QoS-SLA-aware adaptive genetic algorithm for multi-request offloading in integrated edge-cloud computing in Internet of vehicles

Veh. Commun. Pub Date : 2022-01-21 DOI:10.2139/ssrn.4280035
Huned Materwala, L. Ismail, H. Hassanein
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引用次数: 2

Abstract

The Internet of Vehicles over Vehicular Ad-hoc Networks is an emerging technology enabling the development of smart city applications focused on improving traffic safety, traffic efficiency, and the overall driving experience. These applications have stringent requirements detailed in Service Level Agreement. Since vehicles have limited computational and storage capabilities, applications requests are offloaded onto an integrated edge-cloud computing system. Existing offloading solutions focus on optimizing the application's Quality of Service (QoS) in terms of execution time, and respecting a single SLA constraint. They do not consider the impact of overlapped multi-requests processing nor the vehicle's varying speed. This paper proposes a novel Artificial Intelligence QoS-SLA-aware adaptive genetic algorithm (QoS-SLA-AGA) to optimize the application's execution time for multi-request offloading in a heterogeneous edge-cloud computing system, which considers the impact of processing multi-requests overlapping and dynamic vehicle speed. The proposed genetic algorithm integrates an adaptive penalty function to assimilate the SLA constraints regarding latency, processing time, deadline, CPU, and memory requirements. Numerical experiments and analysis compare our QoS-SLA-AGA to random offloading, and baseline genetic-based approaches. Results show QoS-SLA-AGA executes the requests 1.22 times faster on average compared to the random offloading approach and with 59.9% fewer SLA violations. In contrast, the baseline genetic-based approach increases the requests' performance by 1.14 times, with 19.8% more SLA violations.
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基于qos - sla的车联网集成边缘云多请求卸载自适应遗传算法
基于车辆自组织网络的车联网是一项新兴技术,能够开发专注于提高交通安全、交通效率和整体驾驶体验的智慧城市应用。这些应用程序有严格的要求,详细说明在服务水平协议。由于车辆的计算和存储能力有限,应用程序请求被卸载到集成的边缘云计算系统上。现有的卸载解决方案侧重于在执行时间方面优化应用程序的服务质量(QoS),并尊重单个SLA约束。他们没有考虑重叠的多请求处理的影响,也没有考虑车辆变化的速度。为了优化异构边缘云系统中多请求卸载应用程序的执行时间,考虑了处理多请求重叠和动态车辆速度的影响,提出了一种新的人工智能QoS-SLA-AGA自适应遗传算法(QoS-SLA-AGA)。提出的遗传算法集成了一个自适应惩罚函数,以吸收SLA关于延迟、处理时间、截止日期、CPU和内存需求的约束。数值实验和分析比较了我们的QoS-SLA-AGA与随机卸载和基于基线遗传的方法。结果表明,与随机卸载方法相比,QoS-SLA-AGA执行请求的速度平均快1.22倍,违反SLA的次数减少59.9%。相比之下,基于基线遗传的方法将请求的性能提高了1.14倍,违反SLA的次数增加了19.8%。
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