基于PermGA算法的顺序最优空间填充DoE框架

M. R. Kianifar, F. Campean, A. Wood
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引用次数: 7

摘要

本文提出了一种定制排列遗传算法(PermGA),用于基于空间填充最优拉丁超立方体(OLH)设计的顺序实验设计(DoE)框架。这项工作的动机是多变量工程问题,如引擎映射实验,这需要有效的DoE策略来最小化昂贵的测试。DoE策略基于基于空间填充OLH do的灵活的模型构建-模型验证(MB-MV)序列,通过迭代保持do的空间填充和投影属性。开发了一种PermGA算法来生成MB OLH,随后将其用于生成填充MV测试点作为OLH do,为合并的MB + MV测试计划保留了良好的空间填充和投影特性。该算法进一步改进,以解决非正交设计空间的问题。以某直喷汽油发动机稳态映射为例,验证了基于所开发的PermGA算法的MB-MV序列的实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PermGA algorithm for a sequential optimal space filling DoE framework
This paper presents the development and implementation of a customised Permutation Genetic Algorithm (PermGA) for a sequential Design of Experiment (DoE) framework based on space filling Optimal Latin Hypercube (OLH) designs. The work is motivated by multivariate engineering problems such as engine mapping experiments, which require efficient DoE strategies to minimise expensive testing. The DoE strategy is based on a flexible Model Building - Model Validation (MB-MV) sequence based on space filling OLH DoEs, which preserves the space filling and projection properties of the DoEs through the iterations. A PermGA algorithm was developed to generate MB OLHs, subsequently adapted for generation of infill MV test points as OLH DoEs, preserving good space filling and projection properties for the merged MB + MV test plan. The algorithm was further modified to address issues with non-orthogonal design spaces. A case study addressing the steady state engine mapping of a Gasoline Direct Injection was used to illustrate and validate the practical application of MB-MV sequence based on the developed PermGA algorithm.
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