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Improved indoor positioning based on range-free RSSI fingerprint method

机译:基于无距离RSSI指纹方法改进的室内定位

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As the development of modern science and technology, LBS and location-aware computing are increasingly important in the practical applications. Currently, GPS positioning system is a mature positioning technology used widely, but signals are easily absorbed, reflected by buildings, and attenuate seriously. In such situation, GPS positioning is not suitable for using in the indoor environment. Wireless sensor networks, such as ZigBee technology, can provide RSSI (received signal strength indicator) which can be used for positioning, especially indoor positioning, and therefore for location based services (LBS).The authors are focused on the fingerprint database method which is suitable for calculating the coordinates of a pedestrian location. This positioning method can use the signal strength indication between the reference nodes and positioning nodes, and design algorithms for positioning. In the wireless sensor networks, according to whether measuring the distance between the nodes in the positioning process, the positioning modes are divided into two categories which are range-based and range-free positioning modes. This paper describes newly improved indoor positioning method based on RSSI fingerprint database, which is range-free. Presented fingerprint database positioning can provide more accurate positioning results, and the accuracy of establishing fingerprint database will affect the accuracy of indoor positioning. In this paper, we propose a new method about the average threshold and the effective data domain filtering method to optimize the fingerprint database of ZigBee technology. Indoor experiment, which was conducted at the University of Warmia and Mazury, proved that the distance achieved by this system has been extended over 30 meters without decreasing the positioning accuracy. The weighted nearest algorithm was chosen and used to calculate user’s location, and then the results were compared and analyzed. As a result, the positioning accuracy was improved and error did not exceed 0.69 m. Therefore, such system can be easily applied in a bigger space inside the buildings, underground mines or in the other location based services.
机译:由于现代科学技术的发展,LBS和位置感知的计算在实际应用中越来越重要。目前,GPS定位系统是一种广泛使用的成熟定位技术,但信号很容易被建筑物反射,并认真对待。在这种情况下,GPS定位不适合在室内环境中使用。 ZigBee技术等无线传感器网络可以提供RSSI(接收信号强度指示器),可用于定位,尤其是室内定位,从而提供基于位置的服务(LBS)。作者集中在指纹数据库方法上适用于计算行人位置的坐标。该定位方法可以使用参考节点和定位节点之间的信号强度指示,以及用于定位的设计算法。在无线传感器网络中,根据定位过程中的节点之间的距离,定位模式分为基于范围的范围和无距离定位模式的两个类别。本文介绍了基于RSSI指纹数据库的新改进的室内定位方法,无论是无级别的。呈现的指纹数据库定位可以提供更准确的定位结果,建立指纹数据库的准确性会影响室内定位的准确性。在本文中,我们提出了一种关于平均阈值和有效数据域滤波方法的新方法,以优化ZigBee技术的指纹数据库。在蜜蜂和Mazury大学进行的室内实验证明了该系统实现的距离超过30米,而不会降低定位精度。选择加权最近的算法并用于计算用户的位置,然后进行比较和分析结果。结果,提高了定位精度,误差不超过0.69米。因此,这种系统可以很容易地应用于建筑物内部的更大空间,地下矿山或基于其他位置的服务。

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