Author_Institution :
Sch. of Comput. & Inf. Sci., Hubei Eng. Univ., Xiaogan, China
Abstract :
In this paper, a non-parametric approach of a chi-square test is proposed to solve the NLOS identification problem. Furthermore, if we know the distribution of the NLOS error, two methods are proposed to estimate the true distance, one is the combination of the non-parametric probability density estimation technique and the Kullback-Leibler (KL) distance, the other is the maximum likelihood (ML) estimation. Some conclusions are got, if the NLOS error is the Gaussian distribution, the above two methods are equivalent, if the NLOS error is uniform, the former method is feasible, the latter method is infeasible, if the NLOS error is exponential, the former method is infeasible, the latter method is feasible. Simulation results and theoretical derivation illustrate that the proposed method is able to estimate the true distance with high accuracy.
Keywords :
Gaussian distribution; maximum likelihood estimation; mobility management (mobile radio); radiocommunication; Gaussian distribution; Kullback-Leibler distance; NLOS error; NLOS identification problem; chi-square test; maximum likelihood estimation; nonparametric nonline-of-sight estimation; nonparametric nonline-of-sight identification; nonparametric probability density estimation technique; wireless location; Educational institutions; Maximum likelihood estimation; Measurement uncertainty; Mobile communication; Probability density function; Wireless communication; NLOS identification; distance estimation; non-parametric; wireless location;