全因子DoE与SSTE®的比较

Endre Laguel, T. Szakács
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引用次数: 0

摘要

理解工业操作的行为需要复杂的资源需求,例如预算、执行实验的操作停机时间等等。工程师和科学家主要使用实验设计来了解观察因素的影响。在特定情况下,由于测量记录和因素的增加,这些实验需要增加计算能力。结果经常受到质疑,因为解释这些结果需要任何领域的专家。本研究旨在确定在相同的模型复杂度下,是否存在一种更快、更经济、更低计算能力需求的替代方法。在此背景下,实验的全因子设计方法与二次替代传递方程实践进行了比较。结果显示了两种方法之间的许多差异,反映了预测的准确性,计算能力需求,文件大小,易用性,以及最后但并非最不重要的文件大小。这些结果表明,二级取代转移方程方法是一种比较替代的方法,特别是在观察到的因素不线性行为的复杂情况下。该方法对资源的要求较低,是一种简便、经济的实验方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Full Factorial DoE and SSTE®
Understanding the behavior of industrial operations require complex resource needs, such as budget, operation downtime to perform experiments, and so on. Engineers and scientists mainly use Design of Experiment to understand the effects of the observed factors. In specific cases, these experiments require increased calculation power, due to the rise of the measured records and factors. The results are often questioned, because interpreting them requires an expert in any topic. This study aims to determine, if there is a faster, more cost effective alternative method, with lower need of calculation power, within the same complexity of a model. In this context, the Full Factorial Design of Experiment method was compared with the Secondary Substitution Transfer Equation practice. The results showed many differences between the two methods, reflecting the accuracy of the prediction, the calculation power need, the file size, ease of use, and last, but not least, the file sizes. These results suggest that, the Secondary Substitution Transfer Equation method is a comparative alternative, especially in complex cases, where the observed factors do not behave linearly. It also requests less resource, which can make this practice an easy to use and cost effective way in the experiments.
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