Machine Learning-Based Medium Access Control Protocol for Heterogeneous Wireless Networks: A Review

Nanavath Kiran Singh Nayak, B. Bhattacharyya
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引用次数: 1

Abstract

This research presents a comprehensive investigation of a Machine Learning (ML)-based Medium Access Control (MAC) protocol strategy for improving heterogeneous wireless network performance parameters and optimizing various (MAC) protocol issues like synchronization, bandwidth competency, error-prone broadcast channel, quality of service support, mobility of nodes, hidden and exposed terminal etc. All nodes in a wireless network use the same broadcast radio channel. The amount of bandwidth available for communication in such networks is restricted due to the radio spectrum's limitations. A unique set of protocols is necessary for managing access to the shared medium in order to improve reliability and quality of provision in such networks. Access to this shared media should be managed to ensure that all nodes receive a fair portion of the available bandwidth and that it is utilized effectively. The Medium Access Control (MAC) Protocol decides the accessible spectrum sharing among the users. For these purpose, various network management approaches have been developed to automate networking choices, notably on the MAC stage. To address these issues, the decentralized decision-making characteristic of Deep Reinforcement Learning (DRL) can be employed in current wireless communication and networking system to solve the key challenges that arise in such networks, such as the coexistence of several types of wireless connections serving different users. Reinforcement Learning (RL) and Deep Learning (DL) are combined in DRL where reinforcement learning has the ability to take right decisions and deep learning has the ability to perform same actions as the human brain do with the help of deep neural network (DNN), and these two techniques are the subsection of the machine learning (ML) and artificial intelligence (AI) technology.
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基于机器学习的异构无线网络介质访问控制协议研究进展
本研究全面研究了一种基于机器学习(ML)的介质访问控制(MAC)协议策略,用于改善异构无线网络性能参数和优化各种(MAC)协议问题,如同步、带宽能力、易出错的广播信道、服务质量支持、节点的移动性、隐藏和暴露终端等。无线网络中的所有节点都使用相同的广播无线电信道。由于无线电频谱的限制,在这种网络中可用于通信的带宽量受到限制。需要一套独特的协议来管理对共享介质的访问,以便提高这种网络中的供应的可靠性和质量。应该管理对这种共享媒体的访问,以确保所有节点都能收到可用带宽的公平部分,并有效地利用它。介质访问控制(MAC)协议决定了用户之间可访问频谱的共享。为了这些目的,已经开发了各种网络管理方法来自动化网络选择,特别是在MAC阶段。为了解决这些问题,深度强化学习(DRL)的分散决策特性可以应用于当前的无线通信和网络系统中,以解决此类网络中出现的关键挑战,例如服务于不同用户的几种类型的无线连接共存。强化学习(RL)和深度学习(DL)在深度学习中结合在一起,强化学习具有做出正确决策的能力,深度学习具有在深度神经网络(DNN)的帮助下执行与人类大脑相同动作的能力,这两种技术是机器学习(ML)和人工智能(AI)技术的子部分。
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