Abstract
We present a model for multi-objective decision analysis with respect to the location of public facilities as schools in areas near to coasts, taking risks of inundation by tsunamis into account. A mathematical programming formulation with three objective functions is given. The first objective function is a weighted mean of a minisum and a maximum coverage criterion. The second objective function expresses risk by possible tsunami events; for quantifying this risk, a statistical model for tsunami occurrences by Kaistrenko and Pinegina is applied. The third criterion represents costs. For the solution of the multi-objective optimization problem, we propose a heuristic approach based on the NSGA-II algorithm and compare it with a decomposition technique where the region under consideration is partitioned into smaller sub-regions, and the problem is solved for each separate subregion either exactly or heuristically. Both approaches are tested on two real-life instances from southern Sri Lanka.
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Doerner, K.F., Gutjahr, W.J. & Nolz, P.C. Multi-criteria location planning for public facilities in tsunami-prone coastal areas. OR Spectrum 31, 651–678 (2009). https://doi.org/10.1007/s00291-008-0126-7
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DOI: https://doi.org/10.1007/s00291-008-0126-7