You are here: Wiki>AI_GEOSTATS Web>AI_GEOSTATSPapers>Papers20100623122839 (13 Aug 2010, TheresiaFreska)Edit Attach
Title: Interpolation of Radioactivity Data Using Regularized Spline with Tension

Date: 1 July 2005

Authors: Jaroslav Hofierka

Link: http://publications.epress.monash.edu/doi/pdf/10.2104/ag050016

Abstract:

Regularized Spline with Tension was used to interpolate two data sets representing radioactivity measurements at 200 locations. A cross-validation analysis showed that the size of the training data sets was too low to find optimal parameters using the cross-validation procedure. The resulting surfaces were strongly smoothed and less realistic than expected. Therefore empirical interpolation parameters were used to interpolate the data. Despite the fact that this empirical selection did not produced interpolation results with a lower overall predictive error, it preserved better local fluctuations and anomalies of the phenomenon. The detection of these features is important in radioactivity monitoring and emergency situations. The poor reliability of cross-validation was also confirmed by evaluation data set. It was concluded that the optimization of interpolation parameters cannot rely on cross-validation when the modeled phenomenon is not sufficiently sampled. The sampling density should be sufficient to represent spatial variations of the phenomenon and, at the same time, allow the optimization of interpolation parameters using automated procedures.

Reference

Applied GIS
Volume 1, No. 2, August 2005
DOI: 10.2104/ag050016
Topic revision: r3 - 13 Aug 2010, TheresiaFreska
Legal Notice | Privacy Statement


This site is powered by FoswikiCopyright © by the contributing authors. All material on this collaboration platform is the property of the contributing authors.
Ideas, requests, problems regarding Wiki? Send feedback