Otwarty dostęp

Research on key technology of mass customization based on flexible manufacturing in the context of deep learning

   | 31 sty 2024

Zacytuj

Borenstein, D. (2017). Idssflex: an intelligent dss for the design and evaluation of flexible manufacturing systems. Journal of the Operational Research Society. Search in Google Scholar

Diaz, J. L. C., & Ocampo-Martinez, C. (2021). Non-centralised control strategies for energy-efficient and flexible manufacturing systems. Journal of Manufacturing Systems(59-), 59. Search in Google Scholar

Hu, L., Liu, Z., Hu, W., Wang, Y., & Wu, F. (2020). Petri-net-based dynamic scheduling of flexible manufacturing system via deep reinforcement learning with graph convolutional network. Journal of Manufacturing Systems, 55, 1-14. Search in Google Scholar

Peter Koál, Andrea Mudriková, Stefan Václav, Dávid Michal, & Ronald Díaz Cazaas. (2019). Manufacturing component base broadening in the flexible manufacturing system by using a group technology. Materials Science Forum, 952, 45-54. Search in Google Scholar

Cong, X. Y., Gu, C., Uzam, M., Chen, Y. F., Al-Ahmari, A. M., & Wu, N. Q., et al. (2018). Design of optimal petri net supervisors for flexible manufacturing systems via weighted inhibitor arcs. Asian Journal of Control. Search in Google Scholar

Zhang, X., Ming, X., Bao, Y., Liao, X., & Miao, R. (2022). Networking-enabled product service system (n-pss) in collaborative manufacturing platform for mass personalization model. Computers & Industrial Engineering(163-), 163. Search in Google Scholar

Cheng, B., Li, R., Zhu, X., Zhou, M., & Cao, X. (2021). Optimal decision in mc supply chain with overconfident retailer based on the newsvendor model. RAIRO - Operations Research(3). Search in Google Scholar

Xiao-Hong, L., Mi-Yuan, S., Ren-Long, Z., & Li-Hong, Z. (2018). Green vehicle routing optimization based on carbon emission and multiobjective hybrid quantum immune algorithm. Mathematical Problems in Engineering, 2018(pt.4), 1-9. Search in Google Scholar

Zhou, H., Xiang, Y., Li, H. F., & Yuan, R. (2020). Task offloading strategy of 6g heterogeneous edge-cloud computing model considering mass customization mode collaborative manufacturing environment. Mathematical Problems in Engineering, 2020. Search in Google Scholar

Barata, J., Cardoso, J. C. S., & Cunha, P. R. (2023). Mass customization and mass personalization meet at the crossroads of industry 4.0: a case of augmented digital engineering. Systems Engineering. Search in Google Scholar

Zhang, M., Guo, H., Huo, B., Zhao, X., & Huang, J. (2019). Linking supply chain quality integration with mass customization and product modularity. International Journal of Production Economics, 207, 227-235. Search in Google Scholar

Liu, C., & Yao, J. (2018). Dynamic supply chain integration optimization in service mass customization. Computers & Industrial Engineering, 120(jun.), 42-52. Search in Google Scholar

Li, Z., Yang, H., & Xu, J. (2022). How to adopt mass customization strategy: understanding the role of consumers’ perceived brand value. Computers & Industrial Engineering. Search in Google Scholar

César Martínez-Olvera. (2020). An entropy-based formulation for assessing the complexity level of a mass customization industry 4.0 environment. Mathematical Problems in Engineering, 2020. Search in Google Scholar

Modrak, V. Z. (2020). Batch size optimization of multi-stage flow lines in terms of mass customization. International Journal of Simulation Modelling, 19(2). Search in Google Scholar

Sandrin, E., Trentin, A., Grosso, C., & Forza, C. (2017). Enhancing the consumer-perceived benefits of a mass-customized product through its online sales configurator: an empirical examination. Industrial Management & Data Systems, 117(6), 1295-1315. Search in Google Scholar

Longo, F., Padovano, A., Cimmino, B., & Pinto, P. (2021). Towards a mass customization in the fashion industry: an evolutionary decision aid model for apparel product platform design and optimization. Computers & Industrial Engineering, 162, 107742-. Search in Google Scholar

Zhong, R. Y., Xu, X., Klotz, E., & Newman, S. T. (2017). Intelligent manufacturing in the context of industry 4.0: a review. Engineering, 3(5), 616-630. Search in Google Scholar

Forti, A. W., César Coutinho Ramos, & Muniz, J. (2023). Integration of design structure matrix and modular function deployment for mass customization and product modularization: a case study on heavy vehicles. The International Journal of Advanced Manufacturing Technology, 125(3-4), 1987-2002. Search in Google Scholar

Wilson, J. M. (2017). Approaches to machine load balancing in flexible manufacturing systems. Journal of the Operational Research Society. Search in Google Scholar

Lee, D. H., & Kim, Y. D. (2017). A multi-period order selection problem in flexible manufacturing systems. Journal of the Operational Research Society. Search in Google Scholar

Florescu, A., Baraba, S., & Srbu, F. (2017). Operational parameters estimation for a flexible manufacturing system. a case study. MATEC Web of Conferences, 112(4), 05008. Search in Google Scholar

Ari SetiawanRachmawati WangsaputraYatna Yuwana MartawiryaAbdul Hakim Halim. (2019). An object-oriented modeling approach for production scheduling on cnc-machines in flexible manufacturing system to maximize cutting tool utilization. Journal of Advanced Manufacturing Systems, 18(2). Search in Google Scholar

Kberlein, J., Bank, L., Roth, S., Kse, E., Kuhlmann, T., & Prell, B., et al. (2022). Simulation modeling for energy-flexible manufacturing: pitfalls and how to avoid them. Energies, 15. Search in Google Scholar

eISSN:
2444-8656
Język:
Angielski
Częstotliwość wydawania:
Volume Open
Dziedziny czasopisma:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics