Emerging 5G and beyond wireless industrial virtualized networks are expected to support a significant number of robotic manipulators. Depending on the processes involved, these industrial robots might result in significant volume of multi-modal traffic that will need to traverse the network all the way to the (public/private) edge cloud, where advanced processing, control and service orchestration will be taking place. In this paper, we perform the traffic engineering by capitalizing on the underlying pseudo-deterministic nature of the repetitive processes of robotic manipulators in an industrial environment and propose an integer linear programming (ILP) model to minimize the maximum aggregate traffic in the network. The task sequence and time gap requirements are also considered in the proposed model. To tackle the curse of dimensionality in ILP, we provide a random search algorithm with quadratic time complexity. Numerical investigations reveal that the proposed scheme can reduce the peak data rate up to 53.4% compared with the nominal case where robotic manipulators operate in an uncoordinated fashion, resulting in significant improvement in the utilization of the underlying network resources.
翻译:新兴的5G和无线工业虚拟化网络将支持大量机器人操纵者。根据所涉及的过程,这些工业机器人可能会导致大量多模式交通,需要将网络通向(公共/私营)边缘云层,在那里将进行高级处理、控制和服务交响。在本文件中,我们进行交通工程,利用工业环境中机器人操纵者的重复性过程的伪确定性质,并提出一个整线编程模型,以尽量减少网络的最大总流量。任务顺序和时间差距要求也在拟议模型中加以考虑。为了消除(公共/私营)边缘云层的诅咒,我们提供了一种具有四面形时间复杂性的随机搜索算法。数字调查显示,拟议计划可以将顶峰数据率降低到53.4%,而名义上,机器人操纵者以不协调的方式运作,从而大大改进了对基本网络资源的利用。