A stochastic constrained optimization technique and its application to detector array processing.A stochastic projected gradient algorithm is proposed which can be used for finding a constrained optimum point for a concave or convex objective function subject to nonlinear constraints which form a connected region even when only a noisy estimate of the objective function is available. For a constraint described by a single linear equation, convergence to the constrained optimum value is proved, and the rate of convergence of the algorithm to the constrained optimum value is determined. The algorithm is applied to the nonlinear problem of obtaining automatically an array of detectors which forms a beam in a desired direction in space in the presence of interfering noise so as to maximize the SNR subject to a constraint on the super-gain ratio.
Document ID
19720040142
Acquisition Source
Legacy CDMS
Document Type
Conference Proceedings
Authors
Winkler, L. P. (Richmond College Staten Island, N.Y., United States)
Schwartz, M. (Brooklyn, Polytechnic Institute, Brooklyn, N.Y., United States)