Jeandro M. Bezerra, Rudy Braquehais, F. Roberto, Jorge Silva, Marcia Fernandez, Thelmo P. de Araujo, Celestino Junior, Pablo Ximenes
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引用次数: 0
摘要
无线网络的出现大大增加了研究的需求。上下文感知应用程序必须适应它们所处的环境,为此,有关设备硬件和环境特征的信息至关重要。在这项工作中,我们提出了一种称为自然自适应指数平滑(NAES)的方法来实时描述和预测IEEE 802.11 WLAN网络的信道行为。NAES方法使用指数平滑技术的一种变体来计算信道质量指标,即接收信号强度(RSS)和链路质量。与Trigg and Leach (1967)(TL)方法的结果比较表明,NAES优于TL方法。
NAES: A Natural Adaptive Exponential Smoothing for Channel Prediction in WLANs
The advent of wireless networks has increased the demand for research greatly. Context-aware applications must adapt to the environment in which they are inserted, and, for this, information on both device's hardware and the characteristics of the environment is crucial. In this work, we propose a method - called natural adaptive exponential smoothing (NAES) - to describe and forecast, in real time, the channel behavior of IEEE 802.11 WLAN networks. The NAES method uses a variation of the exponential smoothing technique to compute the channel quality indicators, namely the received signal strength (RSS) and the link quality. A comparison with the results obtained by the Trigg and Leach (1967)(TL) method shows that NAES outperforms TL method.