Journal Article10.1007/S00170-008-1843-4
An integrated parameter optimization system for MISO plastic injection molding
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TL;DR: In this article, a parameter optimization system that integrates mold flow analysis, the Taguchi method, analysis of variance (ANOVA), back-propagation neural networks (BPNNs), genetic algorithms (GAs), and the Davidon-Fenton-Powell (DFP) method to generate optimal process parameter settings for multiple-input single-output plastic injection molding is presented.
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Abstract: This paper presents the development of a parameter optimization system that integrates mold flow analysis, the Taguchi method, analysis of variance (ANOVA), back-propagation neural networks (BPNNs), genetic algorithms (GAs), and the Davidon–Fletcher–Powell (DFP) method to generate optimal process parameter settings for multiple-input single-output plastic injection molding. In the computer-aided engineering simulations, Moldex3D software was employed to determine the preliminary process parameter settings. For process parameter optimization, an L25 orthogonal array experiment was conducted to arrange the number of experimental runs. The injection time, velocity pressure switch position, packing pressure, and injection velocity were employed as process control parameters, with product weight as the target quality. The significant process parameters influencing the product weight and the signal to noise (S/N) ratio were determined using experimental data based on the ANOVA method. Experimental data from the Taguchi method were used to train and test the BPNNs. Then, the BPNN was combined with the DFP method and the GAs to determine the final optimal parameter settings. Three confirmation experiments were performed to verify the effectiveness of the proposed system. Experimental results show that the proposed system not only avoids shortcomings inherent in the commonly used Taguchi method but also produced significant quality and cost advantages.
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Citations
General frameworks for optimization of plastic injection molding process parameters
TL;DR: Two general frameworks for simulation-based optimization of injection molding process parameter, including direct optimization and metamodeling optimization, are proposed as recommended paradigms.
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Review on the Effects of Process Parameters on Strength, Shrinkage, and Warpage of Injection Molding Plastic Component
TL;DR: In this paper, the influence of injection molding process parameters on the postmolded strength, shrinkage, and warpage of injection molded parts is reviewed and reported, and it is also investigated the influence on postmolding shrinkage and warping of parts made of polypropylenes.
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Induced network-based transfer learning in injection molding for process modelling and optimization with artificial neural networks
Yannik Lockner,Christian Hopmann +1 more
TL;DR: Theuced network-based transfer learning is used to reduce the necessary amount of injection molding process data for the training of an artificial neural network in order to conduct a data-driven machine parameter optimization for injection molders.
Multi-objective optimization of volume shrinkage and clamping force for plastic injection molding via sequential approximate optimization
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TL;DR: The radial basis function (RBF) network is adopted for the SAO, and the pareto-frontier is identified with a small number of simulation runs, and Numerical result shows that the pneumatic surface approach is valid.
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References
A Rapidly Convergent Descent Method for Minimization
Roger Fletcher,M. J. D. Powell +1 more
TL;DR: A number of theorems are proved to show that it always converges and that it converges rapidly, and this method has been used to solve a system of one hundred non-linear simultaneous equations.
•Book
Introduction to Optimum Design
Jasbir S. Arora
- 01 Jul 1989
TL;DR: This fourth edition of the introduction to Optimum Design has been reorganized, rewritten in parts, and enhanced with new material, making the book even more appealing to instructors regardless of course level.
2.8K
Progress in supervised neural networks
Don R. Hush,Bill G. Horne +1 more
TL;DR: Theoretical results concerning the capabilities and limitations of various neural network models are summarized, and some of their extensions are discussed.
1.3K
Application of Taguchi method in the optimization of end milling parameters
TL;DR: In this paper, the authors applied the Taguchi optimization methodology to optimize cutting parameters in end milling when machining hardened steel AISI H13 with TiN coated P10 carbide insert tool under semi-finishing and finishing conditions of high speed cutting.
829
Efficient warpage optimization of thin shell plastic parts using response surface methodology and genetic algorithm
Hasan Kurtaran,Tuncay Erzurumlu +1 more
TL;DR: In this article, an efficient minimization of warpage on thin shell plastic parts by integrating finite element (FE) analysis, statistical design of experiment method, response surface methodology (RSM), and genetic algorithm (GA) is investigated.
169