Skip to main content
Advertisement
Browse Subject Areas
?

Click through the PLOS taxonomy to find articles in your field.

For more information about PLOS Subject Areas, click here.

  • Loading metrics

Impacts of Rotational Grazing on Soil Carbon in Native Grass-Based Pastures in Southern Australia

  • Jonathan Sanderman ,

    jsanderman@whrc.org

    Current Address: Woods Hole Research Center, Falmouth, Massachusetts, United States of America

    Affiliation CSIRO Sustainable Agriculture Flagship, Urrbrae, South Australia, Australia

  • Jodie Reseigh,

    Affiliation Rural Solutions SA, Primary Industries and Regions South Australia, Adelaide, South Australia, Australia

  • Michael Wurst,

    Affiliation Rural Solutions SA, Primary Industries and Regions South Australia, Adelaide, South Australia, Australia

  • Mary-Anne Young,

    Affiliation Rural Solutions SA, Primary Industries and Regions South Australia, Adelaide, South Australia, Australia

  • Jenet Austin

    Affiliation CSIRO Land and Water Flagship, Black Mountain, Australian Capital Territory, Australia

Abstract

Rotational grazing management strategies have been promoted as a way to improve the sustainability of native grass-based pasture systems. From disturbance ecology theory, rotational grazing relative to continuous grazing can increase pasture productivity by allowing vegetation to recover after short intense grazing periods. This project sought to assess whether soil organic carbon (SOC) stocks would also increase with adoption of rotational grazing management. Twelve pairs of rotationally and continuously grazed paddocks were sampled across a rainfall gradient in South Australia. Pasture productivity approximated as the normalized difference vegetation index (NDVI) was on average no different between management categories, but when the data from all sites were aggregated as log response ratios (rotational/continuous) a significant positive trend of increasing NDVI under rotational grazing relative to continuous grazing was found (R2 = 0.52). Mean SOC stocks (0–30 cm) were 48.3 Mg C ha-1 with a range of 20–80 Mg C ha-1 across the study area with no differences between grazing management categories. SOC stocks were well correlated with rainfall and temperature (multiple linear regression R2 = 0.61). After removing the influence of climate on SOC stocks, the management variables, rest periods, stocking rate and grazing days, were found to be significantly correlated with SOC, explaining 22% of the variance in SOC, but there were still no clear differences in SOC stocks at paired sites. We suggest three reasons for the lack of SOC response. First, changes in plant productivity and turnover in low-medium rainfall regions due to changes in grazing management are small and slow, so we would only expect at best small incremental changes in SOC stocks. This is compounded by the inherent variability within and between paddocks making detection of a small real change difficult on short timescales. Lastly, the management data suggests that there is a gradation in implementation of rotational grazing and the use of two fixed categories (i.e. rotational v. continuous) may not be the most appropriate method of comparing diverse management styles.

Introduction

Recently, there has been much interest in agricultural management for maintaining or enhancing soil organic carbon (SOC) levels. Globally, it has been estimated that agricultural soils have lost 42–78 Pg C relative to their pre-agricultural state [1]. This transfer of SOC to the atmosphere is a major perturbation to the global carbon cycle [2], but also represents an opportunity for managing current greenhouse gas emissions through carbon sequestration [3]. Importantly, this loss of SOC has negatively affected soil health and increases our reliance on inorganic fertilizers to maintain crop productivity. A large number of soil functions that are critical for crop and pasture production, including nutrient and pH buffering, water retention, soil structural stability, and higher agronomic efficiency with respect to fertilizer inputs are all positively associated with greater SOC levels [4], [5]. Halting or reversing the decline in SOC in agricultural soils is seen as a win-win policy because of the dual benefits to soil sustainability/production and greenhouse gas abatement. Due to this fact, many nations are actively promoting management strategies that have the potential to sequester carbon. Rotational grazing is one such carbon management strategy that has an additional benefit in that it is seen as being consistent with the protection of the natural environment and improves resilience to the impacts of climate change [6].

Rotational grazing, defined as where a paddock is not stocked continuously but grazed and rested regularly either on a set calendar schedule or intermittently as needed [7], when compared to continuous grazing, defined as where a paddock is stocked continuously at generally consistent stock density whether or not it is with the same animals [7], is generally thought to have a number of production and biodiversity benefits. The benefits of rotational grazing include even grazing pressure [8], [9], [10]; reduced herbivore selectivity and selection of palatable species [8], [11]; enhanced flowering, growth and survival of plant species [12], [13]; improved pasture utilization [14]; maintenance of pasture cover [15], [16], [17], [18]; higher perennial grass content [19], [20]; increased herbage production [18]; increased perennial basal area [16], [20], [11]; reduced soil erosion [17] and improved animal production [16]. However, Briske et al. [21] stressed that the experimental evidence on a whole is decidedly mixed with many more studies reporting no demonstrable benefit of rotational grazing.

Many of the reported benefits of rotational grazing especially those related to pasture production can translate into increases in SOC in rotationally grazed paddocks relative to continuously grazed paddocks because, all else being equal, greater organic matter inputs to the soil will lead to greater SOC levels [22]. Persistent groundcover resulting in decreased erosion will have a two-fold SOC benefit–elimination of a direct loss pathway via eroded topsoil and maintenance of improved soil structure [23]. There is also some evidence that belowground microbial activity can be enhanced under rotational grazing [24] which may result in greater stabilization of organic matter [25]. Clearly, there is evidence to support improvement of SOC levels with adoption of rotational grazing.

However, the field evidence for carbon sequestration is inconsistent. In a global meta-analysis, Conant et al. [26] suggested that for most management techniques in grasslands, such as fertilization and improvement of grazing management, average relative gains in SOC in the 0–0.3 m horizon are of the order of 1–2% per year, corresponding to average sequestration rates of 0.3 Mg C ha-1 yr-1. However, the variance around that mean value was large and in many individual studies the data were insignificantly different between management categories [27], [28], [29]. Additionally, there is evidence that increasing grazing intensity may have different effects in C3 versus C4 dominated pastures [30].

In the current study, we sought to better understand if rotational grazing relative to continuous grazing of remnant native grass-based pastures resulted in increases in SOC levels and if there were specific management practices which were more effective than others in increasing SOC.

Methods

2.1. Field sites

Approximately 20 landowners were identified as having adopted rotational grazing practices over the past 5–15 years in the upper and mid-north of South Australia, a region covering about 200 km in latitude and 60 in longitude. Grazed pastures are generally confined to the non-arable upper slopes of the hilly ranges that tend to be rocky, with shallower soils and too steep to traverse with machinery. Pasture composition is generally dominated by native perennial grasses Austrostipa species (Spear grass) and Rytidosperma species (Wallby grass) and annual grasses Avena barbata (wild oats), Vulpia species (Sliver grass), Bromus species (Brome grass) and a range of herbs and forbs (nomenclature follows [31]). However, the composition is largely dependent on past management, particularly grazing management, fertiliser application and any history of cultivation. Rainfall varies across this region from 310 to 570 mm yr-1 (winter dominant) with mean winter temperatures of 10.5–13.5°C and summer temperatures of 20.1–21.9°C. Mean maxima temperatures tend to increase from south to north and minima temperature decreases, but temperatures are also influenced by elevation. Soils were classified using the Australian Soil Classification [32] as Red Chromosols; however, Calcarosols were encountered at some sites. In the USDA-NRCS classification [33], these soils would be Rhodoxeralfs and Haplocalcids.

Twelve rotationally grazed paddocks were selected based on two criteria: 1) landholders had been managing livestock in a consistent way for a period of at least seven years (preferably 10 years); and 2) a nearby continuously grazed paddock could also be identified that was located on the same soil type and landscape position (Fig 1). The distance between pairs ranged from across a fence line up to 10 km in one case to find a paired continuously grazed paddock with the same soil properties. The 7–10 year minimum time period should allow for pasture composition to stabilize as species sensitive to the change in regime could have been lost from the species assemblage following a change in grazing management [34]. Rotationally grazed paddocks ranged in area from 6 to 79 ha, while continuously grazed paddocks ranged from 17 to 2670 ha. Wherever possible a site with native remnant vegetation with no actively managed grazing on the same soil type was also sampled. A total of four native vegetation sites were sampled. Rotational grazing sites #1 and #2 share a common continuously grazed site and native remnant vegetation site.

thumbnail
Fig 1. Site locations plotted over a rainfall map of South Australia.

https://doi.org/10.1371/journal.pone.0136157.g001

Paddock information and management histories were collected for all paddocks sampled including livestock grazing, cultivation and fertilizer management, fire history and other grazing impacts [35]. The management history is based on landholder records, observations and discussions about their current and previous management of individual paddocks where possible. Permission was obtained in writing from all of the private landowners prior to field work. For each site, we also collected climate data for the period 1980 to 2011 for each site were extracted from the SILO database [36] and various topographic attributes were derived from the 1 arc-second resolution Smoothed Digital Elevation Model of Australia [37]. For climate, the 5 year and 30 year mean daily temperature (°C), total rainfall (mm) and average vapour pressure deficit (kPa) for winter, summer and annual periods were considered. For topographic attributes, elevation, aspect, slope, plan curvature, profile curvature and derived indices related to wetness (topographic wetness index, TWI; topographic position index, TPI) were recorded [38].

Pasture productivity was estimated using the normalized difference vegetation index (NDVI). Mean monthly NDVI values were derived from the 250 m resolution MODIS NDVI (MOD13Q1) 16-day composite mosaics for Australia [39], [40], [41]. The 16-day composites were aggregated to monthly values, calculated as the average of the 16-day periods that overlap with a month, weighted by the number of days of the overlap. Monthly NDVI was then summed to give an annual NDVI value for each of the years since conversion to rotational grazing for each pair of sites. Estimating productivity as the sum of monthly NDVI will underestimate true productivity because of biomass removal during defoliation events. Grazing pressure was either equal or slightly greater in the rotationally grazed pair at each site [35], so there is a chance that our NDVI surrogate for productivity is slightly biased towards the continuously grazed paddock in each pair.

2.2. Field sampling

A preliminary survey of one rotationally grazed paddock where 120 cores were collected in a nested geospatial design was used to guide the choice of field sampling design [42]. This preliminary investigation found that it was most important to capture differences in soil types which were associated with different geomorphic surfaces. Upland residual surfaces and upper slopes often contained Calcarosols while Red Chromosols were typically encountered on lower slopes and alluvial surfaces. Based on these findings we chose a sampling design where each paddock was divided into six strata and within each strata four soil cores (inner diameter = 54 mm) were randomly collected using a hydraulic trailer mounted corer and bulked by depth interval (0–10, 10–20, 20–30 and 30–50 cm). Where paddocks were larger than approximately 10 ha, a 10 ha sub-region was selected for sampling with the selection criteria being to best pair the soil properties between two management categories. Strata were determined on a paddock by paddock basis based on expert opinion of the landform. If obvious different geomorphic surfaces and hence potential differences in soil type were present, then strata were divided amongst different landforms. Where paddocks looked superficially similar, the paddock was divided into six strips of roughly equal dimensions. Samples for determination of bulk density (BD) for the same depth intervals were collected separately using a set of stacked rings (middle ring was 80 mm long with an I.D. = 100 mm) with a slide hammer at one location within each of the six strata at each paddock. All soil sampling occurred between June and August 2013 when paddocks were being rested from grazing.

2.3. Laboratory methodologies

Field moist samples were weighed, dried at 40°C for 48 hrs, re-weighed and then passed through a 2 mm sieve. The mass of gravel retained on the sieve was recorded. Subsamples of the air-dried fine earth fraction were further dried for 24 hrs at 105°C to determine the residual moisture content and to correct all data to an oven-dry basis. The remaining fine earth fraction was quantitatively split using a riffle box down to a 10 g sample which was then finely ground on a Retsch MM400 Mixer Mill (Retsch GmbH, Germany). Bulk density samples were dried at 105°C for 48 hrs before weighing.

All soil samples were analyzed for total carbon (TC) and total nitrogen (TN) by high temperature oxidative combustion on a LECO Trumac CN analyser (LECO Corp., MI, USA). Samples that were found to contain carbonates upon application of 4 M hydrochloric acid (HCl) were then pre-treated with 6% sulphurous acid (H2SO3) before analysis for TC (method 6B3 [43]). Where carbonates were not present total organic carbon (TOC) equaled TC; however, when carbonates were present TOC was taken as the carbon concentration after H2SO3 pretreatment and inorganic carbon (IC) was calculated as the difference between TC and TOC.

Diffuse reflectance mid-infrared (MIR) spectra were obtained on all samples following the sample protocols presented in Baldock et al. [44] on a Nicolet 6700 FTIR spectrometer (Thermo Fisher Scientific Inc., MA, USA) equipped with a KBr beam splitter, a DTGS detector and an automated diffuse reflectance accessory (AutoDiff, Pike Technologies, WI, USA). The allocation of TOC to biologically significant carbon fractions (particulate OC (POC), humus OC (HOC) and resistant OC (ROC) [45]) was estimated using a partial least squares regression (PLSR) model developed by Baldock et al. [44].

Electrical conductivity (EC) and pH were measured on 120 samples (one core from each paddock) in a 1:5 soil-to-water suspension and MIR-PLSR regressions were developed to predict these values for the remaining samples. The best fit PLSR model for pH included 6 factors with an R2 = 0.76 and RMSE = 0.439. Electrical conductivity did not predict as well because there was generally a small range of values across these sites (R2 = 0.61, RMSE = 0.090). Clay content was predicted using algorithms from an Australian soil spectral library [46].

2.4. Data analysis

Given the diversity of management data collected, we sought to understand the most important parameters differentiating rotational grazing from continuous grazing. This was accomplished through multivariate analysis of these data using the PRIMER 6 and PERMANOVA+ software packages (Primer-E Ltd., Plymouth, UK). First the continuous data on rest periods per annum, rest days per period, stocking rate and grazing days per annum were normalized and a resemblance matrix using Euclidean distance between samples was generated. A distance-based linear model using the BEST routine [47] then identified the most important variables to describe the management data. A permutational multivariate analysis of variance (PERMANOVA [48]) was also run on the reduced set of data to test for significant difference between the management practices. Principal coordinates [49] and cluster [50] analyses were also performed on this reduced dataset to visualize the data and find significant grouping.

In order to determine if productivity, as assessed by annual summed NDVI, in the rotationally grazed sites was increasing over time relative to the continuously grazed pairs, we calculated the log response ratio (LRRNDVI) of NDVI as ln(NDVIrotational/NDVIcontinuous) for each year since establishment of rotational grazing and applied linear regression analysis to examine if there had been a significant increase in productivity under rotational grazing.

Soil organic carbon stocks for each horizon (SOCh, Mg C ha-1) were calculated as 10 x thickness (m) x BD (Mg d.w. m-3) x (1 –gravel) x TOC (kg C Mg d.w.-1). In order to minimize any potential difference in SOC stocks due to differences in sampling volume to a fixed depth, we converted all SOC stocks to an equivalent mass basis (SOCeq) [51]. We chose the average fine fraction mass to 30 cm across all sample sites (4251 ± 271 Mg soil ha-1). For cores with < 4251 Mg ha-1 in the 0–30 cm layer, SOCeq was calculated as SOC0-10 + SOC10-20 + fraction of SOC20-30 that would then equal the average soil mass. If the average mass was greater than average, then SOCeq was calculated as SOC0-10 + SOC10-20 + SOC20-30 + fraction of SOC30-50 to equal the average soil mass.

Mean SOCeq, POCeq and C:N ratio data from each site were analyzed using a one-way analysis of variance (ANOVA) with management category (rotational (n = 12), continuous (n = 11), native remnant (n = 4)) as the main factor. Data were square root transformed prior to analysis to normalize variance.

At the regional scale, climate and soil properties are often the major factors determining the SOC content of a given soil [52]; as such, we have attempted to minimize these covariates in both the experimental design and in subsequent statistical analyses. This study was set up to assess pairs of grazing management strategies as to minimize covariates at each location. Focusing only on the grazed paddocks, we calculated log response ratios (LRRSOC) at each site as ln(SOCrotational/SOCcontinuous) following [53].

To better understand the dominant drivers of the observed patterns, correlation and multiple linear regression analyses were performed with the SOCeq and LRR data. After screening and removing redundant results based on the Pearson Product Moment Correlations, the Best Subsets Regression routine in SigmaPlot 12.0 (Systat Software Inc., San Jose, USA) with adjusted R2 as the selection criteria was used to build the best multiple linear regression model. The main factors that we considered in these analyses could be grouped into four categories: climatic, topographic, soil properties and property management. In a second approach to minimize the overriding climate and soil controls on SOC, the residuals, SOCresidual, of the regression between SOCeq and climate/soil properties were further regressed against management data.

Results and Discussion

3.1. Management data

This study was designed under the premise that there are significant differences between rotational and continuous grazing management practices; however, the reality is that there are a myriad of implementations of each of these management practices. Multivariate analysis of grazing management variables, rest periods (days of rest per year), stocking rate and grazing days, found that there were indeed highly significant differences between rotational and continuous stocking practices (one-way PERMANOVA, pseudo-F = 11.14, P < 0.001). In a principal coordinates analysis (PCO) of these same data, it was clear that the two categories of grazing management separate out but that there was variation in grazing variables (e.g. stocking rate, length of rest period and number of grazing days/annum) across this management spectrum (Fig 2). A cluster analysis demonstrated that there is a group of farmers who practice a more continuous form of rotational grazing (e.g., lower stocking rate and more grazing days than other rotational graziers) or a more rotational form of continuous stocking (e.g., multiple or longer rest periods). The fact that farmers implement a range of practices under a generic management category will not come as a surprise to the farmers themselves, but this is a critically important point in interpreting data from comparative studies such as this one. The variability introduced due to this gradient in management may preclude finding a treatment effect when lumping data into broad management categories.

thumbnail
Fig 2. Principal coordinates analysis of management data.

Influence of grazing days, stocking rate and rest periods are given in grey vectors. PC1 explained 55.4% of the variance and PC2 explained an additional 28.2%. Clusters are shown in black to indicate most similar groupings.

https://doi.org/10.1371/journal.pone.0136157.g002

3.2. Pasture productivity

Pasture productivity, as assessed by the mean annual summed NDVI over the number of years of rotational grazing implementation, was no different between the two management classes (NDVIrotational = 5.46 ± 0.82, NDVIcontinuous = 5.55 ± 0.95, ANOVA F = 0.055, P = 0.82). It is important to recognize that NDVI may be underestimating the true productivity of pastures with correlation coefficients between NDVI and measured grass yields typically being between 0.6 and 0.8 [54]. This underestimation may be greatest under high grazing pressure, thus potentially masking real differences between grazing management. While the overall means did not show any patterns, when plotting mean LRRNDVI across time, there was a significant positive trend (Fig 3) suggesting that under rotational grazing productivity can increase relative to continuous grazing.

thumbnail
Fig 3. Trend of increasing log response ratio between NDVI of rotationally grazed versus continuously grazed paired paddocks (LRRNDVI) with time since conversion of management.

Only the first 9 years since conversion were included because only 5 sites were under rotational management for longer than that time. Error bars represent 1 standard error.

https://doi.org/10.1371/journal.pone.0136157.g003

Productivity has been found to increase through the implementation of rotational grazing, from both a pasture and livestock production perspective, although the experimental evidence is mixed [20]. Improvements in pasture productivity with rotational grazing have been attributed to enhanced growth and survival of plant species [12], [13], increased herbage production [10], [18], [55], and greater perennial grass content and basal area through regeneration of plants [11], [19], [20]. These improvements in the pasture base can then contribute to improved animal production through increased stocking rates [16].

3.3. Soil organic carbon trends

Across all sampled paddocks, there were no significant differences for SOCeq or SOC0-10 between management categories (Table 1). Mean SOCeq stocks were 48.9 ± 4.5, 49.4 ± 5.5 and 47.7 ± 11.7 Mg C ha-1 (± 1 s.e.m.) for rotationally grazed, continuously grazed and remnant native vegetation, respectively. While total stocks did not vary, the proportion of SOC found as particulate organic carbon (POC) and the C/N ratios were found to vary significantly, with the remnant native vegetation sites having a greater proportion of POC and higher C/N ratios than either of the grazing categories (Table 1).

thumbnail
Table 1. Selected soil organic matter properties summarized by grazing management category (mean ± 1 s.e.m. presented).

For properties with significant differences amongst grazing management categories (rotational and continuous grazing), pairs that differ from each other are given with different letters.

https://doi.org/10.1371/journal.pone.0136157.t001

Given the large climatic gradients especially in rainfall (Fig 1) across this region, we expected that we would find large regional differences in SOC stocks. Indeed, there were strong correlations between SOC stocks and temperature, rainfall (Fig 4), pasture productivity (NDVI) and topographic attributes related to wetness (Table 2). Measured or predicted soil properties (pH, EC and clay) did not correlate well with SOC stocks. There was no correlation between temperature and rainfall, but NDVI was correlated with climatic indices (NDVI v. winter temperature, R = 0.47, P = 0.021; NDVI v. annual rainfall, R = 0.52, P = 0.009; NDVI v. annual vapour pressure deficit, R = -0.72, P < 0.001). Slope, topographic wetness index (TWI) and topographic position index (TPI) were all correlated (TWI v. slope, R = 0.67, P < 0.001; TWI v. TPI, R = -0.68, P < 0.001). When used in a multiple linear regression, mean winter temperature and mean annual rainfall could explain 61% of the variance in SOC (R2 = 0.61, ANOVA F = 19.99, P < 0.0001). These findings are consistent with well established ecological principles that climate is a master variable controlling SOC stocks at regional scales due to its overriding influence on primary productivity and microbial activity [22].

thumbnail
Fig 4. Relationship between mean annual rainfall and SOCeq for rotationally and continuously grazed paired sites.

https://doi.org/10.1371/journal.pone.0136157.g004

thumbnail
Table 2. Pearson’s correlation coefficients between potential SOC covariates and SOCeq stocks (n = 27 for climatic and topographic variables, n = 23 for NDVI and management variables) and LRRSOC (n = 12).

https://doi.org/10.1371/journal.pone.0136157.t002

When only the grazed paddocks were considered, TWI and rest periods (average # of rest periods in a year) added additional explanatory power to the regression (R2 = 0.72) but each variable only explained an additional 3–6% of the variance in SOCeq. Due to the multicollinearity of NDVI with climatic indices, inclusion of NDVI in the multiple linear regression did not improve the prediction of SOCeq. We also compared the management data to the residuals from the multiple linear regression with mean winter temperature and mean annual rainfall and found that rest periods (days of rest per year) was the only single variable that could explain a significant fraction of the residual variance (Pearson’s R = 0.44, P = 0.04). In a multiple linear regression, rest periods, stocking rate and grazing days could explain 58% of the variance in the residuals of SOCeq (ANOVA F = 7.86, P = 0.002) although the only significant term (P < 0.05) was rest periods.

SOCresiduals = -4.21 + (2.54 × rest periods) + (0.23 × stocking rate)–(0.31 × grazing days). Inspection of this equation reveals that both rest periods and stocking rate, the two management variables that were positively associated with rotational grazing practices (Fig 2) positively influenced SOCresiduals suggesting that rotational grazing may be leading to marginal improvements in SOC.

3.4. Paired site SOC analysis

A paired site approach was specifically adopted in this study to minimize the influence of climatic controls on SOC stocks in the interpretation of potential changes due to grazing management. Across all 12 sites, the mean LRRSOC was 0.004 ± 0.058 (1 s.e.m.). While there were no significant correlations between LRRSOC and any of the soil, climate, topographic or management variables (Table 2), management variables (i.e., PCO2 from the management ordination) again could explain about 20% of the variability in the LRRSOC data (Fig 5C). Given that the variable grazing days was most strongly correlated with PCO2 (Fig 2), this finding suggests that amongst the rotationally grazed sites the sites with the strongest grazing pressure showed the greatest SOC response.

thumbnail
Fig 5. Log response ratio of SOCeq (LRRSOC) between pairs plotted against years under rotational management (A), principal coordinate axis 1 and 2 (B & C), and the Euclidean distance between management pairs (D).

Linear trends with Pearson correlation coefficients given on each plot expect in (A) where the mean LRRSOC and 95% confidence intervals are plotted.

https://doi.org/10.1371/journal.pone.0136157.g005

3.5. Management effects on SOC

In this study, despite significant differences in management practices (Fig 2), which has led to minor shifts in pasture productivity (Fig 3), there were no clear trends in SOC stocks (Fig 5A). Management factors were able to explain 58% of the residual variance in SOCeq after taking away the overriding trends with climate. This value of 58% equates to 22% of the total variance in SOCeq across our study region. Interestingly, the second principal coordinate axis (PCO2) could also explain 22% of the variance in LRRSOC (Fig 5C). Given all the sources of uncertainty in measuring differences in SOC stocks, we are cautious to make a strong case out of this limited finding and feel the preponderance of evidence in this study suggests that implementation of rotational grazing is only having a small positive effect on SOC stocks. A finding of no significant management effect on SOC stocks is still an important finding in the context of managing land for greenhouse gas abatement.

The scientific literature is decidedly mixed with some studies showing positive SOC responses to rotational grazing (e.g. [56], [57]), many showing no significant difference (e.g. [28], [29]) and a few suggesting a slight negative SOC response (e.g. [27], [58]). Most of the positive responses of SOC to adoption of rotational grazing seem to be located in more mesic rangelands because of the shorter recovery times needed for the vegetation between defoliations [10]. Within Australia, field studies have failed to find a significant grazing management effect on SOC stocks. Wilson and Lonergan [29] found no difference in SOC stocks in the 0–30 cm layer between similar styles of rotational and continuous grazing of improved pastures in the central Tablelands, NSW. Chan et al. [28] found significantly higher SOC stocks in native and introduced pastures which had been improved with phosphorus often associated with the addition of legumes (grazing management controlled for), but no significant differences in SOC between rotational and continuous grazing management in central and southern NSW. Allen et al. [27] found a small negative influence of stocking rate on SOC stocks but no significant differences between grazing management styles in the rangelands of Queensland. Despite some uncertainties in the absolute quality of the pairings suggested by the SOC and land management data, our finding of no significant impact of rotational grazing on SOC stocks relative to continuous grazing is in accord with similar work in other regions of Australia and the globe.

In a recent synthesis of rotational grazing experimental research, Briske et al. [21] concluded that “continued advocacy for rotational grazing as a superior strategy of grazing on rangelands is founded on perception and anecdotal interpretations, rather than an objective assessment of the vast experimental evidence.” While the Briske et al. [21] review did not focus on soil properties, only 3 of 23 studies found significantly higher plant production in rotational compared to continuously grazed treatments. Given that gains in plant productivity and root turnover to the soil are the most likely reasons that rotational grazing may lead to greater SOC stocks, the fact that so few studies have found gains in production suggest that gains in SOC may be the exception rather than the rule.

Detecting change in SOC has several added layers of complexity. As seen in this study and others [28], [29], the inherent variability in SOC within paddocks and across small regions makes detecting small but real improvements in SOC difficult. Additionally, an important finding from this study was that there was a large range of grazing intensities within each management category (Fig 2) and treating all sites as equal within each of the two main categories may be masking real differences in the dependent variable [59].

Conclusions

The evidence from this study suggests that in the short to medium term (< 15 years) measurable gains in SOC with adoption of rotational grazing in similar eco-climatic zones should not be expected to be observed. The data analysis presented here provided limited support to the hypothesis that rotational grazing management can positively change SOC stocks, but detecting this small signal relative to the large variability in SOC is exceedingly difficult. While we did not detect positive trends in SOC over time, NDVI data indicated that plant production was increasing slightly under rotational relative to continuous grazing. This finding of increasing productivity suggests that given enough time observable gains in SOC may be found.

Acknowledgments

The authors would like to thanks all the landholders for providing access to their land; Christian Preuss and Troy Bowman for field work; Amanda Schappel, Aaron Keane and Marc Wilmshurst for initial sample processing; and Christina Asanopoulos and Nilmini Jayalath for laboratory work.

Author Contributions

Conceived and designed the experiments: JS JR MW. Performed the experiments: JR MW MY JA. Analyzed the data: JS JR JA. Wrote the paper: JS JR.

References

  1. 1. Lal R (2004) Soil carbon sequestration impacts on global climate change and food security. Science 304, 1623–1627 pmid:15192216
  2. 2. Kirschbaum MU (2000) Will changes in soil organic carbon act as a positive or negative feedback on global warming? Biogeochemistry 48, 21–51.
  3. 3. Smith P (2004) Carbon sequestration in croplands: the potential in Europe and the global context. Eur J Agron 20, 229–236.
  4. 4. Lal R (2006) Enhancing crop yields in the developing countries through restoration of the soil organic carbon pool in agricultural lands. Land Degrad Dev 17, 197–209.
  5. 5. Loveland P, Webb J (2003) Is there a critical level of organic matter in the agricultural soils of temperate regions: a review. Soil Till Res 70, 1–18.
  6. 6. Australian Government (2011) Carbon Credits (Carbon Farming Initiative) Act 2011, C2011A00101.
  7. 7. Fitzgerald D (2000) Glossary of grazing management terms. Prograzier Autumn, 14.
  8. 8. Leigh JH, Holgate MD (1978) Effects of pasture availability on the composition of the diet selected by sheep grazing native, degenerate and improved pastures in the Upper Shoalhaven Valley, New South Wales. Aust J Exp Agr 18, 381–390.
  9. 9. Teague WR, Dowhower SL (2003) Patch dynamics under rotational and continuous grazing management in large, heterogeneous paddocks. J Arid Environ 53, 211–229.
  10. 10. Teague WR, Provenza FD, Kreuter U, Steffens T, Barnes M (2013) Multi-paddock grazing on rangelands, Why the perceptual dichotomy between research results and rancher experience. J Environ Manage 128, 699–717. pmid:23850765
  11. 11. Teague WR, Dowhower SL, Waggoner JA (2004) Drought and grazing patch dynamics under different grazing management. J Arid Environ 58, 97–117.
  12. 12. Fitzgerald RD, Lodge GM (1997) Grazing management of temperate pastures, literature reviews and grazing guidelines for major species. NSW Agriculture. Technical Bulletin No. 47.
  13. 13. Lodge GM, Whalley RDB (1985) The manipulation of species composition of natural pastures by grazing management on the northern slopes of New South Wales. Aust Rangeland J 71, 6–16.
  14. 14. Dorrough J, Yen A, Turner V, Clark SG, Crosthwaite J, Hirth JR (2004) Livestock grazing management and biodiversity conservation in Australian temperate grassy landscapes. Aust J Agr Res 55, 279–295.
  15. 15. Earl JM, Jones CE (1996) The need for a new approach to grazing management—is cell grazing the answer? Rangeland J 18, 327–350.
  16. 16. Kahn LP, Earl JM, Nicholls M (2010) Herbage mass thresholds rather than plant phenology are a most useful cue for grazing management decisions in the mid-north of South Australia. Rangeland J 32, 379–388.
  17. 17. Sanjari G, Yu B, Ghadiri H, Ciesiolka CAA, Rose CW (2009) Effects of time-controlled grazing on runoff and sediment loss. Soil Res 47, 796–808.
  18. 18. Teague WR, Dowhower SL, Baker SA, Haile N, DeLaune PB, Conover DM (2011) Grazing management impacts on vegetation, soil biota and soil chemical, physical and hydrological properties in tall grass prairie. Agr Ecosyst Environ 141, 310–322.
  19. 19. Kemp DR, Michalk DL, Virgona JM (2000) Towards more sustainable pastures, lessons learnt. Aust J Exp Agr 40, 343–356.
  20. 20. Sanford P, Cullen BR, Dowling PM, Chapman DF, Garden DL, Lodge GM, et al. (2003) SGS Pasture Theme, effect of climate, soil factors and management on pasture production and stability across the high rainfall zone of southern Australia. Aust J Exp Agr 43, 945–959.
  21. 21. Briske DD, Derner JD, Brown JR, Fuhlendorf SD, Teague WR, Havstad KM, et al. (2008) Rotational grazing on rangelands, reconciliation of perception and experimental evidence. Rangeland Ecol Manag 61, 3–17.
  22. 22. Amundson R (2001) The carbon budget in soils. Annu Rev Earth Planet Sci Lett 29, 535–562
  23. 23. Chappell A, Sanderman J, Thomas M, Read A, Leslie C (2012) The dynamics of soil redistribution and the implications for soil organic carbon accounting in agricultural south-eastern Australia. Glob Change Biol 18, 2081–2088.
  24. 24. Bai G, Bao Y, Du G, Qi Y (2013) Arbuscular mycorrhizal fungi associated with vegetation and soil parameters under rest grazing management in a desert steppe ecosystem. Mycorrhiza 23, 289–301. pmid:23179900
  25. 25. Cotrufo MF, Wallenstein MD, Boot CM, Denef K, Eldor P (2013) The Microbial Efficiency-Matrix Stabilization (MEMS) framework integrates plant litter decomposition with soil organic matter stabilization: Do labile plant inputs form stable soil organic matter? Global Change Biol 19, 988–995.
  26. 26. Conant RT, Paustian K, Elliott ET (2001) Grassland management and conversion into grassland: effects on soil carbon. Ecol App 11, 343–355.
  27. 27. Allen DE, Pringle MJ, Bray S, Hall TJ, O’Reagain PO, Phelps D, et al. (2013) What determines soil organic carbon stocks in the grazing lands of north-eastern Australia? Soil Res 51: 695–706.
  28. 28. Chan KY, Oates A, Li GD, Conyers MK, Prangnell RJ, Poile G, et al. (2010) Soil carbon stocks under different pastures and pasture management in the higher rainfall areas of south-eastern Australia. Soil Res 48, 7–15.
  29. 29. Wilson BR, Longeran VE (2013) Land-use and historical management effects on soil organic carbon in grazing systems on the Northern Tablelands of New South Wales. Soil Res 51, 668–679.
  30. 30. McSherry ME, Ritchie ME (2013) Effects of grazing on grassland soil carbon, a global review. Glob Change Biol 19, 1347–1357.
  31. 31. State Herbarium of South Australia (2014) Electronic Flora of South Australia. Available: http://www.flora.sa.gov.au/census.shtml accessed April 7, 2014
  32. 32. Isbell R (2002) The Australian soil classification. CSIRO publishing.
  33. 33. Soil Survey Staff (2009) Soil taxonomy: A basic system of soil classification for making and interpreting soil surveys. 2nd edition. Natural Resources Conservation Service. U.S. Department of Agriculture Handbook 436.
  34. 34. Reseigh J (2004) Grazing management determinants of ground-storey vegetation, Northern Tablelands, NSW. Ph D, University of New England.
  35. 35. Sanderman J, Reseigh J, Wurst M, Austin J (2014) Soil carbon in native grass-based pastures under different grazing management practices in South Australia. v1. CSIRO. Data Collection. 10.4225/08/53B0EC7D91D4B
  36. 36. Queensland Government (2014) SILO Climate Data. The State of Queensland, Department of Science, Information Technology, Innovation and the Arts. Available: http://www.longpaddock.qld.gov.au/silo/index.html. Accessed 05 March 2014
  37. 37. Gallant JC, Dowling TI, Read AM, Wilson N, Tickle P, Inskeep C (2011) 1 second SRTM Derived Digital Elevation Models User Guide. Geoscience Australia. http://www.ga.gov.au/topographic-mapping/digital-elevation-data.html
  38. 38. Sanderman J, Baldock J, Hawke B, Macdonald L, Schmidt E, Szarvas S, et al. (2013) Soil Carbon Research Program Project 1, Field and Laboratory Methodologies. CSIRO Sustainable Agriculture Flagship. Available: http://www.csiro.au/en/Organisation-Structure/Flagships/Sustainable-Agriculture-Flagship/Soil-Carbon-Research-Program/SCaRP-Projects-Overview.aspx. Accessed 07 April 2014
  39. 39. NASA Land Processes Distributed Active Archive Center LP DAAC, 2013. MOD13Q1. USGS/Earth Resources Observation and Science EROS Center, Sioux Falls, South Dakota.
  40. 40. Paget MJ, King EA (2008) MODIS Land data sets for the Australian region. CSIRO Marine and Atmospheric Research Internal Report 004. Available: https://remote-sensing.nci.org.au/u39/public/html/modis/lpdaac-mosaics-cmar/doc/ModisLand_PagetKing_20081203-final.pdf Accessed 05 April 2014
  41. 41. Paget MJ, King EA (2013) Normalized Difference Vegetation Index NDVI and Enhanced Vegetation Index EVI—MODIS, LPDAAC MOD13Q1 mosaic, Australia coverage. CSIRO Marine and Atmospheric Research. Made available by the AusCover facility. Available: http://www.auscover.org.au of the Terrestrial Ecosystem Research Network TERN, http://www.tern.org.au. Accessed 05 April 2014
  42. 42. Sanderman J, Reseigh J, Wurst M, Young MA, Austin J (2014) FTRG Project 53 Native perennial vegetation, building stable soil carbon and farm resilience. A report to the Australian Department of Agriculture.
  43. 43. Rayment GE, Lyons DJ (2011) Soil chemical methods–Australasia. CSIRO Publishing.
  44. 44. Baldock JA, Hawke B, Sanderman J, Macdonald LM (2013) Predicting contents of soil carbon and its component fractions from diffuse reflectance mid-infrared spectra. Soil Res 51, 577–595.
  45. 45. Baldock JA, Sanderman J, Macdonald LM, Massis A, Hawke B, Szarvas S, et al. (2013) Quantifying the allocation of soil organic carbon to biologically significant fractions. Soil Res 51, 561–576.
  46. 46. Janik LJ (2006) Predict Ver 6.0 MIR Soil Analysis Software. CSIRO Land and Water.
  47. 47. Legendre P, Anderson MJ (1999) Distance-based redundancy analysis, testing multispecies responses in multifactorial ecological experiments. Ecol Mono 69, 1–24.
  48. 48. Anderson MJ (2001) A new method for non-parametric multivariate analysis of variance. Austral Ecol 26, 32–46.
  49. 49. Legendre P, Legendre L (1998) Numerical Ecology, 2nd English edition. Elsevier.
  50. 50. Clarke KR (1993) Non-parametric multivariate analyses of changes in community structure. Aust J Ecol 18, 117–143.
  51. 51. Gifford RM, Roderick ML (2003) Soil carbon stocks and bulk density: spatial or cumulative mass coordinates as a basis of expression? Global Change Biol 9, 1507–1514.
  52. 52. Baldock JA, Broos K (2011) Soil organic matter. In Huang P, editor. Handbook of soil science. 2nd edn. CRC Press/Taylor Francis Group. pp. 11.1–11.52.
  53. 53. Hedges LV, Gurevitch G, Curtis PS (1999) The meta-analysis of response ratios in experimental ecology. Ecology 80, 1150–1156.
  54. 54. Xu B, Yang XC, Tao WG, Qin ZH, Liu HQ, Miao JM, et al. (2008) MODIS-based remote sensing monitoring of grass production in China. Int J Remote Sens 29, 5313–5327.
  55. 55. Brougham RW (1959) The effects of frequency and intensity of grazing on the productivity of a pasture of short-rotation ryegrass and red and white clover. New Zeal J Agr Res 2, 1232–1248.
  56. 56. Conant RT, Six J, Paustian K (2003) Land use effects on soil carbon fractions in the southeastern United States. I. Management-intensive versus extensive grazing. Biol Fert Soils 38, 386–392.
  57. 57. Teague WR, Dowhower SL, Baker SA, Ansley RJ, Kreuter UP, Conover DM, et al. (2010) Soil and herbaceous plant responses to summer patch burns under continuous and rotational grazing. Agr Ecosyst Environ 137, 113–123.
  58. 58. Badini O, Stöckle CO, Jones JW, Nelson R, Kodio A, Keita M (2007) A simulation-based analysis of productivity and soil carbon in response to time-controlled rotational grazing in the West African Sahel region. Agr Syst 94, 87–96.
  59. 59. Macdonald LM, Herrmann T, Baldock JA (2013) Combining management based indices with environmental parameters to explain regional variation in soil carbon under dryland cropping in South Australia. Soil Res 51, 738–747.