Title: Linear closed-form estimator for sensor localisation using RSS and AOA measurements
Authors: Jian Zhang; Ping Cao
Addresses: School of Air Transportation/Flying, Shanghai University of Engineering Science, No. 333 Longteng Road, Songjiang District, Shanghai, 201620, China ' School of Economics and Management, Shanghai Institute of Technology, No. 100 Haiquan Road, Fengxian District, Shanghai, 201418, China
Abstract: Using the hybrid received signal strength (RSS) and angle of arrival (AOA) measurements, a position estimation model is proposed for sensor localisation in three-dimensional plane. Then the unconstraint linear least square (ULLS) and constraint linear least square (CLLS) estimators are designed to obtain the closed-form solutions to the positions of source nodes by considering the known transmit power. When the transmit power is unavailable, a global linear least square (GLLS) estimator is also put forward to estimate the positions of source nodes along with the transmit power. The simulations show that the computational complexity of the proposed linear estimators is greatly lower than that of the convex semidefinite programming (SDP) method. When the measurement noises are small, the linear ULLS, CLLS and GLLS estimators perform better than that of the SDP method. Due to the exploiting of constraint condition, the accuracy performance of the CLLS estimator can approach the Cramér-Rao lower bound (CRLB) of position estimation.
Keywords: WSNs; wireless sensor networks; localisation; RSS; received signal strength; AOA; angle of arrival; linear least square.
DOI: 10.1504/IJAHUC.2019.100736
International Journal of Ad Hoc and Ubiquitous Computing, 2019 Vol.31 No.3, pp.178 - 188
Received: 29 Dec 2016
Accepted: 04 Dec 2017
Published online: 17 Jul 2019 *