Advances in Adaptive Scheduling in Industry 4.0

D. Mourtzis
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引用次数: 4

Abstract

The shift of traditional mass-producing industries towards mass customisation practices is nowadays evident. However, if not implemented properly, mass customisation can lead to disturbances in material flow and severe reduction in productivity. Moreover, manufacturing enterprises often face the challenge of manufacturing highly customized products in small lot sizes. One solution to adapt to the ever-changing demands, which increases resource flexibility, lies in the digitization of the manufacturing systems. Furthermore, the distributed manufacturing environment and the ever-increasing product variety and complexity result in reduced time-to market, ubiquitous data access and sharing and adaptability and responsiveness to changes. These requirements can be achieved through smart manufacturing tools and especially Wireless Sensor Networks (WSN). Thus, the aim of this position paper is to summarize the design and development of solutions based on cutting-edge technologies such as Cloud Computing, Artificial Intelligence (AI), Internet of Things (IoT), Simulation, 5G, and so on. Concretely, the first part discusses the development of a Cloud-based production planning and control system for discrete manufacturing environments. The proposed approach takes into consideration capacity constraints, lot sizing and priority control in a “bucket-less” manufacturing environment. Then, an open and interoperable Internet of Things platform is discussed, which is enhanced by innovative tools and methods that transform them into Cyber-Physical Systems (CPS), supporting smart customized shopping, through gathering customers’ requirements, adaptive production, and logistics of vending machines replenishment and Internet of Things and Wireless Sensor Networks for Smart Manufacturing. To that end, all the proposed methodologies are validated using data derived from Computer Numerical Control (CNC) machine building industry, from European Metal-cutting and mold-making SMEs, from white goods industry and SMEs that produces solar panels.
工业4.0中的自适应调度研究进展
传统的大规模生产行业向大规模定制实践的转变如今是显而易见的。然而,如果实施不当,大规模定制可能导致物料流动紊乱和生产力严重降低。此外,制造企业经常面临小批量生产高度定制产品的挑战。为了适应不断变化的需求,增加资源的灵活性,一个解决方案是制造系统的数字化。此外,分布式制造环境和不断增加的产品种类和复杂性导致上市时间缩短,无处不在的数据访问和共享以及对变化的适应性和响应性。这些要求可以通过智能制造工具,特别是无线传感器网络(WSN)来实现。因此,本意见书的目的是总结基于云计算、人工智能(AI)、物联网(IoT)、仿真、5G等前沿技术的解决方案的设计和开发。具体来说,第一部分讨论了离散制造环境下基于云的生产计划和控制系统的开发。提出的方法考虑了“无桶”制造环境中的产能限制、批量大小和优先级控制。然后,讨论了一个开放和可互操作的物联网平台,并通过创新的工具和方法将其转化为网络物理系统(CPS),通过收集客户需求,自适应生产和自动售货机补货物流以及智能制造的物联网和无线传感器网络,支持智能定制购物。为此,所有提出的方法都使用来自计算机数控(CNC)机器制造行业,来自欧洲金属切割和模具制造中小企业,来自白色家电行业和生产太阳能电池板的中小企业的数据进行验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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