AI in Action. The Potential of Test Data
Consequently, ZF's end-of-line test systems
test parts worldwide every second – and document the result digitally.
End-of-line test systems generate in this way up to 30,000 datasets per day.
"Our machines produce digital information that is suitable for further
evaluation with AI algorithms," explains Simone Fuchs, responsible for
Advanced Analytics at ZF Test Systems. "We combine the know-how as machine
manufacturers, as AI experts and as specialists in discrete manufacturing –
that is, wherever serial production of high-quality parts is concerned. We can
turn this domain knowledge into attractive practical solutions." These can
help to improve automation (and thus make production more efficient), to
increase quality or to reduce emissions throughout the entire manufacturing
process, rendering it more sustainable.
No wonder that many customers of ZF Test
Systems also want to use their data – or are encouraged to do so by consulting
companies or software providers. "Many want to use AI. But to put AI-based
models in the right context in production, our domain-specific expertise is
needed," Fuchs explains. Therefore, ZF Test Systems wants to offer its
analytics solutions as an additional business in combination with the sale of
the test benches. "The time is right. We have been able to demonstrate our
models in several pilot projects in recent years. The resulting solutions are
integrated into various production lines and create quantifiable added value on
a daily basis."
„Tatoo“ Makes
Data Available
However, this didn't happen by itself. Anyone
who wants to evaluate data with AI algorithms must first compile it at a
central location, prepare it, standardize it and make it available. Since many
analytics projects fail already at this stage, ZF Test Systems has developed
its own product for automatic long-term storage in a central system in
collaboration with red-ant. "Tatoo" can store all data during or
after production in a central database, where it is available for evaluations.
An example with end-of-line test benches at the ZF plant in Saarbrücken shows
how the potential of the data can be used. Together with experts from the ZF AI
Lab Saarbrücken, ZF Test Systems has developed an AI-based algorithm with which
the NVH behavior of transmissions and electric motors can be digitally
assessed. In components that rotate at high speed – or those that transmit
enormous forces – irregularities in NVH behavior can indicate potential damage
later on. Sonograms provide information about which frequencies are present at
which speeds. Dr. Nicolas Thewes and his colleagues have developed algorithms
that create a pixel-perfect map from thousands and thousands of sonograms of
OK-tested transmissions, which is used as a reference for all subsequent tests.
Put simply, the sonogram of each new test run is compared with the reference
model in real time. Based on any deviations detected, the AI provides important
insights to the production experts.
Pilot Project
Finds Noise Anomalies per Pixel
This algorithmic approach enables end-of-line
testing to find errors that have never occurred before. And the AI-based
processing of the test data goes even further: The large amounts of data make
it possible to train classification algorithms to assess very accurately the
errors that occur in NOK-tested components. "The enormous potential of our
solution lies in this automated classification," emphasizes Thewes. In the
past, every NOK specimen, together with its data, had to be thoroughly examined
by product experts in order to identify the cause of the error. Increasingly,
an AI system can take over such tasks automatically, 24/7. The algorithm
already handles one-third of the classifications autonomously and accurately,
with the share expected to rise. The example shows how highly qualified
personnel can be relieved thanks to AI applications. It's a convenient problem
solution at ZF's plants, where the experts can now devote more time to their
actual tasks. Additionally, this accelerates product optimization – because
specific reference points for improved quality in production can also be
derived from the NOK cases.
Rollout
Approaching
The producing ZF units are so convinced by the
approach and product of the Group's Test Systems subsidiary that “wAIve Guard“
will soon be used at several plants. And not only in the Electrified Powertrain
Technology Division, but also in the Industrial Technology Division,
specifically at the wind power transmission plants in Lommel (Belgium) and
Tianjin (China).
"With the rollout, we will gain further
experience and, above all, further data, the crucial fuel behind every AI
solution," Thewes is convinced. By that time, Simone Fuchs and her team
will have already developed further use cases on how to turn production and
test data into more quality, more sustainability and more efficiency in
production. A clear added value for ZF Test Systems' and red-ant customers and
at the same time a concrete example of how relevant production and end-of-line
test data can be used profitably.

