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Detailed Reference Information |
Lesch, S.M., Strauss, D.J. and Rhoades, J.D. (1995). Spatial prediction of soil salinity using electromagnetic induction techniques 2. An efficient spatial sampling algorithm suitable for multiple linear regression model identification and estimation. Water Resources Research 31: doi: 10.1029/94WR02180. issn: 0043-1397. |
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In our companion paper we described a regression-based statistical methodology for predicting field scale salinity (ECe) patterns from rapidly acquired electromagnetic induction (EC&agr;) measurements. This technique used multiple linear regression (MLR) models to construct both point and conditional probability estimates of soil salinity from ECa survey data. In this paper we introduce a spatial site selection algorithm designed to identify a minimal number of calibration sites for MLR model estimation. The algorithm selects sites that are spatially representtive of the entire survey area and simultaneously facilitate the accurate estimation of model parameters. Additionally, we introduce two statistical criteria that are useful for selecting optimal MLR variable combinations, describe a technique for identifying faulty signal data, and explore some of the differences between our recommended model-based sampling plan are some more commonly used design-based sampling plans. Survey data from two of the fields analyzed in the previous paper are used to demonstrate these techniques. ¿ American Geophysical Union 1995 |
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BACKGROUND DATA FILES |
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Abstract |
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Keywords
Electromagnetics, Instrumentation and techniques, Electromagnetics, Measurement and standards, Electromagnetics, General or miscellaneous |
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Publisher
American Geophysical Union 2000 Florida Avenue N.W. Washington, D.C. 20009-1277 USA 1-202-462-6900 1-202-328-0566 service@agu.org |
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