F. H. Abdel-kader, Digital soil mapping at pilot sites in the northwest coast of Egypt: A multinomial logistic regression approach, The Egyptian Journal of Remote Sensing and Space Science, vol.14, pp.29-40, 2011.

H. Akaike, A new look at the statistical model identification, IEEE Transactions on Automatic Control, vol.19, pp.716-723, 1974.

J. Albertz, Einführung in die Fernerkundung-Grundlagen der Interpretation von Luft-und Satellitenbildern, p.254, 2009.

A. Bakhsh, D. B. Jaynes, T. S. Colvin, and R. S. Kanwar, Spatio-temporal analysis of yield variability for a corn-soybean field in Iowa, Transactions of the American Society of Agricultural and Biological Engineers, vol.43, pp.31-38, 2000.

B. Basso, C. Fiorentino, D. Cammarano, G. Cafiero, and J. Dardanelli, Analysis of rainfall distribution on spatial and temporal patterns of wheat yield in Mediterranean environment, European Journal of Agronomy, vol.41, pp.52-65, 2012.

C. Bauckhage and K. Kersting, Data mining and pattern recognition in agriculture, Künstliche Intelligenz, vol.27, pp.313-324, 2013.

R. S. Bivand, T. Keitt, and B. Rowlingson, rgdal: Bindings for the 'Geospatial' Data Abstraction Library, 2018.

R. S. Bivand, E. J. Pebesma, and V. Gomez-rubio, Applied spatial data analysis with R, 2013.

B. S. Blackmore, The interpretation of trends from multiple yield maps, Computers and Electronics in Agriculture, vol.26, issue.1, pp.37-51, 2000.

B. S. Blackmore, R. J. Godwin, and S. Fountas, The Analysis of Spatial and Temporal Trends in Yield Map Data over Six Years, Biosystems Engineering, vol.84, issue.03, pp.38-40, 2003.

B. S. Blackmore and M. Moore, Remedial correction of yield map data, Precision Agriculture, vol.1, p.387, 1999.

G. Blasch, D. Spengler, C. Hohmann, C. Neumann, S. Itzerott et al., Multitemporal soil pattern analysis with multispectral remote sensing data at the field-scale, Computers and Electronics in Agriculture, vol.113, pp.1-13, 2015.

G. Blasch, D. Spengler, S. Itzerott, and G. Wessolek, Organic matter modelling at the landscape scale based on multitemporal soil pattern analysis using RapidEye data, Remote Sensing, vol.7, pp.11125-11150, 2015.

B. Boydell and A. B. Mcbratney, Identifying potential within-field management zones from cotton-yield estimates, Precision Agriculture, vol.3, pp.9-23, 2002.

R. G. Bramley, Lessons from nearly 20 years of precision agriculture research, development, and adoption as a guide to its appropriate application, Crop and Pasture Science, vol.60, pp.197-217, 2009.

R. G. Bramley and J. Ouzman, Farmer attitudes to the use of sensors and automation in fertilizer decision-making: Nitrogen fertilization in the Australian grains sector. Precision Agriculture, 2018.

M. Córdoba, C. Bruno, J. Costa, and M. Balzarini, Subfield management class delineation using cluster analysis from spatial principal components of soil variables, Computers and Electronics in Agriculture, vol.97, pp.6-14, 2013.

B. A. Delbecq, J. P. Brown, R. J. Florax, E. J. Kladivko, A. P. Nistor et al., The impact of drainage water management technology on corn yields, Agronomy Journal, vol.104, pp.1100-1109, 2012.

S. Fountas, S. Blackmore, D. Ess, S. Hawkins, G. Blumhoff et al., Farmer experience with Precision Agriculture in Denmark and the US Eastern Corn Belt. Precision Agriculture, vol.6, pp.121-141, 2005.

C. Georgi, D. Spengler, S. Itzerott, and B. Kleinschmit, Automatic delineation algorithm for site-specific management zones based on satellite remote sensing data. Precision Agriculture, vol.19, pp.684-707, 2018.

B. Graeler, E. J. Pebesma, and G. Heuvelink, Spatio-Temporal Interpolation using gstat, The R Journal, vol.8, issue.1, pp.204-218, 2016.

T. W. Griffin, C. L. Dobbins, T. J. Vyn, R. J. Florax, and J. M. Lowenberg-deboer, Spatial analysis of yield monitor data: Case studies of on-farm trials and farm management decision making. Precision Agriculture, vol.9, pp.269-283, 2008.

F. Guastaferro, A. Castrignanò, D. De-benedetto, D. Sollitto, A. Troccoli et al., A comparison of different algorithms for the delineation of management zones. Precision Agriculture, vol.11, pp.600-620, 2010.

J. A. Hartigan and M. A. Wong, Algorithm AS 136: A k-means clustering algorithm, Journal of the Royal Statistical Society. Series C (Applied Statistics), vol.28, issue.1, pp.100-108, 1979.

R. J. Hijmans, raster: Geographic data analysis and modeling. R package version 2.6-7, 2017.

M. Horikoshi and Y. Tang, ggfortify: Data visualization tools for statistical analysis results, 2016.

N. R. Kitchen, K. A. Sudduth, D. B. Myers, R. E. Massey, E. J. Sadler et al., Development of a conservation-oriented precision agriculture system: Crop production assessment and plan implementation, Journal of Soil and Water Conservation, vol.60, pp.421-430, 2005.

T. Kutter, S. Tiemann, R. Siebert, and S. Fountas, The role of communication and co-operation in the adoption of precision farming, Precision Agriculture, vol.12, pp.2-17, 2011.

R. M. Lark and J. V. Stafford, Classification as a first step in the interpretation of temporal and spatial variability of crop yield, Annals of Applied Biology, vol.130, pp.111-121, 1997.

A. Layton, J. V. Krogmeier, A. Ault, and D. R. Buckmaster, From yield history to productivity zone identification with hidden Markov random fields. Precision Agriculture, 2019.

C. Leroux, H. Jones, A. Clenet, B. Dreux, M. Becu et al., A general method to filter out defective spatial observations from yield mapping datasets. Precision Agriculture, vol.19, pp.789-808, 2018.
URL : https://hal.archives-ouvertes.fr/hal-02607448

C. Leroux, H. Jones, J. Taylor, A. Clenet, and B. Tisseyre, A zone-based approach for processing and interpreting variability in multi-temporal yield data sets. Computers and Electronics in Agriculture, vol.148, pp.299-308, 2018.
URL : https://hal.archives-ouvertes.fr/hal-02607449

B. Leutner, N. Horning, and J. Schwab-willmann, RStoolbox: Tools for remote sensing data analysis, 2018.

X. Li, Y. Pan, C. Zhao, J. Wang, Y. Bao et al., Delineation and scale effect of precision agriculture management zones using yield monitor data over four years, Agricultural Sciences in China, vol.6, issue.07, pp.60033-60042, 2007.

G. Lyle, B. Bryan, and B. Ostendorf, Post-processing methods to eliminate erroneous grain yield measurements: Review and directions for future development. Precision Agriculture, vol.15, pp.377-402, 2013.

M. Maechler, P. Rousseeuw, A. Struyf, M. Hubert, and K. Hornik, cluster: Cluster Analysis Basics and Extensions, 2018.

A. B. Mcbratney, B. M. Whelan, and T. Shatar, Variability and uncertainty in spatial, temporal and spatiotemporal crop-yield and related data, Ciba Foundation Symposium, vol.210, pp.141-160, 1997.

A. B. Mcbratney, B. M. Whelan, J. A. Taylor, and M. J. Pringle, A management Opportunity Index for Precision Agriculture, Proceedings of the 5th International Conference on Precision Agriculture, 2000.

J. M. Mckinion, J. L. Willers, and J. N. Jenkins, Spatial analyses to evaluate multi-crop yield stability for a field, Computers and Electronics in Agriculture, vol.70, pp.187-198, 2010.

B. Minasny, A. B. Mcbratney, and B. M. Whelan, VESPER version 1.62. Australian Centre for Precision Agriculture, 2005.

F. Moral, J. Terrón, and J. Silva, Delineation of management zones using mobile measurements of soil apparent electrical conductivity and multivariate geostatistical techniques. Soil and Tillage Research, vol.106, pp.335-343, 2010.

F. Morari, A. Castrignanò, and C. Pagliarin, Application of multivariate geostatistics in delineating management zones within a gravelly vineyard using geo-electrical sensors, Computers and Electronics in Agriculture, vol.68, pp.97-107, 2009.

D. J. Mulla, Twenty five years of remote sensing in precision agriculture: Key advances and remaining knowledge gaps, Biosystems Engineering, vol.114, pp.358-371, 2013.

C. L. Olson, Comparative robustness of six tests in multivariate analysis of variance, Journal of the American Statistical Association, vol.69, pp.894-908, 1974.

R. A. Ortega and O. A. Santibáñez, Determination of management zones in corn (Zea mays L.) based on soil fertility, Computers and Electronics in Agriculture, vol.58, pp.49-59, 2007.

S. S. Panda, G. Hoogenboom, and J. O. Paz, Remote sensing and geospatial technological applications for site-specific management of fruit and nut crops: A review. Remote Sensing, vol.2, 1973.

E. J. Pebesma, Multivariable geostatistics in S: The gstat package, Computers & Geosciences, vol.30, pp.683-691, 2004.

E. J. Pebesma and R. S. Bivand, Classes and methods for spatial data, R. R News, vol.5, issue.2, 2005.

M. Pedroso, J. Taylor, B. Tisseyre, B. Charnomordic, and S. Guillaume, A segmentation algorithm for the delineation of management zones, Computer and Electronics in Agriculture, vol.70, pp.199-208, 2010.
URL : https://hal.archives-ouvertes.fr/hal-02662331

J. L. Ping and A. Dobermann, Processing of yield map data, Precision Agriculture, vol.6, pp.193-212, 2005.

J. L. Ping, C. J. Green, K. Bronson, R. E. Zartman, and A. Dobermann, Delineating potential management zones for cotton based on yields and soil properties, Soil Science, vol.170, pp.371-385, 2005.

, QGIS geographic information system. Open Source Geospatial Foundation, QGIS Development Team, 2009.

. R-core-team, R: A language and environment for statistical computing. R Foundation for Statistical Computing, 2018.

M. P. Raj, P. R. Swaminarayan, J. R. Saini, and D. K. Parmar, Applications of pattern recognition algorithms in agriculture: A review, International Journal of Advanced Networking and Applications, vol.6, pp.2495-2502, 2015.

T. P. Robinson and G. Metternicht, Comparing the performance of techniques to improve the quality of yield maps, Agricultural Systems, vol.85, pp.19-41, 2005.

F. A. Rodrigues-junior, L. B. Vleira, D. M. Queiroz, and N. T. Santos, Geração de zonas de manejo para cafeicultura empregando-se sensor SPAD e análise foliar, Revista Brasileira de Engenharia Agrícola e Ambiental, vol.15, pp.778-787, 2011.

F. F. Sabins, Remote sensing: Principles and interpretation, p.494, 1996.

S. M. Say, M. Keskin, M. Sehri, and Y. E. Sekerli, Adoption of Precision Agriculture Technologies in Developed and Developing Countries, Online Journal of Science and Technology, vol.8, pp.7-15, 2018.

K. Schenatto, E. G. De-souza, and C. L. Bazzi, Normalization of data for delineating management zones, Computers and Electronics in Agriculture, vol.143, pp.238-248, 2017.

D. Schimmelpfennig and R. Ebel, On the doorstep of the information age: Recent adoption of Precision Agriculture, 2011.

R. A. Schowengerdt, Remote Sensing: Models and Methods for Image Processing, p.515, 2007.

L. I. Smith, A tutorial on principal components analysis, p.27, 2002.

J. V. Stafford, B. Ambler, R. M. Lark, and J. Catt, Mapping and interpreting the yield variation in cereal crops, Computers and Electronics in Agriculture, vol.14, issue.95, pp.42-51, 1996.

K. Sudduth and S. T. Drummond, Yield editor: Software for removing errors from crop yield maps, Agronomy Journal, vol.99, p.1471, 2007.

W. Sun, B. M. Whelan, A. B. Mcbratney, and B. Minasny, An integrated framework for software to provide yield data cleaning and estimation of an opportunity index for site-specific crop management. Precision Agriculture, vol.14, pp.376-391, 2013.

A. Tagarakis, V. Liakos, S. Fountas, S. Koundouras, and T. A. Gemtos, Management zones delineation using fuzzy clustering techniques in grapevines. Precision Agriculture, vol.14, pp.18-39, 2013.

Y. Tang, M. Horikoshi, and W. Li, ggfortify: Unified interface to visualize statistical result of popular R packages, The R Journal, vol.8, issue.2, pp.478-489, 2016.

J. A. Taylor, A. B. Mcbratney, and B. M. Whelan, Establishing management classes for broadacre agricultural production, Agronomy Journal, vol.99, pp.1366-1376, 2007.

J. A. Taylor and B. M. Whelan, Selection of ancillary data to derive production management units in sweetcorn (Zea Mays var. rugosa) using MANOVA and an information criterion, Precision Agriculture, vol.12, pp.519-533, 2011.
URL : https://hal.archives-ouvertes.fr/hal-02645673

B. Tisseyre and A. B. Mcbratney, A technical opportunity index based on mathematical morphology for site-specific management: An application to viticulture. Precision Agriculture, vol.9, pp.101-113, 2008.

A. Uribeetxebarria, J. Arnó, A. Escolà, and J. A. Martínez-casasnovas, Apparent electrical conductivity and multivariate analysis of soil properties to assess soil constraints in orchards affected by previous parcelling, Geoderma, vol.319, pp.185-193, 2018.

M. Van-meirvenne, M. M. Islam, P. De-smedt, E. Meerschman, . Van-de et al., Key variables for the identification of soil management classes in the aeolian landscapes of north-west Europe, Geoderma, vol.199, pp.99-105, 2013.

A. Vega, M. Córdoba, M. Castro-franco, and M. Balzarini, Protocol for automating error removal from yield maps. Precision Agriculture, vol.20, pp.1030-1044, 2019.

B. M. Whelan and A. B. Mcbratney, Prediction Uncertainty and Implications for Digital Map Resolution, Proceedings of the 4th International Conference on Precision Agriculture, pp.1185-1196, 1998.

B. M. Whelan and A. B. Mcbratney, An Approach to Deconvoluting Grain-Flow within a Conventional Combine Harvester using a Parametric Transfer Function. Precision Agriculture, vol.2, pp.389-398, 2000.

, Publisher's Note Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations