Affiliation:
1. Department of Statistics, University Of Calcutta, India
2. Applied Statistics Division, Indian Statistical Institute, Kolkata, India.
Abstract
In the recent years, wireless communications are extremely useful in many disciplines including health monitoring,
environment monitoring, signal processing etc. State estimation and prediction are quite challenging tasks in wireless
communications. Traditionally, in the literature, dynamic state-space models have been used for the state estimation and predic- tion purpose. The
estimation method is based on Kalman-Filter which is computationally demanding. In this work, we consider computationally simpler Gibbs
sampler algorithm for the state estimation. We consider three different cases, (i) continuous state values, (ii) binary (0/1) state values, and (iii)
categorical state values with more than two categories. We consider a simple linear model for the prediction purpose, and the underlying
regression coefcients are estimated by Gibbs sampler. We compute the misclassication proportions for assessing the practical usefulness of our
estimation approach. Areal dataset where 200 wireless sensor nodes are used for measuring the temperature of a chamber is analysed in this work.