Intra-Net Cognitive Radio Intelligent Utility Maximization using Adaptive PSO-Gradient Algorithm

Imranullah Khan
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引用次数: 1

Abstract

Artificial intelligence now days are mainly dependent on deep learning techniques as it is rapidly growing and capable to outperform other approaches and even human at various problems. Intelligently utilizing resources that meets the growing need of demanding services as well as user behavior is the future of wireless communication systems. Autonomous learning of wireless environment at run time by reconfiguring its operating mode that maximize its utility, cognitive radio (CR) can be programmed and configured dynamically and their utility maximization inside a building is a challenging task. Re-configurability and perception are the key features of cognitive radio while latest machine learning techniques like deep learning is used for system adaptation. In this paper an adaptive model to enhanced cognitive radio utilization to be maximized is proposed, that is, Particle swarm optimization (PSO) in combination with Gradient-method and intends to maximize the utility of CR. For this purpose the primary objective is allocation of optimum powers to base stations (BSs), which is achieved in an iterative manner keeping in view power constraints. A novel Distributed power PSOGradient Algorithm (DPPGA) is introduced, which assures utility maximization under network power constraints. The information regarding utility and interference of an individual BS is available to all of BSs, which is a key parameter, exploited in the proposed algorithm. Simulations are carried out by considering different scenarios and results are compared with existing algorithms. The performance of proposed algorithm is remarkable.
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基于自适应pso梯度算法的网内认知无线电智能效用最大化
如今的人工智能主要依赖于深度学习技术,因为它正在迅速发展,能够在各种问题上超越其他方法,甚至超越人类。智能地利用资源来满足日益增长的业务需求和用户行为是无线通信系统的未来。认知无线电(CR)可以动态编程和配置,并在运行时通过重新配置其运行模式来实现无线环境的自主学习,使其在建筑物内的效用最大化是一项具有挑战性的任务。可重构性和感知是认知无线电的关键特征,而最新的机器学习技术(如深度学习)用于系统自适应。本文提出了一种提高认知无线电利用率最大化的自适应模型,即结合梯度法的粒子群优化算法(PSO),以最大限度地提高认知无线电的利用率,其主要目标是为基站分配最优功率,并在考虑功率约束的情况下通过迭代的方式实现。提出了一种新的分布式功率pso梯度算法(DPPGA),保证了网络功率约束下的效用最大化。单个基站的效用和干扰信息对所有基站都是可用的,这是算法中利用的一个关键参数。在不同场景下进行了仿真,并与现有算法进行了比较。该算法的性能是显著的。
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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