自学习生产系统(SLPS)——制鞋行业制造工艺参数的优化

Giovanni Di Orio, G. Cândido, J. Barata, S. Scholze, Oliver Kotte, D. Stokic
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引用次数: 9

摘要

今天的制造过程被困在日益增长的质量需求、高过程安全性、制造过程效率、缩短上市时间和提高生产率之间。为了满足这些需求,越来越多的制造企业将赌注押在智能和更集成的监控解决方案的应用上,以减少维护问题,生产线停机时间和降低制造运营成本,同时保证更有效地管理制造资源。在这种情况下,目前在自学习生产系统(SLPS)范围内进行的研究试图通过提供一种新的集成方式来开发基于新技术的监测和控制解决方案,特别是基于自适应、上下文感知和数据挖掘技术,来填补这些空白。本文介绍了驱动通用SLPS体系结构设计的研究背景,并重点介绍了负责根据实际操作上下文调整系统行为的适配器组件。本文介绍了建议的适配器体系结构及其核心组件,以及通用的适应过程,或者更确切地说,是适配器适应系统行为以应对当前上下文的方式。最后,为了演示SLPS方法在实际工业环境中的适用性,以及适配器在系统生命周期中学习和发展的能力,提出了一个应用程序场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-Learning Production Systems (SLPS) - Optimization of manufacturing process parameters for the shoe industry
The manufacturing processes of today are caught between the growing needs for quality, high process safety, efficiency in manufacturing process, reduced time-to-market and higher productivity. In order to meet these demands, more and more manufacturing companies are betting on the application of intelligent and more integrated monitoring and control solution to reduce maintenance problems, production line downtimes and reduction of manufacturing operational costs while guarantying a more efficient management of the manufacturing resources. In this scenario, the research currently done under the scope of the Self-Learning Production Systems (SLPS) tries to fill these gaps by providing a new and integrated way for developing monitoring and control solutions based on novel technologies and especially on self-adaptive, context awareness and data mining techniques. This paper introduces the research background that has driven the design of the generic SLPS architecture and focuses on the Adapter component responsible for adapting the system behaviour according to the actual operative context. The proposed Adapter architecture together with its core components are introduced as well as the generic adaptation process, or rather, the way the Adapter adapt the system behaviour to cope with the current context. Finally, to demonstrate the applicability of the SLPS methodology into real industrial context as well as the Adapter capabilities to learn and evolve along system lifecycle an application scenario is presented.
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