Towards predictive quality management in assembly systems with low quality low quantity data – a methodological approach
OPEN ACCESS
Loading...
Author / Producer
Date
2019
Publication Type
Conference Paper
ETH Bibliography
yes
Citations
Altmetric
OPEN ACCESS
Data
Abstract
Intervention costs in machine assembly increase rapidly with assembly progress. For early interventions, multivariate control charts or predictive quality management systems can be installed, yet they require large and high-quality datasets. In discrete manufacturing, data is limited by the quantity produced, making it cumbersome to obtain the required quantity for statistical modeling. In this study, a methodology for the setup of predictive quality management systems is presented. It demonstrates strategies for low-quality low-quantity datasets in discrete production. The boundary conditions of the assembly system, the process requirements, and the combination of physical and statistical modeling via feature engineering are highlighted.
Permanent link
Publication status
published
External links
Book title
12th CIRP Conference on Intelligent Computation in Manufacturing Engineering
Journal / series
Volume
79
Pages / Article No.
125 - 130
Publisher
Elsevier
Event
12th CIRP Conference on Intelligent Computation in Manufacturing Engineering (CIRP ICME 2018)
Edition / version
Methods
Software
Geographic location
Date collected
Date created
Subject
Predictive Quality Management; Assembly Systems; Machine tools; Advanced Quality Management; Statistical Modeling for Quality Management; Low-Volume Production; Combination of Physical and Statistical Data
Organisational unit
03641 - Wegener, Konrad (emeritus) / Wegener, Konrad (emeritus)