Title :
The analogy between the Butler matrix and the neural-network direction-finding array
Author :
Mailloux, R.J. ; Southall, Hugh L.
Author_Institution :
Rome Lab., Hanscom AFB, MA, USA
fDate :
12/1/1997 12:00:00 AM
Abstract :
The Butler matrix and the neural network have been compared to provide insights about the neural-network behavior for a direction-finding array. The goal of the paper has been tutorial, since the two systems are only really comparable in the very limited case considered: an ideal array with equal element spacings, no failures, and using the orthogonal beam locations as training points. Within the constraints of this specialized case, the comparison illustrates the role of pre- and post-processing, the function of the Gaussian radial basis function, and the considerations in determining the weights applied to the Gaussian or modified sine function node outputs. In addition, the comparison points out the basic similarity of the two procedures, and reveals some insights about the operation of a neural network from the perspective of antenna engineering
Keywords :
antenna arrays; array signal processing; direction-of-arrival estimation; electrical engineering computing; feedforward neural nets; matrix algebra; multibeam antennas; multilayer perceptrons; Butler matrix; Gaussian radial basis function; antenna engineering; equal element spacing array; ideal array; modified sine function node outputs; neural-network direction-finding array; orthogonal beam locations; post-processing; pre-processing; Antenna arrays; Butler matrix; Direction of arrival estimation; Directive antennas; Electromagnetics; Electronic mail; Navigation; Neural networks; Phase detection; Phased arrays;
Journal_Title :
Antennas and Propagation Magazine, IEEE