Optimality and Sensitivity of Least-Distance and Avoidance Solutions in Multicriteria Optimization

A. Skulimowski
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引用次数: 3

Abstract

This paper investigates sensitivity and optimality of distance scalarizing solutions in multicriteria problems with reference sets. When approaching reference values, this preference requirement results in solving an equivalent second-level scalar optimization problem with a certain distance measure to be minimized. In a situation where the reference set contains values to be avoided within the solution process, distance maximization with respect to this set is a natural technique. The reference sets may arise as relaxed criteria space constraints and are non-precisely defined. Therefore, we provide sufficient conditions ensuring the stability of solutions with respect to reference set perturbations. For various reasons, including trajectory safety, the above problem may be particularly relevant in the case of avoidance values, which are usually defined with a native uncertainty. We propose a sensitivity analysis method based on investigating the properties of attainable criteria values minimizing the distance to perturbed reference sets. Two problems of this kind are formulated and solved. An application to selecting compromise trajectories in multicriteria optimal control with two reference multifunctions is outlined in the final part of this paper.
多准则优化中最小距离和回避解的最优性和灵敏度
研究了带参考集的多准则问题中距离标化解的灵敏度和最优性。当接近参考值时,这种偏好要求会导致求解一个等效的二级标量优化问题,该问题需要最小化某个距离度量。如果参考集包含在求解过程中要避免的值,那么相对于该集的距离最大化是一种自然的技术。参考集可以作为宽松的标准空间约束出现,并且是非精确定义的。因此,我们提供了关于参考集摄动的解的稳定性的充分条件。由于各种原因,包括轨迹安全,上述问题可能特别适用于避免值的情况,避免值通常具有固有的不确定性。我们提出了一种灵敏度分析方法,该方法基于研究可达到的准则值的性质,最小化到摄动参考集的距离。提出并解决了这类问题中的两个。最后,给出了在具有两个参考函数的多准则最优控制中折衷轨迹选择的应用。
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