Journal Article10.2136/SSSAJ2011.0424
Efficiency comparison of conventional and digital soil mapping for updating soil maps
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TL;DR: In this article, the authors compared the efficiency of geostatistical digital soil mapping with conventional soil mapping (CSM) for updating soil class and property maps of a cultivated peatland in the Netherlands.
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Abstract: This study compared the efficiency of geostatistical digital soil mapping (DSM) with conventional soil mapping (CSM) for updating soil class and property maps of a cultivated peatland in the Netherlands. For digital soil class mapping, the generalized linear geostatistical model was used. Digital mapping of the soil organic matter (SOM) content and peat thickness was done by universal kriging. The conventional soil class map was created by free survey, while the property maps were created with the representative profile description (RPD) and map unit means (MUM) methods. For each method, we computed the effort invested in the mapping in terms of the sampling and cost densities. The accuracies of the created soil maps were estimated from independent probability sample data. The results showed that for DSM, the cost density could be reduced by a factor of three compared with CSM without compromising accuracy. The map purity of both maps was around 55%. For conventional soil property mapping, the MUM maps were more accurate than the RPD maps. For SOM, CSM-MUM (RMSE 7.5%) performed better than DSM (RMSE 12.1%), although accuracy differences were not significant. For peat thickness, DSM (RMSE 23.3 cm) performed slightly better than CSM-MUM (RMSE 24.9 cm). Despite the differences in accuracy being small, the digital soil property maps were produced more efficiently. The cost density was a factor of 3.5 smaller. We conclude that for updating conventional soil maps in the Dutch peatlands, geostatistical DSM can be more efficient, although not necessarily more accurate, than CSM.
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Citations
Selecting appropriate machine learning methods for digital soil mapping
TL;DR: This work compares the strengths and weaknesses of multiple linear regression (MLR), k-nearest neighbors (KNN), support vector regression (SVR), Cubist, random forest (RF), and artificial neural networks (ANN) for DSM.
344
On spatial prediction of soil properties in the presence of a spatial trend: The empirical best linear unbiased predictor (E-BLUP) with REML
R. M. Lark,Brian R. Cullis,S. J. Welham +2 more
- 01 Jan 2006
TL;DR: In this paper, the authors describe the REML-E-BLUP method and illustrate the method with some data on soil water content that exhibit a pronounced spatial trend, which is a special case of the linear mixed model where our data are modelled as the additive combination of fixed effects (e.g. the unknown mean, coefficients of a trend model), random effects (the spatially dependent random variation in the geostatistical context) and independent random error (nugget variation in geostatsistics).
244
High resolution mapping of soil organic carbon stocks using remote sensing variables in the semi-arid rangelands of eastern Australia
TL;DR: The use of high spatial resolution satellite data (seasonal fractional cover data; SFC) together with elevation, lithology, climatic data and observed soil data to map the spatial distribution of SOC at two soil depths in semi-arid rangelands of eastern Australia produces a more accurate and higher resolution digital SOC stock map compared with other available mapping products.
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Digital mapping of peatlands – A critical review
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TL;DR: In this paper, the authors describe peat mapping experiences from 12 countries or regions and review 90 recent studies on peatland mapping, finding that interest in mapping peat information derived from satellite imageries and other digital mapping technologies is growing.
171
Soil legacy data rescue via GlobalSoilMap and other international and national initiatives
Dominique Arrouays,Johan G. B. Leenaars,Anne C. Richer-de-Forges,Kabindra Adhikari,Cristiano Ballabio,Mogens Humlekrog Greve,Mike Grundy,Eliseo Guerrero,Jon Hempel,Tomislav Hengl,Gerard B. M. Heuvelink,Niels H. Batjes,Eloi Carvalho,Alfred E. Hartemink,Alan Hewitt,Suk-Young Hong,Pavel Krasilnikov,Philippe Lagacherie,Glen Lelyk,Zamir Libohova,Allan Lilly,Alex B. McBratney,Neil McKenzie,Gustavo M. Vasquez,Vera Leatitia Mulder,Budiman Minasny,Luca Montanarella,Inakwu O. A. Odeh,José Padarian,Laura Poggio,Pierre Roudier,Nicolas Saby,Igor Savin,Ross Searle,Vladimir Solbovoy,James Thompson,Scott Smith,Yiyi Sulaeman,Ruxandra Vintila,Raphael A. Viscarra Rossel,Peter Wilson,Gan-Lin Zhang,Martine Swerts,Katrien Oorts,Aldis Karklins,Liu Feng,Alexandro R. Ibelles Navarro,Arkadiy Levin,Tetiana Laktionova,Martin Dell'Acqua,Nopmanee Suvannang,Waew Ruam,Jagdish Prasad,N.V. Patil,Stjepan Husnjak,László Pásztor,Joop Okx,Stephen H. Hallett,C. A. Keay,Timothy S. Farewell,Harri Lilja,Jérôme Juilleret,Simone Marx,Yusuke Takata,Yagi Kazuyuki,Nicolas Mansuy,Panos Panagos,Mark van Liedekerke,Rastislav Skalsky,Jaroslava Sobocka,Josef Kobza,Kamran Eftekhari,Seyed Kacem Alavipanah,Rachid Moussadek,Mohamed Badraoui,Mayesse Da Silva,Garry Paterson,Maria da Conceição Gonçalves,Sid Theocharopoulos,Martin Yemefack,Silatsa Tedou,Borut Vrščaj,Urs Grob,J. Kozák,Lubos Boruvka,Endre Dobos,Miguel Angel Taboada,Lucas Moretti,Darío Martín Rodríguez +88 more
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P. H. T. Beckett,P. A. Burrough +1 more
TL;DR: In this article, the authors compare the utility of single-property and general purpose (series) soil maps, produced by free and grid survey, at map scales from 1 :20,000-1:70,000.
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Updating Conventional Soil Maps through Digital Soil Mapping
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