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A Bayesian approach for incorporating uncertainty and data worth in environmental projects
Authors:Karim C Abbaspour  Rainer Schulin  Ernst Schläppi  Hannes Flühler
Institution:1. Department of Soil Protection, Swiss Federal Institute of Technology, Grabenstrasse 3, CH-8952, Schlieren, Switzerland
2. Colombi Schmutz Dorthe AG, Konsumstrasse 20, CH-3007, Bern, Switzerland
3. Department of Soil Physics, Swiss Federal Institute of Technology, Grabenstrasse 3, CH-8952, Schlieren, Switzerland
Abstract:A data worth model is presented for the analysis of alternative sampling schemes in a special project where decisions have to be made under uncertainty. This model is part of a comprehensive risk analysis algorthm with the acronym BUDA. The statistical framework in BUDA is Bayesian in nature and incorporates both parameter uncertainty and natural variability. In BUDA a project iterates among the analyst, the decision maker, and the field work. As part of the analysis, a data worth model calculates the value of a data campaign before the actual field work, thereby allowing the identification of an optimum data collection scheme. A goal function which depicts the objectives of a project is used to discriminate among different alternatives. A Latin hypercube sampling scheme is used to propagate parameter uncertainties to the goal function. In our example the uncertain parameters are the parameters which describe the geostatistical properties of saturated hydraulic conductivity in a Molasse environment. Our results indicated that failing to account for parameter uncertainty produces unrealistically optimistic results, while ignoring the spatial structure can lead to an inefficient use of the existing data.
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