Distributional Assumptions in Chance-Constrained Programming Models of Stochastic Water Pollution |
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Authors: | Mitesh Kataria Katarina Elofsson Berit Hasler |
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Affiliation: | 1. Max Planck Institute of Economics, Strategic Interaction Group, Kahlaische Stra?e 10, 07745, Jena, Germany 2. Department of Economics, Swedish University of Agricultural Sciences, Box?7013, 750 07, Uppsala, Sweden 3. National Environmental Research Institute, Aarhus University, Fredriksborgvej 399, PB 358, 4000, Roskilde, Denmark
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Abstract: | In the water management literature both the normal and log-normal distribution are commonly used to model stochastic water pollution. The normality assumption is usually motivated by the central limit theorem, while the log-normality assumption is often motivated by the need to avoid the possibility of negative pollution loads. We utilize the truncated normal distribution as an alternative to these distributions. Using probabilistic constraints in a cost-minimization model for the Baltic Sea, we show that the distribution assumption bias is between 1% and 60%. Simulations show that a greater difference is to be expected for data with a higher degree of truncation. Using the normal distribution instead of the truncated normal distribution leads to an underestimation of the true cost. On the contrary, the difference in cost when using the normal versus the log-normal can be positive as well as negative. |
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