DocumentCode
52522
Title
Efficient Closed-Form Algorithms for AOA Based Self-Localization of Sensor Nodes Using Auxiliary Variables
Author
Hua-Jie Shao ; Xiao-Ping Zhang ; Zhi Wang
Author_Institution
Dept. of Control Sci. & Eng., Zhejiang Univ., Hangzhou, China
Volume
62
Issue
10
fYear
2014
fDate
15-May-14
Firstpage
2580
Lastpage
2594
Abstract
Node self-localization is a key research topic for wireless sensor networks (WSNs). There are two main algorithms, the triangulation method and the maximum likelihood (ML) estimator, for angle of arrival (AOA) based self-localization. The ML estimator requires a good initialization close to the true location to avoid divergence, while the triangulation method cannot obtain the closed-form solution with high efficiency. In this paper, we develop a set of efficient closed-form AOA based self-localization algorithms using auxiliary variables based methods. First, we formulate the self-localization problem as a linear least squares problem using auxiliary variables. Based on its closed-form solution, a new auxiliary variables based pseudo-linear estimator (AVPLE) is developed. By analyzing its estimation error, we present a bias compensated AVPLE (BCAVPLE) to reduce the estimation error. Then we develop a novel BCAVPLE based weighted instrumental variable (BCAVPLE-WIV) estimator to achieve asymptotically unbiased estimation of locations and orientations of unknown nodes based on prior knowledge of the AOA noise variance. In the case that the AOA noise variance is unknown, a new AVPLE based WIV (AVPLE-WIV) estimator is developed to localize the unknown nodes. Also, we develop an autonomous coordinate rotation (ACR) method to overcome the tangent instability of the proposed algorithms when the orientation of the unknown node is near π/2. We also derive the Cramér-Rao lower bound (CRLB) of the ML estimator. Extensive simulations demonstrate that the new algorithms achieve much higher localization accuracy than the triangulation method and avoid local minima and divergence in iterative ML estimators.
Keywords
direction-of-arrival estimation; least squares approximations; wireless sensor networks; ACR method; AOA based self-localization; AOA noise variance; AVPLE based WIV estimator; BCAVPLE based weighted instrumental variable; BCAVPLE-WIV; CRLB; Cramér-Rao lower bound; WSN; angle of arrival based self-localization; autonomous coordinate rotation; auxiliary variables based methods; auxiliary variables based pseudo-linear estimator; bias compensated AVPLE; closed-form AOA based self-localization algorithms; closed-form solution; estimation error; initialization; iterative ML estimators; linear least squares problem; maximum likelihood estimator; node self-localization; pseudo-linear estimator; self-localization problem; sensor nodes; tangent instability; triangulation method; wireless sensor networks; Closed-form solutions; Maximum likelihood estimation; Noise; Signal processing algorithms; Vectors; Wireless sensor networks; Angle of arrival; auxiliary variables; bias compensated auxiliary variable based pseudo-linear estimator; closed-form pseudo-linear estimator; node self-localization; weighted instrumental variables; wireless sensor networks;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2014.2314064
Filename
6778758
Link To Document