CPI CLI CMI
TP1 0.80* -0.39* -0.51* 0.12ns 0.35** 0.49** 0.56** 0.18** 0.43** 0.21** -0.31** -0.29** 0.09ns -0.01ns 0.40** 0.14ns -0.20** -0.29** -0.26** -0.16** -0.04ns 0.10ns 0.14ns
Ml -0.16* -0.30* 0.03ns 0.12ns 0.13ns 0.34** -0.17* 0.01ns 0.10ns -0.16* -0.13ns 0.04ns 0.00ns -0.15* 0.04ns -0.04ns -0.09ns -0.12ns -0.08ns -0.29** -0.06ns -0.12ns
Bd 0.45* -0.20** -0.39** -0.53** -0.54** -0.46** -0.59** -0.24** 0.38** 0.46** -0.02ns 0.12ns -0.47** -0.21** 0.13ns 0.28** 0.28** 0.22** -0.26** -0.05ns -0.15**
PR -0.20** -0.38** -0.52** -0.67** -0.20** -0.46** -0.03ns 0.32** 0.26** -0.06ns 0.05ns -0.40** -0.20** 0.15* 0.29** 0.25** 0.21** 0.09ns -0.25** -0.25**
Macro 0.45** 0.19** 0.16* 0.12ns 0.19** 0.00ns -0.11ns 0.07ns -0.03ns -0.01ns 0.23** 0.63** 0.37** 0.28** 0.05ns -0.97** 0.06ns 0.01ns 0.03ns
MWD 0.52** 0.36** 0.26** 0.48** 0.04ns -0.20** -0.25** 0.19** 0.14** 0.44** 0.16* -0.50** -0.65** -0.65** -0.43** 0.16* 0.17* 0.22**
FLF 0.72** 0.44** 0.89** 0.18* -0.41** -0.41** 0.05ns -0.10ns 0.69** 0.19** -0.33** -0.45** -0.32** -0.19** 0.28** 0.51** 0.63**
OLF 0.34** 0.67** 0.19** -0.41** -0.41** 0.03ns -0.13ns 0.48** 0.18* -0.15* -0.31** -0.21** -0.17* -0.01ns 0.24** 0.28**
HF 0.80** 0.04ns -0.30** -0.25** 0.06ns 0.03ns 0.61** 0.04ns -0.20** -0.23** -0.06ns -0.11ns 0.83** -0.13ns 0.18*
TOC 0.14* -0.43** -0.41** 0.07ns -0.06ns 0.77** 0.15* -0.32** -0.42** -0.24** -0.18* 0.59** 0.27** 0.51**
CI -0.06ns -0.11ns -0.14* -0.22** 0.16** 0.07ns 0.01ns -0.04ns -0.10ns -0.01ns -0.03ns -0.04ns -0.02ns
σp 0.46** -0.11ns 0.14* -0.35** -0.16* 0.10ns 0.16* 0.12ns 0.10ns -0.19** -0.12ns -0.18*
Bdσp -0.13ns 0.13ns -0.34** -0.07ns 0.26** 0.37** 0.24** -0.08ns -0.11ns -0.05ns -0.10ns
DCσp 0.73** 0.05ns 0.00ns -0.20** -0.22** -0.16** 0.04ns 0.09ns 0.02ns 0.06ns
DC1600 -0.05ns -0.03ns -0.13ns -0.13ns -0.11ns 0.01ns 0.10ns -0.06ns -0.02ns
Ma 0.21** -0.26** -0.33** -0.23** -0.21** 0.45** 0.27** 0.47**
C2 0.35** 0.18* -0.04ns -0.62** -0.02ns 0.10ns 0.11ns
C3 0.84** 0.34** -0.38** -0.20** -0.20** -0.26**
C4 0.51** -0.29** -0.14** -0.23** -0.27**
C5 -0.06ns 0.00ns -0.10ns -0.10ns
Micro -0.04ns 0.00ns -0.02ns
CPI -0.10ns 0.25**
CLI 0.92**

1TP = Total porosity (m3 m−3); Mi = Microporosity (m3 m−3); Bd = Bulk density (Mg m−3); PR = Penetration resistance (MPa); Macro = Macroaggregates (g kg−1); MWD = Mean weight diameter (mm); FLF = Carbon In the free light fraction (g kg−1); OLF = Carbon In the occluded light fraction (g kg−1); HF = carbon In the heavy fraction (g kg−1); TOC = Total organic carbon (g kg−1); CI = Compression Index (dimensionless); σp = preconsolidation pressure (kPa); BDσp = Bulk density at preconsolidation pressure (Mg m−3); DCσp = Degree of compactness at preconsolidation pressure (%); DC1600 = Degree of compactness at pressure of 1600 kPa (%); Ma: Macroporosity (m3 m−3); C2 = Size class of aggregates (4.75-2.00 mm); C3 = Size class of aggregates (1.99-1.00 mm); C4 = Size class of aggregates (0.99-0.50 mm); C5 = Size class of aggregates (0.49-0.25 mm); Micro = microaggregates (g kg-1); CPI = Carbon pool Index (dimensionless); CLI = Carbon lability Index (dimensionless); CMI = Carbon management Index (dimensionless); ns = non-significant difference;

*, **significant level of 5 % and 1 %, respectively.

Askari and Holden (2015) evaluated 22 indicators of soil physical quality for assessing the effects of management practices on SQ in temperate maritime soils, while Yao et al. (2013) used the Factor analysis (FA) to group 22 variables. According to Armenise et al. (2013), the FA general rules is to receive high eigenvalues (> 1.00) and to select variables with high factor loadings. These components allow to obtain the best parameter representative and retain it for screening of MDS (Chen et al., 2013; Yao et al., 2013; Zornoza et al., 2015; Zhang et al., 2016; Rojas et al., 2016).

The MSA values are used to keep or exclude attributes from the FA and are given in Table 3. Only 15 from the 24 soil attributes used initially were kept after the Kaiser criterion (MSA > 0.5). Despite the MSA values below 0.5, the following variables DCσp, DC1.600, CPI and CLI were kept because the mean MSA value obtained for the set of variables was higher than 0.5. The FA was performed using a group of attributes with mean MSA higher than 0.5 thus using the parameters: TP, Ma, Bd, PR, FLF, OLF, TOC, σp, CI, Bdσp, DCσp, DC1600, CPI, CLI and CMI similarly to Yao et al. (2013) and Beniston et al. (2016).

Table 3 Kaiser-Meyer-Olkin Measure of Sampling Adequacy (MSA) of attributes of an Albaqualf under different deployment times of no-tillage (NT) in 0.00 to 0.20 m soil layer. 

Attributes MSA
TP1 0.88
Bd 0.91
PR 0.88
FLF 0.80
OLF 0.85
TOC 0.73
CI 0.69
σp 0.80
BDσp 0.85
DCσp 0.48
DC1600 0.49
Ma 0.90
CPI 0.33
CLI 0.48
CMI 0.57
Mean MSA value 0.71

TP = Total porosity (m3 m−3); Bd = Bulk density (Mg m−3); PR = Penetration resistance (MPa); FLF = Carbon content in the free light fraction (g kg−1); OLF = Carbon content in the occluded light fraction (g kg−1); TOC = Total organic carbon content (g kg−1); CI = Compression index (dimensionless); σρ = preconsolidation pressure (kPa); Bdσp = Bulk density at preconsolidation pressure (Mg m−3); DCσp = Degree of compactness at preconsolidation pressure (%); DC1600 = Degree of compactness at pressure of 1600 kPa (%); Ma = Macroporosity (m3 m−3); CPI = Carbon pool index (dimensionless); CLI = Carbon lability index (dimensionless); CMI = Carbon management index (dimensionless).

Eigenvalues from the correlation matrix indicate that the first four factors explained > 98 % of total data variation (Table 4) (Yao et al., 2013; Paz-Kagan et al., 2014; Beniston et al., 2016; Basak et al., 2016).

Table 4 Eigenvalue, difference, proportion and cumulative variance explained by factor analysis using correlation matrix (standardized data) for 0.00 to 0.20 m soil layer of an Albaqualf under different deployment times of no-tillage (NT). 

Factors Eigenvalue Difference Proportion Cumulative
%
1 5.21 3.53 0.53 53
2 1.68 0.19 0.17 70
3 1.49 0.27 0.15 86
4 1.22 0.84 0.12 98
5 0.38 0.16 0.04 100
6 0.22 0.08 0.02 100
7 0.13 0.07 0.01 100
8 0.06 0.05 0.01 100
9 0.01 0.03 0.00 100
10 -0.02 0.01 0.00 100
11 -0.02 0.03 0.00 100
12 -0.06 0.06 -0.01 100
13 -0.12 0.05 -0.01 100
14 -0.16 0.06 -0.02 100
15 -0.17 0.06 -0.02 100

Factors with eigenvalue below 1 explain less variance than an isolated soil attribute and therefore were refused according to the Kaiser Criterion (Armenise et al., 2013; Thomazini et al., 2015). The first factor, with eigenvalue > 5, explained 53 % of total data variance (Table 4) with FLF and TOC, evidencing the higher positive loadings (0.93 and 0.92, respectively). Nevertheless, contrasted with Bd and PR, that showed greater negative loadings (−0.63 and −0.61, respectively) (Table 5). Similarly, the second factor with an eigenvalue higher than one represents 17 % of total variability, where CLI and CMI evidenced higher positive loadings (0.80 and 0.76), contrasting with TP, OLF and CI, which showed greater negative loadings (−0.24, −0.24 and −0.21, respectively) (Table 5).

Table 5 Proportion of variance using varimax rotation and communality estimates for soil attributes in the 0.00 to 0.20 m soil layer of an Albaqualf under different deployment times of notillage. 

Attributes Factor 1 Factor 2 Factor 3 Factor 4 Communality estimates
FLF1 0.93 0.09 -0.04 0.01 0.89
TOC 0.92 -0.06 0.20 0.24 0.97
OLF 0.77 -0.24 -0.17 -0.27 0.77
Ma 0.75 -0.01 0.14 0.18 0.62
TP 0.55 -0.24 -0.06 -0.28 0.45
BDσp -0.49 0.26 -0.03 0.06 0.45
σp -0.51 0.18 -0.03 0.03 0.42
PR -0.61 0.14 0.14 0.34 0.55
BD -0.63 0.32 -0.02 -0.02 0.51
CLI 0.47 0.80 -0.30 -0.13 0.98
CMI 0.61 0.76 -0.08 0.09 0.98
CI 0.18 -0.21 -0.19 0.08 0.12
DC1600 -0.11 0.19 0.69 -0.41 0.70
DCσp 0.08 0.12 0.65 -0.47 0.68
CPI 0.34 0.02 0.59 0.66 0.89

1FLF = Carbon content in the free light fraction (g kg−1); TOC = Total organic carbon content (g kg−1); OLF = Carbon content in the occluded light fraction (g kg−1); Ma = Macroporosity (m3 m−3); TP = Total porosity (m3 m−3); Bdσp = Bulk density at preconsolidation pressure (Mg m−3); σp = preconsolidation pressure (kPa); PR = Penetration resistance (MPa); Bd = Bulk density (Mg m−3); CLI = Carbon lability index (dimensionless); CMI = Carbon management index (dimensionless); CI = Compression index (dimensionless); DC1600 = Degree of compactness at pressure of 1600 kPa (%); DCσp = Degree of compactness at preconsolidation pressure (%); CPI = Carbon pool index (dimensionless).

Considering the magnitude of the factorial loadings of soil attributes presented in each factor, authors have named factors according to the relationship between soil attributes and factors (Karlen et al., 2013; Gong et al., 2015). For example, factor 1 could be named as “Organic factor” because it presents positive factor loadings > 0.9, and the highest factor loadings were observed with attributes FLF and TOC. However, the factors were not named in this study.

Greater communality estimates were observed in CLI and CMI (0.98) (Table 5), evidencing that these attributes share variability (Yao et al., 2013; Mueller et al., 2013), as well as TOC (0.97) and FLF (0.89). Furthermore, high values of communality estimate suggest that a high part of variance was explained by the factor. Lower values of communality estimate means no correlation or low correlation, as observed in CI. Thus, CI was the least important attribute due to the lowest communality estimate.

The rotation of factors was applied to minimize the number of attributes with high factorial loadings within the same factor. Rotation also shows the relation of dependence between each other, negative or positive. High factorial loadings were observed in OLF (0.81), FLF (0.68), TP (0.64), Bd (-0.51) and PR (-0.71) in Factor 1, despite the positive and negative loadings. Therefore, the dependence between them was evident, as seen in their correlation coefficients (Table 2), suggesting that choosing one is enough to represent Factor 1 and the variables that compose it.

CLI and CMI presented positive loadings > 0.9 in Factor 2 while CPI, TOC and Ma showed positive loadings > 0.5. In Factor 4, DC1.600 and DCσp presented positive loadings > 0.8 (Table 6).

Table 6 Varimax orthogonal rotation of the factors for soil attributes in 0.00 to 0.20 m soil layer of an Albaqualf under different deployment times of no-tillage. 

Atributes Factor 1 Factor 2 Factor 3 Factor 4
OLF1 0.81 0.14 0.05 -0.08
FLF 0.68 0.46 0.38 -0.07
TP 0.64 0.02 0.01 0.02
BD -0.51 0.02 -0.28 0.10
PR -0.70 -0.15 0.05 -0.01
CLI 0.13 0.98 -0.08 0.00
CMI 0.15 0.94 0.27 0.03
CPI -0.11 0.00 0.93 0.08
TOC 0.61 0.25 0.68 -0.04
Ma 0.48 0.25 0.53 -0.04
DC1600 -0.02 -0.05 0.05 0.82
DCσp 0.07 0.00 0.02 0.81
CI 0.21 -0.07 0.03 -0.25
BDσp -0.30 -0.01 -0.10 0.02
σp -0.28 -0.08 -0.14 0.02

1OLF = Carbon content in the occluded light fraction (g kg−1); FLF = Carbon content in the free light fraction (g kg−1); TP = Total porosity (m3 m−3); Bd = Bulk density (Mg m−3); PR = Penetration resistance (MPa); CLI = Carbon lability index (dimensionless); CMI = Carbon management index (dimensionless); CPI = Carbon pool index (dimensionless); TOC = Total organic carbon content (g kg−1); Ma = Macroporosity (m3 m−3); DC1600 = Degree of compactness at pressure of 1600 kPa (%); DCσp = Degree of compactness at preconsolidation pressure (%); CI = Compression index (dimensionless); Bdσp = Bulk density at preconsolidation pressure (Mg m−3); σp = preconsolidation pressure (kPa).

According to the three standardization models (“less is better”, “more is better” and “midpoint optimum”), one parameter was selected per factor to compose the quality index of Albaqualf under different NT deployment times: Factor 1 (PR) “less is better”, Factor 3 (Ma) “midpoint optimum” and Factor 4 (DCσp) “less is better”. Attributes for Factor 2 were not chosen, because the higher factor loading (> 0.9) were observed in CLI and CMI, which are already quality indexes of the Albaqualf compared to NC.

In general, a tendency of quality improvement of Albaqualf was seen with higher deployment times in all evaluated soil layers. This can be observed by greater Ma and lower PR and DC p values, linked to the higher deployment time of NT (Table 7). Soil quality, evaluated through several characteristics that influence plant growth and development and considering the three selected parameters, was promoted by the long term of NT. This is evident because of the high correlation coefficient (0.86, p < 0.0001) between SPQi and higher deployment times of NT (Figure 1).

Table 7 Mean values, standard deviation (SD) and variation coefficient (VC, %) Macroporosity (Ma), Penetration resistance (PR) and compactness degree at preconsolidation pressure (DCσp) of an Albaqualf at a non-cultivated field stie and under different deployment times of no-tillage (NT). 

Ma PR DCσp
m3 m−3 MPa %
Non-cultivated field in the 0.00 to 0.03 m
Mean 9.10 0.73 91.01
SD 2.84 0.15 3.34
VC 31.24 20.26 3.66
Deployment time of NT
NT1 1.44 1.12 90.45
NT3 2.95 0.90 90.50
NT5 4.13 0.84 92.32
NT7 6.42 0.80 89.98
SPQi
NT1 0.04 0.16 0.55
NT3 0.10 0.32 0.51
NT5 0.20 0.33 0.57
NT7 0.52 0.35 0.48
Non-cultivated field in the 0.03 to 0.06 m
Mean 8.40 0.85 90.74
SD 3.14 0.22 5.14
VC 37.42 26.26 5.66
Deployment time of NT
NT1 1.97 1.44 86.42
NT3 3.24 1.12 91.94
NT5 3.91 1.03 90.95
NT7 6.16 0.97 88.74
SPQi
NT1 0.11 0.08 0.55
NT3 0.22 0.19 0.74
NT5 0.31 0.27 0.78
NT7 0.73 0.32 0.55
Non-cultivated field in the 0.06 to 0.10 m
Mean 8.34 0.89 93.43
SD 3.50 0.13 5.21
VC 41.96 14.40 5.58
Deployment time of NT
NT1 1.68 1.78 88.38
NT3 1.94 1.35 88.60
NT5 2.23 1.30 91.48
NT7 7.37 1.15 91.22
SPQi
NT1 0.14 0.00 0.55
NT3 0.17 0.04 0.68
NT5 0.19 0.05 0.82
NT7 0.87 0.23 0.74
Non-cultivated field in the 0.10 to 0.20 m
Mean 5.49 1.03 90.14
SD 1.12 0.15 4.41
VC 20.48 14.82 4.89
Deployment time of NT
NT1 2.08 2.21 90.09
NT3 2.10 1.72 90.92
NT5 2.67 1.56 90.45
NT7 3.96 1.52 91.01
SPQi
NT1 0.12 0.00 0.61
NT3 0.03 0.06 0.78
NT5 0.10 0.06 0.68
NT7 0.51 0.07 0.71

*NT1 = one; NT3 = three; NT = five and NT7 = seven years of NT deployment, respectively.

Figure 1 Soil physical quality index (SPQi) for different layers of an Albaqualf under different deployment times of no-tillage (NT). Vertical bars represent mean standard deviation; ns = nonsignificant difference; *,** significantly different at 5 % and at 1 %, respectively.*NT1: one; NT3: three; NT5: five and NT7: seven years of no-tillage (NT) deployment, respectively. Points followed by the same letter are not significantly different according to Duncan test at 5 %, considering each evaluated soil layer. 

Considering that a better SPQi is equal to 1, NT7 showed the highest SPQi value (0.61) in 0.06 to 0.10 soil layer. In adjacent layers, the SPQi also increased with higher deployment times of NT; however, it tended to decrease in at 0.10 to 0.20 m depth. In this study, deviations of attributes were evaluated in relation to NC, which does not necessarily mean that NC has optimal conditions. Although NC was even not grazed, and remained unmanaged during the last 30 years, NC is representative to a naturally restored area, not a native field.

The SPQi has shown sensitivity and ability to detect changes resulting from soil tillage practices (Figure 1) (Mukherjee and Lal, 2014; Mota et al., 2014; Askari and Holden, 2015; Crittenden et al., 2015; Duval et al., 2016). The evaluated tool has shown that higher deployment time of NT promoted the physical quality of the Albaqualf. Furthermore, the SPQi has shown efficiency to evaluate soil quality. Moreover, it can be used to compare areas subjected to different practices and cultivation conditions.

The physical improvement of lowlands evaluated in this study was demonstrated through several indicators, in particular through that SPQi, which compiled the information of many indicators. The SPQi has shown the ability of NT to ameliorate lowlands for a better adaptation of highland crops in the Pampa biome, as well as to promote soil ecological and conservation functions (i.e. carbon fixation, water infiltration and aeration, drainage regulation and erosion prevention). These benefits are similar to those observed in Brazilian well-drained lands cultivated under NT.

Conclusion

The present study has demonstrated the efficiency of the factorial analysis in selecting the parameters to constitute a minimum data set to evaluate soil quality under different deployment times of no-till. The soil physical quality index (SPQi), constructed from macroporosity, soil resistance to penetration and the compaction degree in the preconsolidation pressure were sensitive to reflect soil physical quality improvements of Albaqualf. This study has also showed that the improvement of physical quality from a cropped Albaqualf is highly dependent of organic matter accumulation in soil surface layers. No-tillage also generated and preserved roots derived and interaggregate macropores, which are essential for gas diffusion and rapid flow of internal water drainage in these soils. Regardless of inherent differences between soil types, the benefits of no tillage for physical status of the studied Albaqualf were comparable to those in Brazilian Oxisols.

Acknowledgments

To Coordenação de Aperfeiçoamento de Pessoal de Nível Superior (CAPES) for a scholarship granted to the first author; to the Federal University of Pelotas and Embrapa Temperate Agriculture for the opportunity, financial and laboratory support and infrastructure.

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Received: May 30, 2017; Accepted: October 05, 2017

* Corresponding author <dionyodin@gmail.com>

Edited by: Silvia del Carmen Imhoff

Authors' Contributions

Conceptualization: Bamberg, A.L. Data Acquisition: Reis, D.A., Bamberg, A.L. Data Analysis: Reis, D.A. Design of Methodology: Lima, C.L.R. Writing and Editing: Reis, D.A., Lima, C.L.R., Bamberg, A.L.

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