Abstract
The quantification and analysis of uncertainties is important in all cases where maps and models of uncertain properties are the basis for further decisions. Once these uncertainties are identified, the logical next step is to determine how they can be reduced. Information theory provides a framework for the analysis of spatial uncertainties when different subregions are considered as random variables. In the work presented here, joint entropy, conditional entropy, and mutual information are applied for a detailed analysis of spatial uncertainty correlations. The aim is to determine (i) which areas in a spatial analysis share information, and (ii) where, and by how much, additional information would reduce uncertainties. As an illustration, a typical geological example is evaluated: the case of a subsurface layer with uncertain depth, shape and thickness. Mutual information and multivariate conditional entropies are determined based on multiple simulated model realisations. Even for this simple case, the measures not only provide a clear picture of uncertainties and their correlations but also give detailed insights into the potential reduction of uncertainties at each position, given additional information at a different location. The methods are directly applicable to other types of spatial uncertainty evaluations, especially where multiple realisations of a model simulation are analysed. In summary, the application of information theoretic measures opens up the path to a better understanding of spatial uncertainties, and their relationship to information and prior knowledge, for cases where uncertain property distributions are spatially analysed and visualised in maps and models.
Highlights
Maps and models are widely used to represent the distribution of properties in space in diverse areas ranging from studies in a geographical framework, to complex three-dimensional model analyses, to the visualisation of tomographic data in medical and material sciences
Conditional entropy is a measure of the information entropy that is expected to remain for one random variable, given the additional information of another random variable
The application of the information theoretic measures of joint entropy, conditional entropy, and mutual information confirm the hypothesis that the measures provide a detailed insight into correlations and reductions of uncertainty in a spatial context
Summary
Maps and models are widely used to represent the distribution of properties in space in diverse areas ranging from studies in a geographical framework, to complex three-dimensional model analyses, to the visualisation of tomographic data in medical and material sciences. Once significant uncertainties are identified, the logical step is to determine how they could be reduced In this work, it will be evaluated how measures from information theory can be applied to determine spatial correlations of uncertainty, and the possible reduction with additional information. In the case shown here, the analysis is focused on the determination of uncertainty correlations in the subsurface In this setting, one important objective of the analysis is to answer a question that is of great relevance in many typical exploration settings: if additional information would be obtained, for example through drilling, where, and by how much, would this additional information reduce spatial uncertainties?. (i) the depth to the top surface of the layer is uncertain; and (ii) the thickness of the layer is uncertain
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