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Constrained global optimization for wine blending

机译:葡萄酒混合的受限全局优化

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摘要

Assemblage consists in blending base wines in order to create target wines. Recent developments in aroma analysis allow us to measure chemical compounds impacting the taste of wines. This chemical analysis makes it possible to design a decision tool for the following problem: given a set of target wines, determine which volumes must be extracted from each base wine to produce wines that satisfy constraints on aroma concentration, volumes, alcohol contents and price. This paper describes the modeling of wine assemblage as a mixed constrained optimization problem, where the main goal is to minimize the gap to the desired concentrations for every aromatic criterion. The deterministic branch and bound solvers Couenne and IbexOpt behave well on the wine blending problem thanks to their interval constraint propagation/programming and polyhedral relaxation methods. We also study the performance of other optimization goals that could be embedded in a configuration tool, where the different possible interactions amount to solving the same constraints with different objective functions. We finally show on a recent generic wine blending instance that the proposed optimization process scales up well with the number of base wines.
机译:组装包括将基础葡萄酒混合在一起以制造目标葡萄酒。香气分析的最新发展使我们能够测量影响葡萄酒口味的化学化合物。通过这种化学分析,可以为以下问题设计决策工具:给定一组目标葡萄酒,确定必须从每种基础葡萄酒中提取哪些体积才能生产出满足香气浓度,体积,酒精含量和价格限制的葡萄酒。本文将葡萄酒组合建模描述为一个混合约束优化问题,其主要目标是使每种芳香标准的间隙最小化至所需浓度。确定性分支定界求解器Couenne和IbexOpt由于其间隔约束传播/编程和多面体松弛方法而在葡萄酒混合问题上表现良好。我们还研究了可嵌入配置工具中的其他优化目标的性能,其中不同的可能交互作用等于用不同的目标函数来解决相同的约束。最后,我们在一个最近的通用葡萄酒调合实例上表明,建议的优化过程会随着基本葡萄酒的数量而扩大。

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