Title
Sensor-based Human–Process Interaction in Discrete Manufacturing
Abstract
The rise of Industry 4.0 and the convergence with business process management provide new potential for the automatic gathering of process-related sensor information. In manufacturing, information about human behavior in manual assembly tasks is rare when no interaction with machines is involved. We suggest technologies to automatically detect material picking and placement in the assembly workflow to gather accurate data about human behavior and flexible support of human–process interaction. The detection of material picking is achieved by using background subtraction in combination with scales. For placement detection, two approaches are tested: image classification using convolutional neural networks and object detection using Haar wavelets. The detected fine-grained worker activities are then correlated with a hybrid model of the assembly workflow using the business process model and notation and case management model and notation, enabling the measurement of production time (time per state) and quality (frequency of error) on the shop floor as an entry point for conformance checking and process optimization. The approach has been evaluated in a quantitative case study recording the assembly process 30 times in a laboratory setup within 4 h. Under these conditions, the classification of assembly states using a neural network provides a test accuracy of 99.25% on 38 possible assembly states. Material picking based on background subtraction has been evaluated in an informal user study with six participants performing 16 picks each, providing an accuracy of 99.48%. The suggested method offers a promising approach to easily assess fine-grained timings and error rates of assembly steps which can be used to optimize the corresponding process.
Year
DOI
Venue
2020
10.1007/s13740-019-00109-z
Journal on Data Semantics
Keywords
DocType
Volume
Manual assembly, Activity detection, Computer vision, Process enhancement, Industry 4.0
Journal
9
Issue
ISSN
Citations 
1
1861-2040
0
PageRank 
References 
Authors
0.34
0
8
Name
Order
Citations
PageRank
Sönke Knoch100.34
Nico Herbig200.34
Shreeraman Ponpathirkoottam300.34
Felix Kosmalla46011.88
Philipp Staudt500.34
Daniel Porta600.34
Peter Fettke781278.37
Peter Loos847940.84