Author:
Lockner Yannik,Hopmann Christian
Abstract
AbstractThe necessity of an abundance of training data commonly hinders the broad use of machine learning in the plastics processing industry. Induced 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 molding processes. As base learners, source models for the injection molding process of 59 different parts are fitted to process data. A different process for another part is chosen as the target process on which transfer learning is applied. The models learn the relationship between 6 machine setting parameters and the part weight as quality parameter. The considered machine parameters are the injection flow rate, holding pressure time, holding pressure, cooling time, melt temperature, and cavity wall temperature. For the right source domain, only 4 sample points of the new process need to be generated to train a model of the injection molding process with a degree of determination R2 of 0.9 or and higher. Significant differences in the transferability of the source models can be seen between different part geometries: The source models of injection molding processes for similar parts to the part of the target process achieve the best results. The transfer learning technique has the potential to raise the relevance of AI methods for process optimization in the plastics processing industry significantly.
Funder
Deutsche Forschungsgemeinschaft
Publisher
Springer Science and Business Media LLC
Subject
Industrial and Manufacturing Engineering,Computer Science Applications,Mechanical Engineering,Software,Control and Systems Engineering
Reference54 articles.
1. Brecher C, Jeschke S, Schuh G, Aghassi S, Arnoscht J, Bauhoff F, Fuchs S, Jooß C, Karmann O, Kozielski S, Orilski S, Richert A, Roderburg A, Schiffer M, Schubert J, Stiller S, Tönissen S, Welter F (2011) Integrative Produktionstechnik für Hochlohnländer. In: Brecher C (ed) Integrative Produktionstechnik für Hochlohnländer. Springer Verlag, Berlin
2. Meiabadi MS, Vafaeesefat A, Sharifi F (2013) Optimization of plastic injection molding process by combination of artificial neural network and genetic algorithm. J Optim Ind Eng 6(13):49–54
3. Ademujimi TT, Brundage MP, Prabhu VV (2017) A review of current machine learning techniques used in manufacturing diagnosis. In: Lödding H, Riedel R, Thoben K-D, von Cieminski G, Kiritsis D (eds) Advances in Production Management Systems. The Path to Intelligent, Collaborative and Sustainable Manufacturing. APMS 2017. IFIP Advances in Information and Communication Technology, 513th edn. Springer International Publishing, Cham, pp 407–415
4. Weichert D, Link P, Stoll A, Rüping S, Ihlenfeldt S, Wrobel S (2019) A review of machine learning for the optimization of production processes. Int J Adv Manuf Technol 104:1889–1902. https://doi.org/10.1007/s00170-019-03988-5
5. Kim D-H, Kim TJY, Wang X, Kim M, Quan Y-J, Oh JW, Min S-H, Kim H, Bhandari B, Yang I, Ahn S-H (2018) Smart machining process using machine learning: a review and perspective on machining industry. International Journal of Precision Engineering and Manufacturing-Green Technology 5:555–568. https://doi.org/10.1007/s40684-018-0057-y
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