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首页> 外文期刊>Information Sciences: An International Journal >Ant intelligence inspired blind data detection for ultra-wideband radar sensors
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Ant intelligence inspired blind data detection for ultra-wideband radar sensors

机译:蚂蚁智能启发了超宽带雷达传感器的盲数据检测

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摘要

Given the computational complexity and sophisticated implementation of traditionally parametric channel estimators, it has been gradually recognized that the existing data detection methodologies based on the finite impulse response (FIR) propagation channel modeling may become infeasible for ultra-wideband (UWB) radar sensors, especially in some large-scale distributed scenarios. By exploiting the implicit information involved in the received signals, in this investigation, we present a non-parametric UWB data detection scheme for the distributed radar sensor networks. A novel characteristic representation is suggested first. From a pattern classification point of view, a group of quantitative features are then extracted by making full use of the inherent property of UWB propagations. Thus, UWB data detection is formulated as a pattern classification problem in a multidimensional feature space. By thoroughly utilizing the self-similarity of the representative patterns, the ant swarm intelligence inspired clustering algorithm, with the new designed ant movement strategy, is adopted to perform unsupervised data detections. The developed scheme is independent of any a priori modeling information, which essentially avoids the expensive parametric estimators and thus enables practically feasible realizations. To alleviate the computational burden, the principle component analysis (PCA) is further employed to compress the feature space. The simulation results validate the new algorithm, which is superior to the other popular non-parametric data analysis schemes.
机译:考虑到传统参数信道估计器的计算复杂性和复杂的实现方式,人们逐渐认识到,基于有限脉冲响应(FIR)传播信道建模的现有数据检测方法对于超宽带(UWB)雷达传感器可能变得不可行。在某些大型分布式方案中。通过利用接收信号中涉及的隐式信息,在这项研究中,我们提出了一种用于分布式雷达传感器网络的非参数UWB数据检测方案。首先提出一种新颖的特征表示。从模式分类的角度来看,然后通过充分利用UWB传播的固有特性来提取一组定量特征。因此,将UWB数据检测公式化为多维特征空间中的模式分类问题。通过充分利用代表模式的自相似性,采用蚁群智能启发式聚类算法和新设计的蚂蚁运动策略进行无监督数据检测。所开发的方案独立于任何先验建模信息,这实质上避免了昂贵的参数估计器,从而使实际可行的实现成为可能。为了减轻计算负担,进一步采用主成分分析(PCA)压缩特征空间。仿真结果验证了该新算法的有效性,该算法优于其他流行的非参数数据分析方案。

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