Data Publishing in Mechanics and Dynamics: Challenges, Guidelines, and Examples from Engineering Design
Data-based methods have gained increasing importance in engineering, especially but not only driven by successes with deep artificial neural networks. Success stories are prevalent, e.g., in areas such as data-driven modeling, control and automation, as well as surrogate modeling for accelerated sim...
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Zusammenfassung: | Data-based methods have gained increasing importance in engineering,
especially but not only driven by successes with deep artificial neural
networks. Success stories are prevalent, e.g., in areas such as data-driven
modeling, control and automation, as well as surrogate modeling for accelerated
simulation. Beyond engineering, generative and large-language models are
increasingly helping with tasks that, previously, were solely associated with
creative human processes. Thus, it seems timely to seek
artificial-intelligence-support for engineering design tasks to automate, help
with, or accelerate purpose-built designs of engineering systems, e.g., in
mechanics and dynamics, where design so far requires a lot of specialized
knowledge. However, research-wise, compared to established, predominantly
first-principles-based methods, the datasets used for training, validation, and
test become an almost inherent part of the overall methodology. Thus, data
publishing becomes just as important in (data-driven) engineering science as
appropriate descriptions of conventional methodology in publications in the
past. This article analyzes the value and challenges of data publishing in
mechanics and dynamics, in particular regarding engineering design tasks,
showing that the latter raise also challenges and considerations not typical in
fields where data-driven methods have been booming originally. Possible ways to
deal with these challenges are discussed and a set of examples from across
different design problems shows how data publishing can be put into practice.
The analysis, discussions, and examples are based on the research experience
made in a priority program of the German research foundation focusing on
research on artificially intelligent design assistants in mechanics and
dynamics. |
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DOI: | 10.48550/arxiv.2410.18358 |