60ghz光纤无线室内网络运动预测方法研究

V. Bien, R. V. Prasad, Ignas Niemieeger, Thi Viet Huong Nguyen
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引用次数: 3

摘要

60ghz的无授权频谱为5ghz,数据速度高达2.5 GHz,可用于室内环境中的短距离通信。它是由宽带无线应用的需求驱动的,如IPTV、高清电视(HDTV),甚至是未压缩视频。然而,在这样的网络中,由于小区小(由于范围小)而频繁执行切换,并且完成切换过程的可用时间很短。为了实现成功的切换,预测移动用户的下一个位置是重要的一步。它还可以使系统适应资源和提高服务质量。在室内环境中,人们倾向于重复自己的动作,也有自己选择的场所,如办公室、图书馆等,从而有了日常的运动模式。因此,系统可以从过去找到他们的习惯。为了利用这种模式,本文提出了一种使用隐马尔可夫模型作为学习技术来预测用户下一个位置的方法。对于特定的数据集,我们的实验结果表明,对普通员工的预测准确率高达81.4%,对客人的预测准确率高达54.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An approach for movement prediction in Radio over Fiber indoor network at 60 GHz
With its vast unlicensed spectrum of 5 GHz and data speed of up to 2.5 GHz, 60 GHz is envisaged for short range communication in indoor environments. It is driven by the demand for broadband wireless applications such as IPTV, high definition television (HDTV), even uncompressed video. However, in such networks, handoffs are performed frequently due to the small cell (due to smaller range) and the time available for completing a handoff process is short. In order to make a successful handoff, predicting the next location of the mobile user is an important step. It can also enable the system to adapt resources and improve the Quality of Service. In indoor environment, people tend to repeat their movements and also have their selected places, such as offices, libraries, etc., and thus have daily movement patterns. Thus, the system can find their habits from the past. To exploit such patterns, this paper proposes a method using Hidden Markov Model as a learning technique to predict next location of the user. For particular data sets, our experimental results show that the prediction accuracy is up to 81.4% for regular employees and 54.6% for a guest.
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