The prediction of profile deviations when Creep Feed grinding complex geometrical features by use of neural networks and genetic programming with real-time simulation
Artículo
Publication date
2014Metadata
Show full item record
Cómo citar
Griffin, James
Cómo citar
The prediction of profile deviations when Creep Feed grinding complex geometrical features by use of neural networks and genetic programming with real-time simulation
Author
Abstract
The capability to generate complex geometry features
at tight tolerances and fine surface roughness is a key
element in implementation of Creep Feed grinding process in
specialist applications such as the aerospace manufacturing
environment. Based on the analysis of 3D cutting forces,
this paper proposes a novel method of predicting the profile
deviations of tight geometrical features generated using
Creep Feed grinding. In this application, there are several
grinding passes made at varying depths providing an incremental
geometrical change with the last cut generating the
final complex feature. With repeatable results from coordinate
measurements, both the radial and tangential forces can
be gauged versus the accuracy of the ground features. The
results of the tangential force were found more sensitive to
the deviation of actual cut depth from the theoretical one.
However, to make a more robust prediction on the profile
deviation, its values were considered as a function of both
force components. In addition, the power signals were obtained
as these signals are also proportional to force and
deviation measurements. Genetic programming (GP), an
evolutionary programming technique, has been used to
compute the prediction rules of part profile deviations based
on the extracted radial and tangential force and correlated
with the initial “gauging” methodology. It was found that
using this technique, complex rules can be achieved and
used online to dynamically control the geometrical accuracy
of the ground features. The GP complex rules are based on
the correlation between the measured forces and recorded
deviation of the theoretical profile. The mathematical rules
are generated from Darwinian evolutionary strategy which
provides the mapping between different output classes. GP works from crossover recombination of different rules, and
the best individual is evaluated in terms of the given best
fitness value so far which closes on an optimal solution.
Once the best rule has been generated, this can be further
used independently or in combination with other close-tobest
rules to control the evolution of output measures of
machining processes. The best GP terminal sets will be
realised in rule-based embedded coded systems which will
finally be implemented into a real-time Simulink simulation.
This realisation gives a view of how such a control
regime can be utilised within an industrial capacity. Neural
networks were also used for GP rule verification.
General note
Artículo de publicación ISI
Patrocinador
The experimental work was carried out at The University of
Nottingham funded by EPSRC.
Quote Item
Int J Adv Manuf Technol (2014) 74:1–16
Collections