基于深度学习的移动边缘网络高效并行计算卸载策略

IF 5.4 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Ad Hoc Networks Pub Date : 2025-04-15 Epub Date: 2025-02-13 DOI:10.1016/j.adhoc.2025.103787
Haris Khan , Zaiwar Ali , Ziaul Haq Abbas , Ghulam Abbas , Sheroz Khan , Muhammad Yahya
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引用次数: 0

摘要

移动设备对实时计算应用日益增长的需求正在增加其处理能力和电池寿命的负担。移动边缘计算通过允许将这些任务卸载到具有更多处理能力的附近服务器来提供帮助。然而,当涉及到多个服务器和任务时,为卸载选择最佳组件就变得很有挑战性。这是因为我们需要在减少传输的数据量和保持较低的通信延迟之间取得平衡。为了解决这一问题,提出了一种基于深度学习的高效并行计算卸载机制。利用深度学习(DL)开发并训练了一种算法作为决策系统。系统综合考虑能耗、网络条件、计算负荷、数据传输量、通信时延等因素,选择应用组件的最佳组合。开发了一个包含所有这些因素的成本函数来计算每个可能的卸载策略组合的成本。通过分析大型数据集,我们找到了最佳策略。此外,我们使用深度学习网络来有效地处理这一计算任务。仿真结果表明,EPCOD有效地降低了延迟和能量消耗,实现了高达73.5%的深度神经网络准确率。
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A deep learning-based strategy for energy-efficient parallel computation offloading in mobile edge networks
The growing demand for real-time computing applications on mobile devices is burdening their processing power and battery life. Mobile edge computing helps by allowing these tasks to be offloaded to nearby servers having more processing power. However, when it comes to multiple servers and tasks, choosing the optimal components for offloading becomes challenging. This is because we need to balance between reducing the amount of data transferred and keeping communication latency low. To address this problem, an energy-efficient parallel computation offloading mechanism through deep learning (EPCOD), is proposed. An algorithm using deep learning (DL) is developed and trained as a decision-making system. This system selects the best combination of application components taking into account various factors, such as energy consumption, network conditions, computational load, data transfer volume, and communication latency. A cost function that includes all these factors is developed to calculate the cost for each possible offloading policy combination. By analyzing a large dataset, we find the best policies. Additionally, we use a DL network to efficiently handle this computational task. Simulation results demonstrate that EPCOD effectively minimizes both latency and energy consumption, achieving a high accuracy of deep neural network of up to 73.5%.
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来源期刊
Ad Hoc Networks
Ad Hoc Networks 工程技术-电信学
CiteScore
10.20
自引率
4.20%
发文量
131
审稿时长
4.8 months
期刊介绍: The Ad Hoc Networks is an international and archival journal providing a publication vehicle for complete coverage of all topics of interest to those involved in ad hoc and sensor networking areas. The Ad Hoc Networks considers original, high quality and unpublished contributions addressing all aspects of ad hoc and sensor networks. Specific areas of interest include, but are not limited to: Mobile and Wireless Ad Hoc Networks Sensor Networks Wireless Local and Personal Area Networks Home Networks Ad Hoc Networks of Autonomous Intelligent Systems Novel Architectures for Ad Hoc and Sensor Networks Self-organizing Network Architectures and Protocols Transport Layer Protocols Routing protocols (unicast, multicast, geocast, etc.) Media Access Control Techniques Error Control Schemes Power-Aware, Low-Power and Energy-Efficient Designs Synchronization and Scheduling Issues Mobility Management Mobility-Tolerant Communication Protocols Location Tracking and Location-based Services Resource and Information Management Security and Fault-Tolerance Issues Hardware and Software Platforms, Systems, and Testbeds Experimental and Prototype Results Quality-of-Service Issues Cross-Layer Interactions Scalability Issues Performance Analysis and Simulation of Protocols.
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