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This study is an assessment of the relation of the spatial variability of Nitraria schoberi Linn. to the soil properties conducted by using geo-statistical analysis. In an area of 140 ha a regular network from a semi-arid region of Meighan Playa in central Iran was selected. The results showed that statistically most of the variables fit spherical, exponential and Gaussian models. The lowest and the highest coefficients of variation were found with the soil pH (27%) and the density (66%) of Nitraria schoberi, respectively. The semi-variogram analysis showed that the effective range fluctuated from 150 m for silt to 2563.43 m for the acidity of the soil. The electronic conductivity and soil texture showed more spatial dependency than the organic matter.
Ground-level sulphur dioxide is one of the air pollutants of high concern as a typical indicator of urban air quality. To inform decisions regarding, for instance, the protection of public health from elevated SO₂ levels in the city of Balikesir, an understanding of spatial-temporal variance of SO₂ patterns is necessary. Therefore, the aim of this study is to locate sample points, characterize distribution patterns, perform the probability map, and map SO₂ distributions by means of spatial information sciences. In this work, the data were compiled from 48 sampling sites using passive sampling on 10-17 March 2010 (in winter) and on 13-20 August 2010 (in summer). The estimations of SO₂ levels at unsampled locations were carried out with the inverse distance weighted method. Finally, locations exceeding the Turkish Air Quality Standard threshold value were determined in the Balikesir by use of geostatistical algorithms (Indicator kriging). The capability of the methods to predict air quality data in an area with multiple land-use types and pollution sources were then discussed. The results of the passive sampling study show that the winter and summer average concentrations are 32.79 µg/m³ and 28.27 µg/m³ for SO₂, respectively. It is expected that where industrial activity is not excessively important, traffic and domestic heating systems are the main source of SO₂ precursors. Moreover, using Indicator Kriging, results show that there are multiple hotspots for SO₂ concentrations and they are strongly correlated to the locations of industrial plants, traffic, and domestic heating systems in Balikesir.
The aims of this study were: 1) to map the different soil parameters using three geostatistical approaches, including; ordinary kriging (OK), cokriging (CK), and regression kriging (RK), 2) to compare the accuracy of maps created by the mentioned methods, and 3) to evaluate the efficiency of using ancillary data such as satellite images, elevation, precipitation, and slope to improve the accuracy of estimations. In the rangelands of the Poushtkouh area of central Iran, 112 soil samples were collected. The maps of different soil parameters were created using the mentioned methods. To assess the accuracy of these maps, cross-validation analyses were conducted. The cross-validation results were assessed by the root mean square error (RMSE) and normal QQ-plot together with sum and average error to suggest the best estimation approach for mapping each soil parameter. The results have shown that, in most cases, taking the ancillary data into account in estimations has increased the accuracy of the created maps. Except for clay, the OK method was suggested as the best estimation method, and the RK and CK were the best recommended estimation methods for the rest of the parameters. The results suggest the application of the framework of this study for similar areas.
In plant breeding field trials plant competition effects can seriously distort the treatment contrasts. To detect the effects, the special designs, known as competition designs, should be applied. In the study the so-called competition diallel with 5 genotypes was used to estimate the competition effects in pea, faba bean and yellow lupin. For each species the two trials with 1- and 3-row plots were established. Soil samples were taken to assess spatial soil variation. The semivariances of soil properties (pH, P, K, Mg) were calculated and semivariogram models were fitted. Finally, kriging was applied to predict the values of the soil properties for each plot. The general linear models were applied to estimate the magnitude of neighbor effects and the spatial effects of soil variation. The competition effects were calculated according to the competition diallel model using original data and residuals after elimination of soil spatial effects. The competition effects in yield of grain legumes depended on the plot size as well as on the species and its growth habit. The competition effects in 1-row plot experiment ranged from 10 to 40% in pea, 10 to 30% in faba bean and 10 to 100% in yellow lupin. For the 3-row plot experiment the effects ranged from 0 to 10% in pea and faba bean and 5 to 50% in yellow lupin. The competition analysis with additional information on soil variation in comparison with the analysis using the original plot data may extend the interpretation of specific competition relations between the genotypes of a given crop.
The predictive modeling of plant species distribution has wide applications in vegetation studies. This study attempts to assess three modeling approaches to predict the plant distribution in the dry (precipitation 128–275 mm) mountainous (altitude 1129–2260 m a.s.l.) scrub vegetation on the example of the rangelands of northeastern Semnan, Iran. The vegetation of the study area belongs to the communities of Artemisia, Astralagus, Eurotia and other scrub species. The main objective of this study is to compare the predictive ability of three habitat models, and to find the most effective environmental factors for predicting the plant species occurrence. The Canonical Correspondence Analysis (CCA), Logistic Regression (LR), and Artificial Neural Network (ANN) models were chosen to model the spatial distribution pattern of vegetation communities. Plant density and cover, soil texture, available moisture, pH, electrical conductivity (EC), organic matter, lime, gravel and gypsum contents and topography (elevation, slope and aspect) are those variables that have been sampled using the randomized systematic method. Within each vegetation type, the samples were collected using 15 quadrates placed at an interval of 50 m along three 750 m transects. As a necessary step, the maps of all factors affecting the predictive capability of the models were generated. The results showed that the predictive models using the LR and ANN methods are more suitable to predict the distribution of individual species. In opposite, the CCA method is more suitable to predict the distribution of the all studied species together. Using the finalized models, maps of individual species (for different species) or for all the species were generated in the GIS environment. To evaluate the predictive ability of the models, the accuracy of the predicted maps was compared against real-world vegetation maps using the Kappa statistic. The Kappa (κ) statistic was also used to evaluate the adequacy of vegetation mapping. The comparison between the vegetation cover of a map generated using the CCA application and its corresponding actual map showed a good agreement (i.e. κ= 0.58). The results also revealed that maps generated using the LR and ANN models for Astragalus spp., Halocnemum strobilaceum, Zygophyllum eurypterum and Seidlitzia rosmarinus species have a high accordance with their corresponding actual maps of the study area. Due to the high level of adaptability of Artemisia sieberi, allowing this specie to grow in most parts of the study area with relatively different habitat conditions, a predictive model for this species could not be fixed. In such cases, a set of predictive models may be used to formulate the environment-vegetation relationship. Finally, the predictive ability of the LR and ANN models for mapping Astragalus spp. was determined as κ = 0.86 and κ = 0.91 respectively, implying a very good agreement between predictions and observations. It is concluded that the combination of mod- elling of the local species distribution constitutes a promising future research area, which has the potentiality to enhance assessments and conservation planning of vegetation (like rangelands) based on predictive species models.
W pracy oceniono stabilność wariogramów wykorzystywanych do oceny przestrzennej zmienności wilgotności. Analizę przeprowadzono na podstawie pomiarów wilgotności gleby na głębokości 10 cm od powierzchni terenu. Badania przeprowadzono w miejscowości Sucha Rzeczka w województwie warmińsko-mazurskim na poletku stanowiącym użytek zielony. Przeprowadzone pomiary i analizy pozwoliły stwierdzić, że stabilność wariogramów jest zadowalająca, gdy budowane są dla co najmniej 20 par porównywanych ze sobą punktów pomiarowych. Wysoka wartość wymiaru fraktalnego D = 1,8 świadczy o dużej losowości wilgotności na rozpatrywanym obszarze. Wartość wymiaru fraktalnego ulega stabilizacji, gdy jest on wyznaczany na podstawie wariogramów zbudowanych dla co najmniej 30 par porównywanych punktów.
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