Title :
Improving clustering performance using multipath component distance
Author :
Czink, N. ; Cera, P. ; Salo, J. ; Bonek, E. ; Nuutinen, J.-P. ; Ylitalo, J.
Author_Institution :
Inst. fur Nachrichtentechnik und Hochfrequenztechnik, Tech. Univ. Wien, Austria
Abstract :
The problem of identifying clusters from MIMO measurement data is addressed. Conventionally, visual inspection has been used for cluster identification, but this approach is impractical for a large amount of measurement data. For automatic clustering, the multipath component distance (MCD) is used to calculate the distance between individual multipath components estimated by a channel parameter estimator, such as SAGE. This distance is implemented in the well-known KMeans clustering algorithm. To demonstrate the effectiveness of the choice made, the performance of the MCD and the Euclidean distance were compared by clustering synthetic data generated by the 3GPP spatial channel model (SCM). Using the MCD significantly improved clustering performance
Keywords :
MIMO systems <improv. clustering perform., multipath component dist.>; channel estimation <improv. clustering perform., multipath component dist.>; multipath channels <improv. clustering perform., multipath component dist.>; pattern clustering <improv. clustering perform., multipath component dist.>; 3GPP spatial channel model; Euclidean distance; KMeans clustering algorithm; MIMO measurement data; SAGE; automatic clustering; channel parameter estimator; clusters identification; multipath component distance; synthetic data clustering; visual inspection;
Journal_Title :
Electronics Letters
DOI :
10.1049/el:20063917