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河北省自然科学基金(2013203300)

作品数:2 被引量:24H指数:1
相关作者:范学敏温江涛吴希军更多>>
相关机构:燕山大学更多>>
发文基金:河北省自然科学基金国家自然科学基金更多>>
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基于RSSI跳数修正的DV-Hop改进算法被引量:24
2014年
针对原始DV-Hop算法中跳数值不能反应出节点间实际距离大小而导致拓扑不规则网络中节点定位误差较大的问题,提出了一种基于接收信号强度指示RSSI(Rceived Sgnal Srength Idicator)的改进算法。首先根据直接邻居节点接收到的RSSI值对第1跳进行分级,细化跳数;同时把节点间的距离比值作为权值,并将其转化为相应RSSI的关系对跳数进行加权修正,使获得的跳数值更准确。仿真结果表明在相同的网络环境下,与传统算法相比改进算法在不增加额外硬件的前提下有效地提高了定位精度。
温江涛范学敏吴希军
关键词:无线传感器网络
Mixing matrix estimation of underdetermined blind source separation based on the linear aggregation characteristic of observation signals
2016年
Under the underdetermined blind sources separation(UBSS) circumstance,it is difficult to estimate the mixing matrix with high-precision because of unknown sparsity of signals.The mixing matrix estimation is proposed based on linear aggregation degree of signal scatter plot without knowing sparsity,and the linear aggregation degree evaluation of observed signals is presented which obeys generalized Gaussian distribution(GGD).Both the GGD shape parameter and the signals' correlation features affect the observation signals sparsity and further affected the directionality of time-frequency scatter plot.So a new mixing matrix estimation method is proposed for different sparsity degrees,which especially focuses on unclear directionality of scatter plot and weak linear aggregation degree.Firstly,the direction of coefficient scatter plot by time-frequency transform is improved and then the single source coefficients in the case of weak linear clustering is processed finally the improved K-means clustering is applied to achieve the estimation of mixing matrix.The proposed algorithm reduces the requirements of signals sparsity and independence,and the mixing matrix can be estimated with high accuracy.The simulation results show the feasibility and effectiveness of the algorithm.
温江涛Zhao QianyunSun Jiedi
关键词:混合矩阵盲源分离
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