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    • List of Articles مژگان احمدی ندوشن

      • Open Access Article

        1 - Modeling Soil Nitrogen Using Remote Sensing, Regression and Random Forest Models
        Mahboubeh Sadeghi Mozhgan Ahmadi Nadoushan
        Background and Aim: Soil is one of the important natural resources of any country, which plays an important role in preserving the environment and producing food. Increasing and decreasing the amount of total soil nitrogen due to various agricultural methods, the entry More
        Background and Aim: Soil is one of the important natural resources of any country, which plays an important role in preserving the environment and producing food. Increasing and decreasing the amount of total soil nitrogen due to various agricultural methods, the entry of industrial wastewater into water and other factors, leads to microbial contamination of soil, reduced vegetation and deficiency in agricultural products needed by humans. Mapping soil nutrient distribution helps mangers in decisions. Since laboratory analysis of these parameters is time consuming and costly across large scales, attempts have been made in recent years to study soil nitrogen based on remote sensing techniques. In this regard, the present study investigated the applicability of remote sensing predicting soil total nitrogen in the east of Lenjan city.Method: Nitrogen reference points were identified by analyzing 50 randomly-selected surface soil samples from 0-20 cm depth. Nitrogen of soil samples was measured by Kjeldahl method after drying soil at 25 ° C, passing through a 2 mm mesh sieve and transferring to the laboratory, to compare the final results obtained from field sampling and remote sensing technology. Landsat 8 OLI Satellite Image of 2019 (Path 164/Row 37) was obtained and geometric and radiometric correction were applied. Cloud cover for image provided was less than 10%. To reduce the effect of atmospheric diffusion on the quality of image, radiation and atmospheric correction were performed using the FLASH model. the Landsat-8 satellite image (rows 164 and 37) taken on 15 Sep. 2019 and along with three topographic indices of elevation, slope and topographic wetness index (TWI) were introduced to the multiple linear regression and random forest models. Results: The digital elevation map of the area showed elevation values ​​between 1100 and 2050 meters. The slope of the study area was less than eight percent. Numerical values ​​of TWI index near water bodies were found to be 0.77. DVI and EVI index values ​​increased with increasing vegetation cover. NDVI index showed values ​​higher than 0.3 and NDWI index as a water index showed a maximum value of 0.77. The SAVI index showed high differences from areas without cover to sparse cover and areas with strong vegetation. SBI index and SI salinity indices showed very high variability in terms of soil parameters in barren lands. Nitrogen regression model was built using three indices RVI, DVI and TWI with p-values of 0.049 and 0.00, respectively. In the nitrogen random forest model, however, plant and soil indices played a more important role in model construction with an of r2 value of 0.44.Conclusion: Total soil nitrogen in soil parameters showed correlation with density and sand and clay from soil texture and in topographic parameters with elevation and spectral indices with EVI RVI, SAVI, NDWI, NDVI and DVI at the level of 0.01 and with SI3 of salinity indices at the 0.05 level. In soil parameters, silt is correlated with sand and clay at the level of 0.05 and sand with clay as well as density with clay are correlated at the level of 0.01. The results of this study showed that the topographic condition of the region along with red and near infrared-based indices had a significant role in predicting soil total nitrogen. Results also showed a slight difference was observed between the two models in predicting soil nitrogen. Manuscript profile
      • Open Access Article

        2 - Modeling Soil Organic Matter Distribution Using Remote Sensing and Random Forest Model and Kriging in Lenjan County
        Fatemeh Shiranitabar Mozhgan Ahmadi Nadoushan
        Background and Aim: Soil is one of the most important natural resources that provides more than 97% of human food needs. Soil organic matter (SOM) is an important soil quality factor that greatly affects soil’s physical, chemical, and biological properties. Modeli More
        Background and Aim: Soil is one of the most important natural resources that provides more than 97% of human food needs. Soil organic matter (SOM) is an important soil quality factor that greatly affects soil’s physical, chemical, and biological properties. Modeling and mapping of soil properties are critical in many environmental, climatic, ecological, and hydrological applications. The main objective of this study is to model the distribution of soil organic matter and organic carbon using satellite images and random forest and kriging models in Lenjan County.Method: In this study, digital maps of four main soil parameters including soil organic carbon, soil organic matter, electrical conductivity, and pH are prepared using random forest and Kriging methods in Lenjan County. Based on homogeneous land units, a total of 110 points in the study area are determined, and in these points, samples are taken from a depth of 0 to 30 cm of soil surface. Sampling is done in July 2021 and Sentinel-2 satellite images are acquired from the same month because better information is available this month due to fewer clouds and increased direct reflection from the soil surface. In addition, 16 environmental variables affecting the distribution of soil parameters are used. Various auxiliary variables such as NDVI, NDWI, DEM, and Slope are used for prediction, which are all directly or indirectly extracted from satellite images.Results: The maps obtained by the random forest method showed more accuracy than the kriging method. The zoning map prepared using the random forest method displays much more details than the map prepared by kriging method. The output of the random forest model with the combination of different auxiliary variables showed values ​​equal to 0.312, 0.54, 0.73 and 0.16 of the modeling error for soil organic carbon, organic matter, electrical conductivity and pH, respectively. In the study area, the maximum values of soil organic carbon and organic matter were observed in urban areas and the highest values of electrical conductivity and pH were observed in agricultural lands. The most important variables affecting the spatial distribution of organic carbon and soil organic matter are clay, slope and silt. While in modeling electrical conductivity, silt BI and Aspect and in modeling pH, MNDWI, NDWI and DEM variables are recorded as more important than other variables.Conclusion: In general, this study demonstrates that land use regression models based on random forest method can help mapping soil parameters faster and more efficiently. There is a strong need for efficient and accurate methods, including land use regression, for continuous monitoring of changes in soil quality in different landscapes. Land use regression contributes developing advanced maps of soil quality parameters using cost-effective and accessible spatial information. Manuscript profile