移动性预测对认知无线电网络性能的影响

I. Butun, A. Talay, D. Altilar, M. Khalid, R. Sankar
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引用次数: 42

摘要

无线技术使日益多样化的应用程序和设备的发展成为可能,从而导致使用和服务的指数级增长。这些进步使无线电频谱成为一种稀缺资源,因此,它的有效利用是至关重要的。为了应对日益增长的需求,网络设计的重点是利用认知无线电技术的进步来提高频谱效率。认知无线电可以使配备认知无线电的未授权用户重用和共享已授权的频段,从而减少频谱短缺问题。利用认知无线电能够感知环境条件并自动调整其运行参数以提高网络性能的事实,我们希望利用认知无线电的知识来预测认知无线电用户的移动性,以提高认知无线电网络的整体性能。本研究新颖地利用移动性预测技术来提高认知无线网络的可靠性、带宽效率和可扩展性。首先,对预测技术的预测精度进行了评价和比较。其次,在不同的预测技术下,评估了路由协议的可靠性、效率和可扩展性性能。仿真结果验证了即使使用中等精度的预测器也能提高性能。结果清楚地表明,混合马尔可夫CDF预测效果最好。与没有预测相比,它的平均可靠性和效率分别提高了11%和8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of mobility prediction on the performance of Cognitive Radio networks
Wireless technology has enabled the development of increasingly diverse applications and devices resulting in an exponential growth in usage and services. These advancements made the radio frequency spectrum a scarce resource, and consequently, its efficient use is of the ultimate importance. To cope with the growing demand, network design focused on increasing the spectral efficiency by making use of advancement in Cognitive Radio technology. Cognitive Radio can reduce the spectrum shortage problem by enabling unlicensed users equipped with Cognitive Radios to reuse and share the licensed spectrum bands. Using the fact that a Cognitive Radio is capable of sensing the environmental conditions and automatically adapting its operating parameters in order to enhance network performance, we would like to make use of its knowledge to predict the mobility of Cognitive Radio users to improve the overall performance of the Cognitive Radio network. This study makes novel use of mobility prediction techniques to enhance reliability, bandwidth efficiency and scalability of the cognitive radio networks. Firstly, prediction techniques are evaluated and compared for prediction accuracy. Secondly, routing protocol reliability, efficiency and scalability performances are evaluated under different prediction techniques. Simulation results verify the performance improvements even with moderate accuracy predictors. Results clearly show that hybrid Markov CDF prediction performs the best. When compared with no prediction it significantly improves average reliability and efficiency by 11% and 8%, respectively.
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