Title :
Virtual-manifold ambiguity in HOS-based direction-finding with electromagnetic vector-sensors
Author :
Xu, Yougen ; Liu, ZhiWen ; Wong, Kainam Thomas ; Cao, Jinliang
Author_Institution :
Beijing Inst. of Technol., Beijing
Abstract :
Herein derived are the lower and upper bounds for the number of linearly independent (2Q)th-order virtual steering vectors of an array of electromagnetic vector-sensors, with Q being any positive integer over one. These bounds help determine the number of non-Gaussian signals whose directions-of-arrival (DOAs) can be uniquely identified from (2Q)th-order statistics data. The derived lower bounds increase with Q, whereas the derived upper bounds often fall below the maximum number of virtual sensors achievable from (2Q)th-order statistics manipulation. These bounds are independent of the permutation of the (2Q)th-order statistics entries in the higher order cumulant matrix that has a similar algebraic structure of the classical covariance matrix used in the second-order subspace-based direction-finding algorithms.
Keywords :
covariance matrices; direction-of-arrival estimation; DOA; HOS; covariance matrix; direction finding; directions-of-arrival; electromagnetic vector-sensors; nonGaussian signals; virtual steering vectors; virtual-manifold ambiguity; Covariance matrix; Electromagnetic wave polarization; Geometry; Higher order statistics; Multiple signal classification; Navigation; Sensor arrays; Signal processing; Upper bound; Vectors;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
DOI :
10.1109/TAES.2008.4667710