Modeling of epoxy dispensing process using a hybrid fuzzy regression approach
Created by W.Langdon from
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- @Article{chan:2013:IJAMT,
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author = "Kit Yan Chan and C. K. Kwong",
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title = "Modeling of epoxy dispensing process using a hybrid
fuzzy regression approach",
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journal = "The International Journal of Advanced Manufacturing
Technology",
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year = "2013",
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volume = "65",
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number = "1-4",
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pages = "589--600",
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month = mar,
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keywords = "genetic algorithms, genetic programming, Fuzzy
regression, Epoxy dispensing, Microchip encapsulation,
Electronic packaging, Process modelling, Semiconductor
manufacturing",
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language = "English",
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publisher = "Springer-Verlag",
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ISSN = "0268-3768",
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URL = "http://espace.library.curtin.edu.au:80/R?func=dbin-jump-full&local_base=gen01-era02&object_id=185726",
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DOI = "doi:10.1007/s00170-012-4202-4",
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size = "12 pages",
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abstract = "In the semiconductor manufacturing industry, epoxy
dispensing is a popular process commonly used in
die-bonding as well as in microchip encapsulation for
electronic packaging. Modelling the epoxy dispensing
process is important because it enables us to
understand the process behaviour, as well as determine
the optimum operating conditions of the process for a
high yield, low cost, and robust operation. Previous
studies of epoxy dispensing have mainly focused on the
development of analytical models. However, an
analytical model for epoxy dispensing is difficult to
develop because of its complex behaviour and high
degree of uncertainty associated with the process in a
real-world environment. Previous studies of modelling
the epoxy dispensing process have not addressed the
development of explicit models involving high-order and
interaction terms, as well as fuzziness between process
parameters. In this paper, a hybrid fuzzy regression
(HFR) method integrating fuzzy regression with genetic
programming is proposed to make up the deficiency. Two
process models are generated for the two quality
characteristics of the process, encapsulation weight
and encapsulation thickness based on the HFR,
respectively. Validation tests are performed. The
performance of the models developed based on the HFR
outperforms the performance of those based on
statistical regression and fuzzy regression.",
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bibsource = "OAI-PMH server at espace.library.curtin.edu.au",
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oai = "oai:espace.library.curtin.edu.au:185726",
- }
Genetic Programming entries for
Kit Yan Chan
Che Kit Kwong
Citations