Accesso libero

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

  
31 gen 2024
INFORMAZIONI SU QUESTO ARTICOLO

Cita
Scarica la copertina

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

Lingua:
Inglese
Frequenza di pubblicazione:
1 volte all'anno
Argomenti della rivista:
Scienze biologiche, Scienze della vita, altro, Matematica, Matematica applicata, Matematica generale, Fisica, Fisica, altro