1. Performance improvement of direction finding algorithms in non-homogeneous environment through data fusion.
- Author
-
Cherchar, Ammar, Thameri, Messaoud, and Belouchrani, Adel
- Subjects
- *
DATA fusion (Statistics) , *DIRECTION of arrival estimation , *MULTIPLE Signal Classification , *PERFORMANCE evaluation , *COMPUTATIONAL complexity - Abstract
This paper proposes a new effective approach to improve the performance of DOA (Direction Of Arrival) algorithms when bursts affect the array data. The proposed approach is based on the combining of data fusion techniques and the results of theoretical performance analysis of conventional DOA algorithms. For this purpose, the received array data is first split in M time-segments. Then, the DOAs are estimated from each data segment using a conventional DOA algorithm. The obtained estimates are fused using the federated fusion algorithm according to their statistical accuracy obtained from the well-documented performance analysis of the considered algorithm. As proof of concept of the proposed approach, numerical experiments have been conducted by considering the MUSIC algorithm. The obtained results show that the new algorithm outperforms the conventional one in terms of accuracy in a non-homogeneous environment. Therefore, it exhibits enhanced robustness capability. Moreover, it reduces the memory cost and computational complexity which makes it suitable for real time applications. To our knowledge, it is the first time that theoretical performance analysis results are exploited for the derivation of new subspace-DOA methods. [ABSTRACT FROM AUTHOR]
- Published
- 2015
- Full Text
- View/download PDF