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An SQP method for mathematical programs with vanishing constraints with strong convergence properties.

Matúš BenkoHelmut Gfrerer
Published in: Computational optimization and applications (2017)
We propose an SQP algorithm for mathematical programs with vanishing constraints which solves at each iteration a quadratic program with linear vanishing constraints. The algorithm is based on the newly developed concept of [Formula: see text]-stationarity (Benko and Gfrerer in Optimization 66(1):61-92, 2017). We demonstrate how [Formula: see text]-stationary solutions of the quadratic program can be obtained. We show that all limit points of the sequence of iterates generated by the basic SQP method are at least M-stationary and by some extension of the method we also guarantee the stronger property of [Formula: see text]-stationarity of the limit points.
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