利用神经网络改进RSSI室内定位技术的性能

G. Anand, V. Thanikaiselvan
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引用次数: 5

摘要

节点定位是无线传感器网络的重要组成部分,具有很好的研究和发展空间。许多革命性的想法,如无人驾驶汽车、增强现实和即时应急响应系统,都依赖于精确的定位。由于增加了随机性、衰减、异质性和干扰,室内环境中的定位不像室外环境那样一般和简单。这些因素降低了室内环境下常用定位算法的精度。本文讨论了一种基于RSSI的神经网络定位算法中的误差降低问题。神经网络的并行计算能力和非线性特性将有助于解决室内定位问题。本文对定位过程、误差来源和误差控制机制进行了深入探讨。最后对仿真结果进行了讨论,结果表明该纠错机制显著提高了定位性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the Performance of RSSI Based Indoor Localization Techniques Using Neural Networks
Node localization is an essential part of Wireless sensor network and has a good scope for research and development. Many revolutionary ideas like driverless cars, augmented reality and instant emergency response systems are dependent on precise localization. Localization in an indoor environment is not generic and simple as in outdoors due to the increased randomness, attenuation, heterogeneity and interference. These factors reduce the precision of popular localization algorithms in an indoor environment. This paper discusses about error reduction in a RSSI based localization algorithm using neural networks. Parallel computational capabilities and non-linearity of neural networks would come in handy with the constraints in indoor localization. In-depth discussion has been made in this paper about the procedure followed for localization, sources of error and error controlling mechanisms applied. Simulation results are also discussed towards the end, which show significant improvement in localization performance with the error correction mechanism.
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