Title :
Subspace Optimization in Centralized Noncoherent MIMO Radar
Author :
Pratt, Thomas G. ; Huang, Yih-Fang ; Gong, Zhenhua ; Lemmon, Mike
Author_Institution :
Univ. of Notre Dame, Notre Dame, IN, USA
fDate :
4/1/2011 12:00:00 AM
Abstract :
We consider the problem of subspace optimization for centralized noncoherent multiple input-multiple output (MIMO) radar based on various measures such as capacity, diversity, and probability of detection. In subspace centralized noncoherent MIMO radar (SC-MIMO), a subset of stations is selected based on channel knowledge or channel statistics to reduce system complexity while simultaneously attempting to optimize the performance of the reduced-dimension centralized MIMO radar system. The radar transmitters are assumed to be sufficiently separated (e.g., at different locations) to yield spatially white channel transfer gains and are assumed to operate on a noninterference basis through time-division or frequency-division multiplexing. Detection optimization for the SC-MIMO system in a Neyman Pearson (NP) sense is found to be equivalent to selecting the subspace that maximizes the Frobenius norm of the corresponding channel matrix. Information-theoretic measures for capacity and diversity are also applied to the problem of subspace selection. Channels with temporal coherence times that are long relative to the radar system´s latencies and channels with coherence times that are short relative to the radar system´s latencies are considered. In the former case, metrics are based upon instantaneous channel estimates, whereas in the latter case, average channel estimates are used. Numerical analyses are conducted to illustrate the use of the metrics for optimizing system performance.
Keywords :
MIMO radar; channel estimation; frequency division multiplexing; matrix algebra; numerical analysis; radar detection; radar signal processing; radar transmitters; time division multiplexing; Frobenius norm; NP sense; Neyman Pearson sense; channel matrix; channel statistics; channel transfer gains; frequency-division multiplexing; instantaneous channel estimation; numerical analysis; radar transmitters; reduced-dimension centralized MIMO radar system; subspace centralized noncoherent MIMO radar; subspace centralized noncoherent multiple input multiple output radar; subspace optimization problem; system complexity; time-division multiplexing; Channel estimation; MIMO radar; Optimization; Radar cross section; Radar detection; Radar tracking;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
DOI :
10.1109/TAES.2011.5751254