Publication | Closed Access
A General Projection Neural Network for Solving Monotone Variational Inequalities and Related Optimization Problems
288
Citations
30
References
2004
Year
Mathematical ProgrammingEngineeringMachine LearningVariational AnalysisContinuous OptimizationProjection Neural NetworkNonlinear ProgrammingRelated Optimization ProblemsNeural NetworkConvex OptimizationDual Neural NetworkMonotone Variational InequalitiesConstrained OptimizationInverse ProblemsNonlinear OptimizationApproximation TheoryVariational Inequalities
Recently, a projection neural network for solving monotone variational inequalities and constrained optimization problems was developed. In this paper, we propose a general projection neural network for solving a wider class of variational inequalities and related optimization problems. In addition to its simple structure and low complexity, the proposed neural network includes existing neural networks for optimization, such as the projection neural network, the primal-dual neural network, and the dual neural network, as special cases. Under various mild conditions, the proposed general projection neural network is shown to be globally convergent, globally asymptotically stable, and globally exponentially stable. Furthermore, several improved stability criteria on two special cases of the general projection neural network are obtained under weaker conditions. Simulation results demonstrate the effectiveness and characteristics of the proposed neural network.
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