Abstract
Land use change may modify key soil attributes, influencing the capacity of soil to maintain ecological functions. Understanding the effects of land use types (LUTs) on soil properties is, therefore, crucial for the sustainable utilization of soil resources. This study aims to investigate the impact of LUT on primary soil properties. Composite soil samples from eight sampling points per LUT (forest, grassland, and arable land) were taken from the top 25 cm of the soil in October 2019. The following soil physicochemical parameters were investigated according to standard protocols: soil organic matter (SOM), pH, soil moisture, NH4+–N, NO3––N, AL-K2O, AL-P2O5, CaCO3, E4/E6, cation exchange capacity (CEC), base saturation (BS), and exchangeable bases (Ca2+, Mg2+, K+, and Na+). Furthermore, soil microbial respiration (SMR) was determined based on basal respiration method. The results indicated that most of the investigated soil properties showed significant difference across LUTs, among which NO3––N, total N, and K2O were profoundly affected by LUT (p ≤ 0.001). On the other hand, CEC, soil moisture, and Na+ did not greatly change among the LUTs (p ≥ 0.05). Arable soils showed the lowest SOM content and available nitrogen but the highest content of P2O5 and CaCO3. SMR was considerably higher in grassland compared to arable land and forest, respectively. The study found a positive correlation between soil moisture (r = 0.67; p < 0.01), Mg2+ (r = 0.61; p < 0.01), and K2O (r = 0.58; p < 0.05) with SMR. Overall, the study highlighted that agricultural practices in the study area induced SOM and available nitrogen reduction. Grassland soils were more favorable for microbial activity.
Introduction
Land use change has been a global concern as it leads to soil degradation and soil nutrient cycles alteration. Land degradation is a growing concern for food security and ecosystem services in Europe and Central Asia. One of the major drivers of soil degradation in this region is agricultural intensification, which results in soil erosion, soil organic matter (SOM) loss, compaction, and soil pollution (FAO, 2015). Soil degradation decreases the capacity of the soil to supply primary production and its functional capacity to perform numerous critical ecosystem services (LEHMAN et al., 2015). In the last decade, the agricultural area in Hungary has declined; however, the country is among the leaders in terms of the proportion of agricultural land to the total area in the European Union (BOZSIK & KONCZ, 2018). Two third of the country is used for agriculture (JAKAB et al., 2015).
Land use and management practices influence the physical, chemical, and biological properties of soils. In most of the lands used for agricultural activities, soil organic matter and nutrients availability have shown decline compared to undisturbed land use types such as forest and grasslands (CELIK, 2005). The changes in soil physicochemical properties affect soil microbial diversity, abundance, and activity (PAULA et al., 2014). Land use type also affects soil microbes by modifying the type of litter input, root depth, and turnover rates (VAN LEEUWEN et al., 2017). Soil microorganisms govern ecosystem functioning through decomposition and nutrient cycling (CREAMER et al., 2016). Therefore, the ability to reverse soil degradation and improve soil functions is closely linked to the ability to promote the biological functioning or health of the soil (LEHMAN et al., 2015). Soil microbial respiration (SMR), a process by which soil microbes decompose organic matter, is considered a reliable ecological indicator to assess soil microorganisms overall metabolic activity (MOSCATELLI et al., 2018). In Europe, CREAMER et al. (2016) noted that soil respiration rate was greatly influenced by soil properties, such as pH, SOM, total nitrogen (TN), and cation exchange capacity (CEC). Temperature and water content were also found to be critical variables influencing SMR in soils from Hungary (TÓTH & FARKAS, 2010).
The influence of various land use and soil management systems on soil microbial communities and activities is well examined; however, in Hungary only a few studies are available , which deal primarly with the effects on soil microbial activity (GANGWAR et al., 2018). Although the general relationship between land use type (LUT) and its effects on soil properties is well understood, the extreme spatial and temporal heterogeneity of soils and the complex interaction among biological, physical, and chemical components of the soil make the prediction of land use effects challenging. Hence, site specific information is needed for their interpretation in a local context. Thus, the objective of the present study was to investigate the effect of LUT on physicochemical properties and SMR to provide site-specific information important to support the development of management alternatives to maximize and sustain soil functions in the study area.
Materials and Methods
Description of the study area
The study was carried out on the experimental farm of Szent István University at Gödöllő hill and Szárítópuszta in Gödöllő town (47° 35’ 47.65” N, 19° 21’ 18.54” E) and Hort city (47° 41' 24" N, 19° 46' 48"), in Hungary. The sites encompassed three LUTs (forest, grassland, and arable land) and four reference soil groups (RSGs) (Luvisols, Chernozems, Arenosols, Phaeozems) (IUSS WORKING GROUP WRB, 2015).
The Gödöllő sites belong to the Gödöllő-Monori hilly region, which is part of Northern Hungarian Mountain. The mean annual temperature ranges from 9.5–10oC, and the yearly precipitation is about 600 mm (DÖVÉNYI et al., 2008). The Gödöllő forest soils have been classified as Luvisols and are mostly under oak trees (Quercus cerris and Quercus robur) grown more than 50 years. The grassland site of Szárítópuszta was classified as Phaeozem and the arable site as Arenosol. The grassy vegetation has been left undisturbed for more than 20 years and predominantly consisted of Echinochloa crus, Echinochloa galli, Setaria pumila, Chenopodium album, Fallopia convolvulus, and Ambrosia artemisiifolia. The arable field was tilled with cultivator and complex fertilizer (NPK (15/15/15), 100 kg ha–1 Calcium ammonium nitrate (NH4NO3 + CaMg(CO3)2) was applied. During the sampling, winter oat was grown on the field.
The research sites in Hort are located in Heves County, which belong to North Great Hungarian Plain. The average annual temperature ranges from 10–11oC, and the mean rainfall is between 550–600 mm (DÖVÉNYI et al., 2008). The soil belongs to Chernozem soil type. The grassland site has not been cultivated for 6 years and dominated by Elymus repens. The arable site was subjected to intensive tillage by harrowing with heavy disc and 150 kg N ha–1 was applied in the form of 34% ammonium nitrate . Earlier, the field was used to grow wheat and during the sampling oilseed rape (Brassica napus) was grown. The general description of the sampling sites is presented in Table 1.
General description of sampling sites
Site | Location | Land use | RSG (WRB, 2015) | Elevation (m) | Texture class |
---|---|---|---|---|---|
GUF | Gödöllő hill | Forest | Luvisol | 245 | Sandy loam |
GBG | Gödöllő hill | Forest | Luvisol | 248 | Sandy loam |
SZP1 | Szárítópuszta | Grassland | Phaeozem | 222 | Sandy loam |
SZP2 | Szárítópuszta | Arable | Arenosol | 232 | Sandy |
CSGY | Hort | Grassland | Chernozem | 160 | Heavy clay |
CSSZ | Hort | Arable | Chernozem | 160 | Clay loam |
Abbreviations Reference soil group (RSG), Gödöllő university forest (GUF), Gödöllő botanical garden (GBG), Szárítópuszta 1 (SZP1), Szárítópuszta 2 (SZP2), Hort 1 (CSGY), Hort 2 (CSSZ)
Soil sampling and preparation
The soil sampling was conducted on six sites (two replication of each LUT) in October 2019. At each site, eight points around the main soil profile in a 10 m radius were designated as sampling points. Eight soil subsamples, from a depth of 0–25 cm, were collected from each site, compiled, and mixed thoroughly to make a composite sample. In total, six composite soil samples (two from each LUT) were collected. From the composite sample, two subsamples were taken for: a) physiochemical and for b) SMR analyses. Soils for SMR were stored in a refrigerator at 4oC, while soils for physicochemical analyses were air dried and sieved through 2 mm mesh and kept at room temperature until the analyses.
Physicochemical analyses
Soil pH was determined potentiometrically in a soil to water suspension (1:2.5) (BUZÁS, 1988). Soil moisture was estimated by gravimetric method at 105°C for 24 h (BUZÁS, 1993). Available nitrogen (NH4+–N and NO3––N) was measured using Parnas-Wagner apparatus (EGNÉR et al., 1969), while AL (ammonium-lactate)- P2O5 and K2O were extracted according to EGNÉR et al. (1960) and measured using flame photometer and UV-VIS spectrophotometer, respectively. SOM was determined using Walkley-Black method (WALKLEY & BLACK, 1934). The quality of humic substances (E4/E6) was determined using spectrometer based on PAGE et al. (1982). CaCO3 content was measured using Scheibler calcimeter (BUZÁS, 1988). CEC and exchangeable basic cations (Ca2+, Mg2+, K+, and Na+) were extracted following the Mehlich 3 extraction (MEHLICH, 1953), and the base cations were measured using ICP-spectrometer. All laboratory analyses were performed in triplicates.
Determination of SMR
The analysis of SMR followed the ISO 16072:2002(E) guideline and CHENG et al. (2013) with minor modification. In short, fifty grams of moist field soil was measured and placed in an airtight jar with a suspended conical flask containing 10 mL of 1.0 M NaOH. The jars were flushed with clean air with low CO2 content, tightly closed and incubated at 22°C for ten days. After ten days, the conical flask was removed and 1 ml BaCl2 was added in the NaOH solution to precipitate the trapped CO2. Three drops of phenolphthalein were added and titrated against 0.5 M HCl. The determination was carried out in triplicates. Controls (triplicate flasks without soil) were also prepared.
Statistical analyses
One-way ANOVA for parametric data or Kruskal-Wallis test for non-parametric data was applied to determine significant differences between the land uses analyzed. Tukey’s test was applied at 5% significance for multiple comparisons of means of soil properties across LUTs. Pearson’s correlation analyses were employed to examine the relationship between various physicochemical parameters and SMR (correlation was assumed significant when p < 0.05). All statistical analyses were performed in R software (R DEVELOPMENT CORE TEAM, 2017).
Results
Soil physicochemical properties
Considerable variability was observed among the LUTs with respect to most physicochemical properties (Table 2). Soils from the arable land showed significantly lower SOM content with a mean of 2.83% compared to soils collected from forest (4.85%) and grassland (5.06%), respectively. The ratio of E4/E6 was higher (6.31) in forest compared to arable (4.58) and grassland (3.75). The differences between LUT in K2O was significant (p = 0.0007), ranging from 135 mg kg–1 in arable land to 199 mg kg–1 in grassland. The available nitrogen content of soils under cultivation was lower compared to levels in forest and grasslands. Forest soils exhibited significantly lower soil pH as compared to grassland and arable soils. However, the difference in pH between the grassland and arable soils was not statistically significant. Compared with grassland and forest soils, there was a high content of CaCO3 and P2O5 in arable soils. Soil moisture did not show a significant difference among the land use types, whereby the highest value was recorded in grassland soils compared to arable land and forest soils.
Physicochemical characteristics among land use types
Parameter | Land use type | p-value | ||
---|---|---|---|---|
Forest | Grassland | Arable | ||
SOM (%) | 4.85b (0.280) | 5.06b (0.58) | 2.83a (1.19) | 0.031 * |
pH (H2O) | 5.08a (0.38) | 7.62b (0.08) | 7.83b (0.13) | 0.002** |
pH (KCl) | 4.03a (0.33) | 6.58b (0.08) | 6.67b (0.16) | 0.003** |
CaCO3 (%) | 0.00a (0.00) | 0.23ab (0.11) | 1.14b (0.51) | 0.112 |
Soil moisture (%) | 21.58a (2.89) | 31.20a (4.85) | 21.98a (4.44) | 0.241 |
NH4+–N (mg kg-1) | 9.00b (0.47) | 7.81ab (0.57) | 5.96a (0.58) | 0.004 ** |
NO3-–N (mg kg-1) | 30.08b (3.66) | 8.779a (2.62) | 0.44a (0.20) | 0.000*** |
Total N (mg kg–1) | 39.08c (3.22) | 16.57b (2.22) | 6.40a (0.39) | 0.000*** |
AL-K2O (mg kg–1) | 143.00a (12.92) | 199.00b (8.19) | 135.75a (8.07) | 0.000 *** |
AL-P2O5 (mg kg–1) | 34.15a (3.99) | 58.27a (21.14) | 104.17a (32.82) | 0.281 |
Ca2+ (cmol kg–1) | 5.75a (1.24) | 13.56b (2.15) | 14.99b (2.06) | 0.002** |
Mg2+ (cmol kg–1) | 0.92a (0.24) | 7.38b (2.87) | 2.46ab (0.02) | 0.150 |
K+ (cmol kg–1) | 0.25a (0.04) | 0.35a (0.02) | 0.45b (0.05) | 0.003 ** |
Na+ (cmol kg–1) | 0.08a (0.02) | 0.64a (0.28) | 0.20a (0.03) | 0.430 |
CEC (cmol kg–1) | 33.77ab (0.60) | 35.88b (4.42) | 30.71a (5.31) | 0.750 |
BS (%) | 20.61a (4.09) | 56.55b (7.94) | 60.12b (3.88) | 0.003 |
E4/E6 | 6.31b (0.10) | 3.57ab (0.68) | 4.58a (0.39) | 0.044 |
Values are the means (SE) of six replicates; different letters across the rows indicate significant differences among the variables at p < 0.05 (ANOVA). p-values show significant levels among the LUTs. *, **, ***: Significant at the 0.05, 0.01, and 0.001 levels, respectively. Land use type (LUT), soil organic matter (SOM), cation exchange capacity (CEC), base saturation (BS)
Among the base cations, Ca2+ and K+ were significantly higher in arable soils, followed by grassland and forest soils, whereas the amount of Mg2+ and Na+ were highest in grassland and lowest in forest. The CEC did not show a significant difference between the LUT and ranged from 30.7 cmol kg–1 to 35.8 cmol kg–1 in arable and grassland soils, respectively. The forest soils were significantly different in base saturation (BS) from both the grassland and arable soils; however, there was no significant difference in BS between arable and grassland soils.
Soil microbial respiration
The grassland showed significantly higher SMR compared to forest and arable land (Figure 1). The present study found a positive correlation of SMR with soil moisture (r = 0.67; p < 0.01), Mg2+ (r = 0.61; p < 0.01 ), K2O (r = 0.58; p < 0.05), SOM (r = 0.56; p < 0.05), and Na+ (r = 0.52; p < 0.05), However, no statistically significant correlation of SMR with pH (r = 0.33; p > 0.05) was observed (Table 3).

SMR across LUTs (left) and site (right). Different letters indicate significant differences at p < 0.05 (n =6). Hort 1 (CSGY), Hort 2 (CSSZ), Gödöllő botanical garden (GBG), Gödöllő university forest (GUF), Szárítópuszta 1 (SZP1) Szárítópuszta 2 (SZP2)
Citation: Agrokémia és Talajtan 71, 1; 10.1556/0088.2021.00079

SMR across LUTs (left) and site (right). Different letters indicate significant differences at p < 0.05 (n =6). Hort 1 (CSGY), Hort 2 (CSSZ), Gödöllő botanical garden (GBG), Gödöllő university forest (GUF), Szárítópuszta 1 (SZP1) Szárítópuszta 2 (SZP2)
Citation: Agrokémia és Talajtan 71, 1; 10.1556/0088.2021.00079
SMR across LUTs (left) and site (right). Different letters indicate significant differences at p < 0.05 (n =6). Hort 1 (CSGY), Hort 2 (CSSZ), Gödöllő botanical garden (GBG), Gödöllő university forest (GUF), Szárítópuszta 1 (SZP1) Szárítópuszta 2 (SZP2)
Citation: Agrokémia és Talajtan 71, 1; 10.1556/0088.2021.00079
Pearson’s correlation matrix of the investigated soil properties
SOM | pH (H2O) | Soil moisture | CaCO3 | NH4+-N | NO3--N | AL-K2O | AL-P2O5 | Ca2+ | Mg2+ | K+ | Na+ | CEC | BS | E4/E6 | SMR | |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
SOM | 1 | |||||||||||||||
pH (H2O) | -0.32 | 1 | ||||||||||||||
Soil mois. | 0.70** | 0.29 | 1 | |||||||||||||
CaCO3 | -0.79*** | 0.47* | -0.61** | 1 | ||||||||||||
NH4+-N | 0.45 | -0.60** | -0.11 | -0.l3 | 1 | |||||||||||
NO3--N | 0.32 | 0.71*** | -0.12 | -0.42 | 0.41 | 1 | ||||||||||
AL-K2O | 0.53* | 0.07 | 0.45 | -0.43 | 0.21 | -0.29 | 1 | |||||||||
AL-P2O5 | 0.85*** | 0.4 | -0.75*** | 0.93*** | -0.16 | -0.34 | -0.36 | 1 | ||||||||
Ca2+ | 0.16 | 0.71*** | 0.76*** | -0.11 | -0.55 | -0.64** | 0.26 | -0.27 | 1 | |||||||
Mg2+ | 0.63** | 0.38 | 0,87*** | -0.34 | 0.09 | -0.4* | 0.63 | -0.52* | 0.72 | 1 | ||||||
K+ | -0.52* | 0.46 | -0.22 | 0.45 | -0.47 | -0.83*** | 0.12 | 0.47 | 0.38 | -0.01 | 1 | |||||
Na+ | 0.58* | 0.33 | 0.45 | -0.22 | 0.22 | -0.42 | 0.63 | -0.41* | 0.63 | 0.04 | 0.04 | 1 | ||||
CEC | 0.77*** | -0.07 | 0.87*** | -0.79*** | 0.03 | -0.04 | 0.45 | -0.91*** | 0.58 | 0.74 | -0.2 | 0.62 | 1 | |||
BS | -0.07 | 0.87*** | 0.5 | 0.31 | -0.41 | -0.75*** | 0.21 | 0.13 | 0.86*** | 0.66 | 0.49 | 0.66 | 0.2 | l | ||
E4/E6 | -0.13 | -0.4 | 0.58** | 0.09 | 0.28 | 0.66 | -0.21 | 0.31 | -0.81*** | -0.65** | -0.4 | -0.60** | -0.61** | -0.65 | 1 | |
SMR | 0.56* | 0.33 | 0.66** | -0.39 | 0.06 | 0.08 | 0.57* | -0.34 | 0.33 | 0.60** | -0.38 | 0.52* | 0.36 | 0.36 | 0.03 | 1 |
, **, ***: Significant at the 0.05, 0.01, and 0.001 levels, respectively. Soil organic matter (SOM), cation exchange capacity (CEC), base saturation (BS), soil microbial respiration (SMR).
Discussion
Variability of important physicochemical properties among LUTs
Previous studies showed that soils under the same LUT most probably have similar physicochemical properties (JOHNSON et al., 2003). We found that soils under relatively undisturbed systems (grassland and forest) had advantages in good soil attributes over disturbed systems (arable land). Particularly, SOM and available nitrogen had shown significant decrement in arable soils, implying that agricultural practices in arable lands could negatively influence the soil’s organic and nutrient content. Non plowing and continuous plant coverage in forest and grassland could result in a high content of SOM and nutrients in these soils. N and SOC are being depleted on cultivated land mostly by similar processes because organic matter is a source for both (ZAJÍCOVÁ & CHUMAN, 2019). As RODRIGUES et al. (2017) discussed, tillage practices in arable land may result in losses of carbon from the soil due to decomposition, erosion, and leaching. Consistence to our finding, CELIK (2005) found that compared to forest and pasture soils, SOM in cultivated soils decreased by 44% and 48%, respectively, for the top 0–10 cm layer soil. Similarly, KUNLANIT et al. (2019) investigated the influence of land use change on SOC stock and their quality in Northeast Thailand. They found that the conversion of forest to cultivated land significantly reduced both SOC and humic acid stock.
The finding of a substantially higher content of the available form of N (NH4+–N, NO3- –N, and total N) in forest soils collaborated with previous work of GOL (2009), who reported that conversion of forest to cultivated land significantly decreased both the content and stock of SOM and total N. Higher litter production and N fixation by the different tree and shrub species within forest probably contributed to higher available N content in forest soils. Equally, loss of available N through the faster decomposition of organic matter associated with continuous tilling of soils could also be why the low available N content in cultivated soils. Grassland soils had higher K2O than forest and arable land, possibly due to high SOM content and little soil disturbance, resulting in high nutrient adsorption and low leaching rate. RODRIGUES et al. (2017) recorded that potassium content in minimum tillage was significantly higher than that of the conventional tillage system.
Among soil attributes, pH is considered “master soil variable” since it influences soil biological, chemical, and physical properties, thereby determining plant growth and biomass yield (NEINA, 2019). Soil pH influences the solubility and mobility of SOM and nutrients. It was reported that solubility of organic matter in the soil inclines with an increase in soil pH, causing the leaching of organic matter and nutrients in alkaline soils (CURTIN et al., 2016). The finding of a significantly low pH level in forest soils in this study is consistent with the previous studies by RODRIGUES et al. (2017) and WELDMICHAEL et al. (2020). The low pH in forest soils could be attributed to low base cations in the soil or the type of litter residues of forest vegetation (RODRIGUES et al., 2017). The arable soils were characterized by a high content of available P, CaCO3, and Ca2+, while forest soils showed the lowest content of these parameters. A similar result was noted by MAHARJAN et al. (2018), who reported a significant increment of P stock by 64% and 36% at 0–10 cm and 10–20 cm depth, respectively, in conventional farming compared to forest. The relatively higher P and CaCO3 in arable soils might be due to the application of inorganic fertilizers and liming. Conversely, the significant low content of P in forest soils was probably related to low pH in forest soils. Various studies documented that P could be fixed with Al or Fe under low pH, thus became unavailable (e.g., MORI et al., 2018), and base cations and calcium carbonate leached from the soil (CURTIN et al., 2016).
Several previous studies have shown that land use change dramatically influences the soil’s hydrological process (e.g., QIU et al., 2001). In most cases, soil moisture substantially declines in arable soils compared to grassland and forest soils (QIU et al., 2001). Tillage could aerate and expose soils to sunlight, thereby increases water loss from the soil through evaporation. The relatively high content of SOM and improved surface cover that resulted in increased water infiltration and decreased water loss through surface evaporation could explain the high soil moisture in grasslands. It has been shown that SOM increases water holding capacity and infiltration of the soil by improving soil porosity and reduce soil compactability (MCCAULEY et al., 2005). In this study, this was evidenced by the positive association of SOM with soil moisture (Table 3).
Influence of LUT on SMR and major drivers for its variability
Based on the Kruskal-Wallis test, SMR significantly differed among the LUTs (p < 0.01). The grassland showed significantly higher SMR compared to forest and arable land. This finding agrees with CREAMER et al. (2016), who reported that grassland soils had a remarkably high amount of SMR than arable soils; however, it was in contrast with LIU et al. (2018), who found that farmland had higher basal respiration compared to orchard, grassland, and abandoned land. As highlighted by LIEBIG (1996), SMR is an important indicator of soil health since it indicates the level of microbial activity, SOM content, and its decomposition. Usually, higher SMR reflects high belowground microbial activity (RYAN & LAW, 2005). One of the possible reasons for the high SMR in grassland soils could be a high level of labile C in the grassland system. SOM/SOC has been well documented to affect soil respiration as it is the primary energy source for microbes (CREAMER et al., 2014). In line with that, this study also found a significant positive correlation of SMR with SOM (r = 0.56; p < 0.01) (Table 3). In their study, LIU, et al. (2018) discussed that soil respiration rate was related to SOC among all fertilizer treatments, implying the strong influence of SOM on soil microbial activity. MURUGAN et al. (2014) investigated variations of the catabolic function of different land use in Germany using MicroRespTM method, showed significant lower organic C content, biomass C, and residue C in the maize monoculture compared to the grassland treatments, suggesting higher labile C present in the grassland systems promoted microbial activity. Generally, the availability of SOM is known to greatly influence soil microbial activity. However, certain organic matter pools such as water extractable organic carbon (WEOC) and dissolved organic carbon (DOC) correlate with microbial activity more closely than others (GREGORICH et al., 2003; KALBITZ et al., 2003). Conversely, others have observed little or no relationship between WEOC and potential microbial activity (e.g., SCHNABEL et al., 2002).
In this study, SMR was found positively correlated with soil moisture (r = 0.67; p < 0.01). Various studies documented that soil moisture, among others, has important effects on soil microbial diversity and function (e.g., CONANT et al., 2004; LIU et al., 2009). Soil moisture influences other physicochemical properties, such as pH, redox potential, O2, and CO2, which affects soil microbial communities and their activities (BARROS et al., 1995). Soil moisture can decrease soil respiration by minimizing microbial contact with available substrate and dormancy and death of microorganisms at low soil water potentials (CONANT et al., 2004). The significant effect of soil moisture in SMR was detected by LIU et al. (2009), who reported that decreased soil moisture caused a significant reduction of SMR, suggesting that soil water availability was an important variable in regulating SMR in semiarid temperate grassland of China. Generally, soil respiration increases with soil moisture, and the ideal soil moisture to microbial activity is near field capacity (LIEBIG, 1996). In this study, the variation of SMR was greatly affected by soil moisture, evidenced by a strong positive correlation between these variables (Table 3). The relationship between soil moisture and SMR varies with soil type and characteristics. For instance, soil microbial activity is higher in fine textured soil due to a large surface area which enhances water holding capacity and nutrient availability of the soil (HAMARASHID et al., 2010; YAN et al., 2018). Likewise, this study found that the rate of SMR was highest in fine textured soils compared to coarser texture soils (Figure 2). Earlier studies also revealed that water potential (WILSON & GRIFFIN, 1975), water filled pore space (TORBERT and WOOD, 1992), and soil moisture level (GUNTIÑAS et al., 2013) highly influenced the soil microbial respiration.

Plot of means with standard error showing the rate of SMR across texture classes. Sandy loam (SL), sandy (S), clay loam (CL), heavy clay (HC)
Citation: Agrokémia és Talajtan 71, 1; 10.1556/0088.2021.00079

Plot of means with standard error showing the rate of SMR across texture classes. Sandy loam (SL), sandy (S), clay loam (CL), heavy clay (HC)
Citation: Agrokémia és Talajtan 71, 1; 10.1556/0088.2021.00079
Plot of means with standard error showing the rate of SMR across texture classes. Sandy loam (SL), sandy (S), clay loam (CL), heavy clay (HC)
Citation: Agrokémia és Talajtan 71, 1; 10.1556/0088.2021.00079
Among the base cations, Mg2+ showed a significant positive correlation with SMR (r = 0.61; p < 0.01). It is well known that Mg2+, together with other base cations, is an important soil nutrient that greatly influences the soil microbial population and their activity since it is required for microbial growth and protein synthesis (RUTGERS et al., 2009). The finding of a strong positive correlation between SMR and Mg2+ was also detected by RICHTER et al. (2018), who assessed the effect of diagnostic features, land use, and soil type on microbial biomass and microbial indices in Irish grassland. This study also found a positive correlation of K2O with SMR (r = 0.58; p < 0.05). Our finding contrasts with MORI (2018), who conducted an incubation experiment to examine the effects of K addition on SMR and soil microbial biomass in a condition of sufficient labile C supply in China’s tropical soils and found no significant effect of K addition on SMR. Various studies reported the significant effect of pH on SMR (WAKELIN et al., 2008; ANDRUSCHKEWITSCH et al., 2014); however, this study did not find a statistically significant correlation of SMR with pH (r = 0.33; p = 0.1678). The neutral correlation between pH and SMR was also noted (EBRAHIMI et al., 2019).
Conclusions
The present study highlighted that, among the investigated soil physicochemical parameters, SOM and available nitrogen were significantly influenced by LUT. The agricultural practices in arable land resulted in organic matter and nutrient availability depletion in the soil. The soil’s catabolic capacity was substantially higher in grassland than forest and arable land, suggesting that the overall soil microbial activity in the investigated soils was enhanced by grassland system. The strong correlation of SMR with soil moisture, SOM, and Mg2+ implies that these parameters probably were key drivers for the variation of SMR in the study area.
Acknowledgments
The research is funded by Stipendium Hungaricum Scholarship Program (SHE-935-1/2016) and it was supported by the Ministry of Innovation and Technology within the framework of the Thematic Excellence Program 2020, Institutional Excellence Sub-Program (TKP2020-IKA-12) in the topic of water-related researches of Szent István University.
Andruschkewitsch, M., Wachendorf, C., Sradnick, A., Hensgen, F.,Joergensen, R. G., & Wachendorf, M., 2014. Soil substrate utilization pattern and relation of functional evenness of plant groups and soil microbial community in five low mountain NATURA 2000. Plant and soil. 383. (1–2) 275–289.
Buzás, I., 1988. Manual of Soil and Agrochemical Analysis 2, Physico-chemical and Chemical Analytical methods for soils, Mezőgazdasági Kiadó. Budapest. Hungary. (In Hungarian).
Buzás, I., 1993. Manual of Soil and Agrochemical Analysis 2, Physical, Water management and Mineralogical Analysis of the soil. INDA 4231, Budapest. Hungary. (In Hungarian).
Barros, N., Gomez-Orellana, I., Feijóo, S., & Balsa, R., 1995. The effect of soil moisture on soil microbial activity studied by microcalorimetry. Thermochimica Acta. 249. 161–168.
Bozsik, N., & Koncz, G., 2018. Regional Differences in Land Use in Hungary. Visegrad Journal on Bioeconomy and Sustainable Development. 7. (1) 11–14.
Celik, I., 2005. Land-use effects on organic matter and physical properties of soil in a southern Mediterranean highland of Turkey. Soil and Tillage research. 83. (2) 270–277.
Cheng, F., X. Peng, P., Zhao, J., Yuan, C., Zhong, Y., Cheng, C., Cui, S., &Zhang, S., 2013. Soil Microbial Biomass, Basal Respiration and Enzyme Activity of Main Forest Types in the Qinling Mountains. PLoS One. 8. (6) e67353
Conant, R. T., Dalla-Betta, P., Klopatek, C. C., & Klopatek, J. M., 2004.Controls on soil respiration in semiarid soils. Soil Biology and Biochemistry. 36. (6) 945–951.
Creamer, R. E., Schulte, R. P. O., Stone, D., Gal, A., Krogh, P. H., Papa, G. L., Murray, P.J., Pérèsf, G., Ersterg, B., Rutgersh, M., Sousai, J.P., & Windingj, A., 2014. Measuring basal soil respiration across Europe: Do incubation temperature and incubation period matter? Ecological indicators. 36. 409–418.
Creamer, R. E., Stone, D., Berry, P., & Kuiper, I., 2016. Measuring respiration profiles of soil microbial communities across Europe using MicroResp™ method. Applied soil ecology. 97. 36–43.
Curtin, D., Peterson, M. E., & Anderson, C. R., 2016. pH-dependence of organic matter solubility: base type effects on dissolved organic C, N, P, and S in soils with contrasting mineralogy. Geoderma. 271. 161–172.
Dövényi, Z., Ambrózy, P., Juhász, Á., Marosi, S., Mezősi, G., Michalkó, G., Somogyi, S., Szalai, Z., & Tiner, T., 2008. Magyarország kistájainak katasztere Inventory of microregions in Hungary. OTKA Kutatási Jelentések OTKA Research Reports.
Ebrahimi, M., Sarikhani, M. R., Sinegani, A. A. S., Ahmadi, A., & Keesstra, S.,2019. Estimating the soil respiration under different land uses using artificial neural network and linear regression models. Catena. 174. 371–382.
Egnér, H., Riehem, H., Domingo, W., 1960. Untersuchungen über die chemische Bodenanalyse als Grundlage für die Beurteilung des Nährstoffzustandes der Böden II, Chemische Extraktionsmethoden zur Phosphor-und Kaliumbestimmung. Kungl. Lantbrukshögsk. 26. 199–215.
FAO, 2015. Combating land degradation for food security and provision of soil ecosystem services in Europe and Central Asia – International Year of Soils, European commission on Agriculture, Thirty-Ninth session, Agenda item 4. Budapest, Hungary.
Gangwar, R. K., Makádi, M., Fuchs, M., Csorba, Á., Michéli, E., Demeter, I.,& Szegi, T., 2018. Comparison of biological and chemical properties of arable and pasture Solonetz soils. Agrokémia és Talajtan. 67. (1) 61–77.
Gregorich, E. G., Beare, M. H., Stoklas, U., & St-Georges, P., 2003.Biodegradability of soluble organic matter in maize-cropped soils. Geoderma. 113. (3–4) 237–252.
Guntiñas, M. E., Gil-Sotres, F., Leiros, M. C., & Trasar-Cepeda, C., 2013.Sensitivity of soil respiration to moisture and temperature. Journal of soil science and plant nutrition. 13. (2) 445–461.
Gol, C., 2009. The effects of land use change on soil properties and organic carbon at Dagdami river catchment in Turkey. Journal of Environmental Biology. 30. (5) 825.
ISO-INTERNATIONAL STANDARD ISO16072, Soil quality–Laboratory methods for determination of microbial soil respiration, first ed., Reference number: ISO 16072:2002 (E).
IUSS WORKING GROUP WRB, 2015. World Reference Base for Soil Resources 2014, update 2015. International soil classification system for naming soils and creating legends for soil maps. World Soil Resources Reports No. 106. FAO, Rome.
Jakab, G. I., Szabó, J., & Szalai, Z., 2015. A review on sheet erosion measurements in Hungary. Tájökológiai Lapok. 13. (1) 89–103.
Johnson, M. J., Lee, K. Y., & Scow, K. M., 2003. DNA fingerprinting reveals links among agricultural crops, soil properties, and the composition of soil microbial communities. Geoderma. 114. (3–4) 279–303.
Kalbitz, K., Solinger, S., Park, J. H., Michalzik, B., & Matzner, E., 2000.Controls on the dynamics of dissolved organic matter in soils: a review. Soil science. 165. (4) 277–304.
Kunlanit, B., Butnan, S., & Vityakon, P., 2019. Land–Use Changes Influencing C Sequestration and Quality in Topsoil and Subsoil. Agronomy. 9. (9) 520.
Hamarashid, N. H., Othman, M. A., & Hussain, M. A. H., 2010. Effects of soil texture on chemical compositions, microbial populations and carbon mineralization in soil, The Egyptian Journal of Experimental Biology (Bot.), 6. (1) 59–64.
Lehman, R. M., Acosta-Martinez, V., Buyer, J. S., Cambardella, C. A., Collins, H. P., Ducey, T. F., & Lundgren, J. G., 2015. Soil biology for resilient, healthy soil. Journal of Soil and Water Conservation. 70. (1) 12A–18A.
Liebig, 1996. Guides for Educators SOIL: An Essential Link in the Cycle of Life Inherent Factors Affecting Soil Respiration, United States Department of Agriculture Natural Resources Conservation Service, 56 (Figure 2) 1–54.
Liu, D., Huang, Y., An, S., Sun, H., Bhople, P., & Chen, Z., 2018. Soil physicochemical and microbial characteristics of contrasting land-use types along soil depth gradients. Catena. 162. 345–353.
Liu, W., Zhang, Z. H. E., & Wan, S., 2009. Predominant role of water in regulating soil and microbial respiration and their responses to climate change in a semiarid grassland. Global Change Biology. 15. (1) 184–195.
Liu, Y. R., Delgado-Baquerizo, M., Wang, J. T., Hu, H. W., Yang, Z., & He, J.Z., 2018. New insights into the role of microbial community composition in driving soil respiration rates. Soil Biology and Biochemistry 118. 35–41.
Maharjan, M., Maranguit, D., & Kuzyakov, Y., 2018. Phosphorus fractions in subtropical soils depending on land use. European Journal of Soil Biology. 87. 17–24.
Mccauley, A., Jones, C. and Jacobsen, J., 2005. Basic Soil Properties. Soil and Water. pp. 1–12. Available at: http://landresources.montana.edu/SWM/PDF/Final_proof_SW1.pdf.
Mori, T., Lu, X., Aoyagi, R., & Mo, J., 2018. Reconsidering the phosphorus limitation of soil microbial activity in tropical forests. Functional Ecology. 32. (5) 1145–1154.
Moscatelli, M. C., Secondi, L., Marabottini, R., Papp, R., Stazi, S. R., Mania, E., & Marinari, S., 2018. Assessment of soil microbial functional diversity: land use and soil properties affect CLPP-MicroResp and enzymes responses. Pedobiologia. 66. 36–42.
Mehlich, A. 1953. Determination of P, Ca, Mg, K, Na and NH4. North Carolina Department of Agriculture, Agronomic Division, Soil Testing Division.
Murugan, R., Loges, R., Taube, F., Sradnick, A., & Joergensen, R. G., 2014.Changes in soil microbial biomass and residual indices as ecological indicators of land use change in temperate permanent grassland. Microbial ecology. 67. (4) 907–918.
Neina, D., 2019. The role of soil pH in plant nutrition and soil remediation. Applied and Environmental Soil Science. 2019. (3) 1–9
Page, A. L., Miller, R. H., Keene, D. R., 1982. Methods of soil analysis, Part 2, second ed., Agronomy monograph 9, ASA and SSSA, Madison, WI.
Paula, F. S., Rodrigues, J. L., Zhou, J., Wu, L., Mueller, R. C., Mirza, B. S., Bohannan, B.J., Nüsslein, K., Deng, Y., Tiedje, J.M., & Pellizari, V. H.,2014. Land use change alters functional gene diversity, composition and abundance in Amazon forest soil microbial communities. Molecular ecology. 23. (12) 2988–2999.
Qiu, Y., Fu, B., Wang, J., & Chen, L., 2001. Spatial variability of soil moisture content and its relation to environmental indices in a semi-arid gully catchment of the Loess Plateau, China. Journal of Arid Environments 49. (4) 723–750.
R DEVELOPMENT CORE TEAM, 2017. A Language and Environment for Statistical Computing. R Foundation for Statistical computing, Venna.
Richter, A., Huallacháin, D. Ó., Doyle, E., Clipson, N., Van Leeuwen, J. P., Heuvelink, G. B., & Creamer, R. E., 2018. Linking diagnostic features to soil microbial biomass and respiration in agricultural grassland soil: a large-scale study in Ireland. European Journal of Soil Science 69. (3) 414–428.
Rodrigues, M., Rabêlo, F. H. S., Castro, H. A. D., Roboredo, D., Carvalho,M. A. C. D., & Roque, C. G., 2017. Changes in chemical properties by use and management of an Oxisol in the Amazon biome. Revista Caatinga. 30. (2) 278–286.
Rutgers, M., Schouten, A. J., Bloem, J., Van Eekeren, N., De Goede, R. G. M., Jagersop Akkerhuis, G. A. J. M., Van Der Wal, A., Mulder, C.,Brussaard, L., & Breure, A. M., 2009. Biological measurements in a nationwide soil monitoring network. European Journal of Soil Science. 60. (5) 820–832.
Ryan, M. G., & Law, B. E., 2005. Interpreting, measuring, and modeling soil respiration. Biogeochemistry 73. (1) 3–27.
Schnabel, R. R., Dell, C. J., & Shaffer, J. A., 2002. Filter, inoculum and time effects on measurements of biodegradable water soluble organic carbon in soil. Soil Biology and Biochemistry 34. (5) 737–739.
Torbert, H. A., & Wood, C. W., 1992. Effects of soil compaction and water-filled pore space on soil microbial activity and N losses. Communications in Soil Science and Plant Analysis 23. (11–12) 1321–1331.
Tóth, E., & Farkas, C., 2010. Effect of inter-row cultivation on soil carbon dioxide emission in a peach plantation. Agrokémia és Talajtan 59. (1) 157–164.
Van Leeuwen, J. P., Djukic, I., Bloem, J., Lehtinen, T., Hemerik, L., De Ruiter, P. C., & Lair, G. J., 2017. Effects of land use on soil microbial biomass, activity and community structure at different soil depths in the Danube floodplain. European journal of soil biology 79. 14–20.
Wakelin, S. A., Macdonald, L. M., Rogers, S. L., Gregg, A. L., Bolger, T. P.,& Baldock, J. A. 2008. Habitat selective factors influencing the structural composition and functional capacity of microbial communities in agricultural soils. Soil Biology and Biochemistry 40. (3) 803–813.
Walkley, A., Black, I. A. 1934. An examination of the Degtjareff method for determining soil organic matter, and a proposed modification of the chromic acid titration method. Soil Science 37. 29–38.
Weldmichael, T. G., Szegi, T., Denish, L., Gangwar, R. K., Michéli, E., &Simon, B., 2020. The patterns of soil microbial respiration and earthworm communities as influenced by soil and land-use type in selected soils of Hungary. SOIL SCIENCE ANNUAL 71. (2) 43–52.
Wilson, J. M., & Griffin, D. M., 1975. Water potential and the respiration of microorganisms in the soil. Soil Biology and Biochemistry 7. (3) 199–204.
Yan, Z., Bond-Lamberty, B., Todd-Brown, K. E., Bailey, V. L., Li, S., Liu, C.,& Liu, C., 2018. A moisture function of soil heterotrophic respiration that incorporates microscale processes. Nature communications. 9. (1) 1–10.
Zajícová, K., & Chuman, T., 2019. Effect of land use on soil chemical properties after 190 years of forest to agricultural land conversion. Soil and Water Research. 14. (3) 121–131.