PSDF: Privacy-aware IoV Service Deployment with Federated Learning in Cloud-Edge Computing

Xiaolong Xu, Wentao Liu, Yulan Zhang, Xuyun Zhang, Wanchun Dou, Lianyong Qi, Md Zakirul Alam Bhuiyan
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引用次数: 9

Abstract

Through the collaboration of cloud and edge, cloud-edge computing allows the edge that approximates end-users undertakes those non-computationally intensive service processing of the cloud, reducing the communication overhead and satisfying the low latency requirement of Internet of Vehicle (IoV). With cloud-edge computing, the computing tasks in IoV is able to be delivered to the edge servers (ESs) instead of the cloud and rely on the deployed services of ESs for a series of processing. Due to the storage and computing resource limits of ESs, how to dynamically deploy partial services to the edge is still a puzzle. Moreover, the decision of service deployment often requires the transmission of local service requests from ESs to the cloud, which increases the risk of privacy leakage. In this article, a method for privacy-aware IoV service deployment with federated learning in cloud-edge computing, named PSDF, is proposed. Technically, federated learning secures the distributed training of deployment decision network on each ES by the exchange and aggregation of model weights, avoiding the original data transmission. Meanwhile, homomorphic encryption is adopted for the uploaded weights before the model aggregation on the cloud. Besides, a service deployment scheme based on deep deterministic policy gradient is proposed. Eventually, the performance of PSDF is evaluated by massive experiments.
PSDF:在云边缘计算中使用联邦学习的隐私感知物联网服务部署
通过云与边缘的协同,云边缘计算允许接近终端用户的边缘承担云的非计算密集型业务处理,降低通信开销,满足车联网(IoV)的低延迟要求。通过云边缘计算,车联网中的计算任务可以由云交付给边缘服务器(edge servers),而不是云,依靠部署在边缘服务器上的服务进行一系列的处理。由于ESs存储和计算资源的限制,如何将部分业务动态部署到边缘仍然是一个难题。此外,服务部署的决策往往需要将本地服务请求从ESs传输到云,这增加了隐私泄露的风险。本文提出了一种基于云边缘计算的联邦学习的隐私感知车联网服务部署方法,称为PSDF。从技术上讲,联邦学习通过模型权值的交换和聚合来保证部署决策网络在每个ES上的分布式训练,避免了原始数据的传输。同时,在云上进行模型聚合前,对上传的权值采用同态加密。此外,提出了一种基于深度确定性策略梯度的服务部署方案。最后,通过大量实验对PSDF的性能进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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