认知无线电网络中基于人工神经网络的频谱推断预测研究

Mudassar Husain Naikwadi, K. Patil
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引用次数: 6

摘要

频谱作为一种自然资源,其可用性总是有限的。它的使用需要被智能地管理以获得最大的利益,因此有了认知无线电的想法。如果可以从现有的频谱测量数据中预测或推断频谱带的占用或空闲状态,则该技术提高了频谱效率。这种称为频谱推断/预测的技术是有效利用频谱的有价值的工具。本文综述了现有的用于频谱占用预测的频谱推断技术,重点介绍了基于人工神经网络(ANN)的方案。首先将统计频谱占用建模方法与基于机器学习的方法进行了比较,并简要介绍了人工神经网络范围内的各种神经网络。通过承认该领域研究的贡献,详细介绍了使用混合神经网络模型的最新趋势。各种算法已经权衡了性能度量指标,维度,数据类型和测量设置所采用的。最后,对深度学习技术的使用进行了重要的研究,证明了其在该领域的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey of Artificial Neural Network based Spectrum Inference for Occupancy Prediction in Cognitive Radio Networks
Spectrum being a natural resource is always limited in availability. Its use needs to be intelligently managed for maximum benefits, hence the idea of Cognitive Radio. If the occupied or free status of spectrum band can be predicted or inferred from existing spectrum measurement data then this technique improves spectrum efficiency. This technique called Spectrum Inference/Prediction is a valuable tool to harness the spectrum effectively. This paper gives a recent survey of existing spectrum inference techniques for spectrum occupancy prediction with focus being on Artificial Neural Network (ANN) based schemes. First the statistical spectrum occupancy modeling methods are compared with machine learning based methods and described briefly the various neural networks in the purview of ANNs. The recent trend towards the use of hybrid neural network models has been detailed by acknowledging the contribution of research in this area. The various algorithms have been weighed over performance measure metrics, dimensions, type of data and measurement set-up employed. Finally the significant research been directed towards the use of deep learning techniques proven its efficiency in this field are also noted.
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