As the radio communications technology widely used,wireless location technology plays a more important role in maintaining the order of the air waves.However concretely effective symbol calibration method with regard ...As the radio communications technology widely used,wireless location technology plays a more important role in maintaining the order of the air waves.However concretely effective symbol calibration method with regard to Chinese DTMB signal of different frame mode is quite under research due to the multiple structure of DTMB signal.In this paper,we propose a Time Difference of Arrival(TDOA)-based passive location scheme using least square principle.Utilizing the large number of anchor nodes in wireless monitoring network,a novel algorithm is formulated to solve the None-LineOf-Sight problem.The derived Cramer Rao Lower Bound of the localization method guides to the accuracy of the position outcome with regards to the calibration precision.In contrast with traditional multi-terminal location schemes,our location scheme can reduce calculation complexity and location costs abruptly.A twostep NLOS identification algorithm is proposed.Computer simulation is employed to verify the well performance of the calibration method of3-4 dB superiority than normal method and also the whole localization scheme for less than 50 meters through channel of SNR lower than dB.Simulation also shows that our algorithm can effectively identify NLOS path and improve positioning accuracy.展开更多
Transceiver-free object localization can localize target through using Radio Frequency(RF) technologies without carrying any device, which attracts many researchers' attentions. Most traditional technologies usual...Transceiver-free object localization can localize target through using Radio Frequency(RF) technologies without carrying any device, which attracts many researchers' attentions. Most traditional technologies usually first deploy a number of reference nodes which are able to communicate with each other, then select only some wireless links, whose signals are affected the most by the transceiver-free target, to estimate the target position. However, such traditional technologies adopt an ideal model for the target, the other link information and environment interference behavior are not considered comprehensively. In order to overcome this drawback, we propose a method which is able to precisely estimate the transceiver-free target position. It not only can leverage more link information, but also take environmental interference into account. Two algorithms are proposed in our system, one is Best K-Nearest Neighbor(KNN) algorithm, the other is Support Vector Regression(SVR) algorithm. Our experiments are based on Telos B sensor nodes and performed in different complex lab areas which have many different furniture and equipment. The experiment results show that the average localization error is round 1.1m. Compared with traditional methods, the localization accuracy is increased nearly two times.展开更多
射频干扰(radio frequency interference,RFI)对L波段综合孔径辐射计遥感数据造成了严重污染,降低了产品质量。RFI检测定位是处理RFI的关键步骤。传统的基于亮温图像的定位算法受到仪器角分辨率的限制,无法有效分离相邻的RFI。为了实现...射频干扰(radio frequency interference,RFI)对L波段综合孔径辐射计遥感数据造成了严重污染,降低了产品质量。RFI检测定位是处理RFI的关键步骤。传统的基于亮温图像的定位算法受到仪器角分辨率的限制,无法有效分离相邻的RFI。为了实现更高的空间分辨率,基于子空间分解技术的多信号分类(multiple signal classification,MUSIC)算法被提出。然而,当亮温图像的信噪比较低时,背景和噪声对子空间分解的准确性影响较大,进而降低了MUSIC算法的定位性能。文章通过结合亮温图像和子空间分解两种方法的优点,提出了一种融合改进定位方法。该方法通过在亮温图像域中消除背景场景、增强目标射频干扰,2次提高了图像信噪比,在频域中,利用子空间分解和MUSIC算法实现超分辨率和高精度定位。通过对土壤湿度和海洋盐度(soil moisture and ocean salinity,SMOS)卫星数据进行实验和仿真验证,证明了文章提出的方法在低信噪比情况下优于传统的MUSIC算法和基于亮温的定位算法。此外,在对多个弱RFI源的定位上,该方法的定位精度也优于基于点源波纹的弱RFI检测定位算法。展开更多
在蜂窝认知无线电网络(Cellular Cognitive Radio Network,CCRN)中,主用户(Primary User,PU)与次级用户(Secondary User,SU)之间缺乏通信,单独依靠传统的频谱感知技术来判断频谱接入机会存在一定的不可靠性。提出一种基于KL(Kullback-Le...在蜂窝认知无线电网络(Cellular Cognitive Radio Network,CCRN)中,主用户(Primary User,PU)与次级用户(Secondary User,SU)之间缺乏通信,单独依靠传统的频谱感知技术来判断频谱接入机会存在一定的不可靠性。提出一种基于KL(Kullback-Leibler)散度与邻居关系的改进加权质心定位(KL-divergence Based Weighted Centroid Localization,KLD-WCL)算法。首先计算未知节点与锚节点接收信号强度(Received Signal Strength,RSS)向量的KL散度值,表征两者的邻近程度;其次,提出一种自适应邻居选择算法,针对每一个未知节点自适应地选择最优的邻居锚节点。在采用KLDWCL算法获得SU位置信息的基础上,最终实现机会性接入授权频段的使能标签设置。所提方案有效减缓了RSS波动对于定位精度的影响,优化了邻居节点选择策略与加权方式。理论推导与实验结果表明,所提方案为CCRN中的SU定位算法提供了更为强健和良好的定位误差性能,能够有效增强蜂窝认知网络对于频谱接入的可靠性。展开更多
基金supported by National BeiDou Special ProjectNational Science & Technology planning project of China(Grant No. 2014BAK12B04)
文摘As the radio communications technology widely used,wireless location technology plays a more important role in maintaining the order of the air waves.However concretely effective symbol calibration method with regard to Chinese DTMB signal of different frame mode is quite under research due to the multiple structure of DTMB signal.In this paper,we propose a Time Difference of Arrival(TDOA)-based passive location scheme using least square principle.Utilizing the large number of anchor nodes in wireless monitoring network,a novel algorithm is formulated to solve the None-LineOf-Sight problem.The derived Cramer Rao Lower Bound of the localization method guides to the accuracy of the position outcome with regards to the calibration precision.In contrast with traditional multi-terminal location schemes,our location scheme can reduce calculation complexity and location costs abruptly.A twostep NLOS identification algorithm is proposed.Computer simulation is employed to verify the well performance of the calibration method of3-4 dB superiority than normal method and also the whole localization scheme for less than 50 meters through channel of SNR lower than dB.Simulation also shows that our algorithm can effectively identify NLOS path and improve positioning accuracy.
基金supported by the National Natural Science Foundation of China (Grant No.61202377, U1301251)National High Technology Joint Research Program of China (Grant No.2015AA015305)+1 种基金Science and Technology Planning Project of Guangdong Province (Grant No.2013B090500055)Guangdong Natural Science Foundation (Grant No.2014A030313553)
文摘Transceiver-free object localization can localize target through using Radio Frequency(RF) technologies without carrying any device, which attracts many researchers' attentions. Most traditional technologies usually first deploy a number of reference nodes which are able to communicate with each other, then select only some wireless links, whose signals are affected the most by the transceiver-free target, to estimate the target position. However, such traditional technologies adopt an ideal model for the target, the other link information and environment interference behavior are not considered comprehensively. In order to overcome this drawback, we propose a method which is able to precisely estimate the transceiver-free target position. It not only can leverage more link information, but also take environmental interference into account. Two algorithms are proposed in our system, one is Best K-Nearest Neighbor(KNN) algorithm, the other is Support Vector Regression(SVR) algorithm. Our experiments are based on Telos B sensor nodes and performed in different complex lab areas which have many different furniture and equipment. The experiment results show that the average localization error is round 1.1m. Compared with traditional methods, the localization accuracy is increased nearly two times.
文摘射频干扰(radio frequency interference,RFI)对L波段综合孔径辐射计遥感数据造成了严重污染,降低了产品质量。RFI检测定位是处理RFI的关键步骤。传统的基于亮温图像的定位算法受到仪器角分辨率的限制,无法有效分离相邻的RFI。为了实现更高的空间分辨率,基于子空间分解技术的多信号分类(multiple signal classification,MUSIC)算法被提出。然而,当亮温图像的信噪比较低时,背景和噪声对子空间分解的准确性影响较大,进而降低了MUSIC算法的定位性能。文章通过结合亮温图像和子空间分解两种方法的优点,提出了一种融合改进定位方法。该方法通过在亮温图像域中消除背景场景、增强目标射频干扰,2次提高了图像信噪比,在频域中,利用子空间分解和MUSIC算法实现超分辨率和高精度定位。通过对土壤湿度和海洋盐度(soil moisture and ocean salinity,SMOS)卫星数据进行实验和仿真验证,证明了文章提出的方法在低信噪比情况下优于传统的MUSIC算法和基于亮温的定位算法。此外,在对多个弱RFI源的定位上,该方法的定位精度也优于基于点源波纹的弱RFI检测定位算法。
文摘在蜂窝认知无线电网络(Cellular Cognitive Radio Network,CCRN)中,主用户(Primary User,PU)与次级用户(Secondary User,SU)之间缺乏通信,单独依靠传统的频谱感知技术来判断频谱接入机会存在一定的不可靠性。提出一种基于KL(Kullback-Leibler)散度与邻居关系的改进加权质心定位(KL-divergence Based Weighted Centroid Localization,KLD-WCL)算法。首先计算未知节点与锚节点接收信号强度(Received Signal Strength,RSS)向量的KL散度值,表征两者的邻近程度;其次,提出一种自适应邻居选择算法,针对每一个未知节点自适应地选择最优的邻居锚节点。在采用KLDWCL算法获得SU位置信息的基础上,最终实现机会性接入授权频段的使能标签设置。所提方案有效减缓了RSS波动对于定位精度的影响,优化了邻居节点选择策略与加权方式。理论推导与实验结果表明,所提方案为CCRN中的SU定位算法提供了更为强健和良好的定位误差性能,能够有效增强蜂窝认知网络对于频谱接入的可靠性。