An integrated computational intelligence technique based operating parameters optimization scheme for quality improvement oriented process-manufacturing system
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- @Article{YIN:2020:CIE,
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author = "Xianhui Yin and Zhanwen Niu and Zhen He and
Zhaojun(Steven) Li and Donghee Lee",
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title = "An integrated computational intelligence technique
based operating parameters optimization scheme for
quality improvement oriented process-manufacturing
system",
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journal = "Computer \& Industrial Engineering",
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volume = "140",
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pages = "106284",
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year = "2020",
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ISSN = "0360-8352",
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DOI = "doi:10.1016/j.cie.2020.106284",
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URL = "http://www.sciencedirect.com/science/article/pii/S0360835220300188",
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keywords = "genetic algorithms, genetic programming, Quality
improvement, Operating parameters optimization, Process
industry, Multistage manufacturing, Computational
intelligence, Multi-gene genetic programming (MGGP)",
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abstract = "The analysis and improvement of product quality for
process industry is an increasing concern for academia
and industry. As the outputs of a manufacturing system
mainly depend on corresponding input conditions, so it
is of high significance to develop an optimization
scheme to actively and accurately determine operating
parameters to obtain desired quality. However, the
widely employed single-model modeling mode for whole
production process neglects the natural characteristics
within process manufacturing system such as multistage
manufacturing and hysteresis. Additionally, the popular
data-driven modeling techniques in current works,
especially black-box machine learning models have been
restricted to satisfying the requirements regarding
excellent approximation capability and explicit
mathematical expression simultaneously. To fill up
above research gap, it is meaningful to develop a new
data-driven optimization scheme in this work to
effectively and accurately determine the optimum
operating parameters considering the abovementioned
characteristics and requirements. Firstly, two
different connecting strategies are discussed to
determine the more accurate and feasible quality
propagation mode between adjacent stages. Then, two
computational intelligence (CI) techniques, i.e.,
Multi-Gene Genetic Programming (MGGP) and
Multi-objective Particle Swarm Optimization (MOPSO)
algorithm are exploited to construct correlation model
with explicit mathematical expression and derive the
optimal operating parameters, respectively. Afterwards,
the fuzzy Multi-criteria Decision Making (FMCDM) method
is further proposed to select the optimal solution from
the obtained Pareto solutions sets. The application of
the proposed scheme in a coal preparation process
indicates that the proposed scheme is promising and
competitive on prediction accuracy and optimization
efficiency over baseline methods, and can significantly
improve the final product quality comparing with
initial parameters setting. Moreover, the feasible
quality specification for intermediate product can also
be obtained by our proposed scheme which is beneficial
for early detection of quality abnormality and timely
parameters adjustment",
- }
Genetic Programming entries for
Xianhui Yin
Zhanwen Niu
Zhen He
Zhaojun(Steven) Li
Donghee Lee
Citations