International Journal of Economics, Finance and Management Sciences

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Two Product, Two Region Production, Inventory, and Transportation Problems

Received: 14 November 2014    Accepted: 30 November 2014    Published: 02 December 2014
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Abstract

A deterministic production and transportation planning problem is considered over a finite time horizon for two products that can be produced in each of two regions. Each region uses its own facility to supply the demands for two products. Demands for product 2 in one region can be satisfied either by its own production or by transportation from other region, while no transportation between two regions is allowed for product 1. Production, inventory and transportation costs are assumed to be non-decreasing and concave. The objective is to find the schedule of production and transportation in each region by which the total cost over the horizon is minimized. Using a network flow approach, we develop a dynamic programming algorithm that can find an optimal policy.

DOI 10.11648/j.ijefm.20140206.13
Published in International Journal of Economics, Finance and Management Sciences (Volume 2, Issue 6, December 2014)
Page(s) 313-318
Creative Commons

This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited.

Copyright

Copyright © The Author(s), 2024. Published by Science Publishing Group

Keywords

Production Planning, Network Flow, Dynamic Programming

References
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[3] M. Florian and M. Klein, “Deterministic Production Planning with Concave Costs and Capacity Constraints”, Management Science, vol. 18, pp.12-20, 1971.
[4] C. S. Sung, “A Production Planning Model for Multi-Product Facilities” Journal of the Operations Research Society of Japan, vol. 28, no. 4, pp.345-358, 1985.
[5] H. Luss, “A Capacity-Expansion Model for Two Facility Types”, Naval Research Logistics Quarterly, vol. 26, pp.291-303, 1979.
[6] Nafee Rizk and Alain Martel, “Supply Chain Flow Planning Methods: A Review of the Lot-Sizing Literature”, Working Paper DT-2001-AM-1, Centre de recherche sur les technologies de l’organisation réseau (CENTOR), Université Laval, QC, Canada, January 2001.
[7] B. Karimi, S.M.T. Fatemi Ghomi, and J.M. Wilson, “The capacitated lot sizing problem: a review of models and algorithms”, The International Journal of Management Science, Omega 31, pp.365-378, 2003.
[8] Lisbeth Buschkuhl, Florian Sahling, Stefan Helber, and Horst Tempelmeier, “Dynamic capacitated lot-sizing problems: a classification and review of solution approaches”, OR Spectrum, vol. 32, pp.231-261, 2010.
[9] A. Clark, B. Almada-Lobo, and C. Almeder, “Lot sizing and scheduling: industrial extensions and research opportunities”, International Journal of Production Research, vol. 49, pp. 2457 2461, 2011.
[10] Endy Suwondo and Henry Yuliando, “Dynamic Lot-Sizing Problems: A Review on Model and Efficient Algorithm”, Agroindustrial Journal, vol. 1, issue 1, pp. 36-49, 2012.
[11] R. K. Oliver and M. D. Webber, “Supply-Chain Management: Logistics Catches up with Strategy”, in Christopher, M. Logistics: The Strategic Issues, Chapman Hall, London, pp. 63–75, ISBN 0-412-41550-X, 1992.
[12] Adulyasak, Yossiri, Jean-Francois Cordeau, and Raf Jans, “The Production Routing Problem: A Review of Formulations and Solution Algorithms”, Computers & Operations Research, available online 7 February 2014.
[13] L.C. Coelho, J.-F. Cordeau, G. Laporte, “The inventory-routing problem with transshipment”, Computers and Operations Research, vol. 39, pp. 2537-2548, 2012.
[14] D. Ozdemir, E. Yucesan, Y. T. Herer, “Multi-location transshipment problem with capacitated production”, European Journal of Operational Research, vol. 226, pp. 425-435, 2013.
[15] A. J. Hoffman and J. B. Kruskal, “Integral Boundary Points of Convex Polyhedra”, in H. W. Tucker (eds.) Linear Inequalities and Related Systems, Annals of Mathematics Study, no. 38, Princeton Univ. Press, Princeton, New Jersey, pp.233-246, 1956.
[16] G. B. Danzig, “Linear Programming and Extensions”, Princeton Univ. Press, Princeton, N. J., 1963.
Author Information
  • Dept. of Information and Communications Engineering, Inje University, Gimhae, Republic of Korea

  • LG CNS, Seoul, Republic of Korea (* Corresponding Author)

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  • APA Style

    Jong Hyup Lee, Jung Man Hong. (2014). Two Product, Two Region Production, Inventory, and Transportation Problems. International Journal of Economics, Finance and Management Sciences, 2(6), 313-318. https://doi.org/10.11648/j.ijefm.20140206.13

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    ACS Style

    Jong Hyup Lee; Jung Man Hong. Two Product, Two Region Production, Inventory, and Transportation Problems. Int. J. Econ. Finance Manag. Sci. 2014, 2(6), 313-318. doi: 10.11648/j.ijefm.20140206.13

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    AMA Style

    Jong Hyup Lee, Jung Man Hong. Two Product, Two Region Production, Inventory, and Transportation Problems. Int J Econ Finance Manag Sci. 2014;2(6):313-318. doi: 10.11648/j.ijefm.20140206.13

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  • @article{10.11648/j.ijefm.20140206.13,
      author = {Jong Hyup Lee and Jung Man Hong},
      title = {Two Product, Two Region Production, Inventory, and Transportation Problems},
      journal = {International Journal of Economics, Finance and Management Sciences},
      volume = {2},
      number = {6},
      pages = {313-318},
      doi = {10.11648/j.ijefm.20140206.13},
      url = {https://doi.org/10.11648/j.ijefm.20140206.13},
      eprint = {https://download.sciencepg.com/pdf/10.11648.j.ijefm.20140206.13},
      abstract = {A deterministic production and transportation planning problem is considered over a finite time horizon for two products that can be produced in each of two regions. Each region uses its own facility to supply the demands for two products. Demands for product 2 in one region can be satisfied either by its own production or by transportation from other region, while no transportation between two regions is allowed for product 1. Production, inventory and transportation costs are assumed to be non-decreasing and concave. The objective is to find the schedule of production and transportation in each region by which the total cost over the horizon is minimized. Using a network flow approach, we develop a dynamic programming algorithm that can find an optimal policy.},
     year = {2014}
    }
    

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    AB  - A deterministic production and transportation planning problem is considered over a finite time horizon for two products that can be produced in each of two regions. Each region uses its own facility to supply the demands for two products. Demands for product 2 in one region can be satisfied either by its own production or by transportation from other region, while no transportation between two regions is allowed for product 1. Production, inventory and transportation costs are assumed to be non-decreasing and concave. The objective is to find the schedule of production and transportation in each region by which the total cost over the horizon is minimized. Using a network flow approach, we develop a dynamic programming algorithm that can find an optimal policy.
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