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Deep Learning Based Efficient Channel Allocation Algorithm for Next Generation Cellular Networks

机译:基于深度学习的下一代蜂窝网络高效信道分配算法

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The usage of mobile nodes is increasing very rapidly and so it is very essential to have an efficient channel allocation procedure for the next generation cellular networks. It is very expensive to increase the existing available spectrum. Hence, it is always better to utilize the existing spectrum in an effective way. Inview of this, this paper proposes a channel allocation algorithm for next generation cellular networks which is based on deep learning. The system is made learned deeply to determine the number of channels that each base station can acquire and also dynamically varying based on the time. The originating and handoff calls are two different types of calls being considered in this paper. The number of channels that be exclusively used for originating calls and handoff calls is determined using deep learning. STWQNon-LA and STWQLAR are used to compare with the proposed work. The results show that the proposed algorithm, DLCA outperforms in terms of blocking and dropping probability.
机译:移动节点的使用正在迅速增加,因此,对于下一代蜂窝网络而言,具有有效的信道分配过程非常重要。增加现有的可用频谱非常昂贵。因此,以有效的方式利用现有频谱总是更好。有鉴于此,本文提出了一种基于深度学习的下一代蜂窝网络信道分配算法。对该系统进行了深入了解,以确定每个基站可以获取的信道数量,并且还可以根据时间动态变化。始发和越区切换呼叫是本文考虑的两种不同类型的呼叫。使用深度学习确定专用于始发呼叫和越区切换呼叫的信道数。 STWQNon-LA和STWQLAR用于与建议的工作进行比较。结果表明,所提出的算法DLCA在阻塞和掉落概率方面均优于。

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