基于概率神经网络的WLAN空闲时隙可用性预测研究

Julian Webber, A. Mehbodniya, Yafei Hou, K. Yano, T. Kumagai
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引用次数: 27

摘要

我们最近提出了一种多频段无线局域网(WLAN)系统,以解决日益拥挤的频率空间。效率可以通过灵活的收发器来提高,该收发器可以同时在一个或两个频带上的空闲信道上传输,并且忙碌/空闲(B/I)预测器将构成这种系统的传感单元的一部分。本文研究了一种基于模式匹配和先前状态模式分类的概率神经网络(PNN)来预测WLAN B/I状态。在多个信道上的两个热点捕获IEEE 802.11无线数据帧并估计B/I状态。对两个不同位置、信道、预测矩阵维度、B/I vs信道占用比(COR)输入类型和再训练频率的预测性能进行了比较。结果表明,该PNN对即将到来的20个空闲插槽的数量有很好的估计潜力,并且通过定期的再训练,性能有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on idle slot availability prediction for WLAN using a probabilistic neural network
We have recently proposed a multi-band wireless local area network (WLAN) system as a solution to the increasingly crowded frequency space. Efficiency can be improved by an agile transceiver that transmits on an idle channel on either or both bands concurrently, and a busy/idle (B/I) predictor will form part of the sensing unit for such a system. A probabilistic neural network (PNN) is studied here for predicting upcoming WLAN B/I status based on pattern matching and classification of previous state patterns. IEEE 802.11 wireless data frames were captured at two hot-spots on multiple channels and the B/I status estimated. The prediction performance is compared for two different locations, channels, prediction matrix dimensions, B/I vs channel occupancy ratio (COR) input types, and frequency of retraining. Results show that the PNN has good potential to estimate the number of idle slots in the upcoming 20 slots and the performance improves with regular retraining.
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