论文标题
用于更新控制计划的智能决策支持系统
Intelligent Decision Support System for Updating Control Plans
论文作者
论文摘要
在当前的竞争环境中,制造商在最短的时间内做出最佳决策至关重要,以优化制造系统的效率和有效性。这些决定从战略层面到战术和运营生产计划和控制。在这种情况下,详细阐述了能够整合各种模型以及数据和知识资源的智能决策支持系统(DSS)已变得很有希望。本文提出了一个智能DSS,用于质量控制计划。 DSS是推荐系统(RS),可帮助决策者使用两种不同的方法选择最佳的控制场景。第一个是使用多标准决策方法的手动选择。第二个是基于基于病例的推理(CBR)技术的自动建议。此外,拟议的RS使得可以不断更新控制计划,以适应实际的过程质量状况。这样做,CBR用于学习所需的知识,以提高决策质量。为了说明拟议的DSS的可行性和实用性,在实际案例研究中进行了数值应用。
In the current competitive environment, it is crucial for manufacturers to make the best decisions in the shortest time, in order to optimize the efficiency and effectiveness of the manufacturing systems. These decisions reach from the strategic level to tactical and operational production planning and control. In this context, elaborating intelligent decisions support systems (DSS) that are capable of integrating a wide variety of models along with data and knowledge resources has become promising. This paper proposes an intelligent DSS for quality control planning. The DSS is a recommender system (RS) that helps the decision maker to select the best control scenario using two different approaches. The first is a manual choice using a multi-criteria decision making method. The second is an automatic recommendation based on case-based reasoning (CBR) technique. Furthermore, the proposed RS makes it possible to continuously update the control plans in order to be adapted to the actual process quality situation. In so doing, CBR is used for learning the required knowledge in order to improve the decision quality. A numerical application is performed in a real case study in order to illustrate the feasibility and practicability of the proposed DSS.