作者
Sidi Lu, Yongtao Yao, Weisong Shi
发表日期
2020/10/13
来源
IEEE Internet of Things Journal
卷号
8
报告编号
13
页码范围
10222-10236
出版商
IEEE
简介
The proliferation of edge computing technologies has boosted the development of new applications for a plethora of edge devices. However, many applications face privacy issues and bandwidth limitations. To solve these limitations, we propose a collaborative learning framework on the edges, named CLONE, which is steered by the real-world data sets collected from a large electric vehicle (EV) company and a grocery store of a shopping mall, respectively. We categorize two application scenarios for CLONE, i.e., CLONE in the training stage (CLONE_training) and CLONE in the inference stage (CLONE_inference). As to CLONE_training, we choose the failure prediction of EV battery and associated components as the first use case. While as for CLONE_inference, customer tracking in a grocery store is selected as another case study. In this work, the goal of the CLONE is to support real-time training and …
引用总数
20212022202320242543
学术搜索中的文章
S Lu, Y Yao, W Shi - IEEE Internet of Things Journal, 2020