Quality improvement in investment castings using genetic algorithm
Özet
Investment casting is well-known for its distinguished characteristics such as manufacturing small industrial
components of ferrous as well as nonferrous alloys used in aerospace, automobile, bio-medical, chemical, defense, etc. with closed
tolerances at relatively low cost. These industrial components need to be defect free as well as must possess desired mechanical
properties. This quality metrics (defect free castings with desired mechanical properties) is mainly driven by process parameters
associated with different sub-processes of investment casting including wax pattern making, shell making, dewaxing, melting &
pouring, and chemical composition of alloys. It is always challenging to identify such parameters affecting quality of investment
castings. In this work, an application of Genetic Algorithm has been extended to identify critical parameters and their specific set
of values affecting quality of investment castings. This technique is found be very useful in performing data analytics.
Bağlantı
https://hdl.handle.net/11363/3220Koleksiyonlar
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