认知无线电测试平台:利用未来无线通信网络的有限反馈

C. Sokolowski, M. Petrova, A. de Baynast, P. Mahonen
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引用次数: 14

摘要

下一代无线通信设备应支持高频谱效率、宽带宽、多样化的服务质量(QoS)要求和自适应等先进特性。认知无线电(CR)是一种新的无线电范式,有很大的潜力成为未来无线系统的基础。本文是实现这一系统的第一步。我们的CR测试平台基于GNU Radio平台,该平台可实现传输参数的灵活性和可重构性。作为机器学习组件,我们调用遗传算法(GA)根据当前频谱条件优化传输参数,如传输功率、调制顺序和频率通道。与其他CR实现不同,我们的方法在发送端需要非常有限的反馈信息(大约8位/包持续时间)。在发送端不需要传输模型,也不需要额外的网络状态信息(NSI)。实验表明,即使在高度占用的频谱情况下,我们的CR也能够在4-5次迭代内找到空闲信道。它还根据用户的QoS需求提供吞吐量、可靠性和功耗之间的最佳权衡。
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Cognitive Radio Testbed: Exploiting Limited Feedback in Tomorrow's Wireless Communication Networks
The next generation of wireless communication devices should support advanced features such as high spectral efficiency, broad bandwidth, diverse quality of service (QoS) requirements, and adaptivity. The cognitive radio (CR) is a new paradigm which has a high potential to become a basis for the future wireless systems. This paper is a first step towards the implementation of such a system. Our CR testbed is based on a GNU Radio platform which enables flexibility and reconfigurability of transmission parameters. As machine learning component, we invoke genetic algorithm (GA) to optimize the transmission parameters such as transmission power, modulation order and frequency channel based on the current spectrum conditions. Unlike other CR implementations, our approach requires very limited feedback information at the transmitter (ap 8 bits/packet duration). No transmission model nor additional network state information (NSI)is needed at the transmitter side. Experimentations show that our CR is capable to find free channels within 4-5 iterations even in a highly occupied spectrum scenario. It also offers the optimal trade-off between throughput, reliability, and power consumption depending on the user's QoS requirements.
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