A path following method for box-constrained multiobjective optimization with applications to goal programming problems

被引:0
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作者
Maria Cristina Recchioni
机构
[1] Univeristà di Ancona,Istituto di Teoria delle Decisioni e Finanza Innovativa
关键词
Multiobjective optimization problems; Pareto-optimal fronts; path following methods; Dynamical systems; Goal programming;
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摘要
We propose a path following method to find the Pareto optimal solutions of a box-constrained multiobjective optimization problem. Under the assumption that the objective functions are Lipschitz continuously differentiable we prove some necessary conditions for Pareto optimal points and we give a necessary condition for the existence of a feasible point that minimizes all given objective functions at once. We develop a method that looks for the Pareto optimal points as limit points of the trajectories solutions of suitable initial value problems for a system of ordinary differential equations. These trajectories belong to the feasible region and their computation is well suited for a parallel implementation. Moreover the method does not use any scalarization of the multiobjective optimization problem and does not require any ordering information for the components of the vector objective function. We show a numerical experience on some test problems and we apply the method to solve a goal programming problem.
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页码:69 / 85
页数:16
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