相关参考文献
注意:仅列出部分参考文献,下载原文获取全部文献信息。FastMapping: Software to create field maps and identify management zones in precision agriculture
P. Paccioretti et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2020)
Comparison of various uncertainty modelling approaches based on geostatistics and machine learning algorithms
Gabor Szatmari et al.
GEODERMA (2019)
Computational routines for the automatic selection of the best parameters used by interpolation methods to create thematic maps
Nelson Miguel Betzek et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2019)
Importance of spatial predictor variable selection in machine learning applications - Moving from data reproduction to spatial prediction
Hanna Meyer et al.
ECOLOGICAL MODELLING (2019)
The Data-Intensive Farm Management Project: Changing Agronomic Research Through On-Farm Precision Experimentation
David S. Bullock et al.
AGRONOMY JOURNAL (2019)
Sampling design optimization for soil mapping with random forest
Alexandre M. J-C. Wadoux et al.
GEODERMA (2019)
Spatial modelling with Euclidean distance fields and machine learning
T. Behrens et al.
EUROPEAN JOURNAL OF SOIL SCIENCE (2018)
Integration of high resolution remotely sensed data and machine learning techniques for spatial prediction of soil properties and corn yield
Sami Khanal et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2018)
Machine Learning in Agriculture: A Review
Konstantinos G. Liakos et al.
SENSORS (2018)
Random forest as a generic framework for predictive modeling of spatial and spatio-temporal variables
Tomislav Hengl et al.
PEERJ (2018)
ranger: A Fast Implementation of Random Forests for High Dimensional Data in C plus plus and R
Marvin N. Wright et al.
JOURNAL OF STATISTICAL SOFTWARE (2017)
Interpolation type and data computation of crop yield maps is important for precision crop production
E. G. Souza et al.
JOURNAL OF PLANT NUTRITION (2016)
Prediction of Soil Properties at Farm Scale Using a Model-Based Soil Sampling Scheme and Random Forest
Mauricio Castro-Franco et al.
SOIL SCIENCE (2015)
A tutorial guide to geostatistics: Computing and modelling variograms and kriging
M. A. Oliver et al.
CATENA (2014)
Parallel ordinary kriging interpolation incorporating automatic variogram fitting
Lluis Pesquer et al.
COMPUTERS & GEOSCIENCES (2011)
A review of comparative studies of spatial interpolation methods in environmental sciences: Performance and impact factors
Jin Li et al.
ECOLOGICAL INFORMATICS (2011)
Application of machine learning methods to spatial interpolation of environmental variables
Jin Li et al.
ENVIRONMENTAL MODELLING & SOFTWARE (2011)
Yield Editor: Software for removing errors from crop yield maps
Kenneth A. Sudduth et al.
AGRONOMY JOURNAL (2007)
A generic framework for spatial prediction of soil variables based on regression-kriging
T Hengl et al.
GEODERMA (2004)
Multivariable geostatistics in S: the gstat package
EJ Pebesma
COMPUTERS & GEOSCIENCES (2004)