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Learning Automata-Based Access Class Barring Scheme for Massive Random Access in Machine-to-Machine Communications

机译:机器对机器通信中大规模随机访问的基于学习自动机的访问类别限制方案

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The machine-to-machine (M2M) communications, which achieve the implementation of Internet of Things (IoT), can be carried over wireless cellular networks. The massive random access (RA) in M2M communications will cause radio access network congestion in the base station (BS), leading to sharp deterioration in access delay and access probability. Access class barring (ACB) that can directly control the flow of machine-type communication (MTC) devices by an ACB factor is an efficient scheme to prevent the BS from traffic overload. In wireless cellular networks, the RA resources (i. e., preambles) are shared by M2M and human-to-human (H2H) devices, and research on ACB scheme ordinarily assumes that a restricted number of preambles are assigned to M2M traffic. However, when suffering from massive access in M2M communications, it is desirable to rapidly satisfy the access requests from MTC devices using all available preambles, especially in time-sensitive IoT scenarios. In this paper, we study the massive access problem in M2M traffic centered scenarios where M2M and H2H traffic can apply for all available preambles without distinction. Utilizing the selfadaptive learning property of learning automata, we further propose a novel learning automata-based ACB (LA-ACB) scheme. Simulation results show that the LA-ACB scheme achieves the performance close to theoretical optimality. The BS equipped with the LA-ACB scheme can effectively control the M2M traffic by dynamically adjusting the ACB factor under the interference of H2H traffic and provide quality services for both M2M and H2H traffic.
机译:可以通过无线蜂窝网络承载实现物联网(IoT)的机器对机器(M2M)通信。 M2M通信中的大规模随机访问(RA)将导致基站(BS)中的无线访问网络拥塞,从而导致访问延迟和访问概率急剧下降。可以通过ACB因子直接控制机器类型通信(MTC)设备的流的访问等级禁止(ACB)是防止BS流量过载的有效方案。在无线蜂窝网络中,RA资源(即,前同步码)由M2M和人对人(H2H)设备共享,并且对ACB方案的研究通常假设有限数量的前同步码被分配给M2M业务。但是,当遭受M2M通信中的大规模访问时,希望使用所有可用的前同步码快速满足来自MTC设备的访问请求,尤其是在时间敏感的IoT场景中。在本文中,我们研究了以M2M流量为中心的场景中的大规模访问问题,其中M2M和H2H流量可以适用于所有可用的前导,而没有区别。利用学习自动机的自适应学习特性,我们进一步提出了一种新颖的基于学习自动机的ACB(LA-ACB)方案。仿真结果表明,LA-ACB方案具有接近理论最优性的性能。配备有LA-ACB方案的BS可以通过在H2H业务的干扰下动态地调整ACB因子来有效地控制M2M业务,并为M2M和H2H业务提供高质量的服务。

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