基于差分进化的认知无线网络VHF/UHF电视和GSM 900频段射频功率预测优化人工神经网络

Sunday Iliya, E. Goodyer, M. Gongora, J. Shell, J. Gow
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引用次数: 8

摘要

认知无线电(CR)技术作为一种很有前途的无线通信解决方案而出现,包括频谱短缺和利用不足。无线电频率(RF)功率(主要信号和/或干扰信号加噪声)的知识是至关重要的,而不仅仅是主要用户的存在或不存在。如果信道已知有噪声,即使在没有主要用户的情况下,使用这种信道将需要大量的无线电资源(发射功率、带宽等),以便向用户提供可接受的服务质量。计算智能(CI)技术可以应用于这些场景,以预测可用信道中所需的射频功率,以实现最佳的服务质量(QoS)。虽然大多数预测方案都是基于频谱孔的确定,但那些用于功率预测的方案使用已知的无线电参数,如信噪比(SNR)、带宽和误码率。认知用户可能无法获得或不知道其中一些参数。在本文中,我们开发了一个基于时域的优化人工神经网络(ANN)模型,用于预测GSM 900、甚高频(VHF)和超高频(UHF)电视频段内的真实世界射频功率。所产生的模型的应用被发现增加了CR应用的稳健性,特别是在CR没有射频功率相关参数的先验知识的情况下。所使用的模型通过使用差分进化算法实现了人工神经网络的新颖和创新的初始权重优化。发现这提高了方法的准确性和通用性。
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Optimized artificial neural network using differential evolution for prediction of RF power in VHF/UHF TV and GSM 900 bands for cognitive radio networks
Cognitive radio (CR) technology has emerged as a promising solution to many wireless communication problems including spectrum scarcity and underutilization. The knowledge of Radio Frequency (RF) power (primary signals and/or interfering signals plus noise) in the channels to be exploited by CR is of paramount importance, not just the existence or absence of primary users. If a channel is known to be noisy, even in the absence of primary users, using such channels will demand large quantities of radio resources (transmission power, bandwidth, etc) in order to deliver an acceptable quality of service to users. Computational Intelligence (CI) techniques can be applied to these scenarios to predict the required RF power in the available channels to achieve optimum Quality of Service (QoS). While most of the prediction schemes are based on the determination of spectrum holes, those designed for power prediction use known radio parameters such as signal to noise ratio (SNR), bandwidth, and bit error rate. Some of these parameters may not be available or known to cognitive users. In this paper, we developed a time domain based optimized Artificial Neural Network (ANN) model for the prediction of real world RF power within the GSM 900, Very High Frequency (VHF) and Ultra High Frequency (UHF) TV bands. The application of the models produced was found to increase the robustness of CR applications, specifically where the CR had no prior knowledge of the RF power related parameters. The models used implemented a novel and innovative initial weight optimization of the ANN's through the use of differential evolutionary algorithms. This was found to enhance the accuracy and generalization of the approach.
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