On the SIRs (Signal-to-Interference-Ratio) in Discrete-Time Autonomous Linear Networks

Abstract

In this letter, we improve the results in [5] by relaxing the symmetry assumption and also taking the noise term into account. The author examines two discrete-time autonomous linear systems whose motivation comes from a neural network point of view in [5]. Here, we examine the following discrete-time autonomous linear system: x(k+1) = A x(k) + b where A is any real square matrix with linearly independent eigenvectors whose largest eigenvalue is real and its norm is larger than 1, and vector b is constant. Using the same "SIR" ("Signal"-to-"Interference"-Ratio) concept as in [4] and [5], we show that the ultimate "SIR" is equal to aiiλmax - aii, i=1, 2, >..., N, where N is the number of states, aii is the diagonal elements of matrix A, and λmax is the (single or multiple) eigenvalue with maximum norm.

0

Discussion (0)

Sign in to join the discussion.

Loading comments…