Part of the Applied Optimization book series (APOP, volume 80)
In NonLinear Programming (NLP) problems, either the objective function, the constraints, or both the objective and the constraints are nonlinear, as shown below in Example 3.1.
KeywordsObjective Function Nonlinear Programming Inequality Constraint Nonlinear Program Sequential Quadratic Program
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