research article
On the inclusion of channel's time dependence in a hidden Markov model for blind channel estimation
Abstract
In this paper, the theory of hidden Markov models (HMM) is applied to the problem of blind (without training sequences) channel estimation and data detection. Within a HMM framework, the Baum–Welch(BW) identification algorithm is frequently used to find out maximum-likelihood (ML) estimates of the corresponding model. However, such a procedure assumes the model (i.e., the channel response) to be static throughout the observation sequence. By means of introducing a parametric model for time-varying channel responses, a version of the algorithm, which is more appropriate for mobile channels [time-dependent Baum-Welch (TDBW)] is derived. Aiming to compare algorithm behavior, a set of computer simulations for a GSM scenario is provided. Results indicate that, in comparison to other Baum–Welch (BW) versions of the algorithm, the TDBW approach attains a remarkable enhancement in performance. For that purpose, only a moderate increase in computational complexity is needed.Peer Reviewe- Article
- Àrees temàtiques de la UPC::Enginyeria de la telecomunicació::Processament del senyal
- Mobile communication systems
- Markov processes
- Blind channel estimation
- Blind data detection
- Hidden Markov models
- Mobile channels
- Cellular radio
- Computational complexity
- Fading channels
- Maximum likelihood estimation
- Parameter estimation
- Signal detection
- Channel time dependence
- Baum-Welch algorithm
- Observation sequence
- Parametric model
- Time-varying channel response
- Computer simulations
- Equalisers
- GSM
- GMSK
- HMM
- MLE
- TDBW
- Comunicacions mòbils
- Processos de Markov