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Industrial issues and solutions to statistical model improvement: a case study of an automobile steering column

机译:统计模型改进的工业问题与解决方案:汽车转向柱的案例研究

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摘要

Statistical model improvement consists of model calibration, validation, and refinement techniques. It aims to increase the accuracy of computational models. Although engineers in industrial fields are expanding the use of computational models in the process of product development, many field engineers still hesitate to perform statistical model improvement due to its practical aspects. Therefore, this paper describes research aimed at addressing three practical issues that hinder statistical model improvement in industrial fields: (1) lack of experimental data for quantifying uncertainties of true responses, (2) numerical input variables for propagating uncertainties of the computational model, and (3) model form uncertainties in the computational model. Issues 1 and 2 deal with difficulties in uncertainty quantification of experimental and computational responses. Issue 3 focuses on model form uncertainties, which are due to the excessive simplification of computational modeling; simplification is employed to reduce the calculation cost. Furthermore, the paper outlines solutions to address these three issues, specifically: (1) kernel density estimation with estimated bounded data, (2-1) variance-based variable screening, (2-2) surrogate modeling, and (3) a model refinement approach. By examining the computational model of an automobile steering column, these techniques are shown to demonstrate efficient statistical model improvement. This case study shows that the suggested approaches can actively reduce the burden in statistical model improvement and increase the accuracy of computational modeling, thereby encouraging its use in industry.
机译:统计模型改进由模型校准,验证和细化技术组成。它旨在提高计算模型的准确性。虽然工业领域的工程师正在扩大在产品开发过程中使用计算模型,但由于其实际方面,许多现场工程师仍然犹豫不决。因此,本文介绍了解决工业领域统计模型改进的三种实际问题的研究:(1)缺乏用于量化真实响应的不确定性的实验数据,(2)用于传播计算模型的不确定性的数值输入变量,以及(3)模型在计算模型中形成不确定性。问题1和2应对实验和计算响应的不确定量化困难。第3问题专注于模型形式的不确定性,这是由于计算建模的过度简化;使用简化来降低计算成本。此外,本文概述了解决这三个问题的解决方案,具体而言,具体而言:(1)内核密度估计,具有估计有界数据,(2-1)基于方差的可变筛选,(2-2)代理建模,(3)模型细化方法。通过检查汽车转向柱的计算模型,显示了这些技术来展示有效的统计模型改进。本案例研究表明,建议的方法可以积极降低统计模型提高的负担,提高计算建模的准确性,从而鼓励其在工业中使用。

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