Non-Gaussian Multivariate Process Capability Based on the Copulas Method: An Application to Aircraft Engine Fan Blades

被引:0
作者
Ferraris C. [1 ,2 ]
Achibi M. [2 ]
机构
[1] LPSM, Sorbonne Université, Industrial Division,, Safran Aircraft Engines, Evry
[2] Industrial Division,, Safran Aircraft Engines, Evry
来源
Journal of Manufacturing Science and Engineering | 2024年 / 146卷 / 07期
关键词
inspection and quality control; multivariate capability; production systems optimization; statistical process controls; Vine Copula;
D O I
10.1115/1.4065456
中图分类号
学科分类号
摘要
Process capability indices (PCIs) are major tools in geometric dimensioning and tolerancing (GD&T) for quantifying the production quality, monitoring production, or prioritizing projects. Initially, PCIs were constructed for studying each characteristic of the process independently. Then, they have been extended to analyze several dependent characteristics simultaneously. Nowadays, with the increasing complexity of the production parts, for example, in aircraft engines, the conformity of one part may rely on the conformity of hundreds of characteristics. Also, because those characteristics are dependent, it may be misleading to make decisions based only on univariate PCIs. However, classical multivariate PCIs in the literature do not allow treating such amount of data efficiently, unless assuming Gaussian distribution, which may be false. Regarding those issues, we advocate for PCI based on some transformation of the conformity rates. This presents the advantage of being free from distributional assumptions, such as the Gaussian distribution. In addition, it has direct interpretation, allowing it to compare different processes. To estimate the PCIs of parts with hundreds of characteristics, we propose to use Vine Copulas. This is a very flexible class of models, which gives precise estimation even in high dimension. From an industrial perspective, the computation of the estimator can be costly. To answer this point, one explains how to compute a lower bound of the proposed PCI, which is faster to calculate. We illustrate our method adaptability with simulations under Gaussian and non-Gaussian distributions. We apply it to compare the production of fan blades of two different factories. © 2024 by ASME.
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  • [1] Chakraborty A. K., Chatterjee M., Handbook of Multivariate Process Capability Indices, (2021)
  • [2] Daniels L., Edgar B., Burdick R. K., Hubele N. F., Using Confidence Intervals to Compare Process Capability Indices, Qual. Eng, 17, 1, pp. 23-32, (2004)
  • [3] Statistical Methods in Process Management Capability and Performance. Part 6: Process Capability Statistics for Characteristics Following a Multivariate Normal Distribution, (2013)
  • [4] Croquelois M., Ferraris C., Achibi M., Thiebaut F., Process Capability Indices With Student Mixture Models Applied to Aircraft Engines GD&T, ASME J. Manuf. Sci. Eng, 144, 10, (2022)
  • [5] Bedford T., Cooke R. M., Vines: A New Graphical Model for Dependent Random Variables, Ann. Stat, 30, 4, pp. 1031-1068, (2002)
  • [6] Stober J., Joe H., Czado C., Simplified Pair Copula Constructions—Limitations and Extensions, J. Multivar. Anal, 119, pp. 101-118, (2013)
  • [7] Lepine M. J., Tahan A. S., The Relationship Between Geometrical Complexity and Process Capability, ASME J. Manuf. Sci. Eng, 138, 5, (2016)
  • [8] Geometrical Product Specifications (GPS) - Geometrical Tolerancing – Maximum Material Requirement (MMR), Least Material Requirement (LMR) and Reciprocity Requirement (RPR), (2021)
  • [9] Diplaris S. C., Sfantsikopoulos M. M., Process Capability Requirement Under Maximum Material Condition, Proc. Inst. Mech. Eng. B, 220, 10, pp. 1629-1634, (2006)
  • [10] Tahan A. S., Cauvier J., Capability Estimation of Geometrical Tolerance With a Material Modifier by a Hasofer–Lind Index, ASME J. Manuf. Sci. Eng, 134, 2, (2012)