通过实施响应预测来改善陡坡

Q4 Engineering
V. B. Bokov
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引用次数: 0

摘要

对于最陡上升的探索性运行,建议使用响应预测。这些运行的因素是根据初始实验的数据和通过寻找条件极值来估计的。参数估计用于获得估计的响应函数,在该函数上预测勘探运行的响应。通过使用线性模型的参数估计、勘探运行的因子估计和响应预测的线性模型来找到这些运行的响应预测区间。这允许识别那些超出响应预测区间界限的响应观测值,并找到手头的探索性运行响应仍处于其预测区间的因子值。两个线性模型的比较表明,具有编码因子和响应变量的模型可以获得较小的响应预测间隔。这允许更准确地确定最后一次最陡的上升和下一次初始实验的设计中心的因子水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Steepest ascent improvement by response predictions implementation
For the exploratory runs of steepest ascent the use of response predictions is proposed. The factors for these runs are estimated on the data of initial experiment and by finding conditional extremum. Parameter estimates are employed to obtain estimated response functions on which the response of exploratory runs is predicted. Response prediction intervals for these runs are found by using the parameter estimates of linear models, factor estimates for exploratory runs, and linear models for response predictions. This allows to identify those response observations that go beyond the bounds of response prediction intervals and to find factor values under which exploratory run response at hand is still in its prediction interval. The comparison of two linear models reveals that the model with coded factors and response variables allows to obtain the smaller intervals of response predictions. This permits to identify more accurately the last run of steepest ascent and factor levels for design centre of the next initial experiment.
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来源期刊
International Journal of Quality Engineering and Technology
International Journal of Quality Engineering and Technology Engineering-Safety, Risk, Reliability and Quality
CiteScore
0.40
自引率
0.00%
发文量
1
期刊介绍: IJQET fosters the exchange and dissemination of research publications aimed at the latest developments in all areas of quality engineering. The thrust of this international journal is to publish original full-length articles on experimental and theoretical basic research with scholarly rigour. IJQET particularly welcomes those emerging methodologies and techniques in concise and quantitative expressions of the theoretical and practical engineering and science disciplines.
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