The Efficiency of Seven-Variable Box-Behnken Experimental Design with Varying Center Runs on Full and Reduced Model Types

IF 0.3 Q4 MATHEMATICS
M. Iwundu, Joan Cosmos
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引用次数: 0

Abstract

: Response Surface Methodology is widely used in the optimization of industrial processes and products that depend on several experimental variables. One of the most tested and efficient second-order Response Surface Methodology designs is the Box-Behnken Design. This research explores the efficiency of a seven-variable Box-Behnken design with varying center runs, on full and reduced quadratic models. Backward Elimination and Forward Selection techniques are employed as the variable selection techniques for obtaining the reduced models, based on the Akaike Information Criterion. Fit Statistics and Design Efficiency values are obtained for the reduced models and are compared with those of the full model. Generally, results show that the reduced quadratic models perform best under one center-point run, thereby making the reduced models the most preferred in terms of the model fit and D-efficiency. Comparative analysis, based on G-efficiency, reveals that the full quadratic model performs better than the reduced models under one center-point Box-Behnken design.
变中心七变量Box-Behnken实验设计在全模型和简化模型上的效率
响应面法被广泛应用于依赖于几个实验变量的工业过程和产品的优化。最有效的二阶响应面方法设计之一是Box-Behnken设计。本研究探讨了一个七变量Box-Behnken设计的效率与不同的中心运行,在充分和减少二次模型。在赤池信息准则的基础上,采用反向消去和正向选择技术作为变量选择技术获得约简模型。得到了简化模型的拟合统计值和设计效率值,并与完整模型的拟合统计值进行了比较。结果表明,简化后的二次模型在一个中心点运行下表现最好,因此在模型拟合和d -效率方面,简化后的模型是最优选的。基于g效率的对比分析表明,在单中心点Box-Behnken设计下,全二次模型的性能优于简化模型。
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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来源期刊
CiteScore
0.70
自引率
33.30%
发文量
0
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