- Abdi, M. R., & Labib, A. W. (2003). A design strategy for reconfigurable manufacturing systems (RMSs) using analytical hierarchical process (AHP): a case study. International Journal of production research, 41(10), 2273-2299.
- Andersen, A. L., Brunoe, T. D., & Nielsen, K. (2015, September). Reconfigurable manufacturing on multiple levels: literature review and research directions. In IFIP International conference on advances in production management systems(pp. 266-273). Springer, Cham.
- Andersen, A. L., Brunoe, T. D., & Nielsen, K. (2019). Engineering education in changeable and reconfigurable manufacturing: Using problem-based learning in a learning factory environment. Procedia Cirp, 81, 7-12.
- Asghar, E., Baqai, A. A., & Homri, L. (2018). Optimum machine capabilities for reconfigurable manufacturing systems. The International Journal of Advanced Manufacturing Technology, 95(9), 4397-4417.
- Ashraf, M., & Hasan, F. (2018). Configuration selection for a reconfigurable manufacturing flow line involving part production with operation constraints. The international journal of advanced manufacturing technology, 98(5), 2137-2156.
- Bensmaine, A., Benyoucef, L., and Dahane, D. (2013). A non-dominated sorting genetic algorithm based approach for optimal machines selection in reconfigurable manufacturing environment. Computers & Industrial Engineering, 66(3), 519–524.
- Bortolini, M., Ferrari, E., Galizia, F. G., & Regattieri, A. (2021). An optimisation model for the dynamic management of cellular reconfigurable manufacturing systems under auxiliary module availability constraints. Journal of Manufacturing Systems, 58, 442-451.
- Bortolini, M., Galizia, F. G., & Mora, C. (2018). Reconfigurable manufacturing systems: Literature review and research trend. Journal of manufacturing systems, 49, 93-106.
- Bortolini, M., Galizia, F. G., & Mora, C. (2018). Reconfigurable manufacturing systems: Literature review and research trend. Journal of manufacturing systems, 49, 93-106.
- Bortolini, M., Galizia, F. G., & Mora, C. (2019). Dynamic design and management of reconfigurable manufacturing systems. Procedia manufacturing, 33, 67-74.
- Choi, Y. C., & Xirouchakis, P. (2015). A holistic production planning approach in a reconfigurable manufacturing system with energy consumption and environmental effects. International Journal of Computer Integrated Manufacturing, 28(4), 379-394.
- Deif, A. M., & ElMaraghy, H. A. (2007). Assessing capacity scalability policies in RMS using system dynamics. International journal of flexible manufacturing systems, 19(3), 128-150.
- Dou, J., Li, J., and Su, C. (2016). Bi objective optimization of integrating configuration generation and scheduling for reconfigurable flow lines using NSGA-II. The International Journal of Advanced Manufacturing Technology, 86(5-8), 1945–1962.
- Gao, Guibing., Yue, Wenhui, Wang, Junshen., Ou, Wenchu. (2020). Structural-vulnerability assessment of reconfigurable manufacturing system based on universal generating function, Reliability Engineering & System Safety, 20(3): 101-107.
- Haddou Benderbal, H., Dahane, M., & Benyoucef, L. (2017). Flexibility-based multi-objective approach for machines selection in reconfigurable manufacturing system (RMS) design under unavailability constraints. International Journal of Production Research, 55(20), 6033-6051.
- Hashemi-Petroodi, S. E., Dolgui, A., Kovalev, S., Kovalyov, M. Y., & Thevenin, S. (2021). Workforce reconfiguration strategies in manufacturing systems: a state of the art. International Journal of Production Research, 59(22), 6721-6744.
- Khan, A. S., Homri, L., Dantan, J. Y., & Siadat, A. (2020). Cost and quality assessment of a disruptive reconfigurable manufacturing system based on MOPSO metaheuristic. IFAC-PapersOnLine, 53(2), 10431-10436.
- Lamy, D., Delorme, X., Lacomme, P., & Fleury, G. (2020). Toward Scheduling for Reconfigurable Manufacturing Systems. IFAC-PapersOnLine, 53(2), 10443-10448.
- Lee, S., Ryu, K., & Shin, M. (2017). The development of simulation model for self-reconfigurable manufacturing system considering sustainability factors. Procedia manufacturing, 11, 1085-1092.
- Li, J., Wang, A., and Tang, C. (2014). Production planning in virtual cell of reconfiguration manufacturing system using genetic algorithm. The International Journal of Advanced Manufacturing Technology, 74(1-4), 47–64.
- Maganha, I., Silva, C., & Ferreira, L. M. D. (2018). Understanding reconfigurability of manufacturing systems: An empirical analysis. Journal of Manufacturing Systems, 48, 120-130.
- Moghaddam, S. K., Houshmand, M., & Fatahi Valilai, O. (2018). Configuration design in scalable reconfigurable manufacturing systems (RMS); a case of single-product flow line (SPFL). International Journal of Production Research, 56(11), 3932-3954.
- Ouaret, S., Kenné, J. P., & Gharbi, A. (2019). Production and replacement planning of a deteriorating remanufacturing system in a closed-loop configuration. Journal of Manufacturing Systems, 53, 234-248.
- Petroodi, S. E. H., Eynaud, A. B. D., Klement, N., & Tavakkoli-Moghaddam, R. (2019). Simulation-based optimization approach with scenario-based product sequence in a reconfigurable manufacturing system (RMS): A case study. IFAC-PapersOnLine, 52(13), 2638-2643.
- Singh, P. P., Madan, J., & Singh, H. (2020). A systematic approach for responsiveness assessment for product and material flow in reconfigurable manufacturing system (RMS). Materials Today: Proceedings, 28, 1643-1648.
- Touzout, F. A., & Benyoucef, L. (2019). Multi-objective multi-unit process plan generation in a reconfigurable manufacturing environment: a comparative study of three hybrid metaheuristics. International Journal of Production Research, 57(24), 7520-7535.
- Youssef, A. M., & ElMaraghy, H. A. (2008). Performance analysis of manufacturing systems composed of modular machines using the universal generating function. Journal of manufacturing systems, 27(2), 55-69.
- Zhang, Y., Zhao, M., Zhang, Y., Pan, R., & Cai, J. (2020). Dynamic and steady-state performance analysis for multi-state repairable reconfigurable manufacturing systems with buffers. European Journal of Operational Research, 283(2), 491-510.
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