基于隐私设计的车辆边缘计算分布式卸载

Weibin Ma, Lena Mashayekhy
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引用次数: 3

摘要

车辆边缘计算(vehicle Edge Computing, VEC)是一种分布式计算范式,它利用智能汽车(SVs)的移动性、低运营成本、灵活部署和无线通信能力等固有属性,将其作为计算云(边缘节点)。VEC通过扩大计算覆盖范围和进一步提高设备的服务质量(QoS)来扩展边缘计算服务。由于装载sv的云的机载能量和计算能力有限,单个车辆可能无法执行大量任务并保证其期望的QoS。为了解决这个问题,超载车辆可以通过将其任务卸载给其他可用的联网车辆来完成其压倒性的工作量。但是,数据隐私和可访问性是卸载时需要考虑的至关重要的因素。在本文中,我们提出了VEC的隐私设计卸载方案,以满足用户需求的延迟需求,并降低车辆的能耗。我们将数据保护卸载问题(DROP)表述为一个整数程序,并证明了它的np -硬度。为了提供计算上易于处理的解决方案,我们通过利用图论提出了三种分布式算法来解决这个问题。我们通过大量的实验来评估我们提出的算法的性能,并将它们与IBM ILOG CPLEX获得的最佳结果进行比较。结果证明了我们提出的算法在提供实用的隐私设计卸载解决方案方面的灵活性、可扩展性和成本效率,从而支持沿云到物连续体的边缘服务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy-by-Design Distributed Offloading for Vehicular Edge Computing
Vehicular Edge Computing (VEC) is a distributed computing paradigm that utilizes smart vehicles (SVs) as computational cloudlets (edge nodes) by virtue of their inherent attributes such as mobility, low operating costs, flexible deployment, and wireless communication ability. VEC extends edge computing services by expanding computing coverage and further improving quality-of-services (QoS) for devices. Due to limited onboard energy and computation capabilities of SV-mounted cloudlets, a single vehicle might not be able to execute a large number of tasks and guarantee their desired QoS. To address this problem, the overloaded vehicle can fulfill its overwhelming workload by offloading its tasks to other available connected vehicles. However, data privacy and accessibility are of critical importance that need to be considered for offloading. In this paper, we propose privacy-by-design offloading solutions for VEC to facilitate latency requirements of user demands and reduce energy consumption of vehicles.We formulate the Data pRotection Offloading Problem (DROP) as an Integer Program and prove its NP-hardness. To provide computationally tractable solutions, we propose three distributed algorithms by leveraging graph theory to solve this problem. We evaluate the performance of our proposed algorithms by extensive experiments and compare them to the optimal results obtained by IBM ILOG CPLEX. The results demonstrate the flexibility, scalability, and cost efficiency of our proposed algorithms in providing practical privacy-by-design offloading solutions enabling edge services along the cloud-to-thing continuum.
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