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Improving biorefinery planning: Integration of spatial data using exact optimization nested in an evolutionary strategy
Authors:Tim Schröder  Lars-Peter Lauven  Jutta Geldermann
Institution:Chair of Production and Logistics, Georg-August University Göttingen, Göttingen 37073, Germany
Abstract:Biorefineries can provide a product portfolio from renewable biomass similar to that of crude oil refineries. To operate biorefineries of any kind, however, the availability of biomass inputs is crucial and must be considered during planning. Here, we develop a planning approach that uses Geographic Information Systems (GIS) to account for spatially scattered biomass when optimizing a biorefinery’s location, capacity, and configuration. To deal with the challenges of a non-smooth objective function arising from the geographic data, higher dimensionality, and strict constraints, the planning problem is repeatedly decomposed by nesting an exact nonlinear program (NLP) inside an evolutionary strategy (ES) heuristic, which handles the spatial data from the GIS. We demonstrate the functionality of the algorithm and show how including spatial data improves the planning process by optimizing a synthesis gas biorefinery using this new planning approach.
Keywords:Evolutionary computations  Biorefinery  Evolutionary strategy  Geographic Information System  Location planning  NLP
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