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Performance of distributed multiparty online gaming over edge computing platforms 基于边缘计算平台的分布式多方在线游戏性能研究
IF 4.3 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-11-28 DOI: 10.1016/j.comcom.2025.108378
D. Olliaro , V. Mancuso , P. Castagno , M. Sereno , M. Ajmone Marsan
We study the performance of online games played over a platform that implements gaming as a service (GaaS) in a mobile network slice that hosts concatenated virtual network functions (VNFs) at the edge. The distributed gaming architecture is based on edge computing facilities, whose utilization must be carefully planned and managed, so as to satisfy the stringent performance requirements of game applications. The game manager must consider the latency between players and edge server VNFs, the capacity and load of edge servers, and the latency between edge servers used by interacting players. This calls for a careful choice about the allocation of players to edge server VNFs, aiming at extremely low latency in interactions resulting from player’s commands. We develop an analytical model, which we validate with experiments in the wild, and show that, under several combinations of system parameters, deploying gaming VNFs at the edge can deliver better performance with respect to cloud gaming, in spite of the complexities arising from the distribution of gaming VNFs over edge servers. Our analytical model provides a useful tool for edge gaming systems performance prediction, thus supporting the management of GaaS applications.
我们研究了在移动网络切片中实现游戏即服务(GaaS)的平台上玩在线游戏的性能,该移动网络切片在边缘托管连接的虚拟网络功能(VNFs)。分布式游戏架构基于边缘计算设施,必须对边缘计算设施的使用进行精心规划和管理,以满足游戏应用对性能的严格要求。游戏管理器必须考虑玩家和边缘服务器VNFs之间的延迟、边缘服务器的容量和负载,以及交互玩家使用的边缘服务器之间的延迟。这需要仔细选择将玩家分配到边缘服务器VNFs,以实现玩家命令导致的交互的极低延迟为目标。我们开发了一个分析模型,并在野外进行了实验验证,结果表明,在系统参数的几种组合下,在边缘部署游戏VNFs可以提供更好的性能,尽管在边缘服务器上分布游戏VNFs会带来复杂性。我们的分析模型为边缘游戏系统性能预测提供了一个有用的工具,从而支持GaaS应用程序的管理。
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引用次数: 0
Hierarchical Stackelberg game-based collaborative learning for ultrasound intelligence in wireless edge healthcare networks 基于分层Stackelberg游戏的无线边缘医疗网络超声智能协同学习
IF 4.3 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-11-27 DOI: 10.1016/j.comcom.2025.108377
Fei Chen , Shalli Rani , Byung-Gyu Kim , Shakila Basheer , Huamao Jiang
The integration of artificial intelligence in wireless edge healthcare networks has revolutionized medical imaging, particularly in ultrasound diagnostics, where real-time processing and privacy preservation are paramount. Traditional centralized AI approaches face substantial obstacles in healthcare applications, including communication bottlenecks, privacy violations, and inadequate resource allocation among heterogeneous medical devices. This paper introduces a novel hierarchical Stackelberg game-based collaborative learning framework for ultrasound intelligence in wireless edge healthcare networks (HSGUL), which innovatively applies Stackelberg game mechanisms to ultrasound image analysis tasks. Based on the computational heterogeneity of medical edge devices, our framework establishes dynamic gaming relationships among cloud healthcare platforms, edge medical clusters, and ultrasound diagnostic nodes through a dual-pricing fair incentive process. This creates personalized hierarchical resource allocation strategies that obtain optimal Nash equilibrium solutions for ultrasound model training, effectively guiding edge-based medical AI models toward positive acceleration. The framework operates through a three-phase Stackelberg game mechanism coordinating resource allocation and incentive distribution across the healthcare network hierarchy. Experimental validation on cardiac, abdominal, and thyroid ultrasound datasets demonstrates superior performance compared to established baseline methods. HSGUL achieves 94.73 % accuracy on cardiac ultrasound classification while reducing communication overhead by 47 % compared to centralized approaches, maintaining patient data privacy through localized edge processing and enabling scalable deployment across diverse healthcare institutions with varying computational capabilities.
在无线边缘医疗网络中集成人工智能已经彻底改变了医学成像,特别是在超声诊断中,实时处理和隐私保护至关重要。传统的集中式人工智能方法在医疗保健应用中面临重大障碍,包括通信瓶颈、隐私侵犯以及异构医疗设备之间资源分配不足。本文介绍了一种新的基于分层Stackelberg博弈的无线边缘医疗网络超声智能协同学习框架,将Stackelberg博弈机制创新地应用于超声图像分析任务。基于医疗边缘设备的计算异质性,我们的框架通过双重定价公平激励流程,在云医疗平台、边缘医疗集群和超声诊断节点之间建立了动态博弈关系。这创建了个性化的分层资源分配策略,为超声模型训练获得最优纳什均衡解决方案,有效地引导基于边缘的医疗人工智能模型正向加速。该框架通过三个阶段的Stackelberg博弈机制运行,协调医疗网络层级之间的资源分配和激励分配。对心脏、腹部和甲状腺超声数据集的实验验证表明,与已建立的基线方法相比,该方法性能优越。HSGUL在心脏超声分类方面实现了94.73%的准确率,同时与集中式方法相比,通信开销减少了47%,通过本地化边缘处理维护了患者数据隐私,并支持跨具有不同计算能力的不同医疗机构的可扩展部署。
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引用次数: 0
Active IRS-aided NOMA with full-duplex energy harvesting wire-tapper: Performance evaluation 具有全双工能量收集窃听器的主动irs辅助NOMA:性能评估
IF 4.3 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-11-24 DOI: 10.1016/j.comcom.2025.108372
Toi Le-Thanh , Cuong Tran-Minh , Khuong Ho-Van
Wireless communication is quickly degraded due to obstacles in signal propagation. These obstacles can be remedied with intelligent reflecting surface (IRS), which purposely changes propagation conditions. However, security is a big concern in wireless communication, where active eavesdroppers are capable of energy harvesting (EH) and interfere with authorized users. This work analyzes a system model in which a full-duplex (FD) source scavenges energy from the power station and broadcasts a non-orthogonal multiple access (NOMA) signal to a close user and a distant user with the aid of active IRS (mainly reducing double loss due to double reflection) subject to a FD wire-tapper with ability of EH and interfering licensed users. By security analysis, the proposed system (active IRS-aided NOMA with FD EH wire-tapper) is demonstrated better than its counterpart (active IRS-aided orthogonal multiple access with FD EH wire-tapper).
由于信号传播中的障碍,无线通信性能下降很快。这些障碍可以通过智能反射面(IRS)来弥补,它有目的地改变传播条件。然而,在无线通信中,安全是一个大问题,主动窃听者能够收集能量(EH)并干扰授权用户。本工作分析了一个系统模型,其中全双工(FD)源从电站清除能量,并借助有源IRS(主要是减少双反射造成的双损耗)向近用户和远用户广播非正交多址(NOMA)信号,该信号受到具有EH能力的FD线窃听器和干扰许可用户的影响。通过安全性分析,所提出的系统(带有FD EH窃听器的有源irs辅助NOMA)优于其对应系统(带有FD EH窃听器的有源irs辅助正交多址)。
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引用次数: 0
E-SPLIT: A hierarchical genetic algorithm for energy-efficient distributed AI services E-SPLIT:一种用于节能分布式人工智能服务的分层遗传算法
IF 4.3 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-11-22 DOI: 10.1016/j.comcom.2025.108371
Lina Magoula, Nikolaos Koursioumpas, Ioannis Stavrakakis, Nancy Alonistioti
As we progress toward a new era of Artificial Intelligence (AI)-enabled wireless networks, the focus shifts to deploying distributed intelligence to enhance network automation, scalability, and responsiveness. Despite its merits, it often leads to resource-intensive deployments, which raise energy concerns. These concerns are further amplified by the limited availability of resource orchestration strategies capable of addressing the multi-faceted nature of distributed AI. This work targets energy consumption minimization of distributed AI services by proposing a custom meta-heuristic, two-tier hierarchical genetic algorithm (HGA) that integrates a divide-and-conquer strategy to provide effective chained decision-making. The first tier of HGA determines the optimal placement of model partitions within an AI service on the underlying network, while the second tier focuses on strategic resource allocation for each partition, ensuring that service latency requirements are met. A safe strategy selection is proposed, applying a custom repair mechanism and a penalty function that discourages constraints violation. Evaluation results show the effectiveness and robustness of the proposed HGA, compared to two state-of-the-art baseline solutions, on different network environments and evaluation scenarios. HGA achieves up to 94.1% decrease in the total energy consumption per service compared to the baselines, while entirely eliminating infeasible strategies.
随着我们向支持人工智能(AI)的无线网络的新时代迈进,重点转移到部署分布式智能以增强网络自动化、可扩展性和响应能力。尽管有其优点,但它经常导致资源密集型部署,从而引起能源问题。能够解决分布式AI的多面性的资源编排策略的有限可用性进一步放大了这些问题。本研究提出了一种自定义的元启发式、两层分层遗传算法(HGA),该算法集成了分而治之的策略,以提供有效的链式决策,以实现分布式人工智能服务的能耗最小化。HGA的第一层确定底层网络上AI服务中模型分区的最佳位置,而第二层侧重于每个分区的战略资源分配,确保满足服务延迟要求。提出了一种安全的策略选择,采用自定义修复机制和惩罚函数来阻止约束的违反。评估结果表明,在不同的网络环境和评估场景下,与两种最先进的基线解决方案相比,所提出的HGA具有有效性和鲁棒性。与基线相比,HGA实现了每次服务总能耗降低94.1%,同时完全消除了不可行的策略。
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引用次数: 0
Cooperative access resource orchestration for extended reality services in spatially dense scenarios 空间密集场景中扩展现实服务的协作访问资源编排
IF 4.3 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-11-19 DOI: 10.1016/j.comcom.2025.108368
Alessandro Priviero , Luca Mastrandrea , Ioannis Chatzigiannakis , Stefania Colonnese
Mobile Extended Reality (XR) communication services offer unparalleled opportunities across various verticals, but present specific challenges due to their high throughput requirements, often in the hundreds of Mbps, and stringent end-to-end delay constraints, usually as low as a few milliseconds. To address these challenges, we propose the eXtended Reality-Oriented Orchestration of Access Resources (X-OAR), designed to support XR applications, by leveraging next-generation network access technologies, even in densely populated environments. X-OAR integrates cooperatively scheduled radio access network resources with edge computing capabilities. X-OAR complies with the stringent delay requirements defined by 3GPP for XR quality of experience through cooperative joint edge and radio resources scheduling. We formulate the delay minimization problem using a graph-based approach and introduce a greedy algorithm that reduces orchestration complexity and prior knowledge of user subscription data. Numerical simulations demonstrate that X-OAR’s cooperative scheduling outperforms state-of-the-art solutions, delivering superior XR quality of experience. Furthermore, X-OAR paves the way for future research on extending orchestration to application-layer strategies and resource-aware charging policies.
移动扩展现实(XR)通信服务在各个垂直领域提供了无与伦比的机会,但由于其高吞吐量要求(通常在数百Mbps)和严格的端到端延迟限制(通常低至几毫秒),因此存在特定的挑战。为了应对这些挑战,我们提出了扩展面向现实的访问资源编排(X-OAR),旨在通过利用下一代网络访问技术支持XR应用,即使在人口密集的环境中也是如此。X-OAR集成了协同调度的无线接入网资源和边缘计算能力。X-OAR通过协同联合边缘和无线电资源调度,满足3GPP对XR体验质量的严格延迟要求。我们使用基于图的方法制定延迟最小化问题,并引入贪婪算法,该算法降低了编排复杂性和用户订阅数据的先验知识。数值模拟表明,X-OAR的协同调度优于最先进的解决方案,提供了卓越的XR质量体验。此外,x - ar还为将编排扩展到应用层策略和资源感知收费策略的未来研究铺平了道路。
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引用次数: 0
I still know you were here: Leveraging probe request templates for identifying Wi-Fi devices at scale 我仍然知道您在这里:利用探针请求模板来大规模识别Wi-Fi设备
IF 4.3 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-11-19 DOI: 10.1016/j.comcom.2025.108367
Daniel Vogel , Felix Viola , Nicholas Malte Kreimeyer , Daniel Bücheler , Sebastian Böhm , Michael Meier
MAC address randomization in Wi-Fi Probe Requests (PRs) is supposed to ensure unlinkability for improving user privacy, but PRs still contain enough information to track or re-identify users without relying on the MAC address. This poses a risk to privacy but may also assist law enforcement in identifying devices present at a crime scene. We examine whether it is possible to separate Wi-Fi devices based on observed PRs with randomized MAC addresses using only the content and structure of these PRs. Previous work has predominantly focused on techniques for device counting using feature reduction as a means to manage data set complexity, and has failed to achieve sufficient accuracy for individual device identification. We propose an approach that leverages templates reflecting a PR’s structure to identify its influence based on vendor and device, allowing the use of more complex fingerprinting algorithms that utilize the full set of available features. To that end we examine differences between vendors and devices based on observation length, used information elements, and overlapping Fingerprints (FPs) while ignoring MAC addresses. Using PR templating, we construct a knowledge base of FPs and templates from not only existing public data sets but also a new data set published for future research. Our data set tackles critical challenges in labelling and quality in currently available data sets, and we introduce a streamlined and comprehensible crowdsourcing process including automated measurements to enable other researchers to contribute to our data set. We evaluate our device identification approach on the currently available data and demonstrate that, depending on the data set, between 75 % and 85 % of Wi-Fi devices can be uniquely separated within the anonymity group of devices contributing PRs to the respective data set.
Wi-Fi探测请求(pr)中的MAC地址随机化应该确保不可链接性以提高用户隐私,但pr仍然包含足够的信息来跟踪或重新识别用户而不依赖于MAC地址。这对隐私构成了威胁,但也可能有助于执法部门识别犯罪现场的设备。我们研究是否有可能根据观察到的具有随机MAC地址的PRs来分离Wi-Fi设备,仅使用这些PRs的内容和结构。以前的工作主要集中在使用特征约简作为管理数据集复杂性的手段的设备计数技术上,并且未能达到单个设备识别的足够准确性。我们提出了一种方法,利用反映PR结构的模板来识别其基于供应商和设备的影响,允许使用更复杂的指纹识别算法,利用全套可用功能。为此,我们根据观察长度、使用的信息元素和重叠指纹(FPs)来检查供应商和设备之间的差异,同时忽略MAC地址。利用PR模板,我们不仅从现有的公共数据集,而且从未来研究的新数据集构建了FPs和模板知识库。我们的数据集解决了当前可用数据集在标签和质量方面的关键挑战,我们引入了一个简化和可理解的众包流程,包括自动化测量,使其他研究人员能够为我们的数据集做出贡献。我们根据当前可用的数据评估了我们的设备识别方法,并证明,根据数据集的不同,75%到85%的Wi-Fi设备可以在为各自数据集提供pr的匿名设备组中唯一分离。
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引用次数: 0
Machine learning-driven cellular–satellite multi-connectivity for monitoring livestock transport in rural areas 用于监测农村牲畜运输的机器学习驱动的蜂窝-卫星多连接
IF 4.3 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-11-19 DOI: 10.1016/j.comcom.2025.108366
Poonam Maurya, Alejandro Ramírez-Arroyo, Troels Bundgaard Sørensen, Sebastian Bro Damsgaard
Emerging domains such as wireless industrial control, vehicular communications, smart grids, and augmented reality demand low latency, high throughput, and high reliability from wireless communication systems. Unfortunately, single connectivity (SC) communications frequently fail to fulfill these stringent requirements. To address these challenges, employing a multi-connectivity (MC) solution appears to be a promising technique. In this paper, in the context of Horizon Europe COMMECT project, we seek to develop a multi-connectivity solution that intelligently integrates cellular and satellite networks for the purpose of monitoring livestock transport in rural regions where 5G coverage is limited. Multi-connectivity can be helpful for meeting EU regulations requiring seamless communication between transport units and the operational center to ensure animal welfare during transit. To achieve this, we employ machine learning (ML) models within a Classification and Regression framework in the proposed multi-connectivity solution. The ML models process radio-related key performance indicators (KPIs) as inputs to estimate network throughput and latency. The outputs of the model are used to decide whether to continue with the cellular link or activate the backup satellite link in the multi-connectivity setup, ensuring an almost uninterrupted connection. This capability is particularly crucial in regions where 5G coverage is limited, and maintaining a reliable connection is essential. To evaluate the proposed framework, we used a hybrid emulation setup based on experimental data collected in the northern part of Denmark. The emulation results demonstrate that the MC solution significantly outperforms the cellular SC. Although our solution is designed for livestock transport monitoring, it can be adapted for other applications, such as precision farming, in areas with insufficient 5G availability.
无线工业控制、车载通信、智能电网和增强现实等新兴领域需要无线通信系统的低延迟、高吞吐量和高可靠性。不幸的是,单连接(SC)通信经常不能满足这些严格的要求。为了应对这些挑战,采用多连接(MC)解决方案似乎是一种很有前途的技术。在本文中,在Horizon Europe COMMECT项目的背景下,我们寻求开发一种多连接解决方案,该解决方案可以智能地集成蜂窝和卫星网络,用于监测5G覆盖范围有限的农村地区的牲畜运输。多连接有助于满足欧盟法规要求,运输单位和运营中心之间需要无缝通信,以确保运输过程中的动物福利。为了实现这一点,我们在提出的多连接解决方案中使用了分类和回归框架内的机器学习(ML)模型。机器学习模型处理与无线电相关的关键性能指标(kpi)作为输入,以估计网络吞吐量和延迟。该模型的输出用于决定在多连接设置中是继续蜂窝链路还是激活备用卫星链路,以确保几乎不间断的连接。这种能力在5G覆盖有限的地区尤为重要,保持可靠的连接至关重要。为了评估提出的框架,我们使用了基于在丹麦北部收集的实验数据的混合仿真设置。仿真结果表明,MC解决方案明显优于蜂窝SC。尽管我们的解决方案是为牲畜运输监控而设计的,但它可以适用于5G可用性不足地区的其他应用,例如精准农业。
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引用次数: 0
FIWARE IoT agent for Matter: Toward the integration of smart home devices into the FIWARE smart city platform FIWARE IoT agent for Matter:面向智能家居设备融入FIWARE智慧城市平台
IF 4.3 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-11-19 DOI: 10.1016/j.comcom.2025.108369
Nguyen Thi Dieu Linh , Thanh-Trung Nguyen
The rapid adoption of the Matter protocol as a global standard for smart home appliances presents a significant opportunity to enhance the interoperability of IoT devices. Concurrently, FIWARE, a widely adopted smart city platform, facilitates seamless integration and management of diverse IoT devices through standardized data models and context management capabilities. However, integrating Matter-enabled devices with FIWARE remains a challenge due to differences in protocol architectures and data representations. This paper proposes a novel framework to bridge the Matter protocol and the FIWARE platform, enabling interworking between smart home appliances and smart city services. The proposed solution includes: (1) a data model and adaptive translation algorithm for mapping Matter device specifications to FIWARE Smart Data Models, (2) an IoT Agent to interface Matter devices with the FIWARE platform as FIWARE resources, and (3) a comprehensive evaluation using commercial and experimental Matter-enabled devices. This approach ensures seamless data exchange, enhances cross-domain interoperability, and supports the integration of Matter devices into smart city contexts. The results demonstrate the feasibility and efficiency of the integration, offering a scalable framework for leveraging low-cost Matter devices as assets within smart city platforms. This work contributes to advancing IoT interoperability and paves the way for innovative applications in smart homes and smart cities.
物联网协议作为智能家电的全球标准的迅速采用,为增强物联网设备的互操作性提供了一个重要的机会。同时,广泛采用的智慧城市平台FIWARE通过标准化的数据模型和上下文管理功能,促进了各种物联网设备的无缝集成和管理。然而,由于协议体系结构和数据表示的差异,将支持物质的设备与FIWARE集成仍然是一个挑战。本文提出了一个新的框架来桥接Matter协议和FIWARE平台,实现智能家电和智能城市服务之间的互联。提出的解决方案包括:(1)将物质设备规范映射到FIWARE智能数据模型的数据模型和自适应转换算法,(2)将物质设备与FIWARE平台作为FIWARE资源进行接口的物联网代理,以及(3)使用商用和实验性物质支持设备进行综合评估。这种方法确保了无缝的数据交换,增强了跨领域的互操作性,并支持将物质设备集成到智慧城市环境中。结果证明了集成的可行性和效率,为在智慧城市平台内利用低成本物质设备作为资产提供了可扩展的框架。这项工作有助于推进物联网互操作性,并为智能家居和智慧城市的创新应用铺平道路。
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引用次数: 0
Deep-reinforcement-learning–guided resource allocation and task offloading for 6G edge intelligence 基于深度强化学习的6G边缘智能资源分配与任务卸载
IF 4.3 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-11-19 DOI: 10.1016/j.comcom.2025.108364
Jiangbo Tang
The proliferation of Internet of Everything (IoE) applications in 6G-enabled smart edge environments has intensified the demand for resource-efficient, latency-aware, and adaptive scheduling mechanisms. Conventional static or fairness-driven algorithms often fail to meet the scalability and responsiveness requirements of resource-constrained infrastructures. To address this challenge, we propose a novel hybrid scheduling framework, termed EOTSA (Energy-Optimized Task Scheduling and Allocation), which synergistically integrates Deep Q-Network (DQN)-based reinforcement learning with Particle Swarm Optimization (PSO). In this hybrid paradigm, DQN serves as the primary decision-maker, learning long-term optimal policies for dynamic selection among three specialized scheduling strategies Dynamic Priority Scheduling (DPS), Energy-Aware Fair Scheduling (EAFS), and Latency-Sensitive Adaptive Scheduling (LSAS) by modeling the task offloading process as a Markov Decision Process and maximizing a multi-objective reward function encompassing latency, energy, and QoS. However, DQN suffers from slow convergence and susceptibility to local optima in high-dimensional, dynamic 6G environments. PSO complements DQN by enhancing exploration efficiency: it generates a population of candidate task-device assignments, refines them iteratively using velocity-position updates, and provides high-quality initial actions to the DQN agent, accelerating convergence and escaping local optima. Individually, DQN excels in sequential decision-making under uncertainty, while PSO is superior in parallel global search for continuous optimization spaces. Together, the hybrid framework resolves the limitations of pure DRL and pure swarm intelligence, achieving robust, real-time adaptability in heterogeneous workloads. Simulation results benchmarked against RR, SC, MR, PF, PB, DRA, and ATO demonstrate that EOTSA achieves up to 30 % energy savings, a 25 % reduction in task completion time, and a 20 % improvement in Quality of Service (QoS). These results highlight EOTSA's superior adaptability across heterogeneous execution scenarios, positioning it as a scalable and sustainable solution for intelligent edge computing in forthcoming 6G-based IoE networks.
在支持6g的智能边缘环境中,万物互联(IoE)应用的激增加剧了对资源高效、延迟感知和自适应调度机制的需求。传统的静态或公平驱动算法往往不能满足资源受限基础设施的可伸缩性和响应性要求。为了解决这一挑战,我们提出了一种新的混合调度框架,称为EOTSA(能量优化任务调度和分配),它将基于深度q网络(DQN)的强化学习与粒子群优化(PSO)协同集成。在这种混合模式中,DQN作为主要决策者,通过将任务卸载过程建模为马尔可夫决策过程并最大化包含延迟、能量和QoS的多目标奖励函数,在三种专门的调度策略动态选择动态优先级调度(DPS)、能量感知公平调度(EAFS)和延迟敏感自适应调度(LSAS)中学习长期最佳策略。然而,DQN在高维动态6G环境中收敛速度慢,易受局部最优的影响。PSO通过提高探索效率来补充DQN:它生成候选任务设备分配的种群,使用速度-位置更新迭代地改进它们,并为DQN代理提供高质量的初始操作,加速收敛并避免局部最优。单独来看,DQN在不确定条件下的顺序决策方面表现优异,而粒子群算法在连续优化空间的并行全局搜索方面表现优异。混合框架共同解决了纯DRL和纯群智能的局限性,在异构工作负载中实现了鲁棒的实时适应性。针对RR、SC、MR、PF、PB、DRA和ATO的基准仿真结果表明,EOTSA实现了高达30%的节能,减少了25%的任务完成时间,并提高了20%的服务质量(QoS)。这些结果突出了EOTSA在异构执行场景中的卓越适应性,将其定位为即将到来的基于6g的IoE网络中智能边缘计算的可扩展和可持续解决方案。
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引用次数: 0
Service placement in the continuum: A systematic literature review 连续体中的服务安置:系统的文献回顾
IF 4.3 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-11-19 DOI: 10.1016/j.comcom.2025.108370
Waseem Sajjad, Montse Farreras, Jordi Garcia, Xavi Masip-Bruin
Cloud computing plays a crucial role in the Industry 4.0 era, particularly with the rise of Internet of Things (IoT) applications that support domains such as education, healthcare, business, and manufacturing. These applications consist of multiple services with diverse quality of service (QoS) requirements, making their development and deployment complex. While traditional cloud environments provide scalability, they often fail to support latency-sensitive and resource-intensive applications. To overcome these limitations, alternative paradigms such as Cloud–Fog–Edge (CFE), Cloud–Fog (CF), Cloud–Edge (CE), Fog–Edge (FE), and Mobile Edge Computing (MEC) have emerged. These models push computation, storage, and networking closer to end devices, reducing latency and bandwidth usage. However, the heterogeneity, mobility, and dynamic nature of these environments make service placement (a known NP-hard problem) a central challenge.
This article presents a systematic literature review of service placement approaches across the compute continuum. Following established SLR methodology, we identified and analyzed 124 peer-reviewed studies published between 2018 and 2024, classifying them by (i) deployment environment, (ii) service placement strategies and algorithms, (iii) adaptability of the solution, (iv) optimization objectives, (v) virtualization/orchestration technologies, (vi) evaluation methodologies, including workloads, testbeds, and simulation tools and (vii) use cases or application types.
The novelty of this work lies in providing not only a detailed taxonomy of placement approaches but also this is the first survey that takes all seven aspects into consideration and establishes correlations between them. Our findings reveal that most existing works target smart health applications and favor heuristic-based placement in complex CFE scenarios, while research on scientific and compute-intensive workloads remains limited. We also identify Kubernetes as the most widely used orchestration technology and latency as the dominant optimization metric. Despite significant progress, the field is still maturing, with gaps in real-world validation and adaptive, ML-based placement strategies.
By consolidating technical approaches, evaluation practices, and open challenges, this survey offers both researchers and practitioners a structured overview of the state of the art and guidance for advancing service placement in the compute continuum.
云计算在工业4.0时代发挥着至关重要的作用,特别是随着支持教育、医疗保健、商业和制造等领域的物联网(IoT)应用程序的兴起。这些应用程序由具有不同服务质量(QoS)需求的多个服务组成,使其开发和部署变得复杂。虽然传统的云环境提供可伸缩性,但它们通常无法支持对延迟敏感和资源密集型的应用程序。为了克服这些限制,出现了云-雾边缘(CFE)、云-雾(CF)、云-边缘(CE)、雾边缘(FE)和移动边缘计算(MEC)等替代范例。这些模型使计算、存储和网络更接近终端设备,从而减少了延迟和带宽使用。然而,这些环境的异质性、移动性和动态性使得服务放置(一个已知的np难题)成为一个核心挑战。本文对跨计算连续体的服务放置方法进行了系统的文献回顾。根据既定的SLR方法,我们确定并分析了2018年至2024年间发表的124项同行评审研究,并根据(i)部署环境、(ii)服务放置策略和算法、(iii)解决方案的适应性、(iv)优化目标、(v)虚拟化/编排技术、(vi)评估方法(包括工作负载、测试平台和仿真工具)和(vii)用例或应用程序类型对其进行了分类。这项工作的新颖之处在于不仅提供了安置方法的详细分类,而且这是第一次考虑到所有七个方面并建立它们之间的相关性的调查。我们的研究结果表明,大多数现有工作针对智能健康应用,并倾向于在复杂的CFE场景中基于启发式的放置,而对科学和计算密集型工作负载的研究仍然有限。我们还确定Kubernetes是使用最广泛的编排技术,延迟是主要的优化指标。尽管取得了重大进展,但该领域仍处于成熟阶段,在现实验证和自适应的基于ml的放置策略方面存在差距。通过整合技术方法、评估实践和开放的挑战,本调查为研究人员和从业者提供了技术现状的结构化概述,并为在计算连续体中推进服务放置提供了指导。
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Computer Communications
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