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Deciphering soil spatial variability through geostatistics and interpolation techniques

TitleDeciphering soil spatial variability through geostatistics and interpolation techniques
Publication TypeJournal Papers
Year of Publication2021
AuthorsAbdel Rahman, M.A.E., Zakarya, Y.M., Metwaly, M.M., Koubouris, G.
JournalSustainability
Volume13
Pagination1-13
ISSN
URLhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85099202892&doi=10.3390%2fsu13010194&partnerID=40&md5=270e5f3fc56cee3cc5ce612323c62396
DOI10.3390/su13010194
Citation Key
Keywords
AbstractDetailed knowledge of soil properties is fundamentally important for optimizing agriculture practices and management. Meanwhile, the spatial distribution of soil physicochemical properties is considered a fundamental input of any sustainable agricultural planning. In the present study, ordinary kriging, regression kriging and IDW were chosen for deciphering soil spatial variability and mapping soil properties in a reclaimed area of the Behera Governorate of Egypt where soil arose from two different types, one sandstone and the other limestone. Geostatistics were used to show the interrelationships and conditions of soil properties (available phosphorus, potassium and nitrogen, EC, pH, Sp, ESP, CEC, OC, SAR, and CaCO3). The results of mapping spatial soil variability by Geostatistics could be used for precision agriculture applications. Based on the soil test results, nutrient management recommendations should be applied regarding variable rates of fertilizers. The performance of the maps was evaluated using Mean square error (MSE). Inverse distance weight (IDW) showed higher efficiency than Kriging as a prediction method for mapping the studied soil properties in the study area. The results of the present study suggest that the application of the selected fit model worldwide in any relevant study of soil properties of different geological sources is feasible.
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