A new projective exact penalty function for a general constrained optimization

V. Norkin
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引用次数: 2

Abstract

A new projective exact penalty function method is proposed for the equivalent reduction of constrained optimization problems to unconstrained ones. In the method, the original objective function is extended to infeasible points by summing its value at the projection of an infeasible point on the feasible set with the distance to the set. The equivalence means that local and global minimums of the problems coincide. Nonconvex sets with multivalued projections are admitted, and the objective function may be lower semicontinuous. The particular case of convex problems is included. So the method does not assume the existence of the objective function outside the allowable area and does not require the selection of the penalty coefficient.
一般约束优化的一种新的射影精确惩罚函数
提出了一种新的射影精确罚函数法,将约束优化问题等效化为无约束优化问题。该方法通过将不可行点在可行集上的投影处的值与到可行集的距离相加,将原目标函数扩展到不可行点。等价性是指问题的局部极小值和全局极小值重合。允许具有多值投影的非凸集,目标函数可以是下半连续的。包括凸问题的特殊情况。因此,该方法不假设目标函数在允许区域外存在,也不需要选择罚系数。
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