基于一维误差分析和建模的定位方法

Omar A. Zargelin, Fadel M. Lashhab, Walid K. A. Hasan
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引用次数: 0

摘要

无线传感器网络(WSNs)已经显示出广泛的应用前景。利用它们的主要挑战之一是为部署的传感器收集准确的位置信息,同时最大限度地降低功耗。通过对定位误差的分析,提出了几种基于误差建模的定位方法,并应用严格的数学和统计原理,以获得比现有方法更好的定位估计。本文介绍的方法已用于一维空间,以进行概念验证,简化表示,并说明如何实现可行的单维应用程序。这些方法只利用两个可以安装在车辆上的移动信标,而不是一个昂贵的大型阵列。用于定位的主要测量是接收信号强度(RSS)。与许多先前存在的方法不同,本文提出的技术利用实际的、现实的假设,并逐步设计以减轻逐渐发现的限制。为了验证和分析所开发的方法,串联开发了一个多层仿真环境。本文提出的方法、开发方法和软件基础设施为无线传感器网络领域的未来努力提供了一个框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Localization Methods based on Error Analysis and Modeling in One Dimension
Wireless sensor networks (WSNs) have shown promise in a broad range of applications. One of the primary challenges in leveraging them lies in gathering accurate position information for the deployed sensors while minimizing power cost. Through analyzing the error associated with acquiring such position information, we developed several novel localization methods based on modeling the analyzed error and applying rigorous mathematical and statistical principles in order to produce improved location estimates compared with existing methods. The methods presented herein have been utilized for a one-dimensional space for proof-of-concept, simplicity of presentation, and to illustrate how viable, single-dimensional applications can be approached. These methods utilize only two mobile beacons that can be mounted to a vehicle, rather than a costly, large array. The primary measurement taken to perform localizations is received signal strength (RSS). Unlike many previously existing methods, the techniques presented herein utilize practical, realistic assumptions and were progressively designed to mitigate incrementally discovered limitations. To exercise and analyze the developed methods, a multiple-layered simulation environment was developed in tandem. The approach, developed methodologies, and software infrastructure presented herein provide a framework for future endeavors within the field of wireless sensor networks.
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