Self-Organizing Sustainable Spectrum Management Methodology in Cognitive Radio Vehicular Adhoc Network (CRAVENET) Environment: A Reinforcement Learning Approach

K. Ghanshala, Sachin Sharma, S. Mohan, Lata Nautiyal, P. Mishra, R. Joshi
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引用次数: 6

Abstract

The era of new and emerging technologies demand that the new challenges they bring about to be effectively tackled and resolved. One such key challenge is spectrum management, especially in Cognitive Radio Vehicular Adhoc Network (CRAVENET) environment. The large-scale deployment of multimedia and Internet of Things (IoT) applications generate the need to establish an efficient spectrum allocation mechanism. This paper proposes a centralized self-organizing spectrum management in the context of economic and social sustainability using reinforcement learning technique. The objective of the proposed approach facilitates economic and social justice. The social economic justice architecture is developed through a user demand level concepts. The spectrum management methodology has been developed in a CRAVENET environment for better quality of service (QoS) with low average latency. The proposed methodology is expected to be highly effective for its economic feasibility, social impact, user comfort, efficiency, and communication latency minimization requirements.
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认知无线电车载自组织网络环境下的自组织可持续频谱管理方法:一种强化学习方法
新技术和新兴技术的时代要求我们有效应对和解决它们带来的新挑战。其中一个关键挑战是频谱管理,特别是在认知无线电车载自组网(CRAVENET)环境中。随着多媒体和物联网应用的大规模部署,需要建立高效的频谱分配机制。在经济和社会可持续发展的背景下,利用强化学习技术提出了一种集中的自组织频谱管理方法。拟议办法的目标是促进经济和社会正义。社会经济正义架构是通过用户需求层次的概念发展起来的。频谱管理方法是在CRAVENET环境中开发的,以获得更好的服务质量(QoS)和低平均延迟。所提出的方法因其经济可行性、社会影响、用户舒适度、效率和通信延迟最小化要求而被期望是非常有效的。
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