Optimization of Frame Length Modulation-Based Wake-Up Control for Green WLANs

IEEE T. Vehicular Technology(2015)

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摘要
In this paper, green wireless local area networks (WLANs), where idle access points (APs) are put into sleep and activated upon the request of mobile nodes, are realized by exploiting WLAN signals to convey wake-up messages. Specifically, wake-up messages, sent by nodes, are modulated onto frame lengths (physical transmission time) of successive WLAN signals and detected by non-WLAN low-cost receivers equipped at APs. This method, however, is susceptible to serious 1) false negative events due to low signal quality or collisions with background WLAN frames and 2) false positive events where background WLAN frames happen to have the same frame lengths as those of wake-up messages. In the proposed scheme, WLAN frames forming a wake-up message are transmitted in a burst and interpreted as an equivalent message. On this basis, false probability is reduced from two aspects: 1) Modulation constellations of frame lengths are optimized to maximize the Hamming distance between equivalent messages, and 2) preamble frame and envelope smoothing are used to mitigate false events. In addition to theoretical analysis and simulation, a prototype test bed is built and experimented on. Extensive evaluations confirm that the proposed scheme helps to greatly improve the reliability of wake-up control compared with state-of-the-art methods.
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关键词
preamble frame,non-wlan low-cost receivers,modulation constellations,false negative events,envelope smoothing,wake-up control reliability,modulation,background wlan frames,telecommunication network reliability,green wireless local area networks (wlans),hamming distance,wlan signals,frame lengths,frame length modulation,wake-up receiver (wurx),mobile nodes,idle access points,physical transmission time,wake-up messages,burst transmission,green wireless local area networks,radio receivers,wireless lan,false probability,false positive events,manganese,reliability
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