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Using LEL and scenarios to derive mathematical programming models. Application in a fresh tomato packing problem

机译:使用LEL和场景来推导数学编程模型。 在新鲜的番茄包装问题中的应用

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Mathematical programming models are invaluable tools at decision making, assisting managers to uncover otherwise unattainable means to optimize their processes. However, the value they provide is only as good as their capacity to capture the process domain. This information can only be obtained from stakeholders, i.e., clients or users, who can hardly communicate the requirements clearly and completely. Besides, existing conceptual models of mathematical programming models are not standardized, nor is the process of deriving the mathematical programming model from the concept model, which remains ad hoc. In this paper, we propose an agile methodology to construct mathematical programming models based on two techniques from requirements engineering that have been proven effective at requirements elicitation: the language extended lexicon (LEL) and scenarios. Using the pair of LEL + scenarios allows to create a conceptual model that is clear and complete enough to derive a mathematical programming model that effectively captures the business domain. We also define an ontology to describe the pair LEL + scenarios, which has been implemented with a semantic mediawiki and allows the collaborative construction of the conceptual model and the semi-automatic derivation of mathematical programming model elements. The process is applied and validated in a known fresh tomato packing optimization problem. This proposal can be of high relevance for the development and implementation of mathematical programming models for optimizing agriculture and supply chain management related processes in order to fill the current gap between mathematical programming models in the theory and the practice.
机译:数学编程模型在决策中是无价的工具,协助管理者揭示其他无法实现的手段来优化他们的进程。但是,它们提供的价值仅与其捕获过程域的能力一样好。此信息只能从利益相关者,即客户或用户获取,谁可以清楚地完整地传达这些要求。此外,数学编程模型的现有概念模型不是标准化的,也不是从概念模型中导出数学编程模型的过程,该模型仍然是临时模型。在本文中,我们提出了一种敏捷方法来构建基于从需求工程的两种技术构建数学编程模型,这些技术已被证明是有效的要求阐释:语言扩展词典(LEL)和情景。使用该对LEL +方案允许创建一个清晰且足够完整的概念模型,以推导出有效捕获业务域的数学编程模型。我们还定义了一个本体来描述该对LEL +场景,该方案已经用语义媒体媒体实现,并允许概念模型的协同构建和数学编程模型元素的半自动推导。该过程在已知的新鲜番茄包装优化问题中应用和验证。该提案对于在优化农业和供应链管理相关过程的数学规划模型的开发和实施中,该提案具有高相关性,以便在理论和实践中填补数学规划模型之间的当前差距。

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