Liu Xianhui, Dong Xianghu, Jia Ning, Zhao Weidong
CAD Research Center, Tongji University, Shanghai 201800, China.
Sensors (Basel). 2024 Jun 27;24(13):4182. doi: 10.3390/s24134182.
With the maturity of artificial intelligence (AI) technology, applications of AI in edge computing will greatly promote the development of industrial technology. However, the existing studies on the edge computing framework for the Industrial Internet of Things (IIoT) still face several challenges, such as deep hardware and software coupling, diverse protocols, difficult deployment of AI models, insufficient computing capabilities of edge devices, and sensitivity to delay and energy consumption. To solve the above problems, this paper proposes a software-defined AI-oriented three-layer IIoT edge computing framework and presents the design and implementation of an AI-oriented edge computing system, aiming to support device access, enable the acceptance and deployment of AI models from the cloud, and allow the whole process from data acquisition to model training to be completed at the edge. In addition, this paper proposes a time series-based method for device selection and computation offloading in the federated learning process, which selectively offloads the tasks of inefficient nodes to the edge computing center to reduce the training delay and energy consumption. Finally, experiments carried out to verify the feasibility and effectiveness of the proposed method are reported. The model training time with the proposed method is generally 30% to 50% less than that with the random device selection method, and the training energy consumption under the proposed method is generally 35% to 55% less.
随着人工智能(AI)技术的成熟,AI在边缘计算中的应用将极大地推动工业技术的发展。然而,现有的关于工业物联网(IIoT)边缘计算框架的研究仍面临若干挑战,如硬件和软件深度耦合、协议多样、AI模型部署困难、边缘设备计算能力不足以及对延迟和能耗敏感等问题。为解决上述问题,本文提出了一种面向软件定义AI的三层IIoT边缘计算框架,并给出了一个面向AI的边缘计算系统的设计与实现,旨在支持设备接入、实现来自云端的AI模型的接纳与部署,并允许在边缘完成从数据采集到模型训练的全过程。此外,本文提出了一种基于时间序列的联邦学习过程中的设备选择和计算卸载方法,该方法有选择地将低效节点的任务卸载到边缘计算中心,以减少训练延迟和能耗。最后,报告了为验证所提方法的可行性和有效性而进行的实验。采用所提方法时的模型训练时间通常比随机设备选择方法少30%至50%,且所提方法下的训练能耗通常少35%至55%。