GDS: Gradient Based Density Spline Surfaces For Multiobjective Optimization In Arbitrary Simulations

Patrick Lange, René Weller, G. Zachmann
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Abstract

We present a novel approach for approximating objective functions in arbitrary deterministic and stochastic multi-objective blackbox simulations. Usually, simulated-based optimization approaches require pre-defined objective functions for optimization techniques in order to find a local or global minimum of the specified simulation objectives and multi-objective constraints. Due to the increasing complexity of state-of-the-art simulations, such objective functions are not always available, leading to so-called blackbox simulations. In contrast to existing approaches, we approximate the objective functions and design space for deterministic and stochastic blackbox simulations, even for convex and concave Pareto fronts, thus enabling optimization for arbitrary simulations. Additionally, Pareto gradient information can be obtained from our design space approximation. Our approach gains its efficiency from a novel gradient-based sampling of the parameter space in combination with a density-based clustering of sampled objective function values, resulting in a B-spline surface approximation of the feasible design space. We have applied our new method to several benchmarks and the results show that our approach is able to efficiently approximate arbitrary objective functions. Additionally, the computed multi-objective solutions in our evaluation studies are close to the Pareto front.
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基于梯度的密度样条曲面在任意模拟中的多目标优化
提出了一种在任意确定性和随机多目标黑盒模拟中逼近目标函数的新方法。通常,基于仿真的优化方法需要预先定义优化技术的目标函数,以便找到指定仿真目标和多目标约束的局部或全局最小值。由于最先进的模拟越来越复杂,这样的目标函数并不总是可用的,导致所谓的黑盒模拟。与现有方法相比,我们近似确定和随机黑盒模拟的目标函数和设计空间,甚至对于凸和凹帕累托前沿,从而实现任意模拟的优化。此外,Pareto梯度信息可以从我们的设计空间近似中得到。我们的方法通过对参数空间进行新颖的基于梯度的采样,结合采样目标函数值的基于密度的聚类,从而获得可行设计空间的b样条曲面近似,从而提高了其效率。我们将新方法应用于几个基准测试,结果表明我们的方法能够有效地逼近任意目标函数。此外,在我们的评估研究中,计算的多目标解接近帕累托前沿。
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