M. H. Alavidoost, M. Tarimoradi, and M. H. Zarandi, Bi-objective mixed-integer nonlinear programming for multi-commodity tri-echelon supply chain networks, Journal of Intelligent Manufacturing, vol.29, issue.4, pp.809-826, 2018.

Z. Afrouzy, M. M. Paydar, S. H. Nasseri, and I. Mahdavi, A meta-heuristic approach 445 supported by NSGA-II for the design and plan of supply chain networks considering new product development, Journal of Industrial Engineering International, vol.14, issue.1, pp.95-109, 2018.

F. Altiparmak, M. Gen, L. Lin, and T. Paksoy, A genetic algorithm approach for multiobjective optimization of supply chain networks, Computers & Industrial Engineering, vol.51, issue.1, pp.196-215, 2006.

S. M. Arabzad, M. Ghorbani, and R. Tavakkoli-moghaddam, An evolutionary algorithm for a new multi-objective location-inventory model in a distribution network with transportation modes and third-party logistics providers, International Journal of Production Research, vol.53, issue.4, pp.1038-1050, 2015.

R. Caballero, M. González, F. Guerrero, J. Molina, and C. Paralera, Solving a multiobjective 455 location routing problem with a metaheuristic based on tabu search. application to a real case in Andalusia, European Journal of Operational Research, vol.177, issue.3, pp.1751-1763, 2007.

L. Canales-bustos, E. Santibañez-gonzález, and A. Candia-véjar, A multi-objective optimization model for the design of an effective decarbonized supply chain in mining, Journal of Production Economics, vol.193, pp.925-5273, 2017.

Y. Cardona-valdés, A. Álvarez, and J. Pacheco, Metaheuristic procedure for a bi-objective supply chain design problem with uncertainty, Transportation Research Part B: Methodological, vol.60, issue.0, pp.66-84, 2014.

J. Cordeau, F. Pasin, and M. Solomon, An integrated model for logistics network design, 465 Annals of Operations Research, vol.144, pp.59-82, 2006.

K. Deb, A. Pratap, S. Agarwal, and T. Meyarivan, A fast and elitist multiobjective genetic algorithm: NSGA-II, IEEE Transactions on Evolutionary Computation, vol.6, issue.2, pp.182-197, 2002.

C. Defryn and K. Sörensen, Multi-objective optimisation models for the travelling salesman 470 problem with horizontal cooperation, European Journal of Operational Research, vol.267, issue.3, pp.891-903, 2018.

F. Dehghanian and S. Mansour, Designing sustainable recovery network of end-of-life products using genetic algorithm. Resources, Conservation and Recycling, vol.53, pp.559-570, 2009.

E. Demir, T. Bekta?, and G. Laporte, The bi-objective Pollution-Routing Problem, European Journal of Operational Research, vol.232, issue.3, pp.464-478, 2014.

N. Demirel, E. Özceylan, T. Paksoy, and H. Gökçen, A genetic algorithm approach for optimising a closed-loop supply chain network with crisp and fuzzy objectives, International Journal of Production Research, vol.52, issue.12, pp.3637-3664, 2014.

K. Devika, A. Jafarian, and V. Nourbakhsh, Designing a sustainable closed-loop supply chain network based on triple bottom line approach: A comparison of metaheuristics hybridization techniques, European Journal of Operational Research, vol.235, issue.3, pp.594-615, 2014.

M. Doble and A. K. Kruthiventi, Chapter 10 -conclusions and future trends, Green Chemistry and Engineering, pp.297-312, 2007.

F. Du and G. Evans, A bi-objective reverse logistics network analysis for post-sale service, Computers & Operations Research, vol.35, issue.8, pp.2617-2634, 2008.

S. B. Ebrahimi, A bi-objective model for a multi-echelon supply chain design considering efficiency and customer satisfaction: a case study in plastic parts industry. The International 490, Journal of Advanced Manufacturing Technology, vol.95, issue.9, pp.3631-3649, 2018.

M. Eskandarpour, S. Zegordi, and E. Nikbakhsh, A parallel variable neighborhood search for the multi-objective sustainable post-sales network design problem, International Journal of Production Economics, vol.145, issue.1, pp.117-131, 2013.

M. Eskandarpour, E. Nikbakhsh, and S. Zegordi, Variable neighborhood search for the 495 bi-objective post-sales network design problem: A fitness landscape analysis approach, Computers & Operations Research, vol.52, issue.B, pp.300-314, 2014.

M. Eskandarpour, P. Dejax, J. Miemczyk, and O. Péton, Sustainable supply chain network design: an optimization-oriented review, Omega, vol.54, pp.11-32, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01154605

M. Eskandarpour, P. Dejax, and O. Péton, A large neighborhood search heuristic for supply 500 chain network design, Computers & Operations Research, vol.80, pp.23-37, 2017.

M. Eskandarpour, D. Ouelhadj, S. Hatami, A. A. Juan, and B. Khosravi, Enhanced multidirectional local search for the bi-objective heterogeneous vehicle routing problem with multiple driving ranges, European Journal of Operational Research, vol.277, issue.2, pp.479-491, 2019.

J. Freis, P. Vohlidka, and W. A. Günthner, Low-carbon warehousing: Examining impacts of building and intra-logistics design options on energy demand and the co2 emissions of logistics centers, Sustainability, vol.8, issue.5, 2016.

S. Ganguly, N. Sahoo, and D. Das, Mono-and multi-objective planning of electrical distribution networks using particle swarm optimization, Applied Soft Computing, vol.11, issue.2, pp.2391-510, 2011.

J. Gao and F. You, Modeling framework and computational algorithm for hedging against uncertainty in sustainable supply chain design using functional-unit-based life cycle optimization, Computers & Chemical Engineering, vol.107, pp.221-236, 2017.

K. Govindan, A. Jafarian, and V. Nourbakhsh, Bi-objective integrating sustainable order 515 allocation and sustainable supply chain network strategic design with stochastic demand using a novel robust hybrid multi-objective metaheuristic, Computers & Operations Research, vol.62, pp.112-130, 2015.

G. Guillén-gosálbez, A novel milp-based objective reduction method for multi-objective optimization: Application to environmental problems, Computers & Chemical Engineering, vol.520, issue.8, pp.1469-1477, 2011.

I. Harris, C. L. Mumford, and M. N. Naim, A hybrid multi-objective approach to capacitated facility location with flexible store allocation for green logistics modeling, Transportation Research Part E: Logistics and Transportation Review, vol.66, issue.0, pp.1-22, 2014.

H. Heggen, K. Braekers, and A. Caris, A multi-objective approach for intermodal train load 525 planning, OR Spectrum, vol.40, issue.2, pp.341-366, 2018.

R. Jamshidi, S. F. Ghomi, and B. Karimi, Multi-objective green supply chain optimization with a new hybrid memetic algorithm using the taguchi method, Scientia Iranica, vol.19, issue.6, pp.1876-1886, 2012.

D. K. Kadambala, N. Subramanian, M. K. Tiwari, M. Abdulrahman, and C. Liu, Closed 530 loop supply chain networks: Designs for energy and time value efficiency, International Journal of Production Economics, vol.183, pp.382-393, 2017.

A. A. Kovacs, S. N. Parragh, and R. F. Hartl, The multi-objective generalized consistent vehicle routing problem, European Journal of Operational Research, vol.247, issue.2, pp.441-458, 2015.

R. S. Kumar, A. Choudhary, S. A. Babu, S. K. Kumar, A. Goswami et al.,

. Tiwari, Designing multi-period supply chain network considering risk and emission: a multi-objective approach, Annals of Operations Research, vol.250, issue.2, pp.427-461, 2017.

F. Lehuédé, O. Péton, and F. Tricoire, A lexicographic minimax approach to the vehicle routing problem with route balancing, European Journal of Operational Research, 2019.

K. Lian, A. B. Milburn, and R. L. Rardin, An improved multi-directional local search algorithm for the multi-objective consistent vehicle routing problem, IIE Transactions, vol.48, issue.10, pp.975-992, 2016.

S. Liao, C. Hsieh, and P. Lai, An evolutionary approach for multi-objective optimization of the integrated location-inventory distribution network problem in vendor-managed inven-545 tory, Expert Systems with Applications, vol.38, issue.6, pp.6768-6776, 2011.

M. T. Melo, S. Nickel, and F. Saldanha-da-gama, Facility location and supply chain management -a review, European Journal of Operational Research, vol.196, issue.2, pp.401-412, 2009.

Y. Molenbruch, K. Braekers, A. Caris, and G. V. Berghe, Multi-directional local search for a bi-objective dial-a-ride problem in patient transportation, Computers & Operations, p.550

, Research, vol.77, pp.58-71, 2017.

L. A. Moncayo-martínez and E. Mastrocinque, A multi-objective intelligent water drop algorithm to minimise cost of goods sold and time to market in logistics networks, Expert Systems with Applications, vol.64, pp.455-466, 2016.

. Oecd/iea, CO 2 emissions from fuel combustion 2012-highlights, p.555

. Oecd/iea, , 2012.

E. Olivares-benitez, R. Ríos-mercado, and J. González-velarde, A metaheuristic algorithm to solve the selection of transportation channels in supply chain design, International Journal of Production Economics, vol.145, issue.1, pp.161-172, 2013.

M. S. Pishvaee, R. Z. Farahani, and W. Dullaert, A memetic algorithm for bi-objective integrated forward/reverse logistics network design, Computers & Operations Research, vol.37, issue.6, pp.1100-1112, 2010.

D. Pisinger and S. Ropke, Large neighborhood search, Handbook of Metaheuristics, pp.399-419, 2010.

J. M. Ries, E. H. Grosse, and J. Fichtinger, Environmental impact of warehousing: a scenario analysis for the united states, International Journal of Production Research, vol.55, issue.21, pp.6485-6499, 2017.

J. O. Robles, S. D. .-l.-almaraz, and C. Azzaro-pantel, Optimization of a hydrogen supply chain network design by multi-objective genetic algorithms, 26th European Symposium on Computer Aided Process Engineering, vol.570, pp.805-810, 2016.

B. L. Shankar, S. Basavarajappa, J. Chen, and R. Kadadevaramath, Location and allocation decisions for multi-echelon supply chain network -a multi-objective evolutionary approach, Expert Systems with Applications, vol.40, issue.2, pp.551-562, 2013.

B. L. Shankar, S. Basavarajappa, R. Kadadevaramath, and J. Chen, A bi-objective optimization of supply chain design and distribution operations using non-dominated sorting algorithm: A case study, Expert Systems with Applications, vol.40, issue.14, pp.5730-5739, 2013.

P. Shaw, Using constraint programming and local search methods to solve vehicle routing of Constraint Programming, pp.417-431, 1998.

J. Shi, Z. Liu, L. Tang, and J. Xiong, Multi-objective optimization for a closed-loop network design problem using an improved genetic algorithm, Applied Mathematical Modelling, vol.45, pp.14-30, 2017.

E. Tappia, G. Marchet, M. Melacini, and S. Perotti, Incorporating the environmental di-585 mension in the assessment of automated warehouses, Production Planning and Control, vol.26, issue.10, pp.824-838, 2015.

A. Tiwari, P. Chang, M. Tiwari, and R. Kandhway, A hybrid territory defined evolutionary algorithm approach for closed loop green supply chain network design, Computers & Industrial Engineering, vol.99, pp.432-447, 2016.

F. Tricoire, Multi-directional local search, Computers & Operations Research, vol.39, issue.12, pp.3089-3101, 2012.
URL : https://hal.archives-ouvertes.fr/hal-01925330

C. Waltho, S. Elhedhli, and F. Gzara, Green supply chain network design: A review focused on policy adoption and emission quantification, International Journal of Production Economics, vol.208, pp.305-318, 2019.

F. Wang, X. Lai, and N. Shi, A multi-objective optimization for green supply chain network design, Decision Support Systems, vol.51, issue.2, pp.262-269, 2011.

R. Farahani, M. Steadieseifi, and N. Asgari, Multiple criteria facility location problems: A survey, Applied Mathematical Modelling, vol.34, issue.7, pp.1689-1709, 2010.

S. Zhang, C. K. Lee, K. Wu, and K. L. Choy, Multi-objective optimization for sustainable 600 supply chain network design considering multiple distribution channels, Expert Systems with Applications, vol.65, pp.87-99, 2016.

Y. Zhang, S. Liu, and X. Zhang, An optimized supply chain network model based on modified genetic algorithm, Chinese Journal Of Electronics, vol.3, issue.2, pp.468-476, 2017.

E. Zitzler, L. Thiele, M. Laumanns, C. Fonseca, and V. Da-fonseca, Performance assessment 605 of multiobjective optimizers: an analysis and review, IEEE Transactions on Evolutionary Computation, vol.7, issue.2, pp.117-132, 2003.