Author :
Stoica, Petre ; HÄndel, Peter ; Nehoral, A.
Abstract :
MUSIC (multiple signal classification) is one of the most frequently considered methods for source location using sensor arrays. Among the location methods based on one-dimensional search, MUSIC has excellent performance. In fact, no other one-dimensional method that may outperform MUSIC (in large samples) was known to exist. Our goal here is to introduce such a method, called improved sequential MUSIC (IES-MUSIC), which is shown to be strictly more accurate than MUSIC (in large samples). First, a class of sequential MUSIC estimates is introduced, which depend on a scalar-valued user parameter. MUSIC is shown to be a special case of estimate in that class, corresponding to a value of zero for the user parameter. Next, the optimal user parameter value, which minimizes the asymptotic variance of the estimation errors, is derived. IES-MUSIC is the method based on that optimal choice of the user parameter. Simulation results which lend support to the theoretical findings are included.<>
Keywords :
array signal processing; covariance analysis; sensor fusion; signal detection; asymptotic variance minimization; estimation errors; improved sequential MUSIC; multiple signal classification; one-dimensional search; optimal user parameter value; scalar-valued user parameter; sensor arrays; sequential MUSIC estimates; simulation; source location; statistical analysis; Automatic control; Control systems; Councils; Estimation error; Multiple signal classification; Narrowband; Parameter estimation; Position measurement; Sensor arrays; Sensor systems;