Nowadays wireless communication is rapidly reshaping entire industry sectors. In particular, mobile edge computing (MEC) as an enabling technology for industrial Internet of things (IIoT) brings powerful computing/storage infrastructure closer to the mobile terminals and, thereby, significant lowers the response latency. To reap the benefit of proactive caching at the network edge, precise knowledge on the popularity pattern among the end devices is essential. However, the complex and dynamic nature of the content popularity over space and time as well as the data-privacy requirements in many IIoT scenarios pose tough challenges to its acquisition. In this article, we propose an unsupervised and privacy-preserving popularity prediction framework for MEC-enabled IIoT. The concepts of local and global popularities are introduced and the time-varying popularity of each user is modelled as a model-free Markov chain. On this basis, a novel unsupervised recurrent federated learning (URFL) algorithm is proposed to predict the distributed popularity while achieve privacy preservation and unsupervised training. Simulations indicate that the proposed framework can enhance the prediction accuracy in terms of a reduced root-mean-squared error by up to $60.5\%-68.7\%$. Additionally, manual labeling and violation of users' data privacy are both avoided.
翻译:目前,无线通信正在迅速改变整个工业部门。特别是,移动边缘计算(MEC)作为工业用物互联网(IIoT)的赋能技术,使强大的计算/存储基础设施更接近移动终端,从而大大降低反应时间。为了在网络边缘取得主动缓冲的好处,必须准确了解终端装置的普及模式。然而,由于内容在空间和时间上的普及程度以及许多IIoT情景中的数据-隐私需求的复杂性和动态性,对其获取构成了严峻的挑战。在本篇文章中,我们提议为借助MEC的IIoT提供不受监督和隐私保护的普及性预测框架。引入了当地和全球流行的概念,并且每个用户在时间上的受欢迎程度被模拟为无模型的Markov链。在此基础上,提议采用新的未经监管的经常性反馈算法,以预测分布式的普及性,同时实现隐私保护并进行未经校正的培训。模拟表明,拟议的框架可以提高降低的互联网用户的保密度的预测准确性,并且避免了对互联网用户的滥用。