Deep reinforcement learning-based resource scheduling for energy optimization and load balancing in SDN-driven edge computing

IF 4.5 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Computer Communications Pub Date : 2024-08-19 DOI:10.1016/j.comcom.2024.107925
Xu Zhou , Jing Yang , Yijun Li , Shaobo Li , Zhidong Su
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Abstract

Traditional techniques for edge computing resource scheduling may result in large amounts of wasted server resources and energy consumption; thus, exploring new approaches to achieve higher resource and energy efficiency is a new challenge. Deep reinforcement learning (DRL) offers a promising solution by balancing resource utilization, latency, and energy optimization. However, current methods often focus solely on energy optimization for offloading and computing tasks, neglecting the impact of server numbers and resource operation status on energy efficiency and load balancing. On the other hand, prioritizing latency optimization may result in resource imbalance and increased energy waste. To address these challenges, we propose a novel energy optimization method coupled with a load balancing strategy. Our approach aims to minimize overall energy consumption and achieve server load balancing under latency constraints. This is achieved by controlling the number of active servers and individual server load states through a two stage DRL-based energy and resource optimization algorithm. Experimental results demonstrate that our scheme can save an average of 19.84% energy compared to mainstream reinforcement learning methods and 49.60% and 45.33% compared to Round Robin (RR) and random scheduling, respectively. Additionally, our method is optimized for reward value, load balancing, runtime, and anti-interference capability.

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基于深度强化学习的资源调度,在 SDN 驱动的边缘计算中实现能源优化和负载平衡
传统的边缘计算资源调度技术可能会导致大量服务器资源和能源消耗的浪费;因此,探索新方法以实现更高的资源和能源效率是一项新的挑战。深度强化学习(DRL)通过平衡资源利用率、延迟和能源优化,提供了一种前景广阔的解决方案。然而,目前的方法往往只关注卸载和计算任务的能源优化,而忽视了服务器数量和资源运行状态对能源效率和负载平衡的影响。另一方面,优先优化延迟可能会导致资源失衡,增加能源浪费。为应对这些挑战,我们提出了一种与负载平衡策略相结合的新型能源优化方法。我们的方法旨在最大限度地降低总体能耗,并在延迟限制条件下实现服务器负载平衡。这是通过基于 DRL 的两阶段能源和资源优化算法控制活动服务器数量和单个服务器负载状态来实现的。实验结果表明,与主流强化学习方法相比,我们的方案平均可节省 19.84% 的能源,与循环罗宾(RR)和随机调度相比,分别可节省 49.60% 和 45.33% 的能源。此外,我们的方法还优化了奖励值、负载平衡、运行时间和抗干扰能力。
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来源期刊
Computer Communications
Computer Communications 工程技术-电信学
CiteScore
14.10
自引率
5.00%
发文量
397
审稿时长
66 days
期刊介绍: Computer and Communications networks are key infrastructures of the information society with high socio-economic value as they contribute to the correct operations of many critical services (from healthcare to finance and transportation). Internet is the core of today''s computer-communication infrastructures. This has transformed the Internet, from a robust network for data transfer between computers, to a global, content-rich, communication and information system where contents are increasingly generated by the users, and distributed according to human social relations. Next-generation network technologies, architectures and protocols are therefore required to overcome the limitations of the legacy Internet and add new capabilities and services. The future Internet should be ubiquitous, secure, resilient, and closer to human communication paradigms. Computer Communications is a peer-reviewed international journal that publishes high-quality scientific articles (both theory and practice) and survey papers covering all aspects of future computer communication networks (on all layers, except the physical layer), with a special attention to the evolution of the Internet architecture, protocols, services, and applications.
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