论文标题
啤酒有组织优化:利用蜂群智能和进化计算方法
Beer Organoleptic Optimisation: Utilising Swarm Intelligence and Evolutionary Computation Methods
论文作者
论文摘要
食品特性中的定制是一项具有挑战性的任务,涉及对生产过程进行优化,并需要支持计算创造力,该计算创造力旨在确保存在替代方案。本文介绍了在生产过程更灵活的精酿啤酒的特定情况下,涉及啤酒特性的个性化。我们通过使用三种群智能和进化计算技术来调查问题,这些技术使酿酒商能够绘制物理化学特性以靶向有机摄影特性以设计特定的啤酒。虽然有几种工具使用原始的数学和化学公式或机器学习模型来处理基于预先确定的成分量确定啤酒性能的过程,但下一步是研究一种自动定量成分选择方法。许多实验设计了精酿啤酒,可以通过许多实验来说明该过程,在这些实验中,通过根据其已知特性“克隆”流行的商业品牌来研究结果。使用准确性,效率,可靠性,人群多样性,基于迭代的改进和解决方案多样性评估算法性能。拟议的方法允许发现新食谱,个性化和现有食谱的替代高保真繁殖。
Customisation in food properties is a challenging task involving optimisation of the production process with the demand to support computational creativity which is geared towards ensuring the presence of alternatives. This paper addresses the personalisation of beer properties in the specific case of craft beers where the production process is more flexible. We investigate the problem by using three swarm intelligence and evolutionary computation techniques that enable brewers to map physico-chemical properties to target organoleptic properties to design a specific brew. While there are several tools, using the original mathematical and chemistry formulas, or machine learning models that deal with the process of determining beer properties based on the pre-determined quantities of ingredients, the next step is to investigate an automated quantitative ingredient selection approach. The process is illustrated by a number of experiments designing craft beers where the results are investigated by "cloning" popular commercial brands based on their known properties. Algorithms performance is evaluated using accuracy, efficiency, reliability, population-diversity, iteration-based improvements and solution diversity. The proposed approach allows for the discovery of new recipes, personalisation and alternative high-fidelity reproduction of existing ones.