战术通信网中差异化业务的帧生成算法

Huaifeng Shi;Chengsheng Pan;Lishang Qin;Yingzhi Wang;Huangjie Lu
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引用次数: 0

摘要

针对战术通信网络中异构链路融合业务的复杂性和多维性,导致关键业务的服务质量(QoS)要求难以保证的问题,提出了一种差分业务(DS-FG)帧生成算法。DS-FG针对时间敏感业务部署基于深度强化学习(DRL-FG)的自适应帧生成算法,针对非时间敏感业务部署高效帧生成算法。DRL-FG结合时间敏感服务的队列状态信息构建奖励函数,利用深度确定性策略梯度(deep deterministic policy gradients, DDPG)训练自适应帧生成(adaptive frame generation, AFG)算法阈值的决策模型。此外,采用高斯噪声采样和优先体验重放策略提高模型训练效率和性能,实现时间敏感业务QoS需求与帧生成阈值的最优匹配。实验结果表明,DS-FG算法优于传统算法,对于时间敏感服务,吞吐量提高13%,平均排队延迟降低19.7%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Frame Generation Algorithm for Differentiated Services in Tactical Communication Networks
In response to the complex and multidimensional nature of converged traffic on heterogeneous links in tactical communication networks, which leads to the difficulty in ensuring the quality of service (QoS) requirements for critical services, a frame generation algorithm for differentiated services (DS-FG) is proposed. DS-FG deploys an adaptive frame generation algorithm based on deep reinforcement learning (DRL-FG) for time-sensitive service, while deploying a high efficient frame generation (HEFG) algorithm for non-time-sensitive service. DRL-FG constructs a reward function by combining the queue status information of time-sensitive service and utilizes deep deterministic policy gradients (DDPG) to train a decision model for adaptive frame generation (AFG) algorithm thresholds. Furthermore, Gaussian noise sampling and prioritized experience replay strategies are employed to enhance model training efficiency and performance, achieving optimal matching between time-sensitive service QoS requirements and frame generation thresholds. Experimental results demonstrate that DS-FG outperforms traditional algorithms, achieving up to 13% improvement in throughput and over 19.7% reduction in average queueing delay for time-sensitive service.
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