Maximum likelihood estimation in stochastic channel models

Abstract

We propose Monte Carlo maximum likelihood estimation as a novel approach in the context of calibration and selection of stochastic channel models. First, considering a Turin channel model with inhomogeneous arrival rate as a prototypical example, we explain how the general statistical methodology is adapted and refined for the specific requirements and challenges of stochastic multipath channel models. Then, we illustrate the advantages and pitfalls of the method on the basis of simulated data. Finally, we apply our calibration method to wideband signal data from indoor channels. Based on joint work with Ayush Bharti, Troels Pedersen, Rasmus Waagepetersen

Date
Feb 23, 2021 1:15 PM