In this paper, we combine the concepts of evolutionary spectrum and array p
rocessing, We present a cross-power evolutionary periodogram for both direc
tion-of-arrival (DOA) estimation and blind separation of nonstationary sign
als. We model nonstationary signals received by each array sensor as a sum
of complex sinusoids with time-varying amplitudes, These amplitudes carry i
nformation about the DOA that may also be time varying. We first estimate t
he time-varying amplitudes using linear estimators obtained by minimizing t
he mean-squared error. Then, using the estimated time-varying amplitudes,we
estimate the evolutionary cross-power distributions of the sensor data, Ne
xt, using cross-power estimates at time-frequency points of interest, ne es
timate the DOA's using one of the existing estimation methods, If the direc
tions are time varying, we choose the time-frequency paints around the time
of interest to estimate instantaneous source locations, If the sources are
stationary, all time-frequency points of interest can be combined for the
estimation of fixed directions. Whitening and subspace methods are used to
find the mixing matrix and separate nonstationary signals received by the a
rray,We present examples illustrating the performances of the proposed algo
rithms.