Publication | Closed Access
A Penalty Strategy Combined Varying-Parameter Recurrent Neural Network for Solving Time-Varying Multi-Type Constrained Quadratic Programming Problems
56
Citations
41
References
2020
Year
Mathematical ProgrammingPenalty StrategyPenalty TermParametric ProgrammingEngineeringMachine LearningNonlinear ProgrammingOptimization ProblemComputer EngineeringConstrained OptimizationQuadratic ProgrammingComputer ScienceUnconstrained OptimizationTvqp ProblemsDynamic Optimization
To obtain the optimal solution to the time-varying quadratic programming (TVQP) problem with equality and multitype inequality constraints, a penalty strategy combined varying-parameter recurrent neural network (PS-VP-RNN) for solving TVQP problems is proposed and analyzed. By using a novel penalty function designed in this article, the inequality constraint of the TVQP can be transformed into a penalty term that is added into the objective function of TVQP problems. Then, based on the design method of VP-RNN, a PS-VP-RNN is designed and analyzed for solving the TVQP with penalty term. One of the greatest advantages of PS-VP-RNN is that it cannot only solve the TVQP with equality constraints but can also solve the TVQP with inequality and bounded constraints. The global convergence theorem of PS-VP-RNN is presented and proved. Finally, three numerical simulation experiments with different forms of inequality and bounded constraints verify the effectiveness and accuracy of PS-VP-RNN in solving the TVQP problems.
| Year | Citations | |
|---|---|---|
Page 1
Page 1