Industry 4.0-enabled smart factory is expected to realize the next revolution for manufacturers. Although artificial intelligence (AI) technologies have improved productivity, current use cases belong to small-scale and single-task operations. To unbound the potential of smart factory, this paper develops zero-touch network systems for intelligent manufacturing and facilitates distributed AI applications in both training and inferring stages in a large-scale manner. The open radio access network (O-RAN) architecture is first introduced for the zero-touch platform to enable globally controlling communications and computation infrastructure capability in the field. The designed serverless framework allows intelligent and efficient learning assignments and resource allocations. Hence, requested learning tasks can be assigned to appropriate robots, and the underlying infrastructure can be used to support the learning tasks without expert knowledge. Moreover, due to the proposed network system's flexibility, powerful AI-enabled networking algorithms can be utilized to ensure service-level agreements and superior performances for factory workloads. Finally, three open research directions of backward compatibility, end-to-end enhancements, and cybersecurity are discussed for zero-touch smart factory.
翻译:虽然人工智能(AI)技术提高了生产率,但目前的使用案例属于小规模和单一任务操作。为了释放智能工厂的潜力,本文件开发了智能制造的零触网系统,并以大规模的方式在培训和推断阶段促进分散的人工智能应用。开放的无线电接入网络(O-RAN)架构首先为零触网平台引入,以便能够在全球控制通信和计算实地基础设施的能力。设计的无服务器框架允许智能和高效的学习任务和资源分配。因此,请求的学习任务可以分配给适当的机器人,基础基础设施可以用于在没有专家知识的情况下支持学习任务。此外,由于拟议的网络系统具有灵活性,可使用强大的AI驱动的联网算法来确保服务级别协议和工厂工作量的优异性。最后,对零触摸智能工厂讨论了关于落后兼容性、端对端增强和网络安全的三个开放研究方向。