2013
DOI: 10.1016/j.cie.2013.08.015
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A hybrid multi-objective approach based on the genetic algorithm and neural network to design an incremental cellular manufacturing system

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Cited by 24 publications
(8 citation statements)
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“…The results showed that the proposed MOVDO algorithm had a better performance in solving various small, medium, and large-scale problems. Saidi-Mehrabad and Safaei [8] Defersha and Chen [9] Tavakkoli-Moghaddam et al [10] Mahdavi et al [17] Bagheri and Bashiri [18] Saidi-Mehrabad et al [19] Mahdavi et al [11] Majazi Dalfard [12] Salarian et al [14] Bychkov and Batsyn [15] Zohrevand et al [16] Ghotboddini et al [34] Martins et al [35] Rafiei and Ghodsi [37] Zeidi et al [38] Shiyas and Madhusudanan Pillai [39] Rezazadeh et al [40] Buruk Sahin and Alpay [41] Durga Rajesh et al [42] Hajipour et al [48] Tavakkoli-Moghaddam et al [49] Hajipour et al [50] Hajipour et al [51] O2= considering costs (e.g., machine operating cost, machine modification costs, machine reconfiguration cost, and machine setup cost) O3= considering machine utilization. O4= considering operators costs (e.g., operator training cost and operator allocation cost , 1) X A L and t t  ;…”
Section: Resultsmentioning
confidence: 99%
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“…The results showed that the proposed MOVDO algorithm had a better performance in solving various small, medium, and large-scale problems. Saidi-Mehrabad and Safaei [8] Defersha and Chen [9] Tavakkoli-Moghaddam et al [10] Mahdavi et al [17] Bagheri and Bashiri [18] Saidi-Mehrabad et al [19] Mahdavi et al [11] Majazi Dalfard [12] Salarian et al [14] Bychkov and Batsyn [15] Zohrevand et al [16] Ghotboddini et al [34] Martins et al [35] Rafiei and Ghodsi [37] Zeidi et al [38] Shiyas and Madhusudanan Pillai [39] Rezazadeh et al [40] Buruk Sahin and Alpay [41] Durga Rajesh et al [42] Hajipour et al [48] Tavakkoli-Moghaddam et al [49] Hajipour et al [50] Hajipour et al [51] O2= considering costs (e.g., machine operating cost, machine modification costs, machine reconfiguration cost, and machine setup cost) O3= considering machine utilization. O4= considering operators costs (e.g., operator training cost and operator allocation cost , 1) X A L and t t  ;…”
Section: Resultsmentioning
confidence: 99%
“…Rafiei and Ghodsi [39]proposed a novel ant colony optimization algorithm to solve NP-hard instances of a biobjective CFP. Also, a mutation operator of the GA was added to the main procedure of the proposed algorithm to elaborate diversification characteristics of the proposed algorithm.Zeidi, et al [40]presented a novel hybrid metaheuristic algorithm to solve intricate examples of a nonlinear mixed-integer programming model of a dynamic a CFP. A specific procedure of the neural network method was implemented into the main mechanism of the GA to solve various instances of this problem and obtain more qualified near-optimal solutions.…”
Section: 3solution Algorithms Developed For Solving the Dynamic Cmsmentioning
confidence: 99%
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“…Some of the CMSs proposed are, including but not limited to, virtual CM, dynamic CM (Rheault et al, 1996), fractal CM (Montreuil et al, 1999), holonic manufacturing (Nomden et al, 2005), layered CMS (Süer et al, 2010), constrained optimisation (Brown, 2015), p-median approach (Won and Logendran, 2015), heuristics, etc. (Islam et al, 2013;Zeidi et al, 2013). Süer and Bera (1996) classified CMSs as labour-intensive and machine-intensive considering the degree of labour involvement in the process.…”
Section: Introductionmentioning
confidence: 99%
“…Se logró aproximar los modelos teóricos a los prácticos, permitiendo obviar algunas limitaciones como el tamaño de los problemas con buenos resultados. (Zeidi et al, 2013) Se presenta un modelo de programación multiobjetivo en el cual se trata el plan de conversión de talleres de trabajo a sistemas de manufactura celular. Se emplea un algoritmo genético y una red neuronal, sobre ambientes dinámicos.…”
Section: Introductionunclassified