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REFERENCE POINT-BASED EVOLUTIONARY MULTI-OBJECTIVE OPTIMIZATION FOR INDUSTRIAL SYSTEMS SIMULATION

机译:工业系统仿真中基于参考点的进化多目标优化

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摘要

In Multi-objective Optimization the goal is to present a set of Pareto-optimal solutions to the decision maker (DM). One out of these solutions is then chosen according to the DM preferences. Given that the DM has some general idea of what type of solution is preferred, a more efficient optimization could be run. This can be accomplished by letting the optimization algorithm make use of this preference information and guide the search towards better solutions that correspond to the preferences. One example for such kind of algorithms is the Reference point-based NSGA-II algorithm (R-NSGA-II), by which user-specified reference points can be used to guide the search in the objective space and the diversity of the focused Pareto-set can be controlled. In this paper, the applicability of the R-NSGA-II algorithm in solving industrial-scale simulation-based optimization problems is illustrated through a case study for the improvement of a production line.
机译:在多目标优化中,目标是向决策者(DM)提供一组帕累托最优解。然后根据DM首选项从这些解决方案中选择一种。鉴于DM对于首选哪种类型的解决方案有一些一般性的想法,可以运行更有效的优化。这可以通过让优化算法利用此偏好信息并引导搜索朝着与偏好相对应的更好解决方案来实现。此类算法的一个示例是基于参考点的NSGA-II算法(R-NSGA-II),通过该算法,用户指定的参考点可用于指导目标空间的搜索以及所关注的帕累托算法的多样性。设置可以控制。本文通过案例研究说明了R-NSGA-II算法在解决基于工业规模的仿真优化问题中的适用性,以改进生产线。

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