Magdalena García, C. Martinez, J. Tomás, Jaime Lloret
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引用次数: 61
摘要
有时无线传感器可以随机放置,没有预先确定的坐标,因此应该研究在一个区域内自我定位的系统。本文介绍了我们开发的两种利用无线局域网技术实现无线传感器定位的方法。该场景是包含墙壁、干扰、多径效应、湿度和温度变化等的室内环境,两种方法均基于RSSI (Received Signal Strength Indicator)。第一种方法使用一个训练过程,位置基于使用训练测量的神经网络。第二种方法采用具有固定接入点的三角测量模型,但考虑了墙损。在这两个系统中,我们都考虑了测量的变化,以获得更高的传感器定位精度。
Wireless Sensors Self-Location in an Indoor WLAN Environment
Sometimes wireless sensors could be placed randomly without predetermined coordinates, so systems to self-locate in an area should be studied. This paper shows two approaches developed by us where wireless sensors could find their position using WLAN technology. The scenario is an indoor environment that contains walls, interferences, multipath effect, humidity and temperature variations, etc., and both approaches are based on the Received Signal Strength Indicator (RSSI). The first approach uses a training session and the position is based on Neuronal Networks using the training measurements. The second approach uses triangulation model with some fixed access points, but taking into account wall losses. In both systems we have considered the variations measured to obtain a bigger accuracy in the sensor localization.