Processing, Please wait...

  • Home
  • About Us
  • Search:
  • Advanced Search

Growing Science » International Journal of Industrial Engineering Computations » Collaborative scheduling of machining-assembly in complex multiple parallel production lines environment considering kitting constraints

Journals

  • IJIEC (777)
  • MSL (2643)
  • DSL (690)
  • CCL (528)
  • USCM (1092)
  • ESM (421)
  • AC (562)
  • JPM (293)
  • IJDS (952)
  • JFS (96)
  • HE (32)
  • SCI (26)

IJIEC Volumes

    • Volume 1 (17)
      • Issue 1 (9)
      • Issue 2 (8)
    • Volume 2 (68)
      • Issue 1 (12)
      • Issue 2 (20)
      • Issue 3 (20)
      • Issue 4 (16)
    • Volume 3 (76)
      • Issue 1 (9)
      • Issue 2 (15)
      • Issue 3 (20)
      • Issue 4 (12)
      • Issue 5 (20)
    • Volume 4 (50)
      • Issue 1 (14)
      • Issue 2 (10)
      • Issue 3 (12)
      • Issue 4 (14)
    • Volume 5 (47)
      • Issue 1 (13)
      • Issue 2 (12)
      • Issue 3 (12)
      • Issue 4 (10)
    • Volume 6 (39)
      • Issue 1 (7)
      • Issue 2 (12)
      • Issue 3 (10)
      • Issue 4 (10)
    • Volume 7 (47)
      • Issue 1 (10)
      • Issue 2 (14)
      • Issue 3 (10)
      • Issue 4 (13)
    • Volume 8 (30)
      • Issue 1 (9)
      • Issue 2 (7)
      • Issue 3 (8)
      • Issue 4 (6)
    • Volume 9 (32)
      • Issue 1 (9)
      • Issue 2 (6)
      • Issue 3 (7)
      • Issue 4 (10)
    • Volume 10 (34)
      • Issue 1 (8)
      • Issue 2 (10)
      • Issue 3 (8)
      • Issue 4 (8)
    • Volume 11 (36)
      • Issue 1 (9)
      • Issue 2 (8)
      • Issue 3 (9)
      • Issue 4 (10)
    • Volume 12 (29)
      • Issue 1 (9)
      • Issue 2 (6)
      • Issue 3 (8)
      • Issue 4 (6)
    • Volume 13 (41)
      • Issue 1 (10)
      • Issue 2 (8)
      • Issue 3 (10)
      • Issue 4 (13)
    • Volume 14 (50)
      • Issue 1 (11)
      • Issue 2 (15)
      • Issue 3 (9)
      • Issue 4 (15)
    • Volume 15 (55)
      • Issue 1 (19)
      • Issue 2 (15)
      • Issue 3 (12)
      • Issue 4 (9)
    • Volume 16 (75)
      • Issue 1 (12)
      • Issue 2 (15)
      • Issue 3 (19)
      • Issue 4 (29)
    • Volume 17 (51)
      • Issue 1 (21)
      • Issue 2 (30)

Keywords

Supply chain management(168)
Jordan(165)
Vietnam(151)
Customer satisfaction(120)
Performance(115)
Supply chain(112)
Service quality(98)
Competitive advantage(97)
Tehran Stock Exchange(94)
SMEs(89)
optimization(87)
Artificial intelligence(85)
Financial performance(84)
Sustainability(84)
Trust(83)
TOPSIS(83)
Job satisfaction(81)
Factor analysis(78)
Genetic Algorithm(78)
Social media(78)


» Show all keywords

Authors

Naser Azad(82)
Zeplin Jiwa Husada Tarigan(66)
Mohammad Reza Iravani(64)
Endri Endri(45)
Muhammad Alshurideh(42)
Hotlan Siagian(40)
Dmaithan Almajali(37)
Jumadil Saputra(36)
Muhammad Turki Alshurideh(35)
Ahmad Makui(33)
Barween Al Kurdi(32)
Sautma Ronni Basana(31)
Basrowi Basrowi(31)
Hassan Ghodrati(31)
Mohammad Khodaei Valahzaghard(30)
Shankar Chakraborty(29)
Ni Nyoman Kerti Yasa(29)
Sulieman Ibraheem Shelash Al-Hawary(28)
Prasadja Ricardianto(28)
Haitham M. Alzoubi(28)


» Show all authors

Countries

Iran(2190)
Indonesia(1311)
Jordan(813)
India(793)
Vietnam(510)
Saudi Arabia(477)
Malaysia(444)
China(231)
United Arab Emirates(226)
Thailand(160)
United States(114)
Ukraine(110)
Turkey(110)
Egypt(105)
Peru(94)
Canada(92)
Morocco(86)
Pakistan(85)
United Kingdom(80)
Nigeria(78)


» Show all countries

International Journal of Industrial Engineering Computations

ISSN 1923-2934 (Online) - ISSN 1923-2926 (Print)
Quarterly Publication
Volume 14 Issue 4 pp. 749-766 , 2023

Collaborative scheduling of machining-assembly in complex multiple parallel production lines environment considering kitting constraints Pages 749-766 Right click to download the paper Download PDF

Authors: Guangyan Xu, Zailin Guan, Kai Peng, Lei Yue

DOI: 10.5267/j.ijiec.2023.7.003

Keywords:

Abstract: In multi-stage machining-assembly production, collaborative scheduling for multiple production lines can effectively improve the execution efficiency of production planning and increase the effective output of the production system. In this paper, a production scheduling mathematical model was constructed for the collaborative scheduling problem of machining-assembly multi-production lines with kitting constraints, with the optimization objectives of minimizing assembly completion time and tardiness time. For the scheduling model, the product assembly process is constrained by the machining sequence of the jobs on the machining lines. Only by collaborating on the production scheduling schemes of the machine line and the assembly line as a whole can the output efficiency of the product on the assembly line be improved. An improved hybrid multi-objective optimization algorithm named SMOEA/D is designed to solve this scheduling model. The algorithm uses adaptive parents’ selection and mutation rate strategies and integrates the Tabu search strategy for the search process in the solution space when the solution of the sub-problem has not been improved after specified search generations, to improve the local search ability and search accuracy of MOEA/D algorithm. To verify the performance of the SMOEA/D algorithm in solving machining-assembly collaborative scheduling problems in production systems with different resource configurations and scales, two sets of numerical experiments were designed, corresponding to situations where the number of operations on each production line is equal or unequal. The running results of the proposed algorithm were compared with three other well-known multi-objective algorithms. The comparison results indicate that the SMOEA/D algorithm is effective and superior for solving such problems.

How to cite this paper
Xu, G., Guan, Z., Peng, K & Yue, L. (2023). Collaborative scheduling of machining-assembly in complex multiple parallel production lines environment considering kitting constraints.International Journal of Industrial Engineering Computations , 14(4), 749-766.

Refrences
Behnamian, J., & Ghomi, S. (2016). A survey of multi-factory scheduling. Journal of Intelligent Manufacturing, 27(1), 231-249.
Bhatnagar, R., Chandra, P., & Goyal, S. K. (1993). Models for multi-plant coordination. European Journal of Operational Research, 67(2), 141-160.
Chao, Lu, Liang, Gao, Xinyu, Li, et al. (2018). A multi-objective approach to welding shop scheduling for makespan, noise pollution and energy consumption. Journal of Cleaner Production.
Coello, C., Pulido, G. T., & Lechuga, M. S. (2004). Handling multiple objectives with particle swarm optimization. IEEE Transactions on Evolutionary Computation, 8(3), 256-279.
Deb, K., & Jain, H. (2014). An Evolutionary Many-Objective Optimization Algorithm Using Reference-Point-Based Nondominated Sorting Approach, Part I: Solving Problems With Box Constraints. IEEE Transactions on Evolutionary Computation, 18(4), 577-601.
Deb, K., Pratap, A., Agarwal, S., & Meyarivan, T. (2002). A fast and elitist multiobjective genetic algorithm: NSGA-II. IEEE Transactions on Evolutionary Computation, 6(2), 182-197.
Deng, J., & Wang, L. (2017). A competitive memetic algorithm for multi-objective distributed permutation flow shop scheduling problem. Swarm and Evolutionary Computation, 32, 121-131. ://WOS:000392774200007
Hall, N. G., & Potts, C. N. (2003). Supply chain scheduling: batching and delivery. Operations Research, 51(4).
Hall, N. G., & Potts, C. N. (2005). The Coordination of Scheduling and Batch Deliveries. Annals of operations research, 135.
Ham, J. I. (1983). A heuristic algorithm for the m-machine, n-job flow-shop sequencing problem. Omega.
Hao, L., Bing, D., Huang, G. Q., Chen, H., & Li, X. (2013). Hybrid flow shop scheduling considering machine electricity consumption cost. International Journal Of Production Economics, 146(2), 423–439.
Jiang, S., & Yang, S. (2017). A strength pareto evolutionary algorithm based on reference direction for multi-objective and many-objective optimization. IEEE Transactions on Evolutionary Computation, 329-346.
Jiang, S. W., Ong, Y. S., Zhang, J., & Feng, L. (2014). Consistencies and Contradictions of Performance Metrics in Multiobjective Optimization. IEEE Transactions on Cybernetics, 44(12), 2391-2404.
Kuo, I. H., Horng, S. J., Kao, T. W., Lin, T. L., & Pan, Y. (2007). An efficient flow-shop scheduling algorithm based on a hybrid particle swarm optimization model. Expert Systems with Applications, 36(3), 7027-7032.
Li, H., & Zhang, Q. (2008). Multiobjective optimization problems with complicated Pareto sets, MOEA/D and NSGA-II. IEEE transactions on evolutionary computation, 13(2), 284-302.
Lu, C., Gao, L., Li, X., & Xiao, S. (2017). A hybrid multi-objective grey wolf optimizer for dynamic scheduling in a real-world welding industry. Engineering Applications of Artificial Intelligence, 57, 61-79.
Mazdeh, M. M., Sarhadi, M., & Hindi, K. S. (2008). A branch-and-bound algorithm for single-machine scheduling with batch delivery and job release times. Computers & Operations Research, 35(4), 1099-1111.
Meng, R., Rao, Y., Zheng, Y., & Qi, D. (2017). Modelling and solving algorithm for two-stage scheduling of construction component manufacturing with machining and welding process. International Journal of Production Research(10), 1-13.
Pan, Q. K., Wang, L., Gao, L., & Li, W. D. (2011). An effective hybrid discrete differential evolution algorithm for the flow shop scheduling with intermediate buffers. Information Sciences, 181(3), 668-685.
Rahnamayan, S., Tizhoosh, H. R., & Salama, M. (2007). A novel population initialization method for accelerating evolutionary algorithms. Computers & Mathematics with Applications, 53(10), 1605-1614.
Sun, B., Zhai, G., Li, S., & Pei, B. (2023). Multi-resource collaborative scheduling problem of automated terminal considering the AGV charging effect under COVID-19. Ocean & coastal management, 232, 106422. ://MEDLINE:36407122
Ullrich, & Christian, A. (2013). Integrated machine scheduling and vehicle routing with time windows. European Journal of Operational Research, 227(1), 152-165.
Wang, L., Pan, Q. K., & Tasgetiren, M. F. (2011). A hybrid harmony search algorithm for the blocking permutation flow shop scheduling problem. Computers & Industrial Engineering, 61(1), 76-83.
Yang, Z., Ma, Z., & Wu, S. (2016). Optimized flowshop scheduling of multiple production lines for precast production. Automation in Construction, 72, 321-329.
Yue, L., Guan, Z., Zhang, L., Ullah, S., & Cui, Y. (2019). Multi objective lotsizing and scheduling with material constraints in flexible parallel lines using a Pareto based guided artificial bee colony algorithm. Computers & Industrial Engineering, 128(FEB.), 659-680.
Zhang, Q., & Hui, L. (2008). MOEA/D: A Multiobjective Evolutionary Algorithm Based on Decomposition. IEEE Transactions on Evolutionary Computation, 11(6), 712-731.
Zhang, Q., Hui, L., Maringer, D., & Tsang, E. (2010). MOEA/D with NBI-style Tchebycheff approach for portfolio management. Paper presented at the Evolutionary Computation.
Zitzler, E., Thiele, L., Laumanns, M., Fonseca, C. M., & da Fonseca, V. G. (2003). Performance assessment of multiobjective optimizers: An analysis and review. IEEE Transactions On Evolutionary Computation, 7(2), 117-132.


  • 0
  • 1
  • 2
  • 3
  • 4
  • 5

Journal: International Journal of Industrial Engineering Computations | Year: 2023 | Volume: 14 | Issue: 4 | Views: 934 | Reviews: 0

Related Articles:
  • Heuristics and metaheuristics to minimize makespan for flowshop with peak p ...
  • Cockpit crew pairing Pareto optimisation in a budget airline
  • An alternative hybrid evolutionary technique focused on allocating machines ...
  • Choice of a PISA selector in a hybrid algorithmic structure for the FJSSP
  • A Pareto archive floating search procedure for solving multi-objective flex ...

Add Reviews

Name:*
E-Mail:
Review:
Bold Italic Underline Strike | Align left Center Align right | Insert smilies Insert link URLInsert protected URL Select color | Add Hidden Text Insert Quote Convert selected text from selection to Cyrillic (Russian) alphabet Insert spoiler
winkwinkedsmileam
belayfeelfellowlaughing
lollovenorecourse
requestsadtonguewassat
cryingwhatbullyangry
Security Code: *
Include security image CAPCHA.
Refresh Code

® 2010-2026 GrowingScience.Com