Spatial Random Field Models Inspired from Statistical Physics with Applications in the Geosciences
نویسنده
چکیده
Dionissios T. Hristopulos Department of Mineral Resources Engineering Technical University of Crete Chania 73100, Greece Abstract The spatial structure of fluctuations in spatially inhomogeneous processes can be modeled in terms of Gibbs random fields. A local low energy estimator (LLEE) is proposed for the interpolation (prediction) of such processes at points where observations are not available. The LLEE approximates the spatial dependence of the data and the unknown values at the estimation points by low-lying excitations of a suitable energy functional. It is shown that the LLEE is a linear, unbiased, non-exact estimator. In addition, an expression for the uncertainty (standard deviation) of the estimate is derived.
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تاریخ انتشار 2006