Use of Clustering and Interpolation Techniques for the Time-Efficient Simulation of Complex Models within Optimization Tasks

M. Vannucci, G. F. Porzio, V. Colla, B. Fornai
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引用次数: 6

Abstract

Several widely used model optimization techniques such as, for instance, genetic algorithms, exploit on intelligent test of different input variables configurations. Such variables are fed to an arbitrary model and their effect is evaluated in terms of the output variables, in order to identify their optimal values according to some predetermined criteria. Unfortunately some models concern real world phenomena which involve a high number of input and output variables, whose interactions are complex. Consequently the simulations can be so time consuming that their use within an optimization procedure is unaffordable. In order to overcome this criticality, reducing the simulation time required for running the model within the optimization task, a novel method based on the combination of clustering and interpolation techniques is proposed. This technique is based on the use of a set of pre-run simulations of the original model, which are firstly used to cluster the input space and to assign to each cluster a suitable output value within the output space. Subsequently, in the simulation phase, an ad-hoc interpolation is performed in order to provide the final simulation results. The proposed method has been tested on a complex model of a blast furnace within an optimization problem and has obtained good results in terms of accuracy and time-efficiency of the simulation.
利用聚类和插值技术对优化任务中的复杂模型进行时间效率模拟
遗传算法等几种广泛应用的模型优化技术,都是基于对不同输入变量配置的智能测试。将这些变量输入到任意模型中,并根据输出变量评估它们的效果,以便根据某些预定标准确定它们的最优值。不幸的是,一些模型关注的是涉及大量输入和输出变量的现实世界现象,它们的相互作用是复杂的。因此,模拟可能非常耗时,以至于在优化过程中使用它们是无法承受的。为了克服这一临界性,减少优化任务中运行模型所需的模拟时间,提出了一种基于聚类和插值技术相结合的新方法。该技术基于对原始模型的一组预运行模拟的使用,首先使用这些模拟对输入空间进行聚类,并在输出空间内为每个聚类分配合适的输出值。随后,在仿真阶段,进行临时插值,以提供最终的仿真结果。该方法已在一个复杂高炉模型的优化问题中进行了验证,在仿真精度和时效性方面取得了良好的效果。
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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