Melt Instability Identification Using Unsupervised Machine Learning Algorithms

被引:2
|
作者
Gansen, Alex [1 ]
Hennicker, Julian [2 ]
Sill, Clemens [3 ]
Dheur, Jean [3 ]
Hale, Jack S. S. [2 ]
Baller, Jorg [1 ]
机构
[1] Univ Luxembourg, Dept Phys & Mat Sci, 162A Ave Faiencerie, L-1511 Luxembourg, Luxembourg
[2] Univ Luxembourg, Dept Engn, Maison Nombre 6,Ave Fonte, L-4364 Esch Sur Alzette, Luxembourg
[3] Goodyear Innovat Ctr Luxembourg, Ave Gordon Smith, L-7750 Colmar Berg, Luxembourg
关键词
extrusion; feature ranking; melt instabilities; unsupervised machine learning; SITU PRESSURE-FLUCTUATIONS; FLOW INSTABILITIES; EXTRUSION;
D O I
10.1002/mame.202200628
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
In industrial extrusion processes, increasing shear rates can lead to higher production rates. However, at high shear rates, extruded polymers and polymer compounds often exhibit melt instabilities ranging from stick-slip to sharkskin to gross melt fracture. These instabilities result in challenges to meet the specifications on the extrudate shape. Starting with an existing published data set on melt instabilities in polymer extrusion, we assess the suitability of clustering, unsupervised machine learning algorithms combined with feature selection, to extract and identify hidden and important features from this data set, and their possible relationship with melt instabilities. The data set consists of both intrinsic features of the polymer as well as extrinsic features controlled and measured during an extrusion experiment. Using a range of commonly available clustering algorithms, it is demonstrated that the features related to only the intrinsic properties of the data set can be reliably divided into two clusters, and that in turn, these two clusters may be associated with either the stick-slip or sharkskin instability. Furthermore, using a feature ranking on both the intrinsic and extrinsic features of the data set, it is shown that the intrinsic properties of molecular weight and polydispersity are the strongest indicators of clustering.
引用
收藏
页数:14
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