Engineering Optimization Approaches of Nonferrous Metallurgical Processes
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InCollection{Chen:2014:OCMIEC,
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author = "Xiaofang Chen and Honglei Xu",
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title = "Engineering Optimization Approaches of Nonferrous
Metallurgical Processes",
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booktitle = "Optimization and Control Methods in Industrial
Engineering and Construction",
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publisher = "Springer",
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year = "2014",
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editor = "Honglei Xu and Xiangyu Wang",
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volume = "72",
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series = "Intelligent Systems, Control and Automation: Science
and Engineering",
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pages = "107--124",
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keywords = "genetic algorithms, genetic programming, engineering
optimisation, nonferrous metallurgical processes,
sequential operating, imperial smelting furnace",
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isbn13 = "978-94-017-8043-8",
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language = "English",
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DOI = "doi:10.1007/978-94-017-8044-5_7",
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abstract = "The engineering optimisation approaches arising in
nonferrous metallurgical processes are developed to
deal with the challenges in current nonferrous
metallurgical industry including resource shortage,
energy crisis and environmental pollution. The great
difficulties in engineering optimisation for nonferrous
metallurgical process operation lie in variety of
mineral resources, complexity of reactions, strong
coupling and measurement disadvantages. Some
engineering optimisation approaches are discussed,
including operational-pattern optimisation,
satisfactory optimisation with soft constraints
adjustment and multi-objective intelligent satisfactory
optimisation. As an engineering optimisation case, an
intelligent sequential operating method for a practical
Imperial Smelting Process is illustrated. Considering
the complex operating optimisation for the Imperial
Smelting Process, with the operating stability
concerned, an intelligent sequential operating strategy
is proposed on the basis of genetic programming (GP)
adaptively designed, implemented as a multi-step state
transferring procedure. The individuals in GP are
constructed as a chain linked by a few relation
operators of time sequence for a facilitated evolution
with compact individuals. The optimal solution gained
by evolution is a sequential operating program of
process control, which not only ensures the tendency to
optimisation but also avoids violent variation by
operating the parameters in ordered sequences.
Industrial application data are given as
verifications.",
- }
Genetic Programming entries for
Xiaofang Chen
Honglei Xu
Citations