通过深度强化学习实现多接入移动边缘计算网络的安全计算卸载

Rijal Abdullah, Noorulsadiqin Azbiya Yaacob, Anas A. Salameh, Nur Amalina Mohamad Zaki, Nur Fadhilah Bahardin
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引用次数: 0

摘要

移动边缘计算(MEC)通过将任务卸载到附近的边缘服务器来满足资源受限的移动设备的计算需求,已成为一项举足轻重的技术。然而,在多接入 MEC 网络中确保计算卸载的安全性和效率仍然是一个严峻的挑战。本文提出了一种利用深度强化学习(DRL)在多接入 MEC 网络中实现安全计算卸载的新方法。所提出的框架利用 DRL 代理,根据当前网络条件、资源可用性和安全要求动态地做出卸载决策。代理通过与环境的交互学习最佳卸载策略,旨在最大限度地提高任务完成效率,同时最大限度地降低安全风险。为提高安全性,该框架集成了加密技术和访问控制机制,以保护卸载过程中的敏感数据。对所提出的方法进行了全面模拟,以评估其在安全性、效率和可扩展性方面的性能。结果表明,基于 DRL 的方法有效地平衡了安全性和效率之间的权衡,在多接入 MEC 网络中实现了稳健的自适应计算卸载。这项研究有助于推动安全高效的移动边缘计算系统的发展,促进未来移动网络的智能弹性 MEC 解决方案的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Secured Computation Offloading in Multi-Access Mobile Edge Computing Networks through Deep Reinforcement Learning
Mobile edge computing (MEC) has emerged as a pivotal technology to address the computational demands of resource-constrained mobile devices by offloading tasks to nearby edge servers. However, ensuring the security and efficiency of computation offloading in multiaccess MEC networks remains a critical challenge. This paper proposes a novel approach that leverages deep reinforcement learning (DRL) for secure computation offloading in multi-access MEC networks. The proposed framework utilizes DRL agents to dynamically make offloading decisions based on the current network conditions, resource availability, and security requirements. The agents learn optimal offloading policies through interactions with the environment, aiming to maximize task completion efficiency while minimizing security risks. To enhance security, the framework integrates encryption techniques and access control mechanisms to protect sensitive data during offloading. The proposed approach undergoes comprehensive simulations to assess its performance in terms of security, efficiency, and scalability. The results demonstrate that the DRL-based approach effectively balances the tradeoffs between security and efficiency, achieving robust and adaptive computation offloading in multi-access MEC networks. This study contributes to advancing the state-of-the-art in secure and efficient mobile edge computing systems, fostering the development of intelligent and resilient MEC solutions for future mobile networks.
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