一种节能的多用户多任务计算卸载优化方法

Meini Pan;Zhihua Li;Junhao Qian
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引用次数: 0

摘要

针对移动边缘计算(MEC)的动态应用场景,提出了一种节能的多用户多任务计算卸载(EMMCO)优化方法。在考虑多用户和多任务计算卸载的情况下,EMMCO方法首先考虑了实现中不同任务之间存在的依赖关系,将这些依赖关系抽象为有向无环图(DAG),并将计算卸载问题建模为马尔可夫决策过程。随后,将DAG中的任务嵌入序列与注意机制相结合,馈送到RNN编码器-解码器神经网络中,成功捕获了不同任务之间的长期依赖关系。最后,提出了改进的基于策略损失剪辑的PPO2算法(IPLC-PPO2),并利用该算法对RNN编解码器神经网络进行了训练。利用IPLC-PPO2算法中的损失函数作为训练过程的偏好,并不断更新神经网络参数以选择最优的卸载调度决策。仿真结果表明,在移动边缘网络的不同情况下,所提出的EMMCO方法可以实现更低的时延,降低能耗,并且在服务质量(QoS)方面比所比较的算法有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy-efficient multiuser and multitask computation offloading optimization method
For dynamic application scenarios of Mobile Edge Computing (MEC), an Energy-efficient Multiuser and Multitask Computation Offloading (EMMCO) optimization method is proposed. Under the consideration of multiuser and multitask computation offloading, first, the EMMCO method takes into account the existence of dependencies among different tasks within an implementation, abstracts these dependencies as a Directed Acyclic Graph (DAG), and models the computation offloading problem as a Markov decision process. Subsequently, the task embedding sequence in the DAG is fed to the RNN encoder-decoder neural network with combination of the attention mechanism, the long-term dependencies among different tasks are successfully captured by this scheme. Finally, the Improved Policy Loss Clip-based PPO2 (IPLC-PPO2) algorithm is developed, and the RNN encoder-decoder neural network is trained by the developed algorithm. The loss function in the IPLC-PPO2 algorithm is utilized as a preference for the training process, and the neural network parameters are continuously updated to select the optimal offloading scheduling decisions. Simulation results demonstrate that the proposed EMMCO method can achieve lower latency, reduce energy consumption, and obtain a significant improvement in the Quality of Service (QoS) than the compared algorithms under different situations of mobile edge network.
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