Random vectors and spatial analysis by geostatistics for geotechnical applications |
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Authors: | Dae S. Young |
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Affiliation: | (1) Department of Mining Engineering, Michigan Technological University, 49931 Houghton, Michigan, USA |
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Abstract: | ![]() Geostatistics is extended to the spatial analysis of vector variables by defining the estimation variance and vector variogram in terms of the magnitude of difference vectors. Many random variables in geotechnology are in vectorial terms rather than scalars, and its structural analysis requires those sample variable interpolations to construct and characterize structural models. A better local estimator will result in greater quality of input models; geostatistics can provide such estimators: kriging estimators. The efficiency of geostatistics for vector variables is demonstrated in a case study of rock joint orientations in geological formations. The positive cross-validation encourages application of geostatistics to spatial analysis of random vectors in geoscience as well as various geotechnical fields including optimum site characterization, rock mechanics for mining and civil structures, cavability analysis of block cavings, petroleum engineering, and hydrologic and hydraulic modelings. |
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Keywords: | random vectors spatial analysis vector variogram kriging rock fracture orientation structural modeling |
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