Xu Hansong, Liu Xing, Yu Wei, Griffith David, Golmie Nada
Towson University, USA.
National Institute of Standards and Technology (NIST), USA.
IEEE J Sel Areas Commun. 2020 May;38(5). doi: 10.1109/jsac.2020.2980909.
Industrial Internet-of-Things (IIoT), also known as Industry 4.0, is the integration of Internet of Things (IoT) technology into the industrial manufacturing system so that the connectivity, efficiency, and intelligence of factories and plants can be improved. From a cyber physical system (CPS) perspective, multiple systems (e.g., control, networking and computing systems) are synthesized into IIoT systems interactively to achieve the operator's design goals. The interactions among different systems is a non-negligible factor that affects the IIoT design and requirements, such as automation, especially under dynamic industrial operations. In this paper, we leverage reinforcement learning techniques to automatically configure the control and networking systems under a dynamic industrial environment. We design three new policies based on the characteristics of industrial systems so that the reinforcement learning can converge rapidly. We implement and integrate the reinforcement learning-based co-design approach on a realistic wireless cyber-physical simulator to conduct extensive experiments. Our experimental results demonstrate that our approach can effectively and quickly reconfigure the control and networking systems automatically in a dynamic industrial environment.
工业物联网(IIoT),也被称为工业4.0,是将物联网(IoT)技术集成到工业制造系统中,从而提高工厂和车间的连通性、效率和智能化程度。从信息物理系统(CPS)的角度来看,多个系统(如控制、网络和计算系统)相互作用地合成到工业物联网系统中,以实现操作人员的设计目标。不同系统之间的交互是影响工业物联网设计和需求(如自动化)的一个不可忽视的因素,尤其是在动态工业操作环境下。在本文中,我们利用强化学习技术在动态工业环境下自动配置控制和网络系统。我们根据工业系统的特点设计了三种新策略,以便强化学习能够快速收敛。我们在一个实际的无线信息物理模拟器上实现并集成了基于强化学习的协同设计方法,以进行广泛的实验。我们的实验结果表明,我们的方法能够在动态工业环境中有效地、快速地自动重新配置控制和网络系统。