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Hybridation of Bayesian networks and evolutionary algorithms for multi-objective optimization in an integrated product design and project management context

机译:贝叶斯网络与进化算法的混合,在集成产品设计和项目管理环境中实现多目标优化

摘要

A better integration of preliminary product design and project management processes at early steps of system design is nowadays a key industrial issue. Therefore, the aim is to make firms evolve from classical sequential approach (first product design the project design and management) to new integrated approaches. In this paper, a model for integrated product/project optimization is first proposed which allows taking into account simultaneously decisions coming from the product and project managers. However, the resulting model has an important underlying complexity, and a multi-objective optimization technique is required to provide managers with appropriate scenarios in a reasonable amount of time. The proposed approach is based on an original evolutionary algorithm called evolutionary algorithm oriented by knowledge (EAOK). This algorithm is based on the interaction between an adapted evolutionary algorithm and a model of knowledge (MoK) used for giving relevant orientations during the search process. The evolutionary operators of the EA are modified in order to take into account these orientations. The MoK is based on the Bayesian Network formalism and is built both from expert knowledge and from individuals generated by the EA. A learning process permits to update probabilities of the BN from a set of selected individuals. At each cycle of the EA, probabilities contained into the MoK are used to give some bias to the new evolutionary operators. This method ensures both a faster and effective optimization, but it also provides the decision maker with a graphic and interactive model of knowledge linked to the studied project. An experimental platform has been developed to experiment the algorithm and a large campaign of tests permits to compare different strategies as well as the benefits of this novel approach in comparison with a classical EA.
机译:如今,在系统设计的早期阶段更好地集成初步产品设计和项目管理流程已成为一个关键的工业问题。因此,目标是使公司从经典的顺序方法(第一个产品设计,项目设计和管理)发展为新的集成方法。在本文中,首先提出了用于产品/项目集成优化的模型,该模型可以同时考虑来自产品和项目经理的决策。但是,生成的模型具有重要的基础复杂性,并且需要多目标优化技术才能在合理的时间内为管理人员提供适当的方案。所提出的方法基于称为知识定向进化算法(EAOK)的原始进化算法。该算法基于适应性进化算法和知识模型(MoK)之间的相互作用,该知识模型用于在搜索过程中提供相关方向。为了考虑这些方向,对EA的进化算子进行了修改。 MoK基于贝叶斯网络形式主义,并基于专家知识和EA生成的个人建立。学习过程允许从一组选定的个人中更新BN的概率。在EA的每个周期中,MoK中包含的概率用于给新的进化算子一些偏差。这种方法既确保了快速有效的优化,又为决策者提供了与所研究项目相关的图形和交互式知识模型。已经开发了一个实验平台来对该算法进行实验,并且进行了大量的测试,可以比较不同的策略以及与传统EA相比这种新颖方法的优势。

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