随机分布传感器节点网络中基于模式识别的检测与定位

H. Al-Hertani, J. Ilow
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引用次数: 3

摘要

本文扩展了在配备均匀和全方位传感器的随机分布无线节点网络中进行源检测和定位(SDL)的统计方法的分析。研究的重点是相对于最近的传感器节点的SDL,并基于观测到的源(现象)能量。在这个框架中,SDL算法被看作是使用模式识别技术来解决的分类问题。在提出的方法中:(1)传感器是随机分布的,对其确切位置知之甚少;(ii)提出了一种自校准机制,用于创建数据集,其特征向量构成传感器读数空间中传感器位置的参考点。通过蒙特卡罗模拟评估了所提出算法的性能,并证明了在存在噪声和传播环境变化的情况下具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pattern recognition based detection and localization in a network of randomly distributed sensor nodes
This paper extends the analysis of a statistical methodology for source detection and localization (SDL) in a network of randomly distributed wireless nodes equipped with homogeneous and omni-directional sensors. The investigations are focused on SDL with respect to the nearest sensor node and are based on the observed source (phenomenon) energy. In this framework, the SDL algorithms are viewed as classification problems which are solved using pattern recognition techniques. In the presented approach: (i) sensors are randomly distributed and little is known about their exact locations; and (ii) a self-calibrating mechanism is proposed for creating the dataset whose feature vectors constitute the reference points for sensor locations in the space of sensor readings. The performance of the proposed algorithms is evaluated through Monte Carlo simulations and is demonstrated to be robust in the presence of noise and changes in the propagation environments.
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