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Real-time analog global optimization with...
Journal article

Real-time analog global optimization with constraints: application to the direction of arrival estimation problem

Abstract

An analog technique for real-time, multivariate, global optimization with constraints is presented. The basic structure is a simple gradient descent loop, where the gradients are computed using an analog neural network. Constraints are implemented using a variation of an idea, where neural networks are also used to implement the required constraint functions. It is shown that the system converges to a stable equilibrium point, which satisfies the Kuhn-Tucker conditions for a constrained minimum. Global optimization is achieved by introducing a diffusion process into the governing differential equation. This procedure is a continuous-time analog of the simulated annealing algorithm. Even though the proposed method is applicable to a wide range of engineering problems, the real-time, global and other capabilities of this method are demonstrated specifically with an optimization problem from array signal processing-the maximum likelihood direction of arrival estimator. The satisfactory performance of all aspects of this proposed optimization technique is demonstrated by simulations.<>

Authors

Jelonek TM; Reilly JP; Wu Q

Journal

IEEE Transactions on Circuits and Systems I Regular Papers, Vol. 42, No. 4, pp. 233–244

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

January 1, 1995

DOI

10.1109/82.378037

ISSN

1549-8328

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