2020
DOI: 10.1007/s00190-020-01447-8
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On the drawback of local detrending in universal kriging in conditions of heterogeneously spaced regional TEC data, low-order trends and outlier occurrences

Abstract: The study intercompares three stochastic interpolation methods originating from the same geostatistical family: least-squares collocation (LSC) known from geodesy, as well as ordinary kriging (OKR) and universal kriging (UKR) known from geology and other geosciences. The objective of this work is to assess advantages and drawbacks of fundamental differences in modeling between these methods in imperfect data conditions. These differences primarily refer to the treatment of the reference field, commonly called … Show more

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Cited by 4 publications
(3 citation statements)
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“…Make sure that each member is clear about their tasks and roles and contributes to the achievement of team goals (Table 1). In order to improve the efficiency of team collaboration, regular team meetings are held to share progress, exchange experience, solve difficulties, and jointly promote the implementation of OKR [6] .…”
Section: Team Work To Implement Goalsmentioning
confidence: 99%
“…Make sure that each member is clear about their tasks and roles and contributes to the achievement of team goals (Table 1). In order to improve the efficiency of team collaboration, regular team meetings are held to share progress, exchange experience, solve difficulties, and jointly promote the implementation of OKR [6] .…”
Section: Team Work To Implement Goalsmentioning
confidence: 99%
“…Another assumption of Kriging is that the spatial dependence between data points is only related to their distance and not to other factors. If the covariate assumption changes, such as when other variables affect the distribution of the data, Kriging may not be effective [49,50].…”
Section: Aeronet and Ground-level Concentrationsmentioning
confidence: 99%
“…NO 3 concentrations decreased first-order across the study site. To adhere to kriging's assumption that there should be no global trends in the dataset, the first-order trend was removed from the three interpolation methods [59,71,72]. Furthermore, NO 3 concentrations were not normally distributed, were corrected in the OK and EBK interpolation models using a log transformation [73,74], and were confirmed using the Geostatistical Wizard's Quantile-Quantile (QQ) Plots.…”
Section: Interpolation and Validationmentioning
confidence: 99%