Real-time fuzzy-clustering and CART rules classification of the characteristics of emitted acoustic emission during horizontal single-grit scratch tests
Author
dc.contributor.author
Griffin, James
es_CL
Author
dc.contributor.author
Chen, Xun
Admission date
dc.date.accessioned
2014-12-19T15:20:16Z
Available date
dc.date.available
2014-12-19T15:20:16Z
Publication date
dc.date.issued
2014
Cita de ítem
dc.identifier.citation
Int J Adv Manuf Technol (2014) 74:481–502
en_US
Identifier
dc.identifier.other
DOI 10.1007/s00170-014-5959-4
Identifier
dc.identifier.uri
https://repositorio.uchile.cl/handle/2250/126729
General note
dc.description
Artículo de publicación ISI
en_US
Abstract
dc.description.abstract
During the unit event of material iteraction in grinding
three phenomena are involved, namely: rubbing,
ploughing and cutting. Where ploughing and rubbing essentially
mean the energy is being applied less efficiently in terms
of material removal. Such phenomena usually occurs before
or after cutting. Based on this distinction, it is important to
identify the effects of these different phenomena experienced
during grinding. Acoustic emission (AE) of the material grit
interaction is considered the most sensitive monitoring process
to investigate such miniscule material change. For this
reason, two AE sensors were used to pick up energy information
(one verifying the other) correlated to material measurements
of the horizontal scratch groove profiles. Such material
measurements would display both the material plastic deformation
and material removal mechanisms. Accurate material
surface profile measurements of the cut groove were made
using the Fogale Photomap Profiler which enables the comparison
between the corresponding AE signal scratch data. By
using short-time Fourier transforms (STFT) and filtration, the
salient features for identifying and classifying the phenomena
were more distinct between the three different levels of singlegrit
(SG) phenomena. Given such close data segregation
between the phenomenon data sets, fuzzy clustering/genetic
algorithm (GA) classification techniques were used to classify
and verify the demarcation of SG phenomena. After the
cutting, ploughing and rubbing gave a high confidence in terms of classification accuracy, the results from the
unit/micro-event to the multi/macro-event, both 1-μm and
0.1-mm grinding test data, were applied to the named classifier
for classification. Interesting output results correlated for
the classifier signifying a distinction that there is more cutting
utilisation than both ploughing and rubbing as the interaction
between grit and workpiece become more involved (measured
depth of cut increases). With the said classifier technique
it is possible to get a percentage utilisation of the grit
and material interaction phenomena. In addition, optimised
fuzzy clustering was verified against a classification and
regression tree (CART) rule-based system giving transparent
rule classification. Such findings were then realised into a
Simulink model as a potential control system for a microgrinding
simulation or, for real-time industrial control
purposes
Real-time fuzzy-clustering and CART rules classification of the characteristics of emitted acoustic emission during horizontal single-grit scratch tests