基于PNN的空闲长度预测辅助下多主信道同步传输的多频带无线局域网可实现吞吐量

K. Yano, Naoto Egashira, Julian Webber, M. Usui, Yoshinori Suzuki
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引用次数: 9

摘要

研究了一种多频段无线局域网(MB-WLAN),可以有效地检测和利用分散在时间和频率域的未使用无线电资源。MB-WLAN在多个频带中设置一个或多个主信道(PCHs),每个站(STA)对多个主信道进行随机回退处理,以获得一个传输机会(TXOP)。一旦STA在任何PCH上获得了TXOP,它就会检查在不久的将来是否可以在任何其他PCH上获得另一个TXOP。如果STA判断它可以获得另一个TXOP,它将暂停其传输,直到在任何其他PCH上获得另一个TXOP,然后传输信道绑定帧。适当的挂起时间取决于每个PCH上的拥塞程度,因为随着PCH变得更加拥挤,STA更频繁地将其TXOP丢失给其他STA的帧传输。因此,本文提出了一种基于概率神经网络(PNN)的空闲长度预测来控制最大等待时间的方法。为了消除自传输对信道使用特性的影响,本文还提出了一种控制PNN调用信道使用学习的时间的方法。为了验证这些建议的有效性,本文通过计算机仿真,假设基于IEEE 802.11n/ac的WLAN工作在2.4GHz和5GHz频段,使用4天线STA,评估了MB-WLAN的可实现吞吐量。结果表明,无论PCHs上的拥塞程度如何,采用两种方案的MBWLAN都能获得几乎最佳的性能。
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Achievable Throughput of Multiband Wireless LAN using Simultaneous Transmission over Multiple Primary Channels Assisted by Idle Length Prediction Based on PNN
The authors have studied a multiband wireless local area network (MB-WLAN) which can effectively detect and exploit unused radio resources scattered in time and frequency domains. The MB-WLAN sets one or more primary channels (PCHs) in multiple frequency bands, and each station (STA) carries out random back-off process on the multiple primary channels to obtain a transmission opportunity (TXOP). Once a STA obtains a TXOP on any PCH, it checks whether or not another TXOP can be obtained on any other PCH in near future. If the STA judges that it can obtain another TXOP, it pends its transmission until another TXOP is obtained on any other PCH, and then a channel-bonded frame is transmitted. A suitable pending duration depends on the level of congestion on each PCH because the STA lose its TXOP more frequently to other STA’s frame transmission as the PCH gets more crowded. This paper, therefore, proposes a method to control the maximum pending duration with the aid of idle length prediction based on probabilistic neural network (PNN). This paper also proposes a method to control the timing to invoke learning of channel usage for PNN in order to get rid of the impact of self-transmission on the characteristics of channel usage. In order to validate the effectiveness of the proposals, this paper evaluates the achievable throughput of the MB-WLAN by computer simulation assuming IEEE 802.11n/ac-based WLAN operated in the 2.4GHz and 5GHz bands and 4-antenna STA. It is confirmed that the MBWLAN with two proposals can achieve almost best performance regardless the level of congestion on PCHs.
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