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Reinforcement Learning-Based Dynamic Guard Channel Scheme with Maximum Packing for Cellular Telecommunications Systems

机译:基于增强学习的最大电信蜂窝系统动态保护信道方案

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This paper presents a distributed reinforcement learning solution to the problem of call admission control for cellular telecommunication networks in the presence of both voice traf.c and self-similar data traf.c, and user mobility. The developed call admission control architecture is designed to make use of only localised information, and therefore is suitable for implementation in a distributed manner. By way of computer simulations, the call admission control is shown to further improve the revenue raising capability and handoff blocking probability of the optimal maximum packing channel allocation scheme.
机译:本文针对存在语音流量和自相似数据流量以及用户移动性的情况,提出了一种针对蜂窝电信网络的呼叫接纳控制问题的分布式强化学习解决方案。所开发的呼叫准入控制体系结构被设计为仅使用本地化信息,因此适合于以分布式方式实现。通过计算机仿真,示出了呼叫准入控制可以进一步提高最佳最大打包信道分配方案的收益增加能力和越区切换概率。

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