In this paper, we develop heuristics for finding good starting points when solving large-scale nonlinear constrained optimization problems (COPs). We focus on nonlinear programming (NLP) and mixed-integer NLP (MINLP) problems with nonlinear non-convex objective and constraint functions. By exploiting the highly structured constraints in these problems, we first solve one or more simplified versions of the original COP, before generalizing the solutions found by interpolation or extrapolation to a good starting point. In our experimental evaluations of 190 NLP (resp., 52 MINLP) benchmark problems, our approach can solve
Soomin Lee, Benjamin W. Wah