Design of Efficient Point-Mass Filter with Terrain Aided Navigation Illustration
Date issued
2023
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE
Abstract
This paper deals with state estimation of stochastic models with linear state dynamics, continuous or discrete in time. The emphasis is laid on a numerical solution to the state prediction by the time-update step of the grid-point-based point-mass filter (PMF), which is the most computationally demanding part of the PMF algorithm. A novel efficient PMF (ePMF) estimator, unifying continuous and discrete, approaches is proposed, designed, and discussed. By numerical illustrations, it is shown, that the proposed ePMF can lead to a time complexity reduction that exceeds 99.9% without compromising accuracy. The MATLAB® code of the ePMF is released with this paper.
Description
Subject(s)
state estimation, transition probability matrix, Chapman-Kolmogorov equation, Fokker-Planck equation, point-mass filter, convolution, terrain-aided navigation