In a
narrowband flat-fading channel with N_t transmit antennas and N_r receive antennas (
MIMO), the propagation channel is modeled as :\mathbf{R} = E\left\{vec\left(\mathbf{H}\right)\left(vec\left(\mathbf{H}\right)\right)^H\right\} where vec(*) denotes
vectorization, E\{*\} denotes
expected value and \mathbf{A}^H means
Hermitian. When modeling spatial correlation it is useful to employ the Kronecker model, where the correlation between transmit antennas and receive antennas are assumed independent and separable. This model is reasonable when the main scattering appears close to the antenna arrays and has been validated by both outdoor and indoor measurements. With
Rayleigh fading, the Kronecker model means that the channel matrix can be factorized as :\mathbf{H} = \mathbf{R}_R^{1/2} \mathbf{H}_w (\mathbf{R}_T^{1/2})^T where the elements of \scriptstyle \mathbf{H}_w are independent and identically distributed as
circular symmetric complex Gaussian with zero-mean and unit variance. The important part of the model is that \scriptstyle \mathbf{H}_w is pre-multiplied by the receive-side spatial correlation matrix \scriptstyle \mathbf{R}_R and post-multiplied by transmit-side spatial correlation matrix \scriptstyle \mathbf{R}_T. Equivalently, the channel matrix can be expressed as :\mathbf{H} \sim \mathcal{CN}(\mathbf{0},\mathbf{R}_T \otimes \mathbf{R}_R) where \otimes denotes the
Kronecker product.
Spatial correlation matrices Under the Kronecker model, the spatial correlation depends directly on the
eigenvalue distributions of the correlation matrices \scriptstyle \mathbf{R}_T and \scriptstyle \mathbf{R}_R. Each eigenvector represents a spatial direction of the channel and its corresponding eigenvalue describes the average channel/signal gain in this direction. For the transmit-side matrix \scriptstyle \mathbf{R}_T it describes the average gain in a spatial transmit direction, while it describes a spatial receive direction for \scriptstyle \mathbf{R}_R.
High spatial correlation is represented by large eigenvalue spread in \scriptstyle \mathbf{R}_T or \scriptstyle \mathbf{R}_R, meaning that some spatial directions are statistically stronger than others.
Low spatial correlation is represented by small eigenvalue spread in \scriptstyle \mathbf{R}_T or \scriptstyle \mathbf{R}_R, meaning that almost the same signal gain can be expected from all spatial directions. == Impact on performance ==