References
- Albareda-Sambola M., Fernández E., Hinojosa Y., Puerto J., The multi-period incremental service facility location problem, Computers & Operations Research, 36, 5, 2009, 1356-1375.
- Alumur S.A., Nickel S., Saldanha-da-Gama F., Verter V., Multi-period reverse logistics network design, European Journal of Operational Research, 220, 1, 2012, 67-78.
- Ambrosino D., Scutella M.G., Distribution network design: New problems and related models, European journal of operational research, 165, 3, 2005, 610-624.
- Cardoso S.R., Barbosa-Póvoa A.P.F., Relvas S., Design and planning of supply chains with integration of reverse logistics activities under demand uncertainty, European journal of operational research, 226, 3, 2013, 436-451.
- El-Sayed M., Afia N., El-Kharbotly A., A stochastic model for forward–reverse logistics network design under risk, Computers & Industrial Engineering, 58, 3, 2010, 423-431.
- Erlenkotter D., A comparative study of approaches to dynamic location problems, European Journal of Operational Research, 6, 2, 1981, 133-143.
- Gebennini E., Gamberini R., Manzini R., An integrated production–distribution model for the dynamic location and allocation problem with safety stock optimization, International Journal of Production Economics, 122, 1, 2009, 286-304.
- Goli A., Malmir B., A covering tour approach for disaster relief locating and routing with fuzzy demand, International Journal of Intelligent Transportation Systems Research, 18, 1, 2020, 140-152.
- Hinojosa Y., Kalcsics J., Nickel S., Puerto J., Velten S., Dynamic supply chain design with inventory, Computers & operations research, 35, 2, 2008, 373-391.
- Huang K., Ahmed S., The value of multi-stage stochastic programming in capacity planning under uncertainty, Stochastic Programming E-Print Series, 15, 2005, 23-44.
- Mahar S., Bretthauer K.M., Venkataramanan M.A., An algorithm for solving the multi-period online fulfillment assignment problem, Mathematical and Computer Modelling, 50, 9, 2009, 1294-1304.
- Melo M.T., Nickel S., Da Gama F.S., Dynamic multi-commodity capacitated facility location: a mathematical modeling framework for strategic supply chain planning, Computers & Operations Research, 33, 1, 2006, 181-208.
- Nickel S., Saldanha-da-Gama F., Ziegler H.P., A multi-stage stochastic supply network design problem with financial decisions and risk management, Omega, 40, 5, 2012, 511-524.
- Pahlevan S.M., Hosseini S.M.S., Goli A., Sustainable supply chain network design using products’ life cycle in the aluminum industry, Environmental Science and Pollution Research, 2021, 1-25.
- Paksoy T., Chang C.T., Revised multi-choice goal programming for multi-period, multi-stage inventory controlled supply chain model with popup stores in Guerrilla marketing, Applied Mathematical Modelling, 34, 11, 2010, 3586-3598.
- Pimentel B.S., Mateus G.R., Almeida F.A., Stochastic capacity planning and dynamic network design, International Journal of Production Economics, 145, 1, 2013, 139-149.
- Sha Y., Huang J., The multi-period location-allocation problem of engineering emergency blood supply systems, Systems Engineering Procedia, 5, 2012, 21-28.
- Vila D., Martel A., Beauregard R., Designing logistics networks in divergent process industries: a methodology and its application to the lumber industry, International journal of production economics, 102, 2, 2006, 358-378.
- Nguyen T.K.L., Nguyen X.H., Pham H.V., An application of the negative malmquist model for vietnamese garment and textiles industry, Management Systems in Production Engineering, 30, 1, 2022, 74-79.
- Nozari H., Ghahremani-Nahr J., Szmelter-Jarosz A., A multi-stage stochastic inventory management model for transport companies including several different transport modes, International Journal of Management Science and Engineering Management, 18, 2, 2023, 134-144.
- Goldbeck N., Angeloudis P., Ochieng W., Optimal supply chain resilience with consideration of failure propagation and repair logistics, Transportation Research Part E: Logistics and Transportation Review, 133, 2020, 101830.
- Khalilabadi S.M.G., Zegordi S.H., Nikbakhsh E., A multi-stage stochastic programming approach for supply chain risk mitigation via product substitution, Computers & Industrial Engineering, 149, 2020, 106786.
- Torkaman S., Ghomi S.F., Karimi B., Hybrid simulated annealing and genetic approach for solving a multi-stage production planning with sequence-dependent setups in a closed-loop supply chain, Applied Soft Computing, 71, 2018, 1085-1104.