Title
Learning and reuse of engineering ramp-up strategies for modular assembly systems
Abstract
We present a decision-support framework for speeding up the ramp-up of modular assembly systems by learning from past experience. Bringing an assembly system to the expected level of productivity requires engineers performing mechanical adjustments and changes to the assembly process to improve the performance. This activity is time-consuming, knowledge-intensive and highly dependent on the skills of the engineers. Learning the ramp-up process has shown to be effective for making progress faster. Our approach consists of automatically capturing information about the changes made by an operator dealing with disturbances, relating them to the modular structure of the machine and evaluating the resulting system state by analysing sensor data. The feedback thus obtained on applied adaptations is used to derive recommendations in similar contexts. Recommendations are generated with a variant of the k-nearest neighbour algorithm through searching in a multidimensional space containing previous system states. Applications of the framework include knowledge transfer among operators and machines with overlapping structure and functionality. The application of our method in a case study is discussed.
Year
DOI
Venue
2015
10.1007/s10845-013-0839-6
Journal of Intelligent Manufacturing
Keywords
Field
DocType
Modular assembly systems,Ramp-up,Decision support,Learning,Classification
Computer science,Reuse,Assembly systems,Knowledge transfer,Decision support system,Artificial intelligence,Operator (computer programming),Modular design,Machine learning,Modular structure
Journal
Volume
Issue
ISSN
26
6
0956-5515
Citations 
PageRank 
References 
3
0.43
21
Authors
3
Name
Order
Citations
PageRank
Daniele Scrimieri1103.22
Robert Oates2513.60
svetan ratchev3197.69