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Markovian Model Based Channel Allocation in Cognitive Radio Networks

机译:认知无线电网络中基于马尔可夫模型的信道分配

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Cognitive radio can be considered as an enabling technology to utilize the white spaces through efficient spectrum sharing techniques. Through the Shanon capacity formula, it is clear that channel capacity is crucial for communication when licensed and unlicensed users share the channels. Further, to address the channel capacity, signal to interference plus noise ratio (SINR) plays an important role for channel allocation as it provides the bands for the channel capacity. In this paper, the concept of expected SINR is introduced, leading to a novel approach for channel allocation in cognitive radio networks based on SINR using the Markov chain. The proposed scheme is validated by simulations, showing an improvement of 13% in channel allocation compared to the SINR-based channel allocation approach.
机译:认知无线电可以被认为是通过有效的频谱共享技术来利用空白的使能技术。通过Shanon容量公式,很明显,当许可用户和非许可用户共享信道时,信道容量对于通信至关重要。此外,为了解决信道容量,信噪比加噪声比(SINR)在信道分配中起着重要作用,因为它为信道容量提供了频带。在本文中,引入了预期SINR的概念,从而导致了一种新的在马尔可夫链上基于SINR的认知无线电网络中的信道分配方法。仿真结果验证了所提出的方案,与基于SINR的信道分配方法相比,信道分配提高了13%。

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