How to cite this paper
Ghosh, T., Sengupta, S., Chattopadhyay, M & Dan, P. (2011). Meta-heuristics in cellular manufacturing: A state-of-the-art review.International Journal of Industrial Engineering Computations , 2(1), 87-122.
Refrences
Aarts, E. & Korst, J. (1990). Simulated Annealing and the Boltzmann Machine. John Wiley & Sons, New York, USA.
Abduelmola, A. I. & Taboun, S.M. (2000). A simulated annealing algorithm for designing cellular manufacturing systems with productivity consideration. Production Planning & Control, 11 (6), 589-597.
Adenso-Diaz, B., Lozano, S., Racero, J. & Guerrero, F. (2001). Machine cell formation in generalized group technology. Computers and Industrial Engineering, 41, 227-240.
Adil, G. K. & Rajamani, D. (2000). The trade-off between intracell and intercell moves in group technology cell formation. Journal of Manufacturing Systems, 19 (5), 305-317.
Aljaber, N., Baek W. & Chen, C.-L. (1997). A tabu search approach to the cell formation problem. Computers and Industrial Engineering, 32 (1), 169–185.
Al-Sultan, K.S. & Fedjki, C.A. (1997). A genetic algorithm for the part family formation problem. Production Planning & Control, 8 (8), 788-796.
Andres, C. & Lozano, S. (2006). A particle swarm optimization algorithm for part–machine grouping. Robotics and Computer-Integrated Manufacturing, 22, 468–474.
Anvari, M., Mehrabad, M.S. & Barzinpour, F. (2010). Machine–part cell formation using a hybrid particle swarm optimization. International Journal of Advanced Manufacturing Technology, 47, 745-754.
Arkat, J., Saidi, M. & Abbasi, B. (2007). Applying simulated annealing to cellular manufacturing system design. International Journal of Advanced Manufacturing Technology, 32, 531-536.
Ateme-Nguema, B., H. & Dao, T.,-M. (2007). Optimization of cellular manufacturing systems design using the hybrid approach based on the ant colony and tabu search techniques. Proceedings of the IEEE IEEM, 668-673.
Ateme-Nguema, B., H. & Dao, T.,-M. (2009). Quantized Hopfield networks and tabu search for manufacturing cell formation problems. International Journal of Production Economics, 121, 88-98.
Bajestani, M.A., Rabbani, M., Rahimi-Vahed, A.R. & Khoshkhou, G.B. (2009). A multi-objective scatter search for a dynamic cell formation problem. Computers & Operations Research, 36, 777–794.
Baykasoglu, A., Gindy, N.N.Z. & Cobb R. C. (2001). Capability based formulation and solution of multiple objective cell formation problems using simulated annealing. Integrated Manufacturing Systems, 12 (4), 258-275.
Bianchi, L., Dorigo, M., Gambardella, L.M. & Gutjahr, W.J. (2009). A survey on meta-heuristics for stochastic combinatorial optimization. International Journal of Natural Computing, 8 (2), 239-287.
Boctor, F. F. (1991). A linear formulation of the machine-part cell formation problem. International Journal of Production Research, 29 (2), 343-356.
Boulif, M. & Atif. K. (2006). A new branch-&-bound-enhanced genetic algorithm for the manufacturing cell formation problem. Computers & Operations Research, 33, 2219–2245.
Boulif, M. & Atif. K. (2008). A new fuzzy genetic algorithm for the dynamic bi-objective cell formation problem considering passive and active strategies. International Journal of Approximate Reasoning, 47, 141-165.
Brown, E.C. & Sumichrast, R.T. (2001). CF-GGA: a grouping genetic algorithm for the cell formation problem, International Journal of Production Research, 39 (16), 3651-3669.
Burbidge, J.L. (1963). Production flow Analysis. Production Engineer, 42 (12), 742-752.
Cao, D. & Chen, M. (2004). Using penalty function and tabu search to solve cell formation problems with fixed cell cost. Computers & Operations Research, 31, 21–37.
Cao, D., Defersha, F. M. & Chen, M. (2009). Grouping operations in cellular manufacturing considering alternative routings and the impact of run length on product quality. International Journal of Production Research, 47 (4), 989-1013.
Caprihan, R., Slomp, J., Gursaran & Agarwal, K. (2009). A quantum particle swarm optimization approach for the design of virtual manufacturing cells. Proceedings of the IEEE IEEM, 125-129.
Car, Z. and Mikac, T. (2006). Evolutionary approach for solving cell-formation problem in cell manufacturing. Advanced Engineering Informatics, 20, 227–232.
Caux, C., Bruniaux, R. & Pierreval, H. (2000). Cell formation with alternative process plans and machine capacity constraints: A new combined approach. International Journal of Production Economics, 64, 279-284.
Chan, F. T. S., Lau, K. W. & Chan, P. L. Y. (2004). A holistic approach to manufacturing cell formation: incorporation of machine flexibility and machine aggregation. Journal of Engineering Manufacture, 218 (B), 1279-1296.
Chan, F.T.S., Lau, K.W., Chan, P.L.Y. & Choy, K.L. (2006). Two-stage approach for machine-part grouping and cell layout problems. Robotics and Computer-Integrated Manufacturing, 22, 217–238.
Chan, F.T.S., Lau, K.W., Chan, L.Y. & Lo, V.H.Y. (2008). Cell formation problem with consideration of both intracellular and intercellular movements, International Journal of Production Research, 46 (10), 2589–2620.
Chen, W.-H. & Srivastava, B. (1994). Simulated annealing procedures for forming machine cells in group technology. European Journal of Operational Research, 75 (1), 100-111.
Chi, S.-C. & Lin, I. (2002). Cellular formation based on evolutionary optimization of granules. Proceedings of IIE Annual Conference, Norcross, 1-6.
Chi, S.-C. & Yan, M.-C. (2004). A fuzzy genetic algorithm for high-tech cellular manufacturing system design. IEEE Annual Meeting of the Fuzzy Information, 2, 907-912.
Chu, C.-H. & Chang-Chun-Tsai. (2001). A Heuristic Genetic Algorithm for Grouping Manufacturing Cells, IEEE Proceedings of the 2001 congress on Evolutionary Computation, 1, 310-317.
Das, K., Lashkari, R. S. & Sengupta, S. (2006). Reliability considerations in the design of cellular manufacturing systems a simulated annealing-based approach. International Journal of Quality & Reliability Management, 23 (7), 880-904.
Darwin, C. (1929). The Origin of Species by Means of Natural Selection or the Preservation of Favored Races in the Struggle for Life. The Book League of America, (originally published in 1859).
Defersha, F. M. & Chen, M. (2006). Machine cell formation using a mathematical model and a genetic-algorithm-based heuristic. International Journal of Production Research, 44 (12), 2421–2444.
Defersha, F. M. & Chen, M. (2008a). A linear programming embedded genetic algorithm for an integrated cell formation and lot sizing considering product quality. European Journal of Operational Research 187, 46–69.
Defersha, F. M. & Chen, M. (2008b). A parallel genetic algorithm for dynamic cell formation in cellular manufacturing systems. International Journal of Production Research, 46 (22), 6389–6413.
Defersha, F. M. & Chen, M. (2008c). A parallel multiple Markov chain simulated annealing for multi-period manufacturing cell formation problems. International Journal of Advanced Manufacturing Technology, 37, 140-156.
Deljoo, V., Al-e-hashem, S.M.J.M., Deljoo, F. & Aryanezhad, M.B. (2010). Using genetic algorithm to solve dynamic cell formation problem. Applied Mathematical Modelling, 34, 1078–1092.
Dimopoulos, C. (2006). Multi-objective optimization of manufacturing cell design. International Journal of Production Research, 44 (22), 4855-4875.
Dimopoulos, C. & Mort, N. (2001). A hierarchical clustering methodology based on genetic programming for the solution of simple cell-formation problems. International Journal of Production Research, 39 (1), 1-19.
Dorigo, M. & Stutzle, T. (2004). Ant Colony Optimization. MIT Press, Cambridge, MA, USA.
Durán, O., Rodriguez, N. & Consalter, L.A. (2010). Collaborative particle swarm optimization with a data mining technique for manufacturing cell design. Expert Systems with Applications, 37, 1563–1567.
Fan, J., Cao, M. & Feng, D. (2010). Multi-objective dual resource-constrained model for cell formation problem. Proceedings of the IEEE ICMIT, 1031-1036.
Filho, E. V. G. & Tiberti, A. J. (2006). A group genetic algorithm for the machine cell formation problem. International Journal of Production Economics, 102, 1–21.
Fisher, R. A. (1930). The genetical theory of natural selection. Oxford: Clarendon Press.
Foulds, L. R., French, A. P. & Wilson, J. M., (2006). The sustainable cell formation problem: manufacturing cell creation with machine modification costs. Computers & Operations Research, 33, 1010–1032.
Giri, R., Srinivas, J. & Mouli, K. V. V. C. (2007). An optimal design approach for a cellular manufacturing system. Journal of Engineering Manufacture, 22 (B), 1101-1106.
Glover, F. & Laguna, M. (1997). Tabu Search. Kluwer Academic Publishers, Norwell, MA, USA.
Goldberg, D. E. (1989). Genetic Algorithms in Search Optimization and Machine Learning. Addison Wesley.
Goncalves, J.F. & Resende, M.G.C. (2004). An evolutionary algorithm for manufacturing cell formation. Computers & Industrial Engineering, 47, 247–273.
Gravel, M., Nsakanda, A. L. & Price, W. (1998). Efficient solutions to the cell-formation problem with multiple routings via a double-loop genetic algorithm. European Journal of Operational Research, 109, 286-298.
Gupta, Y., Gupta, M., Kumar, A. & Sundaram, C. (1996). A genetic algorithm-based approach to cell composition and layout design problems. International Journal of Production Research, 34 (2), 447-482.
Haleh, H., Iranmanesh, H. & Kor, H. (2009). A new hybrid evolutionary algorithm for solving multi objective cell formation problem. IEEE International Conference on Computers & Industrial Engineering, 612-616.
Hsu, C.-M. & Su. C.-T. (1998). Multi-objective machine-component grouping in cellular manufacturing: a genetic algorithm. Production Planning & Control, 9 (2), 155-166.
Hu, L. & Yasuda, K. (2005). Minimising material handing cost in cell formation with alternative processing routes by grouping genetic algorithm. International Journal of Production Research, 44 (11), 2133-2167.
Hwang, H. & Sun, J.-U. (1996). A genetic algorithm-based heuristic for the GT cell formation problem. Computers & Industrial Engineering, 30 (4), 941-955.
Islier, A. A. (2005). Group technology by an ant system algorithm. International Journal of Production Research, 43 (5), 913-932.
James, T. L., Brown, E. C. & Keeling, K. B. (2007). A hybrid grouping genetic algorithm for the cell formation problem. Computers & Operations Research, 34, 2059–2079.
Jayaswal, S. & Adil, G. K. (2004). Efficient algorithm for cell formation with sequence data, machine replications and alternative process routings. International Journal of Production Research, 42 (12), 2419-2433.
Joines, J.A., Culbreth, C.T. & King, R.E. (1996). Manufacturing cell design: an integer programming model employing genetic algorithms. IIE Transactions, 28 (1), 69–85.
Kao, Y. & Li, Y.L. (2008). Ant colony recognition systems for part clustering problems. International Journal of Production Research, 46 (15), 4237-4258.
Kao, Y., Lin, J.-C., & Wu, J-.K., (2008). A Differential Evolution Approach for Machine Cell Formation. Proceedings of the IEEE IEEM, 772-775.
Kazerooni, M. L., Luong, H. S. & Abhary, K. (1997). A genetic algorithm based cell design considering alternative routing. International Journal of Computer Integrated Manufacturing Systems, 10 (2), 93–107.
Kennedy, J. & Eberhart, R. C. (1995). Particle swarm optimization. In: Proceedings of IEEE international conference on neural networks, 1942–1948.
Kor, H., Iranmanesh, H., Haleh, H. & Hatefi, S.M. (2009). A multi-objective genetic algorithm for optimization of cellular manufacturing system. International Conference on Computer Engineering and Technology, 1, 252-256.
Lee-Post, A. (2000). Part family identification using a simple genetic algorithm. International Journal of Production Research, 38 (4), 793-810.
Lei, D. & Wu, Z. (2006). Tabu search for multiple-criteria manufacturing cell design. International Journal of Advanced Manufacturing Technology, 28, 950-956.
Li, X., Baki M.F. & Aneja Y.P. (2010). An ant colony optimization meta-heuristic for machine–part cell formation problems. Computers & Operations Research, 37, 2071–2081.
Liu, C.-M. & Wu, J.K. (1993). Machine cell formation: using the simulated annealing algorithm. International Journal of Computer Integrated Manufacturing, 6 (6), 335-349.
Logendran, R. & Karim, Y. (2003). Design of manufacturing cells in the presence of alternative cell locations and material transporters. Journal of the Operational Research Society, 54, 1059–1075.
Logendran, R., Ramakrishna, P. & Sriskandarajah, C. (1994). Tabu search-based heuristics for cellular manufacturing systems in the presence of alternative process plan. International Journal of Production Research, 32 (2), 273-297.
Lozano, S., Adenso-Diaz, B., Eguia, I. & Onieva, L. (1999). A one-step tabu search algorithm for manufacturing cell design. Journal of the Operational Research Society, 50, 509–516.
Mahapatra, S.S. & Sudhakara Pandian, R. (2008). Genetic cell formation using ratio level data in cellular manufacturing systems. International Journal of Advanced Manufacturing Technology, 38, 630-640.
Mahdavi, I., Paydar, M. M., Solimanpur, M. & Heidarzade, A. (2009). Genetic algorithm approach for solving a cell formation problem in cellular manufacturing. Expert Systems with Applications, 36, 6598–6604.
Mahesh, O. & Srinivasan, G. (2006). Multi-objectives for incremental cell formation problem. Annals of Operation Research, 143, 157-170.
Mak, K. L., Peng, P., Wang, X. X. & Lau, T.L. (2007). An ant colony optimization algorithm for scheduling virtual cellular manufacturing systems. International Journal of Computer Integrated Manufacturing, 20 (6), 524 – 537.
Mak, K. L. & Wong, Y. S. (2000). Genetic design of cellular manufacturing systems. Human Factors and Ergonomics in Manufacturing, 10 (2), 177–192.
Mak, K. L., Wong, Y. S. & Wang, X. X. (2000). An Adaptive Genetic Algorithm for Manufacturing Cell Formation. The International Journal of Advanced Manufacturing Technology, 16 (7), 491-497.
Mansouri, S. A., Moattar-Husseini, S. M. & Zegordi, S. H. (2003). A genetic algorithm for multiple objective dealing with exceptional elements in cellular manufacturing. Production Planning & Control, 14 (5), 437-446.
Megala, N., Rajendran, C. & Gopalan, R. (2008). An ant colony algorithm for cell-formation in cellular manufacturing systems. European Journal of Industrial Engineering, 2 (3), 298-335.
Mehdizadeh, E. & Tavakkoli-Moghaddam, R. (2009). A fuzzy particle swarm optimization algorithm for a cell formation problem. Proceedings of IFSA-EUSFLAT, 1768-1772.
Ming, L.C. & Ponnambalam, S.G. (2008). A hybrid GA/PSO for the concurrent design of cellular manufacturing system. IEEE International Conference on Systems, Man and Cybernetics, 1855-1860.
Moon, C. & Gen, M. (1999). A genetic algorithm-based approach for design of independent manufacturing cells. International Journal of Production Economics, 60–61, 421–426.
Morad, N. & Zalzala, A. M. S. (1996). Formulations for cellular manufacturing and batch scheduling using genetic algorithms. UKACC International Conference on CONTROL, 1(427), 473-478.
Murthy, C.V.R. & Srinivasan, G. (1995). Fractional cell formation in group technology. International Journal of Production Research, 33 (5), 1323-1337.
Muruganandam, A., Prabhaharan, G., Asokan, P. & Baskaran, V. (2005). A memetic algorithm approach to the cell formation problem. International Journal of Advanced Manufacturing Technology, 25, 988–997.
Nair G.J. & Narendran, T. T. (1999). ACCORD: a bicriterion algorithm for cell formation using ordinal and ratio-level data. International Journal of Production Research, 37 (3), 539-556.
Neto, A. R. P. & Filho, E. V. G. (2010). A simulation-based evolutionary multiobjective approach to manufacturing cell formation. Computers & Industrial Engineering, 59, 64–74.
Noktehdan, A., Karimi, B. & Kashan, A. H. (2010). A differential evolution algorithm for the manufacturing cell formation problem using group based operators. Expert Systems with Applications, 37 (7), 4822-4829.
Nsakanda, A. L., Diaby, M. & Price, W. L. (2006). Hybrid genetic approach for solving large-scale capacitated cell formation problems with multiple routings. European Journal of Operational Research, 171, 1051–1070.
Onwubolu, G. C. Mutingi, M. (2001). A genetic algorithm approach to cellular manufacturing systems. Computers & Industrial Engineering, 39, 125-144.
Onwubolu, G. C. & Songore, V. (2000). A tabu search approach to cellular manufacturing systems. Production Planning & Control, 11 (2), 153-164.
Pai, P.F., Chang, P.-T & Lee, S.-H. (2005). Part-machine family formation using genetic algorithms in a fuzzy environment. International Journal Advanced Manufacturing Technology, 25, 1175–1179.
Pailla, A., Trindade, A.R., Parada, V. & Ochi, L.S. (2010). A numerical comparison between simulated annealing and evolutionary approaches to the cell formation problem. Expert Systems with Applications, 37, 5476–5483.
Papaioannou, G. & Wilson, J. M. (2009). Fuzzy extensions to integer programming models of cell-formation problems in machine scheduling. Annals of Operations Research, 166 (1), 163-181.
Papaioannou, G. & Wilson, J. M. (2010). The evolution of cell formation problem methodologies based on recent studies (1997–2008): Review and directions for future research. European Journal of Operational Research, 206 (3), 509-521.
Pham, D. T., Afify, A. & Koc, E. (2007). Manufacturing cell formation using the bees algorithm. IPROMS 2007 Innovative Production Machines and Systems Virtual Conference, Cardiff, UK.
Pham, D. T., Ghanbarzadeh, A., Koç, E., Otri, S., Rahim, S. & Zaidi, M. (2006). The bees algorithm – A novel tool for complex optimization problems, Proceedings of IPROMS Conference, 454–461.
Pierreval, H. & Plaquin, M.-F. (1998). An evolutionary approach of multi criteria manufacturing cell formation. International Transactions in Operational Research, 5 (1), 13-25.
Pillai, V. M. & Subbarao, K. (2007). A robust cellular manufacturing system design for dynamic part population using a genetic algorithm. International Journal of Production Research, 46 (18), 5191-5210.
Plaquin, M.-F. & Pierreval, H. (2000). Cell formation using evolutionary algorithms with certain constraints. International Journal of Production Economics, 64, 267-278.
Ponnambalam, S. G., SudhakaraPandian, R., Mohapatra, S.S. & Saravanasankar, S. (2007). Cell formation with workload data in cellular manufacturing system using genetic algorithm. Proceedings of the IEEE IEEM, 674-678.
Prabhaharan, G., Muruganandam, A., Asokan, P. & Girish, B. S. (2005). Machine cell formation for cellular manufacturing systems using an ant colony system approach. International Journal of Advanced Manufacturing Technology, 25, 1013–1019.
Rajagopalan, R. & Fonseca, D. J. (2005). Volume sensitivity analysis for manufacturing cells: A genetic algorithm approach. Journal of Advanced Manufacturing Systems, 4 (2), 167–183.
Rajagopalan, R. & Fonseca, D. J. (2006). A genetic algorithm approach for machine cell formation. Journal of Advanced Manufacturing Systems, 5 (1), 27-44.
Rodrigues, L. C. A. & Weller, T. R. (2008). Cell Formation with Alternative Routings and Capacity Considerations: A Hybrid Tabu Search Approach. Lecture Notes in Computer Science, MICAI 2008: 5317, 482-491.
Rogers, D. F. & Kulkarni, S. S. (2005). Optimal bivariate clustering and a genetic algorithm with an application in cellular manufacturing. European Journal of Operational Research, 160, 423–444.
Safaei, N., Saidi-Mehrabad, M. & Jabal-Ameli, M.S. (2008). A hybrid simulated annealing for solving an extended model of dynamic cellular manufacturing system, European Journal of Operational Research, 185, 563–592.
Schaller, J. (2005). Tabu search procedures for the cell formation problem with intra-cell transfer costs as a function of cell size. Computers & Industrial Engineering, 49, 449–462.
Selim, M. S., Askin, R. G. & Vakharia, A. J. (1998). Cell formation in group technology: review evaluation and directions for future research. Computers & Industrial Engineering, 34 (1), 3-20.
Sofianopoulou, S. (1999). Manufacturing cells design with alternative process plans and/or replicate machines. International Journal of Production Research, 37 (3), 707-720.
Solimanpur, M., Saeedi, S. & Mahdavi, I. (2010). Solving cell formation problem in cellular manufacturing using ant-colony-based optimization. International Journal of Advanced Manufacturing Technology, DOI 10.1007/s00170-010-2587-5.
Solimanpur, M., Vrat, P. & Shankar, R. (2004). A multi-objective genetic algorithm approach to the design of cellular manufacturing systems. International Journal of Production Research, 42 (7), 1419-1441.
Souilah, A. (1995). Simulated annealing for manufacturing systems layout design. European Journal of Operational Research, 82, 592-614.
Spiliopoulos, K. & Sofianopoulou, S. (2003). Designing manufacturing cells: a staged approach and a tabu search algorithm. International Journal of Production Research, 41 (11), 2531–2546.
Spiliopoulos, K. & Sofianopoulou, S. (2008). An efficient ant colony optimization system for the manufacturing cells formation problem. International Journal of Advanced Manufacturing Technology, 36, 589–597.
Su, C.-T. & Hsu, C.-M. (1998). Multi-objective machine-part cell formation through parallel simulated annealing. International Journal of Production Research, 36 (8), 2185-2207.
Sudhakarapandian R. (2007). Application of soft computing techniques for cell formation considering operational time and sequence. PhD thesis, submitted at NIT Rourkela, India.
Suer, G. A. (1997). Evolutionary Programming for Designing Manufacturing Cells. IEEE International Conference on Evolutionary Computation, 379-384.
Sun, D., Lin, L. & Batta, R. (1995). Cell formation using tabu search. Computers & Industrial Engineering, 28 (3), 485-494.
Tariq, A., Hussain, I. & Ghafoor, A. (2009). A hybrid genetic algorithm for machine-part grouping. Computers & Industrial Engineering, 56, 347–356.
Tavakkoli-Moghaddam, R., Aryanezhad, M. B., Safaei, N. & Azaron, A. (2005). Solving a dynamic cell formation problem using meta-heuristics. Applied Mathematics and Computation, 170, 761–780.
Tavakkoli-Moghaddam, R., Aryanezhad, M.B., Safaei, N., Vasei, M. & Azaron, A. (2007). A new approach for the cellular manufacturing problem in fuzzy dynamic conditions by a genetic algorithm. Journal of Intelligent & Fuzzy Systems, 18, 363–376.
Tavakkoli-Moghaddam, R., Rahimi-Vahed, A.R., Ghodratnama, A. & A. Siadat, A. (2009). A simulated annealing method for solving a new mathematical model of a multi-criteria cell formation problem with capital constraints, Advances in Engineering Software, 40, 268–273.
Tavakkoli-Moghaddam, R., Safaei, N. & Sassani, F. (2008). A new solution for a dynamic cell formation problem with alternative routing and machine costs using simulated annealing. Journal of the Operational Research Society, 23, 916–924.
Tunnukij, T. & Hicks, C. (2009). An enhanced grouping genetic algorithm for solving the cell formation problem. International Journal of Production Research, 47 (7), 1989-2007.
Vakharia, A. J. & Chang, Y.-L. (1997). Cell formation in group technology: a combinatorial search approach. International Journal of Production Research, 35 (7), 2025-2043.
Venugopal, V. & Narendran, T. T. (1992). Cell formation in manufacturing systems through simulated annealing: An experimental evaluation. European Journal of Operational Research, 63 (3), 409-422.
Venugopal, V. & Narendran, T.T. (1992). A genetic algorithm approach to the machine-component grouping problem with multiple objectives. Computers & Industrial Engineering, 22 (4), 469-480.
Vin, E., Lit, P.D. & Delchambre, A. (2005). A multi-objective grouping genetic algorithm for the cell formation problem with alternative routings. Journal of Intelligent Manufacturing, 16, 189–205.
Wu, T.-H., Chang, C.-C. & Yeh, J.-Y. (2007). A hybrid heuristic algorithm adopting both Boltzmann function and mutation operator for manufacturing cell formation problems. International Journal of Production Economics, 120, 669–688.
Wu, T.-H., Chung, S.-H. & Chang, C.-C. (2008). A simulated annealing algorithm for manufacturing cell formation problems. Expert Systems with Applications, 34, 1609–1617.
Wu, T.-H., Chung, S.-H. & Chang, C.-C. (2009). Hybrid simulated annealing algorithm with mutation operator to the cell formation problem with alternative process routings. Expert Systems with Applications, 36, 3652–3661.
Wu, T.-H., Chung, S.-H. & Chang, C.-C. (2010). A water flow-like algorithm for manufacturing cell formation problems. European Journal of Operational Research, 205, 346–360.
Wu, T.-H., Low, C. & Wu, W.-T. (2004). A tabu search approach to the cell formation problem. International Journal of Advanced Manufacturing Technology, 23, 916-924.
Wu, T.-H., Yeh, J.-Y. & Chang, C.-C. (2007). A hybrid simulated annealing algorithm to the cell formation problem with alternative process plans, International Conference on Convergence Information Technology, 199-203.
Wu, T.-H., Yeh, J.-Y. & Chang, C.-C. (2009). A hybrid tabu search algorithm to cell formation problem and its variants. World Academy of Science, Engineering and Technology, 53, 1090-1094.
Wu, X., Chu, C.-H. & Wang, Yan, W. (2002). A genetic algorithm for integrated cell formation and layout decisions. IEEE Proceedings of the 2002 congress on Evolutionary Computation, 2, 1866-1871.
Wu, X., Chu, C.-H. &Wang, Yan, W. (2006). Concurrent design of cellular manufacturing systems: a genetic algorithm approach. International Journal of Production Research, 44 (6), 1217-1241.
Wu, X., Chu, C.-H., Wang & Yan, W. (2007). A genetic algorithm for cellular manufacturing design and layout. European Journal of Operational Research, 181, 156–167.
Xambre, A.R. & Vilarinho, P.M. (2003). A simulated annealing approach for manufacturing cell formation with multiple identical machines. European Journal of Operational Research, 151, 434–446.
Xing, B., Gao, W.-J., Nelwamondo, F.V., Battle, K. & Marwala, T. (2010). Part-Machine Clustering: The Comparison between Adaptive Resonance Theory Neural Network and Ant Colony System. Lecture Notes in Electrical Engineering, Advances in Neural Network Research and Applications, 67 (8), 747-755.
Yang, F.-C. & Wang, Y.-P. (2007). Water flow-like algorithm for object grouping problems. Journal of the Chinese Institute of Industrial Engineers, 24 (6), 475–488.
Yasuda, K., Hu, L. & Yin, Y. (2005). A grouping genetic algorithm for the multi-objective cell formation problem. International Journal of Production Research, 43 (4), 829-853.
Zhao, C. & Wu, Z. (2000). A genetic algorithm for manufacturing cell formation with multiple routes and multiple objectives. International Journal of Production Research, 38 (2), 385-395.
Zhao, L., Tsujimura, Y. & Gen, M. (1996). Genetic algorithm for fuzzy clustering. Proceedings of IEEE International Conference on Evolutionary Computation, 716-719.
Zhou, M. & Askin, R.G. (1998). Formation of general GT cells: an operation based approach. Computers & Industrial Engineering, 34 (1), 147-157.
Zolfaghari, S. & Liang, M. (1998). Machine cell/part family formation considering processing times and machine capacities: a simulated annealing approach. Computers & Industrial Engineering, 34 (4), 813-823.
Zolfaghari, S. & Liang, M. (2003). A new genetic algorithm for the machine/part grouping problem involving processing times and lot sizes. Computers & Industrial Engineering, 45, 713–731.
Zolfaghari, S. & Liang, M. (2004). Comprehensive machine cell/part family formation using genetic algorithms. Journal of Manufacturing Technology Management, 15 (6), 433-444.
Abduelmola, A. I. & Taboun, S.M. (2000). A simulated annealing algorithm for designing cellular manufacturing systems with productivity consideration. Production Planning & Control, 11 (6), 589-597.
Adenso-Diaz, B., Lozano, S., Racero, J. & Guerrero, F. (2001). Machine cell formation in generalized group technology. Computers and Industrial Engineering, 41, 227-240.
Adil, G. K. & Rajamani, D. (2000). The trade-off between intracell and intercell moves in group technology cell formation. Journal of Manufacturing Systems, 19 (5), 305-317.
Aljaber, N., Baek W. & Chen, C.-L. (1997). A tabu search approach to the cell formation problem. Computers and Industrial Engineering, 32 (1), 169–185.
Al-Sultan, K.S. & Fedjki, C.A. (1997). A genetic algorithm for the part family formation problem. Production Planning & Control, 8 (8), 788-796.
Andres, C. & Lozano, S. (2006). A particle swarm optimization algorithm for part–machine grouping. Robotics and Computer-Integrated Manufacturing, 22, 468–474.
Anvari, M., Mehrabad, M.S. & Barzinpour, F. (2010). Machine–part cell formation using a hybrid particle swarm optimization. International Journal of Advanced Manufacturing Technology, 47, 745-754.
Arkat, J., Saidi, M. & Abbasi, B. (2007). Applying simulated annealing to cellular manufacturing system design. International Journal of Advanced Manufacturing Technology, 32, 531-536.
Ateme-Nguema, B., H. & Dao, T.,-M. (2007). Optimization of cellular manufacturing systems design using the hybrid approach based on the ant colony and tabu search techniques. Proceedings of the IEEE IEEM, 668-673.
Ateme-Nguema, B., H. & Dao, T.,-M. (2009). Quantized Hopfield networks and tabu search for manufacturing cell formation problems. International Journal of Production Economics, 121, 88-98.
Bajestani, M.A., Rabbani, M., Rahimi-Vahed, A.R. & Khoshkhou, G.B. (2009). A multi-objective scatter search for a dynamic cell formation problem. Computers & Operations Research, 36, 777–794.
Baykasoglu, A., Gindy, N.N.Z. & Cobb R. C. (2001). Capability based formulation and solution of multiple objective cell formation problems using simulated annealing. Integrated Manufacturing Systems, 12 (4), 258-275.
Bianchi, L., Dorigo, M., Gambardella, L.M. & Gutjahr, W.J. (2009). A survey on meta-heuristics for stochastic combinatorial optimization. International Journal of Natural Computing, 8 (2), 239-287.
Boctor, F. F. (1991). A linear formulation of the machine-part cell formation problem. International Journal of Production Research, 29 (2), 343-356.
Boulif, M. & Atif. K. (2006). A new branch-&-bound-enhanced genetic algorithm for the manufacturing cell formation problem. Computers & Operations Research, 33, 2219–2245.
Boulif, M. & Atif. K. (2008). A new fuzzy genetic algorithm for the dynamic bi-objective cell formation problem considering passive and active strategies. International Journal of Approximate Reasoning, 47, 141-165.
Brown, E.C. & Sumichrast, R.T. (2001). CF-GGA: a grouping genetic algorithm for the cell formation problem, International Journal of Production Research, 39 (16), 3651-3669.
Burbidge, J.L. (1963). Production flow Analysis. Production Engineer, 42 (12), 742-752.
Cao, D. & Chen, M. (2004). Using penalty function and tabu search to solve cell formation problems with fixed cell cost. Computers & Operations Research, 31, 21–37.
Cao, D., Defersha, F. M. & Chen, M. (2009). Grouping operations in cellular manufacturing considering alternative routings and the impact of run length on product quality. International Journal of Production Research, 47 (4), 989-1013.
Caprihan, R., Slomp, J., Gursaran & Agarwal, K. (2009). A quantum particle swarm optimization approach for the design of virtual manufacturing cells. Proceedings of the IEEE IEEM, 125-129.
Car, Z. and Mikac, T. (2006). Evolutionary approach for solving cell-formation problem in cell manufacturing. Advanced Engineering Informatics, 20, 227–232.
Caux, C., Bruniaux, R. & Pierreval, H. (2000). Cell formation with alternative process plans and machine capacity constraints: A new combined approach. International Journal of Production Economics, 64, 279-284.
Chan, F. T. S., Lau, K. W. & Chan, P. L. Y. (2004). A holistic approach to manufacturing cell formation: incorporation of machine flexibility and machine aggregation. Journal of Engineering Manufacture, 218 (B), 1279-1296.
Chan, F.T.S., Lau, K.W., Chan, P.L.Y. & Choy, K.L. (2006). Two-stage approach for machine-part grouping and cell layout problems. Robotics and Computer-Integrated Manufacturing, 22, 217–238.
Chan, F.T.S., Lau, K.W., Chan, L.Y. & Lo, V.H.Y. (2008). Cell formation problem with consideration of both intracellular and intercellular movements, International Journal of Production Research, 46 (10), 2589–2620.
Chen, W.-H. & Srivastava, B. (1994). Simulated annealing procedures for forming machine cells in group technology. European Journal of Operational Research, 75 (1), 100-111.
Chi, S.-C. & Lin, I. (2002). Cellular formation based on evolutionary optimization of granules. Proceedings of IIE Annual Conference, Norcross, 1-6.
Chi, S.-C. & Yan, M.-C. (2004). A fuzzy genetic algorithm for high-tech cellular manufacturing system design. IEEE Annual Meeting of the Fuzzy Information, 2, 907-912.
Chu, C.-H. & Chang-Chun-Tsai. (2001). A Heuristic Genetic Algorithm for Grouping Manufacturing Cells, IEEE Proceedings of the 2001 congress on Evolutionary Computation, 1, 310-317.
Das, K., Lashkari, R. S. & Sengupta, S. (2006). Reliability considerations in the design of cellular manufacturing systems a simulated annealing-based approach. International Journal of Quality & Reliability Management, 23 (7), 880-904.
Darwin, C. (1929). The Origin of Species by Means of Natural Selection or the Preservation of Favored Races in the Struggle for Life. The Book League of America, (originally published in 1859).
Defersha, F. M. & Chen, M. (2006). Machine cell formation using a mathematical model and a genetic-algorithm-based heuristic. International Journal of Production Research, 44 (12), 2421–2444.
Defersha, F. M. & Chen, M. (2008a). A linear programming embedded genetic algorithm for an integrated cell formation and lot sizing considering product quality. European Journal of Operational Research 187, 46–69.
Defersha, F. M. & Chen, M. (2008b). A parallel genetic algorithm for dynamic cell formation in cellular manufacturing systems. International Journal of Production Research, 46 (22), 6389–6413.
Defersha, F. M. & Chen, M. (2008c). A parallel multiple Markov chain simulated annealing for multi-period manufacturing cell formation problems. International Journal of Advanced Manufacturing Technology, 37, 140-156.
Deljoo, V., Al-e-hashem, S.M.J.M., Deljoo, F. & Aryanezhad, M.B. (2010). Using genetic algorithm to solve dynamic cell formation problem. Applied Mathematical Modelling, 34, 1078–1092.
Dimopoulos, C. (2006). Multi-objective optimization of manufacturing cell design. International Journal of Production Research, 44 (22), 4855-4875.
Dimopoulos, C. & Mort, N. (2001). A hierarchical clustering methodology based on genetic programming for the solution of simple cell-formation problems. International Journal of Production Research, 39 (1), 1-19.
Dorigo, M. & Stutzle, T. (2004). Ant Colony Optimization. MIT Press, Cambridge, MA, USA.
Durán, O., Rodriguez, N. & Consalter, L.A. (2010). Collaborative particle swarm optimization with a data mining technique for manufacturing cell design. Expert Systems with Applications, 37, 1563–1567.
Fan, J., Cao, M. & Feng, D. (2010). Multi-objective dual resource-constrained model for cell formation problem. Proceedings of the IEEE ICMIT, 1031-1036.
Filho, E. V. G. & Tiberti, A. J. (2006). A group genetic algorithm for the machine cell formation problem. International Journal of Production Economics, 102, 1–21.
Fisher, R. A. (1930). The genetical theory of natural selection. Oxford: Clarendon Press.
Foulds, L. R., French, A. P. & Wilson, J. M., (2006). The sustainable cell formation problem: manufacturing cell creation with machine modification costs. Computers & Operations Research, 33, 1010–1032.
Giri, R., Srinivas, J. & Mouli, K. V. V. C. (2007). An optimal design approach for a cellular manufacturing system. Journal of Engineering Manufacture, 22 (B), 1101-1106.
Glover, F. & Laguna, M. (1997). Tabu Search. Kluwer Academic Publishers, Norwell, MA, USA.
Goldberg, D. E. (1989). Genetic Algorithms in Search Optimization and Machine Learning. Addison Wesley.
Goncalves, J.F. & Resende, M.G.C. (2004). An evolutionary algorithm for manufacturing cell formation. Computers & Industrial Engineering, 47, 247–273.
Gravel, M., Nsakanda, A. L. & Price, W. (1998). Efficient solutions to the cell-formation problem with multiple routings via a double-loop genetic algorithm. European Journal of Operational Research, 109, 286-298.
Gupta, Y., Gupta, M., Kumar, A. & Sundaram, C. (1996). A genetic algorithm-based approach to cell composition and layout design problems. International Journal of Production Research, 34 (2), 447-482.
Haleh, H., Iranmanesh, H. & Kor, H. (2009). A new hybrid evolutionary algorithm for solving multi objective cell formation problem. IEEE International Conference on Computers & Industrial Engineering, 612-616.
Hsu, C.-M. & Su. C.-T. (1998). Multi-objective machine-component grouping in cellular manufacturing: a genetic algorithm. Production Planning & Control, 9 (2), 155-166.
Hu, L. & Yasuda, K. (2005). Minimising material handing cost in cell formation with alternative processing routes by grouping genetic algorithm. International Journal of Production Research, 44 (11), 2133-2167.
Hwang, H. & Sun, J.-U. (1996). A genetic algorithm-based heuristic for the GT cell formation problem. Computers & Industrial Engineering, 30 (4), 941-955.
Islier, A. A. (2005). Group technology by an ant system algorithm. International Journal of Production Research, 43 (5), 913-932.
James, T. L., Brown, E. C. & Keeling, K. B. (2007). A hybrid grouping genetic algorithm for the cell formation problem. Computers & Operations Research, 34, 2059–2079.
Jayaswal, S. & Adil, G. K. (2004). Efficient algorithm for cell formation with sequence data, machine replications and alternative process routings. International Journal of Production Research, 42 (12), 2419-2433.
Joines, J.A., Culbreth, C.T. & King, R.E. (1996). Manufacturing cell design: an integer programming model employing genetic algorithms. IIE Transactions, 28 (1), 69–85.
Kao, Y. & Li, Y.L. (2008). Ant colony recognition systems for part clustering problems. International Journal of Production Research, 46 (15), 4237-4258.
Kao, Y., Lin, J.-C., & Wu, J-.K., (2008). A Differential Evolution Approach for Machine Cell Formation. Proceedings of the IEEE IEEM, 772-775.
Kazerooni, M. L., Luong, H. S. & Abhary, K. (1997). A genetic algorithm based cell design considering alternative routing. International Journal of Computer Integrated Manufacturing Systems, 10 (2), 93–107.
Kennedy, J. & Eberhart, R. C. (1995). Particle swarm optimization. In: Proceedings of IEEE international conference on neural networks, 1942–1948.
Kor, H., Iranmanesh, H., Haleh, H. & Hatefi, S.M. (2009). A multi-objective genetic algorithm for optimization of cellular manufacturing system. International Conference on Computer Engineering and Technology, 1, 252-256.
Lee-Post, A. (2000). Part family identification using a simple genetic algorithm. International Journal of Production Research, 38 (4), 793-810.
Lei, D. & Wu, Z. (2006). Tabu search for multiple-criteria manufacturing cell design. International Journal of Advanced Manufacturing Technology, 28, 950-956.
Li, X., Baki M.F. & Aneja Y.P. (2010). An ant colony optimization meta-heuristic for machine–part cell formation problems. Computers & Operations Research, 37, 2071–2081.
Liu, C.-M. & Wu, J.K. (1993). Machine cell formation: using the simulated annealing algorithm. International Journal of Computer Integrated Manufacturing, 6 (6), 335-349.
Logendran, R. & Karim, Y. (2003). Design of manufacturing cells in the presence of alternative cell locations and material transporters. Journal of the Operational Research Society, 54, 1059–1075.
Logendran, R., Ramakrishna, P. & Sriskandarajah, C. (1994). Tabu search-based heuristics for cellular manufacturing systems in the presence of alternative process plan. International Journal of Production Research, 32 (2), 273-297.
Lozano, S., Adenso-Diaz, B., Eguia, I. & Onieva, L. (1999). A one-step tabu search algorithm for manufacturing cell design. Journal of the Operational Research Society, 50, 509–516.
Mahapatra, S.S. & Sudhakara Pandian, R. (2008). Genetic cell formation using ratio level data in cellular manufacturing systems. International Journal of Advanced Manufacturing Technology, 38, 630-640.
Mahdavi, I., Paydar, M. M., Solimanpur, M. & Heidarzade, A. (2009). Genetic algorithm approach for solving a cell formation problem in cellular manufacturing. Expert Systems with Applications, 36, 6598–6604.
Mahesh, O. & Srinivasan, G. (2006). Multi-objectives for incremental cell formation problem. Annals of Operation Research, 143, 157-170.
Mak, K. L., Peng, P., Wang, X. X. & Lau, T.L. (2007). An ant colony optimization algorithm for scheduling virtual cellular manufacturing systems. International Journal of Computer Integrated Manufacturing, 20 (6), 524 – 537.
Mak, K. L. & Wong, Y. S. (2000). Genetic design of cellular manufacturing systems. Human Factors and Ergonomics in Manufacturing, 10 (2), 177–192.
Mak, K. L., Wong, Y. S. & Wang, X. X. (2000). An Adaptive Genetic Algorithm for Manufacturing Cell Formation. The International Journal of Advanced Manufacturing Technology, 16 (7), 491-497.
Mansouri, S. A., Moattar-Husseini, S. M. & Zegordi, S. H. (2003). A genetic algorithm for multiple objective dealing with exceptional elements in cellular manufacturing. Production Planning & Control, 14 (5), 437-446.
Megala, N., Rajendran, C. & Gopalan, R. (2008). An ant colony algorithm for cell-formation in cellular manufacturing systems. European Journal of Industrial Engineering, 2 (3), 298-335.
Mehdizadeh, E. & Tavakkoli-Moghaddam, R. (2009). A fuzzy particle swarm optimization algorithm for a cell formation problem. Proceedings of IFSA-EUSFLAT, 1768-1772.
Ming, L.C. & Ponnambalam, S.G. (2008). A hybrid GA/PSO for the concurrent design of cellular manufacturing system. IEEE International Conference on Systems, Man and Cybernetics, 1855-1860.
Moon, C. & Gen, M. (1999). A genetic algorithm-based approach for design of independent manufacturing cells. International Journal of Production Economics, 60–61, 421–426.
Morad, N. & Zalzala, A. M. S. (1996). Formulations for cellular manufacturing and batch scheduling using genetic algorithms. UKACC International Conference on CONTROL, 1(427), 473-478.
Murthy, C.V.R. & Srinivasan, G. (1995). Fractional cell formation in group technology. International Journal of Production Research, 33 (5), 1323-1337.
Muruganandam, A., Prabhaharan, G., Asokan, P. & Baskaran, V. (2005). A memetic algorithm approach to the cell formation problem. International Journal of Advanced Manufacturing Technology, 25, 988–997.
Nair G.J. & Narendran, T. T. (1999). ACCORD: a bicriterion algorithm for cell formation using ordinal and ratio-level data. International Journal of Production Research, 37 (3), 539-556.
Neto, A. R. P. & Filho, E. V. G. (2010). A simulation-based evolutionary multiobjective approach to manufacturing cell formation. Computers & Industrial Engineering, 59, 64–74.
Noktehdan, A., Karimi, B. & Kashan, A. H. (2010). A differential evolution algorithm for the manufacturing cell formation problem using group based operators. Expert Systems with Applications, 37 (7), 4822-4829.
Nsakanda, A. L., Diaby, M. & Price, W. L. (2006). Hybrid genetic approach for solving large-scale capacitated cell formation problems with multiple routings. European Journal of Operational Research, 171, 1051–1070.
Onwubolu, G. C. Mutingi, M. (2001). A genetic algorithm approach to cellular manufacturing systems. Computers & Industrial Engineering, 39, 125-144.
Onwubolu, G. C. & Songore, V. (2000). A tabu search approach to cellular manufacturing systems. Production Planning & Control, 11 (2), 153-164.
Pai, P.F., Chang, P.-T & Lee, S.-H. (2005). Part-machine family formation using genetic algorithms in a fuzzy environment. International Journal Advanced Manufacturing Technology, 25, 1175–1179.
Pailla, A., Trindade, A.R., Parada, V. & Ochi, L.S. (2010). A numerical comparison between simulated annealing and evolutionary approaches to the cell formation problem. Expert Systems with Applications, 37, 5476–5483.
Papaioannou, G. & Wilson, J. M. (2009). Fuzzy extensions to integer programming models of cell-formation problems in machine scheduling. Annals of Operations Research, 166 (1), 163-181.
Papaioannou, G. & Wilson, J. M. (2010). The evolution of cell formation problem methodologies based on recent studies (1997–2008): Review and directions for future research. European Journal of Operational Research, 206 (3), 509-521.
Pham, D. T., Afify, A. & Koc, E. (2007). Manufacturing cell formation using the bees algorithm. IPROMS 2007 Innovative Production Machines and Systems Virtual Conference, Cardiff, UK.
Pham, D. T., Ghanbarzadeh, A., Koç, E., Otri, S., Rahim, S. & Zaidi, M. (2006). The bees algorithm – A novel tool for complex optimization problems, Proceedings of IPROMS Conference, 454–461.
Pierreval, H. & Plaquin, M.-F. (1998). An evolutionary approach of multi criteria manufacturing cell formation. International Transactions in Operational Research, 5 (1), 13-25.
Pillai, V. M. & Subbarao, K. (2007). A robust cellular manufacturing system design for dynamic part population using a genetic algorithm. International Journal of Production Research, 46 (18), 5191-5210.
Plaquin, M.-F. & Pierreval, H. (2000). Cell formation using evolutionary algorithms with certain constraints. International Journal of Production Economics, 64, 267-278.
Ponnambalam, S. G., SudhakaraPandian, R., Mohapatra, S.S. & Saravanasankar, S. (2007). Cell formation with workload data in cellular manufacturing system using genetic algorithm. Proceedings of the IEEE IEEM, 674-678.
Prabhaharan, G., Muruganandam, A., Asokan, P. & Girish, B. S. (2005). Machine cell formation for cellular manufacturing systems using an ant colony system approach. International Journal of Advanced Manufacturing Technology, 25, 1013–1019.
Rajagopalan, R. & Fonseca, D. J. (2005). Volume sensitivity analysis for manufacturing cells: A genetic algorithm approach. Journal of Advanced Manufacturing Systems, 4 (2), 167–183.
Rajagopalan, R. & Fonseca, D. J. (2006). A genetic algorithm approach for machine cell formation. Journal of Advanced Manufacturing Systems, 5 (1), 27-44.
Rodrigues, L. C. A. & Weller, T. R. (2008). Cell Formation with Alternative Routings and Capacity Considerations: A Hybrid Tabu Search Approach. Lecture Notes in Computer Science, MICAI 2008: 5317, 482-491.
Rogers, D. F. & Kulkarni, S. S. (2005). Optimal bivariate clustering and a genetic algorithm with an application in cellular manufacturing. European Journal of Operational Research, 160, 423–444.
Safaei, N., Saidi-Mehrabad, M. & Jabal-Ameli, M.S. (2008). A hybrid simulated annealing for solving an extended model of dynamic cellular manufacturing system, European Journal of Operational Research, 185, 563–592.
Schaller, J. (2005). Tabu search procedures for the cell formation problem with intra-cell transfer costs as a function of cell size. Computers & Industrial Engineering, 49, 449–462.
Selim, M. S., Askin, R. G. & Vakharia, A. J. (1998). Cell formation in group technology: review evaluation and directions for future research. Computers & Industrial Engineering, 34 (1), 3-20.
Sofianopoulou, S. (1999). Manufacturing cells design with alternative process plans and/or replicate machines. International Journal of Production Research, 37 (3), 707-720.
Solimanpur, M., Saeedi, S. & Mahdavi, I. (2010). Solving cell formation problem in cellular manufacturing using ant-colony-based optimization. International Journal of Advanced Manufacturing Technology, DOI 10.1007/s00170-010-2587-5.
Solimanpur, M., Vrat, P. & Shankar, R. (2004). A multi-objective genetic algorithm approach to the design of cellular manufacturing systems. International Journal of Production Research, 42 (7), 1419-1441.
Souilah, A. (1995). Simulated annealing for manufacturing systems layout design. European Journal of Operational Research, 82, 592-614.
Spiliopoulos, K. & Sofianopoulou, S. (2003). Designing manufacturing cells: a staged approach and a tabu search algorithm. International Journal of Production Research, 41 (11), 2531–2546.
Spiliopoulos, K. & Sofianopoulou, S. (2008). An efficient ant colony optimization system for the manufacturing cells formation problem. International Journal of Advanced Manufacturing Technology, 36, 589–597.
Su, C.-T. & Hsu, C.-M. (1998). Multi-objective machine-part cell formation through parallel simulated annealing. International Journal of Production Research, 36 (8), 2185-2207.
Sudhakarapandian R. (2007). Application of soft computing techniques for cell formation considering operational time and sequence. PhD thesis, submitted at NIT Rourkela, India.
Suer, G. A. (1997). Evolutionary Programming for Designing Manufacturing Cells. IEEE International Conference on Evolutionary Computation, 379-384.
Sun, D., Lin, L. & Batta, R. (1995). Cell formation using tabu search. Computers & Industrial Engineering, 28 (3), 485-494.
Tariq, A., Hussain, I. & Ghafoor, A. (2009). A hybrid genetic algorithm for machine-part grouping. Computers & Industrial Engineering, 56, 347–356.
Tavakkoli-Moghaddam, R., Aryanezhad, M. B., Safaei, N. & Azaron, A. (2005). Solving a dynamic cell formation problem using meta-heuristics. Applied Mathematics and Computation, 170, 761–780.
Tavakkoli-Moghaddam, R., Aryanezhad, M.B., Safaei, N., Vasei, M. & Azaron, A. (2007). A new approach for the cellular manufacturing problem in fuzzy dynamic conditions by a genetic algorithm. Journal of Intelligent & Fuzzy Systems, 18, 363–376.
Tavakkoli-Moghaddam, R., Rahimi-Vahed, A.R., Ghodratnama, A. & A. Siadat, A. (2009). A simulated annealing method for solving a new mathematical model of a multi-criteria cell formation problem with capital constraints, Advances in Engineering Software, 40, 268–273.
Tavakkoli-Moghaddam, R., Safaei, N. & Sassani, F. (2008). A new solution for a dynamic cell formation problem with alternative routing and machine costs using simulated annealing. Journal of the Operational Research Society, 23, 916–924.
Tunnukij, T. & Hicks, C. (2009). An enhanced grouping genetic algorithm for solving the cell formation problem. International Journal of Production Research, 47 (7), 1989-2007.
Vakharia, A. J. & Chang, Y.-L. (1997). Cell formation in group technology: a combinatorial search approach. International Journal of Production Research, 35 (7), 2025-2043.
Venugopal, V. & Narendran, T. T. (1992). Cell formation in manufacturing systems through simulated annealing: An experimental evaluation. European Journal of Operational Research, 63 (3), 409-422.
Venugopal, V. & Narendran, T.T. (1992). A genetic algorithm approach to the machine-component grouping problem with multiple objectives. Computers & Industrial Engineering, 22 (4), 469-480.
Vin, E., Lit, P.D. & Delchambre, A. (2005). A multi-objective grouping genetic algorithm for the cell formation problem with alternative routings. Journal of Intelligent Manufacturing, 16, 189–205.
Wu, T.-H., Chang, C.-C. & Yeh, J.-Y. (2007). A hybrid heuristic algorithm adopting both Boltzmann function and mutation operator for manufacturing cell formation problems. International Journal of Production Economics, 120, 669–688.
Wu, T.-H., Chung, S.-H. & Chang, C.-C. (2008). A simulated annealing algorithm for manufacturing cell formation problems. Expert Systems with Applications, 34, 1609–1617.
Wu, T.-H., Chung, S.-H. & Chang, C.-C. (2009). Hybrid simulated annealing algorithm with mutation operator to the cell formation problem with alternative process routings. Expert Systems with Applications, 36, 3652–3661.
Wu, T.-H., Chung, S.-H. & Chang, C.-C. (2010). A water flow-like algorithm for manufacturing cell formation problems. European Journal of Operational Research, 205, 346–360.
Wu, T.-H., Low, C. & Wu, W.-T. (2004). A tabu search approach to the cell formation problem. International Journal of Advanced Manufacturing Technology, 23, 916-924.
Wu, T.-H., Yeh, J.-Y. & Chang, C.-C. (2007). A hybrid simulated annealing algorithm to the cell formation problem with alternative process plans, International Conference on Convergence Information Technology, 199-203.
Wu, T.-H., Yeh, J.-Y. & Chang, C.-C. (2009). A hybrid tabu search algorithm to cell formation problem and its variants. World Academy of Science, Engineering and Technology, 53, 1090-1094.
Wu, X., Chu, C.-H. & Wang, Yan, W. (2002). A genetic algorithm for integrated cell formation and layout decisions. IEEE Proceedings of the 2002 congress on Evolutionary Computation, 2, 1866-1871.
Wu, X., Chu, C.-H. &Wang, Yan, W. (2006). Concurrent design of cellular manufacturing systems: a genetic algorithm approach. International Journal of Production Research, 44 (6), 1217-1241.
Wu, X., Chu, C.-H., Wang & Yan, W. (2007). A genetic algorithm for cellular manufacturing design and layout. European Journal of Operational Research, 181, 156–167.
Xambre, A.R. & Vilarinho, P.M. (2003). A simulated annealing approach for manufacturing cell formation with multiple identical machines. European Journal of Operational Research, 151, 434–446.
Xing, B., Gao, W.-J., Nelwamondo, F.V., Battle, K. & Marwala, T. (2010). Part-Machine Clustering: The Comparison between Adaptive Resonance Theory Neural Network and Ant Colony System. Lecture Notes in Electrical Engineering, Advances in Neural Network Research and Applications, 67 (8), 747-755.
Yang, F.-C. & Wang, Y.-P. (2007). Water flow-like algorithm for object grouping problems. Journal of the Chinese Institute of Industrial Engineers, 24 (6), 475–488.
Yasuda, K., Hu, L. & Yin, Y. (2005). A grouping genetic algorithm for the multi-objective cell formation problem. International Journal of Production Research, 43 (4), 829-853.
Zhao, C. & Wu, Z. (2000). A genetic algorithm for manufacturing cell formation with multiple routes and multiple objectives. International Journal of Production Research, 38 (2), 385-395.
Zhao, L., Tsujimura, Y. & Gen, M. (1996). Genetic algorithm for fuzzy clustering. Proceedings of IEEE International Conference on Evolutionary Computation, 716-719.
Zhou, M. & Askin, R.G. (1998). Formation of general GT cells: an operation based approach. Computers & Industrial Engineering, 34 (1), 147-157.
Zolfaghari, S. & Liang, M. (1998). Machine cell/part family formation considering processing times and machine capacities: a simulated annealing approach. Computers & Industrial Engineering, 34 (4), 813-823.
Zolfaghari, S. & Liang, M. (2003). A new genetic algorithm for the machine/part grouping problem involving processing times and lot sizes. Computers & Industrial Engineering, 45, 713–731.
Zolfaghari, S. & Liang, M. (2004). Comprehensive machine cell/part family formation using genetic algorithms. Journal of Manufacturing Technology Management, 15 (6), 433-444.