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引用次数: 11
摘要
无线传感器网络(WSN)已经在各个应用领域得到了广泛的应用,并将在未来得到更大的发展。定位技术是无线传感器网络中获取盲节点位置的重要技术之一,也是无线传感器网络的支撑技术之一。现有的传感器网络定位算法大多依赖于一个简单的模型,只能在给定的条件下进行定位,不能适应复杂的环境,限制了其应用。本文基于RSSI (Received Signal Strength Indication,接收信号强度指示)值与射频信号传播距离之间的关系,将传统RSSI定位方法中的经验模型与理论模型相融合,提出了一种新的自适应方案,提高了无线传感器网络对不同环境的适应性,提高了指向精度。该方案的关键方法是将整个测试集划分为若干块,在每个区域放置特征节点,通过比较射频信号实际传播距离与特征节点计算到两个模型的距离的误差,动态选择两个模型中的一个,使定位误差最小。
An adaptive localization algorithm based on RSSI in wireless sensor networks
Wireless sensor networks (WSN) have been used in various application areas and will be more prosperous in the future. The technology of localization, by which the position of blind node can be acquired, is a significant factor and one of the supporting technologies in WSN. Most of the existing localization algorithms in sensor networks mainly depend on one simple model and can only be used in a given condition, which cannot be adapted to the complex environment and thus restrict their application. In this paper, a novel adaptive scheme, based on the relationship between the RSSI (Received Signal Strength Indication) values and the spread distance of RF signal, is presented by fusing the experience model and the theoretical model in traditional RSSI-Based localization methods for improving the adaptability to different environments and enhances the pointing accuracy in WSN. The key method of this scheme is that through dividing the entire testing set into several pieces and placing characteristic node in every zone, one of the two models will be dynamically selected after comparing the error between the real distance the RF signal traveled and the distance computed from each of the two models by the characteristic node to minimize the positioning error.