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Abstract(s)
Optimization problems arise in science, engineering, economy, etc. and we
need to find the best solutions for each reality. The methods used to solve
these problems depend on several factors, including the amount and type of
accessible information, the available algorithms for solving them, and, obviously,
the intrinsic characteristics of the problem.
There are many kinds of optimization problems and, consequently, many
kinds of methods to solve them.
When the involved functions are nonlinear and their derivatives are not
known or are very difficult to calculate, these methods are more rare. These
kinds of functions are frequently called black box functions.
To solve such problems without constraints (unconstrained optimization),
we can use direct search methods. These methods do not require any derivatives
or approximations of them. But when the problem has constraints (nonlinear
programming problems) and, additionally, the constraint functions are
black box functions, it is much more difficult to find the most appropriate
method. Penalty methods can then be used. They transform the original
problem into a sequence of other problems, derived from the initial, all without
constraints. Then this sequence of problems (without constraints) can be
solved using the methods available for unconstrained optimization.
In this chapter, we present a classification of some of the existing penalty
methods and describe some of their assumptions and limitations. These methods
allow the solving of optimization problems with continuous, discrete, and
mixing constraints, without requiring continuity, differentiability, or convexity.
Thus, penalty methods can be used as the first step in the resolution
of constrained problems, by means of methods that typically are used by
unconstrained problems.
We also discuss a new class of penalty methods for nonlinear optimization,
which adjust the penalty parameter dynamically.
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Springer