Knowledge Discovery for Pareto Based Multiobjective Optimization in Simulation

Patrick Lange, René Weller, G. Zachmann
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引用次数: 1

Abstract

We present a novel knowledge discovery approach for automatic feasible design space approximation and parameter optimization in arbitrary multiobjective blackbox simulations. Our approach does not need any supervision of simulation experts. Usually simulation experts conduct simulation experiments for a predetermined system specification by manually reducing the complexity and number of simulation runs by varying input parameters through educated assumptions and according to prior defined goals. This leads to a error-prone trial-and-error approach for determining suitable parameters for successful simulations.In contrast, our approach autonomously discovers unknown relationships in model behavior and approximates the feasible design space. Furthermore, we show how Pareto gradient information can be obtained from this design space approximation for state-of-the-art optimization algorithms. Our approach gains its efficiency from a novel spline-based sampling of the parameter space in combination within novel forest-based simulation dataflow analysis. We have applied our new method to several artificial and real-world scenarios and the results show that our approach is able to discover relationships between parameters and simulation goals. Additionally, the computed multiobjective solutions are close to the Pareto front.
基于Pareto的仿真多目标优化知识发现
提出了一种新的知识发现方法,用于任意多目标黑盒仿真中可行设计空间的自动逼近和参数优化。我们的方法不需要任何模拟专家的监督。通常,仿真专家根据预先定义的目标,通过有根据的假设,通过改变输入参数,手动降低仿真运行的复杂性和次数,从而对预定的系统规格进行仿真实验。这导致了一种容易出错的试错方法,以确定成功模拟的合适参数。相比之下,我们的方法自主发现模型行为中的未知关系,并近似可行设计空间。此外,我们展示了如何从最先进的优化算法的设计空间近似中获得帕累托梯度信息。我们的方法通过在新的基于森林的模拟数据流分析中结合新的基于样条的参数空间采样来获得效率。我们已经将我们的新方法应用于几个人工和现实场景,结果表明我们的方法能够发现参数和仿真目标之间的关系。此外,计算得到的多目标解更接近Pareto前沿。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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