Comparison of Intelligent Approaches for Cycle Time Prediction in Injection Moulding of a Medical Device Product /
Date
2021-11-15Author
Kariminejad, Mandana
Tormey, David
Huq, Saif
Morrison, Jim
McAfee, Marion
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Show full item recordAbstract
Injection moulding is an increasingly automated
industrial process, particularly when used for the production
of high-value precision components such as polymeric medical
devices. In such applications, achieving stringent product quality
demands whilst also ensuring a highly efficient process can be
challenging. Cycle time is one of the most critical factors which
directly affects the throughput rate of the process and hence is
a key indicator of process efficiency. In this work, we examine
a production data set from a real industrial injection moulding
process for manufacture of a high precision medical device. The
relationship between the process input variables and the resulting
cycle time is mapped with an artificial neural network (ANN)
and an adaptive neuro-fuzzy system (ANFIS). The predictive
performance of different training methods and neuron numbers
in ANN and the impact of model type and the numbers of
membership functions in ANFIS has been investigated. The
strengths and limitations of the approaches are presented and
the further research and development needed to ensure practical
on-line use of these methods for dynamic process optimisation in
the industrial process are discussed.
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