The Soil Nutrient Digital Mapping for Precision Agriculture Cases in the Trans-Ural Steppe Zone of Russia Using Topographic Attributes
暂无分享,去创建一个
Azamat Suleymanov | Evgeny Abakumov | Ruslan Suleymanov | I. M. Gabbasova | Mikhail Komissarov | E. Abakumov | M. Komissarov | R. Suleymanov | A. Suleymanov | I. Gabbasova
[1] Ruhollah Taghizadeh-Mehrjardi,et al. Spatial prediction of soil organic carbon using machine learning techniques in western Iran , 2020, Geoderma Regional.
[2] Alfred E. Hartemink,et al. Digital Mapping of Soil Organic Carbon Contents and Stocks in Denmark , 2014, PloS one.
[3] V. Penížek,et al. Predictive Mapping of Soil Properties for Precision Agriculture Using Geographic Information System (GIS) Based Geostatistics Models , 2019, Modern Applied Science.
[4] Jie Chen,et al. Mapping of Soil Total Nitrogen Content in the Middle Reaches of the Heihe River Basin in China Using Multi-Source Remote Sensing-Derived Variables , 2019, Remote. Sens..
[5] Ahmad Jalalian,et al. Relationships between soil depth and terrain attributes in a semi arid hilly region in western Iran , 2013, Journal of Mountain Science.
[6] E. Vaudour,et al. Sentinel-2 image capacities to predict common topsoil properties of temperate and Mediterranean agroecosystems , 2019, Remote Sensing of Environment.
[7] Gerard B. M. Heuvelink,et al. Machine learning in space and time for modelling soil organic carbon change , 2020, European Journal of Soil Science.
[8] Gary A. Peterson,et al. Soil Attribute Prediction Using Terrain Analysis , 1993 .
[9] Budiman Minasny,et al. Mapping key soil properties to support agricultural production in Eastern China , 2017 .
[10] Peter Finke,et al. Digital mapping of soil properties using multiple machine learning in a semi-arid region, central Iran , 2019, Geoderma.
[11] H. Jenny,et al. Derivation of State Factor Equations of Soils and Ecosystems , 1961 .
[12] Chaosheng Zhang,et al. Digital soil mapping based on empirical mode decomposition components of environmental covariates , 2019, European Journal of Soil Science.
[13] J. Mondejar,et al. Estimating topsoil texture fractions by digital soil mapping - a response to the long outdated soil map in the Philippines , 2019 .
[14] K. Shepherd,et al. An assessment of the variation of soil properties with landscape attributes in the highlands of Cameroon , 2018, Land Degradation & Development.
[15] Jianbin Pan,et al. The effect of slope aspect on the phylogenetic structure of arbuscular mycorrhizal fungal communities in an alpine ecosystem , 2018, Soil Biology and Biochemistry.
[16] Christopher L. Lant,et al. Estimating spatial variations in soil organic carbon using satellite hyperspectral data and map algebra , 2011 .
[17] S. Zaidi,et al. Support vector regression model for predicting the sorption capacity of lead (II) , 2016 .
[18] Geomorphometric and Geoinformation Approach to Meliorative Evaluation of the Territory , 2019, Springer Proceedings in Earth and Environmental Sciences.
[19] G. Heuvelink,et al. Assessing countrywide soil organic carbon stock using hybrid machine learning modelling and legacy soil data in Cameroon , 2020 .
[20] K. John,et al. Using Machine Learning Algorithms to Estimate Soil Organic Carbon Variability with Environmental Variables and Soil Nutrient Indicators in an Alluvial Soil , 2020, Land.
[21] J. Deckers,et al. World Reference Base for Soil Resources , 1998 .
[22] V. L. Mulder,et al. The use of remote sensing in soil and terrain mapping — A review , 2011 .
[23] Jiancheng Luo,et al. Land parcel-based digital soil mapping of soil nutrient properties in an alluvial-diluvia plain agricultural area in China , 2019, Geoderma.
[24] Shaoli Wang,et al. Dynamic prediction of soil salinization in an irrigation district based on the support vector machine , 2013, Math. Comput. Model..
[25] Tarek Assami,et al. Digital mapping of soil classes in Algeria – A comparison of methods , 2019, Geoderma Regional.
[26] Colin L. Mallows,et al. Some Comments on Cp , 2000, Technometrics.
[27] G. Heuvelink,et al. Mapping Soil Properties of Africa at 250 m Resolution: Random Forests Significantly Improve Current Predictions , 2015, PloS one.
[28] Simon Haykin,et al. Support vector machines for dynamic reconstruction of a chaotic system , 1999 .
[29] Armin Shmilovici,et al. Support Vector Machines , 2005, Data Mining and Knowledge Discovery Handbook.
[30] Alex B. McBratney,et al. Spatial prediction of soil properties from landform attributes derived from a digital elevation model , 1994 .
[31] Zohreh Mosleh,et al. The effectiveness of digital soil mapping to predict soil properties over low-relief areas , 2016, Environmental Monitoring and Assessment.
[32] M. R. Francelino,et al. Analysis of terrain attributes in different spatial resolutions for digital soil mapping application in southeastern Brazil , 2020 .
[33] Qianlai Zhuang,et al. Mapping stocks of soil organic carbon and soil total nitrogen in Liaoning Province of China , 2017 .
[34] Jin Zhang,et al. An overview and comparison of machine-learning techniques for classification purposes in digital soil mapping , 2016 .
[35] Michael Thiel,et al. High Resolution Mapping of Soil Properties Using Remote Sensing Variables in South-Western Burkina Faso: A Comparison of Machine Learning and Multiple Linear Regression Models , 2017, PloS one.
[36] Y. Galanti,et al. The influence of geological–morphological and land use settings on shallow landslides in the Pogliaschina T. basin (northern Apennines, Italy) , 2017 .