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基于自适应坏点剔除的多点定位技术
引用本文:邓力,王钦,贺元骅.基于自适应坏点剔除的多点定位技术[J].科学技术与工程,2020,20(11):4599-4604.
作者姓名:邓力  王钦  贺元骅
作者单位:中国民用航空飞行学院,广汉618307;中国民用航空飞行学院,广汉618307;中国民用航空飞行学院,广汉618307
基金项目:国家自然科学基金项目(面上项目,重点项目,重大项目)
摘    要:对机场入侵无人机进行监视优化定位,可降低机场运行安全风险。由于无人机飞行具有低、慢、小等特征,机场场面监视信号容易被地面障碍物遮挡。传统定位方法主要采用参考特征点定位,对于参考特征不同的非移动目标,在迭代过程中会产生大量定位误差。根据入侵无人机特征,提出一种基于自适应坏点剔除的泰勒级数展开TDOA定位算法。采用TDOA测量值进行多点定位,构建自适应滤波器对泰勒级数展开初始参考点进行剔除坏点处理,有效地改善了算法收敛性和求解效率。仿真结果表明,自适应坏点剔除算法的定位精度接近基于实际位置的泰勒级数展开算法,收敛速度更快,在地面站相对无人机位置不佳时,新算法的稳定性和定位精度更优,满足机场对入侵无人机监视定位精度要求。

关 键 词:点定位  场面监视  到达时间差  泰勒级数展开  坏点剔除
收稿时间:2019/7/23 0:00:00
修稿时间:2020/1/6 0:00:00

Multiple Point Positioning Based on Adaptive Bad Pixel Rejection
Deng Li,Wang Qin,He Yuanhua.Multiple Point Positioning Based on Adaptive Bad Pixel Rejection[J].Science Technology and Engineering,2020,20(11):4599-4604.
Authors:Deng Li  Wang Qin  He Yuanhua
Institution:Civil Aviation Flight University of China,,
Abstract:Monitoring and optimizing the positioning of the UAV in the airport can reduce the security risk of airport operation. Due to the low, slow and small features of UAV flight, the surveillance signals of airport scene are easily obscured by ground obstructions. The traditional location method mainly uses the reference feature point location, and for the non-moving object with different reference features, a large number of positioning errors will be generated during the iteration process. According to the features of intruding UAVs, a TDOA positioning algorithm based on Taylor series for adaptive bad pixels removal is proposed. TDOA measurements were used to locate multiple points and an adaptive filter was constructed to remove the bad pixels from the initial reference points of the Taylor series expansion, which effectively improved the convergence and efficiency of the algorithm. The simulation results show that the accuracy of adaptive bad pixel reject algorithm is close to the Taylor series expansion algorithm based on the actual position, and the convergence speed is faster. When the position of the ground station relative to the UAV is poor, the stability and positioning accuracy of the new algorithm are more Excellent, to meet the airport on the invasion UAV surveillance positioning accuracy requirements.
Keywords:multiple  point location  surface monitoring  time difference  of arrival  taylor series  expansion    bad  pixels distinguish
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