基于多种群的遗传算法在业务流程优化中的应用

Nadir Mahammed, Mahmoud Fahsi, S. Bennabi
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引用次数: 0

摘要

在竞争激烈的环境中,企业的成功取决于其业务流程的有效性,这导致了对时间的持续改进的追求。这种改进称为业务流程优化。然而,两个主要的挑战经常阻碍流程优化。首先,分析人员在众多命题中选择正确过程的技能。其次,在优化过程中用于生成和评估解的技术很差,并且不包括所有相关数据。我们的渐进式业务流程优化方法通过定义良好的数学表示和新颖的进化算法作为优化工具来解决这些挑战。在本文中,我们着重于使用形式化的流程优化方法来生成和改进业务流程设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic Algorithm Based on Multiple Population in a Business Process Optimization Issue
In a competitive environment, enterprises success depends on the effectiveness of their business processes, which leads to the search of a continuous improvement in the time. This kind of improvement is called business process optimization. Yet, two major challenges often prevent processes optimization. First, the skills of the analysts to choose the right process among a number of propositions. Second, the techniques applied to generate and evaluate solutions during optimization process are poor and do not include all relevant data. Our Evolutionary Business Process Optimization approach addresses these challenges through a well-defined mathematical representation and a novel evolutionary algorithm as optimization facilities. In this paper, we focus to use of a formalized process optimization approach for generating and improving business process designs.
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