Guo Zhengang, Zhang Yingfeng, Zhao Xibin, Song Xiaoyu
IEEE Trans Cybern. 2021 Jan;51(1):188-198. doi: 10.1109/TCYB.2020.2964301. Epub 2020 Dec 22.
Discrete manufacturing systems are characterized by dynamics and uncertainty of operations and behavior due to exceptions in production-logistics synchronization. To deal with this problem, a self-adaptive collaborative control (SCC) mode is proposed for smart production-logistics systems to enhance the capability of intelligence, flexibility, and resilience. By leveraging cyber-physical systems (CPSs) and industrial Internet of Things (IIoT), real-time status data are collected and processed to perform decision making and optimization. Hybrid automata is used to model the dynamic behavior of physical manufacturing resources, such as machines and vehicles in shop floors. Three levels of collaborative control granularity, including nodal SCC, local SCC, and global SCC, are introduced to address different degrees of exceptions. Collaborative optimization problems are solved using analytical target cascading (ATC). A proof of concept simulation based on a Chinese aero-engine manufacturer validates the applicability and efficiency of the proposed method, showing reductions in waiting time, makespan, and energy consumption with reasonable computational time. This article potentially enables manufacturers to implement CPS and IIoT in manufacturing environments and build up smart, flexible, and resilient production-logistics systems.
离散制造系统的特点是由于生产物流同步中的异常情况而导致操作和行为具有动态性和不确定性。为了解决这个问题,针对智能生产物流系统提出了一种自适应协同控制(SCC)模式,以提高智能、灵活性和弹性能力。通过利用信息物理系统(CPS)和工业物联网(IIoT),收集和处理实时状态数据以进行决策和优化。混合自动机用于对物理制造资源(如车间中的机器和车辆)的动态行为进行建模。引入了三个层次的协同控制粒度,包括节点SCC、局部SCC和全局SCC,以解决不同程度的异常情况。使用解析目标级联(ATC)解决协同优化问题。基于一家中国航空发动机制造商的概念验证仿真验证了所提方法的适用性和效率,结果表明等待时间、完工时间和能耗有所减少,且计算时间合理。本文有望使制造商在制造环境中实施CPS和IIoT,并建立智能、灵活和有弹性的生产物流系统。