Learning with finite memory for machine type communication

Taehyeun Park, W. Saad
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引用次数: 10

Abstract

Machine-type devices (MTDs) will lie at the heart of the Internet of things (IoT) system. A key challenge in such a system is sharing network resources between small MTDs, which have limited memory and computational capabilities. In this paper, a novel learning with finite memory framework is proposed to enable MTDs to effectively learn about each others message state, so as to properly adapt their transmission parameters. In particular, an IoT system in which MTDs can transmit both delay tolerant, periodic messages and critical alarm messages is studied. For this model, the characterization of the exponentially growing delay for critical alarm messages and the convergence of the proposed learning framework in an IoT are analyzed. Simulation results show that the delay of critical alarm messages is significantly reduced up to 94% with very minimal memory requirements. The results also show that the proposed learning with finite memory framework is very effective in mitigating the limiting factors of learning that prevent proper learning procedures.
机器类型通信的有限记忆学习
机器型设备(mtd)将处于物联网(IoT)系统的核心。这种系统的一个关键挑战是在内存和计算能力有限的小型mtd之间共享网络资源。本文提出了一种新的有限记忆学习框架,使mtd能够有效地了解彼此的消息状态,从而适当地调整其传输参数。特别是,研究了一种MTDs可以同时传输延迟容忍、周期消息和关键报警消息的物联网系统。对于该模型,分析了关键报警信息的指数增长延迟的特征以及所提出的学习框架在物联网中的收敛性。仿真结果表明,在非常小的内存需求下,关键报警消息的延迟显著降低了94%。研究结果还表明,有限记忆学习框架可以有效地缓解阻碍学习过程的学习限制因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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