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Meta-modeling and Optimization for Varying Dimensional Search Space

机译:不同维度搜索空间的元建模和优化

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High-fidelity computer simulations are used widely in several scientific and engineering domains to study, analyze and optimize process responses and reduce the time, cost and risk associated with conducting a physical experiment. However, many such simulations are computationally expensive and impractical for optimization. Meta-models have been successfully used to give quick approximation of the process responses in simulations and facilitate the analysis and optimization of designs. Despite the abundance of literature in meta-modeling for continuous variables, there have been very few studies in the domain where the design spaces are discrete or mixed or with dependencies between discrete and real variables. These problems are widespread in engineering, science, economics and several other fields. Through this work, we wish to address the lack of a technique to handle such problems from front to end i.e. selecting design samples, meta-modeling and subsequent optimization. This paper presents novel methods for choosing design samples, meta-modeling of design spaces having binary and real variables using padding in Kriging technique and single-objective constrained optimization of the meta-model using a new genetic algorithm VDGA. These scalable generic methodologies have the potential for solving optimization problems that are very expensive or impractical due to the extremely high computational cost and time associated with the simulations. We also present the results of these techniques on several test problems.
机译:高保真计算机模拟广泛用于若干科学和工程域,以研究,分析和优化过程响应,并减少与进行物理实验相关的时间,成本和风险。然而,许多这样的模拟是计算地昂贵和不切实际的优化。元模型已成功地用于快速逼近模拟中的过程响应,并促进设计的分析和优化。尽管对连续变量的元建模有丰富的文献,但在域中的研究已经非常少,设计空间是离散或混合的或混合或在离散和实际变量之间的依赖性。这些问题是工程,科学,经济学和其他几个领域的普遍存在。通过这项工作,我们希望解决从前端处理此类问题的技术,即选择设计样本,元建模和随后的优化。本文介绍了选择样本的新方法,使用填充在Kriging技术中使用填充和实际变量的设计空间的元建模,并使用新的遗传算法VDGA对元模型进行单一目标约束优化。这些可扩展的通用方法具有解决优化问题的可能性,这是由于与模拟相关的极高计算成本和时间而非常昂贵或不切实际。我们还对几个测试问题提出了这些技术的结果。

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