Publication | Closed Access
On the Global Convergence of a Filter--SQP Algorithm
322
Citations
11
References
2002
Year
Numerical AnalysisMathematical ProgrammingEngineeringMachine LearningNonlinear OptimizationUnconstrained OptimizationFiltering TechniqueNonlinear ProgrammingSystems EngineeringGlobal ConvergenceApproximation TheoryConvergence AnalysisSqp AlgorithmContinuous OptimizationComputer ScienceFilter MethodsConvex OptimizationPrototypical AlgorithmApproximation Method
A mechanism for proving global convergence in SQP--filter methods for nonlinear programming (NLP) is described. Such methods are characterized by their use of thedominance concept of multiobjective optimization, instead of a penalty parameter whose adjustment can be problematic. The main point of interest is to demonstrate how convergence for NLP can be induced without forcing sufficient descent in a penalty-type merit function. The proof relates to a prototypical algorithm, within which is allowed a range of specific algorithm choices associated with the Hessian matrix representation, updating the trust region radius, and feasibility restoration.
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