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A neural network for linear matrix inequality problems
45
Citations
17
References
2000
Year
Nonlinear ControlEngineeringMachine LearningGradient ApproachRobust ControlNeural NetworkIntelligent ControlComputer EngineeringMathematical Control TheorySystems EngineeringLarge Scale OptimizationConstrained OptimizationGradient-type Hopfield NetworksLinear Matrix InequalitiesLinear ControlQuadratic Programming
Gradient-type Hopfield networks have been widely used in optimization problems solving. This paper presents a novel application by developing a matrix oriented gradient approach to solve a class of linear matrix inequalities (LMIs), which are commonly encountered in the robust control system analysis and design. The solution process is parallel and distributed in neural computation. The proposed networks are proven to be stable in the large. Representative LMIs such as generalized Lyapunov matrix inequalities, simultaneous Lyapunov matrix inequalities, and algebraic Riccati matrix inequalities are considered. Several examples are provided to demonstrate the proposed results. To verify the proposed control scheme in real-time applications, a high-speed digital signal processor is used to emulate the neural-net-based control scheme.
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