Integrating column generation in a method to compute a discrete representation of the non-dominated set of multi-objective linear programmes

被引:0
|
作者
Kuan-Min Lin
Matthias Ehrgott
Andrea Raith
机构
[1] Lancaster University,Department of Management Science
[2] The University of Auckland,Department of Engineering Science
来源
4OR | 2017年 / 15卷
关键词
Multi-objective linear programming; Column generation; Revised normal boundary intersection method; Radiotherapy treatment design; 90C29; 90C05; 90C90;
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学科分类号
摘要
In this paper we propose the integration of column generation in the revised normal boundary intersection (RNBI) approach to compute a representative set of non-dominated points for multi-objective linear programmes (MOLPs). The RNBI approach solves single objective linear programmes, the RNBI subproblems, to project a set of evenly distributed reference points to the non-dominated set of an MOLP. We solve each RNBI subproblem using column generation, which moves the current point in objective space of the MOLP towards the non-dominated set. Since RNBI subproblems may be infeasible, we attempt to detect this infeasibility early. First, a reference point bounding method is proposed to eliminate reference points that lead to infeasible RNBI subproblems. Furthermore, different initialisation approaches for column generation are implemented, including Farkas pricing. We investigate the quality of the representation obtained. To demonstrate the efficacy of the proposed approach, we apply it to an MOLP arising in radiotherapy treatment design. In contrast to conventional optimisation approaches, treatment design using column generation provides deliverable treatment plans, avoiding a segmentation step which deteriorates treatment quality. As a result total monitor units is considerably reduced. We also note that reference point bounding dramatically reduces the number of RNBI subproblems that need to be solved.
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页码:331 / 357
页数:26
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