• Use of the PTMD, which stores background
knowledge about products. T1 references this task.
The AutoML system uses the meta data.
• Regular checks of occurring concept drifts in data.
This is referenced by T9 which checks the occurring
data in regular intervals.
• Supporting decisions with multiple feature
visualizations from a ML system. In task T4 the
quality engineer can use selected histograms and 2D
- 3D scatter plots to support his investigations.
• Supporting error identifications with explainable
ML decisions. With the T6 and T7 tasks, we are
supporting the quality engineer in his investigations.
8 CONCLUSION
We have presented the necessary requirements to
successfully use a ML aided system into an industrial
based production environment. We developed the
PTMD in which the information about a product has
to be stored. These can be used for many purposes and
summarize background knowledge about a specific
product in one model. We also presented the as-is
process to clarify the procedure of malfunction
detection in the production environment for a quality
engineer. Moreover, a general description about the
actors and their tasks has been given. Additionally,
we illustrated the to-be process and described the
extended tasks with the associated actor for the
implementation of a ML aided system. At the end, we
validate our to-be process by contrasting it to the as-
is process. We have already started implementing our
auto ML system according to the developed
requirements, this will be followed up with several
tests in the production environment and in the near
future, we intend to publish our first results.
Additionally, we are going to test our system on
various product types and adjust it for a universal use
for any product.
ACKNOWLEDGEMENTS
This project was funded by the German Federal
Ministry of Education and Research, funding line
“Forschung an Fachhochschulen mit Unternehmen
(FHProfUnt)“, contract number 13FH249PX6. The
responsibility for the content of this publication lies
with the authors. Also, we want to thank the company
SICK AG for the cooperation and partial funding.
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