3,651
Views
33
CrossRef citations to date
0
Altmetric
Reviews

Meta-heuristics for sustainable supply chain management: a review

ORCID Icon, ORCID Icon, ORCID Icon & ORCID Icon
Pages 1979-2009 | Received 08 Dec 2020, Accepted 07 Feb 2022, Published online: 17 Mar 2022

References

  • Abad, H. K. E., B. Vahdani, M. Sharifi, and F. Etebari. 2018. “A bi-Objective Model for Pickup and Delivery Pollution-Routing Problem with Integration and Consolidation Shipments in Cross-Docking System.” Journal of Cleaner Production 193: 784–801.
  • Abdi, A., A. Abdi, N. Akbarpour, A. S. Amiri, and M. Hajiaghaei-Keshteli. 2019. “Innovative Approaches to Design and Address Green Supply Chain Network with Simultaneous Pick-up and Split Delivery.” Journal of Cleaner Production 119437.
  • Agi, M. A., S. Faramarzi-Oghani, and Ö Hazır. 2021. “Game Theory-Based Models in Green Supply Chain Management: A Review of the Literature.” International Journal of Production Research 59 (15): 4736–4755.
  • Ajam, M., V. Akbari, and F. S. Salman. 2019. “Minimizing Latency in Post-Disaster Road Clearance Operations.” European Journal of Operational Research 277 (3): 1098–1112.
  • Alinaghian, M., and M. Zamani. 2019. “A bi-Objective Fleet Size and mix Green Inventory Routing Problem, Model and Solution Method.” Soft Computing 23 (4): 1375–1391.
  • Alkaabneh, F., A. Diabat, and H. O. Gao. 2020. “Benders Decomposition for the Inventory Vehicle Routing Problem with Perishable Products and Environmental Costs.” Computers & Operations Research 113: 104751.
  • Anderluh, A., P. C. Nolz, V. C. Hemmelmayr, and T. G. Crainic. 2021. “Multi-objective Optimization of a two-Echelon Vehicle Routing Problem with Vehicle Synchronization and ‘Grey Zone’ Customers Arising in Urban Logistics.” European Journal of Operational Research 289 (3): 940–958.
  • Asadi, E., F. Habibi, S. Nickel, and H. Sahebi. 2018. “A bi-Objective Stochastic Location-Inventory-Routing Model for Microalgae-Based Biofuel Supply Chain.” Applied Energy 228: 2235–2261.
  • Asghari, M., and S. M. J. M. Al-e-hashem. 2020. “A Green Delivery-Pickup Problem for Home Hemodialysis Machines; Sharing Economy in Distributing Scarce Resources.” Transportation Research Part E: Logistics and Transportation Review 134: 101815.
  • Ayoub, N., E. Elmoshi, H. Seki, and Y. Naka. 2009. “Evolutionary Algorithms Approach for Integrated Bioenergy Supply Chains Optimization.” Energy Conversion and Management 50 (12): 2944–2955.
  • Ayoub, N., R. Martins, K. Wang, H. Seki, and Y. Naka. 2007. “Two Levels Decision System for Efficient Planning and Implementation of Bioenergy Production.” Energy Conversion and Management 48 (3): 709–723.
  • Azadeh, A., F. Shafiee, R. Yazdanparast, J. Heydari, and A. M. Fathabad. 2017. “Evolutionary Multi-Objective Optimization of Environmental Indicators of Integrated Crude oil Supply Chain Under Uncertainty.” Journal of Cleaner Production 152: 295–311.
  • Barzinpour, F., and P. Taki. 2018. “A Dual-Channel Network Design Model in a Green Supply Chain Considering Pricing and Transportation Mode Choice.” Journal of Intelligent Manufacturing 29 (7): 1465–1483.
  • Bashiri, M., M. Mirzaei, and M. Randall. 2013. “Modeling Fuzzy Capacitated p-hub Center Problem and a Genetic Algorithm Solution.” Applied Mathematical Modelling 37 (5): 3513–3525.
  • Bektaş, T., and G. Laporte. 2011. “The Pollution-Routing Problem.” Transportation Research Part B: Methodological 45 (8): 1232–1250.
  • Biuki, M., A. Kazemi, and A. Alinezhad. 2020. “An Integrated Location-Routing-Inventory Model for Sustainable Design of a Perishable Products Supply Chain Network.” Journal of Cleaner Production 260: 120842.
  • Blum, C., and A. Roli. 2003. “Meta-heuristics in Combinatorial Optimization: Overview and Conceptual Comparison.” ACM Computing Surveys (CSUR) 35 (3): 268–308.
  • Borumand, A., and M. A. Beheshtinia. 2018. “A Developed Genetic Algorithm for Solving the Multi-Objective Supply Chain Scheduling Problem.” Kybernetes 47 (7): 1401–1419.
  • Brahami, M. A., M. Dahane, M. Souier, and M. H. Sahnoun. 2020. “Sustainable Capacitated Facility Location/Network Design Problem: A Non-Dominated Sorting Genetic Algorithm Based Multiobjective Approach.” Annals of Operations Research, 1–32. doi:10.1007/s10479-020-03659-9.
  • Brandenburg, M., K. Govindan, J. Sarkis, and S. Seuring. 2014. “Quantitative Models for Sustainable Supply Chain Management: Developments and Directions.” European Journal of Operational Research 233 (2): 299–312.
  • Bravo, M., L. P. Rojas, and V. Parada. 2019. “An Evolutionary Algorithm for the Multi-Objective Pick-up and Delivery Pollution-Routing Problem.” International Transactions in Operational Research 26 (1): 302–317.
  • Canales-Bustos, L., E. Santibañez-González, and A. Candia-Véjar. 2017. “A Multi-Objective Optimization Model for the Design of an Effective Decarbonized Supply Chain in Mining.” International Journal of Production Economics 193: 449–464.
  • Cao, C., C. Li, Q. Yang, Y. Liu, and T. Qu. 2018. “A Novel Multi-Objective Programming Model of Relief Distribution for Sustainable Disaster Supply Chain in Large-Scale Natural Disasters.” Journal of Cleaner Production 174: 1422–1435.
  • Carter, C. R., and D. S. Rogers. 2008. “A Framework of Sustainable Supply Chain Management: Moving Toward new Theory.” International Journal of Physical Distribution & Logistics Management 38 (5): 360–387.
  • Chadha, S. S., M. A. Ülkü, and U. Venkatadri. 2021. “Freight Delivery in a Physical Internet Supply Chain: An Applied Optimisation Model with Peddling and Shipment Consolidation.” International Journal of Production Research, 1–17. doi:10.1080/00207543.2021.1946613.
  • Chalmardi, M. K., and J. F. Camacho-Vallejo. 2019. “A bi-Level Programming Model for Sustainable Supply Chain Network Design That Considers Incentives for Using Cleaner Technologies.” Journal of Cleaner Production 213: 1035–1050.
  • Chan, F. T., Z. X. Wang, A. Goswami, A. Singhania, and M. K. Tiwari. 2020. “Multi-objective Particle Swarm Optimisation Based Integrated Production Inventory Routing Planning for Efficient Perishable Food Logistics Operations.” International Journal of Production Research 58 (17): 5155–5174.
  • Chandrasekaran, M., and R. Ranganathan. 2017. “Modelling and Optimisation of Indian Traditional Agriculture Supply Chain to Reduce Post-Harvest Loss and CO2 Emission.” Industrial Management & Data Systems 117 (9): 1817–1841.
  • Chargui, T., A. Bekrar, M. Reghioui, and D. Trentesaux. 2020. “Proposal of a Multi-Agent Model for the Sustainable Truck Scheduling and Containers Grouping Problem in a Road-Rail Physical Internet hub.” International Journal of Production Research 58 (18): 5477–5501.
  • Che, Z. H. 2010. “Using Fuzzy Analytic Hierarchy Process and Particle Swarm Optimisation for Balanced and Defective Supply Chain Problems Considering WEEE/RoHS Directives.” International Journal of Production Research 48 (11): 3355–3381.
  • Chen, J., B. Dan, and J. Shi. 2020. “A Variable Neighborhood Search Approach for the Multi-Compartment Vehicle Routing Problem with Time Windows Considering Carbon Emission.” Journal of Cleaner Production 277: 123932.
  • Cheng, C., M. Qi, X. Wang, and Y. Zhang. 2016. “Multi-period Inventory Routing Problem Under Carbon Emission Regulations.” International Journal of Production Economics 182: 263–275.
  • Chiang, W. C., Y. Li, J. Shang, and T. L. Urban. 2019. “Impact of Drone Delivery on Sustainability and Cost: Realizing the UAV Potential Through Vehicle Routing Optimization.” Applied Energy 242: 1164–1175.
  • Chibeles-Martins, N., T. Pinto-Varela, A. P. Barbosa-Póvoa, and A. Q. Novais. 2016. “A Multi-Objective Meta-Heuristic Approach for the Design and Planning of Green Supply Chains-MBSA.” Expert Systems with Applications 47: 71–84.
  • Chopra, S., and P. Meindl. 2018. Supply Chain Management: Strategy, Planning, and Operation. Boston, MA: Pearson.
  • Chu, X., S. X. Xu, F. Cai, J. Chen, and Q. Qin. 2019. “An Efficient Auction Mechanism for Regional Logistics Synchronization.” Journal of Intelligent Manufacturing 30 (7): 2715–2731.
  • Ćirović, G., D. Pamučar, and D. Božanić. 2014. “Green Logistic Vehicle Routing Problem: Routing Light Delivery Vehicles in Urban Areas Using a Neuro-Fuzzy Model.” Expert Systems with Applications 41 (9): 4245–4258.
  • Corberán, Á, G. Erdoğan, G. Laporte, I. Plana, and J. M. Sanchis. 2018. “The Chinese Postman Problem with Load-Dependent Costs.” Transportation Science 52 (2): 370–385.
  • Dai, Z., F. Aqlan, X. Zheng, and K. Gao. 2018. “A Location-Inventory Supply Chain Network Model Using two Heuristic Algorithms for Perishable Products with Fuzzy Constraints.” Computers & Industrial Engineering 119: 338–352.
  • De, M., B. Das, and M. Maiti. 2018. “Green Logistics Under Imperfect Production System: A Rough age Based Multi-Objective Genetic Algorithm Approach.” Computers & Industrial Engineering 119: 100–113.
  • De, A., V. K. R. Mamanduru, A. Gunasekaran, N. Subramanian, and M. K. Tiwari. 2016. “Composite Particle Algorithm for Sustainable Integrated Dynamic Ship Routing and Scheduling Optimization.” Computers & Industrial Engineering 96: 201–215.
  • Diabat, A., and M. Al-Salem. 2015. “An Integrated Supply Chain Problem with Environmental Considerations.” International Journal of Production Economics 164: 330–338.
  • Dolati Neghabadi, P., K. Evrard Samuel, and M. L. Espinouse. 2019. “Systematic Literature Review on City Logistics: Overview, Classification and Analysis.” International Journal of Production Research 57 (3): 865–887.
  • Doolun, I. S., S. G. Ponnambalam, N. Subramanian, and G. Kanagaraj. 2018. “Data Driven Hybrid Evolutionary Analytical Approach for Multi Objective Location Allocation Decisions: Automotive Green Supply Chain Empirical Evidence.” Computers & Operations Research 98: 265–283.
  • Ehmke, J. F., A. M. Campbell, and B. W. Thomas. 2016. “Vehicle Routing to Minimize Time-Dependent Emissions in Urban Areas.” European Journal of Operational Research 251 (2): 478–494.
  • Erdem, M., and Ç Koç. 2019. “Analysis of Electric Vehicles in Home Health Care Routing Problem.” Journal of Cleaner Production 234: 1471–1483.
  • Eskandari-Khanghahi, M., R. Tavakkoli-Moghaddam, A. A. Taleizadeh, and S. H. Amin. 2018. “Designing and Optimizing a Sustainable Supply Chain Network for a Blood Platelet Bank Under Uncertainty.” Engineering Applications of Artificial Intelligence 71: 236–250.
  • Eskandarpour, M., P. Dejax, J. Miemczyk, and O. Péton. 2015. “Sustainable Supply Chain Network Design: An Optimization-Oriented Review.” Omega 54: 11–32.
  • Eskandarpour, M., P. Dejax, and O. Péton. 2021. “Multi-directional Local Search for Sustainable Supply Chain Network Design.” International Journal of Production Research 59 (2): 412–428.
  • Eusuff, M., K. Lansey, and F. Pasha. 2006. “Shuffled Frog-Leaping Algorithm: A Memetic Meta-Heuristic for Discrete Optimization.” Engineering Optimization 38 (2): 129–154.
  • Eydi, A., and A. Fathi. 2020. “An Integrated Decision Making Model for Supplier and Carrier Selection with Emphasis on the Environmental Factors.” Soft Computing 24: 4243–4258.
  • Fahimnia, B., H. Davarzani, and A. Eshragh. 2018. “Planning of Complex Supply Chains: A Performance Comparison of Three Meta-Heuristic Algorithms.” Computers & Operations Research 89: 241–252.
  • Fallahpour, A., E. U. Olugu, S. N. Musa, D. Khezrimotlagh, and K. Y. Wong. 2016. “An Integrated Model for Green Supplier Selection Under Fuzzy Environment: Application of Data Envelopment Analysis and Genetic Programming Approach.” Neural Computing and Applications 27 (3): 707–725.
  • Farahani, R. Z., H. Rashidi Bajgan, B. Fahimnia, and M. Kaviani. 2015. “Location-inventory Problem in Supply Chains: A Modelling Review.” International Journal of Production Research 53 (12): 3769–3788.
  • Farahani, R. Z., S. Rezapour, T. Drezner, and S. Fallah. 2014. “Competitive Supply Chain Network Design: An Overview of Classifications, Models, Solution Techniques and Applications.” Omega 45: 92–118.
  • Fathollahi-Fard, A. M., A. Ahmadi, F. Goodarzian, and N. Cheikhrouhou. 2020. “A bi-Objective Home Healthcare Routing and Scheduling Problem Considering Patients’ Satisfaction in a Fuzzy Environment.” Applied Soft Computing 93: 106385.
  • Fathollahi-Fard, A. M., K. Govindan, M. Hajiaghaei-Keshteli, and A. Ahmadi. 2019. “A Green Home Health Care Supply Chain: New Modified Simulated Annealing Algorithms.” Journal of Cleaner Production 240: 118200.
  • Fathollahi-Fard, A. M., M. Hajiaghaei-Keshteli, and R. Tavakkoli-Moghaddam. 2018. “The Social Engineering Optimizer (SEO).” Engineering Applications of Artificial Intelligence 72: 267–293.
  • Fathollahi-Fard, A. M., M. Hajiaghaei-Keshteli, and R. Tavakkoli-Moghaddam. 2020. “Red Deer Algorithm (RDA): A new Nature-Inspired Meta-Heuristic.” Soft Computing 24 (19): 14637–14665.
  • Feng, Y., Q. Zhu, and K. H. Lai. 2017. “Corporate Social Responsibility for Supply Chain Management: A Literature Review and Bibliometric Analysis.” Journal of Cleaner Production 158: 296–307.
  • Franceschetti, A., E. Demir, D. Honhon, T. Van Woensel, G. Laporte, and M. Stobbe. 2017. “A Meta-Heuristic for the Time-Dependent Pollution-Routing Problem.” European Journal of Operational Research 259 (3): 972–991.
  • Ganesh Kumar, M., and R. Uthayakumar. 2019. “Modelling on Vendor-Managed Inventory Policies with Equal and Unequal Shipments Under GHG Emission-Trading Scheme.” International Journal of Production Research 57 (11): 3362–3381.
  • Ganji, M., H. Kazemipoor, S. M. H. Molana, and S. M. Sajadi. 2020. “A Green Multi-Objective Integrated Scheduling of Production and Distribution with Heterogeneous Fleet Vehicle Routing and Time Windows.” Journal of Cleaner Production 259: 120824.
  • Ghannadpour, S. F., and A. Zarrabi. 2019. “Multi-objective Heterogeneous Vehicle Routing and Scheduling Problem with Energy Minimizing.” Swarm and Evolutionary Computation 44: 728–747.
  • Giallanza, A., and G. L. Puma. 2020. “Fuzzy Green Vehicle Routing Problem for Designing a Three Echelons Supply Chain.” Journal of Cleaner Production 259: 120774.
  • Goeke, D., and M. Schneider. 2015. “Routing a Mixed Fleet of Electric and Conventional Vehicles.” European Journal of Operational Research 245 (1): 81–99.
  • Govindan, K., A. Jafarian, R. Khodaverdi, and K. Devika. 2014. “Two-echelon Multiple-Vehicle Location–Routing Problem with Time Windows for Optimization of Sustainable Supply Chain Network of Perishable Food.” International Journal of Production Economics 152: 9–28.
  • Govindan, K., A. Jafarian, and V. Nourbakhsh. 2015a. “Bi-objective Integrating Sustainable Order Allocation and Sustainable Supply Chain Network Strategic Design with Stochastic Demand Using a Novel Robust Hybrid Multi-Objective Meta-Heuristic.” Computers & Operations Research 62: 112–130.
  • Govindan, K., A. Jafarian, and V. Nourbakhsh. 2019. “Designing a Sustainable Supply Chain Network Integrated with Vehicle Routing: A Comparison of Hybrid Swarm Intelligence Meta-Heuristics.” Computers & Operations Research 110: 220–235.
  • Govindan, K., H. Soleimani, and D. Kannan. 2015b. “Reverse Logistics and Closed-Loop Supply Chain: A Comprehensive Review to Explore the Future.” European Journal of Operational Research 240 (3): 603–626.
  • Griffis, S. E., J. E. Bell, and D. J. Closs. 2012. “Meta-heuristics in Logistics and Supply Chain Management.” Journal of Business Logistics 33 (2): 90–106.
  • Guo, Z., D. Zhang, H. Liu, Z. He, and L. Shi. 2018. “Green Transportation Scheduling with Pickup Time and Transport Mode Selections Using a Novel Multi-Objective Memetic Optimization Approach.” Transportation Research Part D: Transport and Environment 60: 137–152.
  • Gupta, A., C. K. Heng, Y. S. Ong, P. S. Tan, and A. N. Zhang. 2017. “A Generic Framework for Multi-Criteria Decision Support in eco-Friendly Urban Logistics Systems.” Expert Systems with Applications 71: 288–300.
  • Hafezalkotob, A., and S. Zamani. 2019. “A Multi-Product Green Supply Chain Under Government Supervision with Price and Demand Uncertainty.” Journal of Industrial Engineering International 15 (1): 193–206.
  • Harris, I., C. L. Mumford, and M. M. Naim. 2014. “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 66: 1–22.
  • Hassanzadeh, A., and M. Rasti-Barzoki. 2017. “Minimizing Total Resource Consumption and Total Tardiness Penalty in a Resource Allocation Supply Chain Scheduling and Vehicle Routing Problem.” Applied Soft Computing 58: 307–323.
  • Hassini, E., C. Surti, and C. Searcy. 2012. “A Literature Review and a Case Study of Sustainable Supply Chains with a Focus on Metrics.” International Journal of Production Economics 140 (1): 69–82.
  • Heidari, A., D. M. Imani, and M. Khalilzadeh. 2020. “A Hub Location Model in the Sustainable Supply Chain Considering Customer Segmentation.” Journal of Engineering, Design and Technology 19: 1387–1420.
  • Hong, Z., W. Dai, H. Luh, and C. Yang. 2018. “Optimal Configuration of a Green Product Supply Chain with Guaranteed Service Time and Emission Constraints.” European Journal of Operational Research 266 (2): 663–677.
  • Huang, Y., K. Wang, T. Zhang, and C. Pang. 2016. “Green Supply Chain Coordination with Greenhouse Gases Emissions Management: A Game-Theoretic Approach.” Journal of Cleaner Production 112: 2004–2014.
  • Hwang, T., M. Lee, C. Lee, and S. Kang. 2016. “Meta-heuristic Approach for High-Demand Facility Locations Considering Traffic Congestion and Greenhouse gas Emission.” Journal of Environmental Engineering and Landscape Management 24 (4): 233–244.
  • Jabali, O., T. Van Woensel, and A. G. De Kok. 2012. “Analysis of Travel Times and CO2 Emissions in Time-Dependent Vehicle Routing.” Production and Operations Management 21 (6): 1060–1074.
  • Jabir, E., V. V. Panicker, and R. Sridharan. 2017. “Design and Development of a Hybrid ant Colony-Variable Neighbourhood Search Algorithm for a Multi-Depot Green Vehicle Routing Problem.” Transportation Research Part D: Transport and Environment 57: 422–457.
  • Jabir, E., V. V. Panicker, and R. Sridharan. 2020. “Environmental Friendly Route Design for a Milk Collection Problem: The Case of an Indian Dairy.” International Journal of Production Research. doi:10.1080/00207543.2020.1846219.
  • Ji, S. F., R. J. Luo, and X. S. Peng. 2019. “A Probability Guided Evolutionary Algorithm for Multi-Objective Green Express Cabinet Assignment in Urban Last-Mile Logistics.” International Journal of Production Research 57 (11): 3382–3404.
  • Jourdan, L., M. Basseur, and E. G. Talbi. 2009. “Hybridizing Exact Methods and Meta-Heuristics: A Taxonomy.” European Journal of Operational Research 199 (3): 620–629.
  • Kadziński, M., T. Tervonen, M. K. Tomczyk, and R. Dekker. 2017. “Evaluation of Multi-Objective Optimization Approaches for Solving Green Supply Chain Design Problems.” Omega 68: 168–184.
  • Kantasa-Ard, A., M. Nouiri, A. Bekrar, A. Ait el Cadi, and Y. Sallez. 2021. “Machine Learning for Demand Forecasting in the Physical Internet: A Case Study of Agricultural Products in Thailand.” International Journal of Production Research 59 (24): 7491–7515.
  • Karakostas, P., A. Sifaleras, and M. C. Georgiadis. 2020. “Adaptive Variable Neighborhood Search Solution Methods for the Fleet Size and mix Pollution Location-Inventory-Routing Problem.” Expert Systems with Applications 153: 113444. doi:10.1016/j.eswa.2020.113444.
  • Karbassi Yazdi, A., M. A. Kaviani, A. Emrouznejad, and H. Sahebi. 2019. “A Binary Particle Swarm Optimization Algorithm for Ship Routing and Scheduling of Liquefied Natural gas Transportation.” Transportation Letters 12 (4): 223–232.
  • Karimi-Mamaghan, M., M. Mohammadi, P. Meyer, A. M. Karimi-Mamaghan, and E. G. Talbi. 2021. “Machine Learning at the Service of Meta-Heuristics for Solving Combinatorial Optimization Problems: A State-of-the-art.” European Journal of Operational Research 296 (2): 393–422.
  • Kashan, A. H., R. Tavakkoli-Moghaddam, and M. Gen. 2019. “Find-Fix-Finish-Exploit-Analyze (F3EA) Meta-Heuristic Algorithm: An Effective Algorithm with new Evolutionary Operators for Global Optimization.” Computers & Industrial Engineering 128: 192–218.
  • Kazemi, N., N. M. Modak, and K. Govindan. 2019. “A Review of Reverse Logistics and Closed Loop Supply Chain Management Studies Published in IJPR: A Bibliometric and Content Analysis.” International Journal of Production Research 57 (15-16): 4937–4960.
  • Kesharwani, R., Z. Sun, and C. Dagli. 2018. “Biofuel Supply Chain Optimal Design Considering Economic, Environmental, and Societal Aspects Towards Sustainability.” International Journal of Energy Research 42 (6): 2169–2198.
  • Koç, Ç, T. Bektaş, O. Jabali, and G. Laporte. 2014. “The Fleet Size and mix Pollution-Routing Problem.” Transportation Research Part B: Methodological 70: 239–254.
  • Koç, Ç, T. Bektaş, O. Jabali, and G. Laporte. 2016. “The Impact of Depot Location, Fleet Composition and Routing on Emissions in City Logistics.” Transportation Research Part B: Methodological 84: 81–102.
  • Kramer, R., N. Maculan, A. Subramanian, and T. Vidal. 2015a. “A Speed and Departure Time Optimization Algorithm for the Pollution-Routing Problem.” European Journal of Operational Research 247 (3): 782–787.
  • Kramer, R., A. Subramanian, T. Vidal, and F. C. Lucídio dos Anjos. 2015b. “A Matheuristic Approach for the Pollution-Routing Problem.” European Journal of Operational Research 243 (2): 523–539.
  • Küçükoğlu, İ, S. Ene, A. Aksoy, and N. Öztürk. 2015. “A Memory Structure Adapted Simulated Annealing Algorithm for a Green Vehicle Routing Problem.” Environmental Science and Pollution Research 22 (5): 3279–3297.
  • Kumar, R. S., A. Choudhary, S. A. I. Babu, S. K. Kumar, A. Goswami, and M. K. Tiwari. 2017. “Designing Multi-Period Supply Chain Network Considering Risk and Emission: A Multi-Objective Approach.” Annals of Operations Research 250 (2): 427–461.
  • Kumar, A., V. Jain, S. Kumar, and C. Chandra. 2016a. “Green Supplier Selection: A new Genetic/Immune Strategy with Industrial Application.” Enterprise Information Systems 10 (8): 911–943.
  • Kumar, R. S., K. Kondapaneni, V. Dixit, A. Goswami, L. S. Thakur, and M. K. Tiwari. 2016b. “Multi-objective Modeling of Production and Pollution Routing Problem with Time Window: A Self-Learning Particle Swarm Optimization Approach.” Computers & Industrial Engineering 99: 29–40.
  • Laporte, G. 1992. “The Vehicle Routing Problem: An Overview of Exact and Approximate Algorithms.” European Journal of Operational Research 59 (3): 345–358.
  • Lee, H., N. Aydin, Y. Choi, S. Lekhavat, and Z. Irani. 2018. “A Decision Support System for Vessel Speed Decision in Maritime Logistics Using Weather Archive big Data.” Computers & Operations Research 98: 330–342.
  • Leng, L., J. Zhang, C. Zhang, Y. Zhao, W. Wang, and G. Li. 2020b. “Decomposition-based Hyperheuristic Approaches for the bi-Objective Cold Chain Considering Environmental Effects.” Computers & Operations Research 123: 105043.
  • Leng, L., C. Zhang, Y. Zhao, W. Wang, J. Zhang, and G. Li. 2020a. “Biobjective low-Carbon Location-Routing Problem for Cold Chain Logistics: Formulation and Heuristic Approaches.” Journal of Cleaner Production 273: 122801.
  • Li, Y., M. K. Lim, J. Hu, and M. L. Tseng. 2020a. “Investigating the Effect of Carbon tax and Carbon Quota Policy to Achieve low Carbon Logistics Operations.” Resources, Conservation and Recycling 154: 104535.
  • Li, Y., M. K. Lim, Y. Tan, Y. Lee, and M. L. Tseng. 2020b. “Sharing Economy to Improve Routing for Urban Logistics Distribution Using Electric Vehicles.” Resources, Conservation and Recycling 153: 104585.
  • Li, Y., M. K. Lim, and M. L. Tseng. 2019c. “A Green Vehicle Routing Model Based on Modified Particle Swarm Optimization for Cold Chain Logistics.” Industrial Management & Data Systems 119 (3): 473–494.
  • Li, J., L. Wang, and X. Tan. 2019a. “Sustainable Design and Optimization of Coal Supply Chain Network Under Different Carbon Emission Policies.” Journal of Cleaner Production 250: 119548.
  • Li, S., Z. Wang, X. Wang, D. Zhang, and Y. Liu. 2019b. “Integrated Optimization Model of a Biomass Feedstock Delivery Problem with Carbon Emissions Constraints and Split Loads.” Computers & Industrial Engineering 137: 106013.
  • Liu, G., J. Hu, Y. Yang, S. Xia, and M. K. Lim. 2020. “Vehicle Routing Problem in Cold Chain Logistics: A Joint Distribution Model with Carbon Trading Mechanisms.” Resources, Conservation and Recycling 156: 104715.
  • Liu, C., G. Kou, X. Zhou, Y. Peng, H. Sheng, and F. E. Alsaadi. 2019. “Time-dependent Vehicle Routing Problem with Time Windows of City Logistics with a Congestion Avoidance Approach.” Knowledge-Based Systems 188: 104813.
  • Liu, G. S., and K. P. Lin. 2019. “A Decision Support System of Green Inventory-Routing Problem.” Industrial Management & Data Systems 119 (1): 89–110.
  • Luo, H., S. Tian, and X. T. Kong. 2021. “Physical Internet-Enabled Customised Furniture Delivery in the Metropolitan Areas: Digitalisation, Optimisation and Case Study.” International Journal of Production Research 59 (7): 2193–2217.
  • Macrina, G., G. Laporte, F. Guerriero, and L. D. P. Pugliese. 2019. “An Energy-Efficient Green-Vehicle Routing Problem with Mixed Vehicle Fleet, Partial Battery Recharging and Time Windows.” European Journal of Operational Research 276 (3): 971–982.
  • Mahmoudsoltani, F., H. Shahbandarzadeh, and R. Moghdani. 2018. “Using Pareto-Based Multi-Objective Evolution Algorithms in Decision Structure to Transfer the Hazardous Materials to Safety Storage Centre.” Journal of Cleaner Production 184: 893–911.
  • Maiyar, L. M., and J. J. Thakkar. 2019a. “Environmentally Conscious Logistics Planning for Food Grain Industry Considering Wastages Employing Multi Objective Hybrid Particle Swarm Optimization.” Transportation Research Part E: Logistics and Transportation Review 127: 220–248.
  • Maiyar, L. M., and J. J. Thakkar. 2019b. “Modelling and Analysis of Intermodal Food Grain Transportation Under hub Disruption Towards Sustainability.” International Journal of Production Economics 217: 281–297.
  • Maiyar, L. M., and J. J. Thakkar. 2020. “Robust Optimisation of Sustainable Food Grain Transportation with Uncertain Supply and Intentional Disruptions.” International Journal of Production Research 58 (18): 5651–5675.
  • Martins, C. L., and M. V. Pato. 2019. “Supply Chain Sustainability: A Tertiary Literature Review.” Journal of Cleaner Production 225: 995–1016.
  • Mehdizadeh, E., R. Tavakkoli-Moghaddam, and M. Yazdani. 2015. “A Vibration Damping Optimization Algorithm for a Parallel Machine Scheduling Problem with Sequence-Independent Family Setup Times.” Applied Mathematical Modelling 39 (22): 6845–6859.
  • Memari, A., A. R. A. Rahim, N. Absi, R. Ahmad, and A. Hassan. 2016. “Carbon-capped Distribution Planning: A JIT Perspective.” Computers & Industrial Engineering 97: 111–127.
  • Miranda-Ackerman, M. A., C. Azzaro-Pantel, and A. A. Aguilar-Lasserre. 2017. “A Green Supply Chain Network Design Framework for the Processed Food Industry: Application to the Orange Juice Agrofood Cluster.” Computers & Industrial Engineering 109: 369–389.
  • Mirjalili, S. 2016. “Dragonfly Algorithm: A new Meta-Heuristic Optimization Technique for Solving Single-Objective, Discrete, and Multi-Objective Problems.” Neural Computing and Applications 27 (4): 1053–1073.
  • Mirkouei, A., K. R. Haapala, J. Sessions, and G. S. Murthy. 2017. “A Mixed Biomass-Based Energy Supply Chain for Enhancing Economic and Environmental Sustainability Benefits: A Multi-Criteria Decision Making Framework.” Applied Energy 206: 1088–1101.
  • Mogale, D. G., S. K. Kumar, and M. K. Tiwari. 2020. “Green Food Supply Chain Design Considering Risk and Post-Harvest Losses: A Case Study.” Annals of Operations Research 295: 257–284.
  • Moons, S., K. Braekers, K. Ramaekers, A. Caris, and Y. Arda. 2019. “The Value of Integrating Order Picking and Vehicle Routing Decisions in a B2C e-Commerce Environment.” International Journal of Production Research 57 (20): 6405–6423.
  • Musavi, M., and A. Bozorgi-Amiri. 2017. “A Multi-Objective Sustainable hub Location-Scheduling Problem for Perishable Food Supply Chain.” Computers & Industrial Engineering 113: 766–778.
  • Ng, C. Y., S. S. Lam, and C. P. Samuel. 2019. “Logistic Sequencing for Improving Environmental Performance Using ant Colony Optimization.” Environmental Impact Assessment Review 77: 182–190.
  • Nia, A. R., M. H. Far, and S. T. A. Niaki. 2015. “A Hybrid Genetic and Imperialist Competitive Algorithm for Green Vendor Managed Inventory of Multi-Item Multi-Constraint EOQ Model Under Shortage.” Applied Soft Computing 30: 353–364.
  • Niu, Y., Z. Yang, P. Chen, and J. Xiao. 2018. “Optimizing the Green Open Vehicle Routing Problem with Time Windows by Minimizing Comprehensive Routing Cost.” Journal of Cleaner Production 171: 962–971.
  • Noh, J., and J. S. Kim. 2019. “Cooperative Green Supply Chain Management with Greenhouse gas Emissions and Fuzzy Demand.” Journal of Cleaner Production 208: 1421–1435.
  • Passino, K. M. 2002. “Biomimicry of Bacterial Foraging for Distributed Optimization and Control.” IEEE Control Systems Magazine 22 (3): 52–67.
  • Pelletier, S., O. Jabali, and G. Laporte. 2019. “The Electric Vehicle Routing Problem with Energy Consumption Uncertainty.” Transportation Research Part B: Methodological 126: 225–255.
  • Poonthalir, G., R. Nadarajan, and M. S. Kumar. 2020. “Hierarchical Optimization of Green Routing for Mobile Advertisement Vehicle.” Journal of Cleaner Production 258: 120661.
  • Pourhejazy, P., O. K. Kwon, and H. Lim. 2019. “Integrating Sustainability Into the Optimization of Fuel Logistics Networks.” KSCE Journal of Civil Engineering 23 (3): 1369–1383.
  • Qin, G., F. Tao, L. Li, and Z. Chen. 2019. “Optimization of the Simultaneous Pickup and Delivery Vehicle Routing Problem Based on Carbon tax.” Industrial Management & Data Systems 119 (9): 2055–2071.
  • Quintero-Araujo, C. L., A. Gruler, A. A. Juan, and J. Faulin. 2019. “Using Horizontal Cooperation Concepts in Integrated Routing and Facility-Location Decisions.” International Transactions in Operational Research 26 (2): 551–576.
  • Rachih, H., F. Z. Mhada, and R. Chiheb. 2019. “Meta-heuristics for Reverse Logistics: A Literature Review and Perspectives.” Computers & Industrial Engineering 127: 45–62.
  • Rahbari, M., B. Naderi, and M. Mohammadi. 2018. “Modelling and Solving the Inventory Routing Problem with CO 2 Emissions Consideration and Transshipment Option.” Environmental Processes 5 (3): 649–665.
  • Rasi, R. E., and M. Sohanian. 2020. “A Multi-Objective Optimization Model for Sustainable Supply Chain Network with Using Genetic Algorithm.” Journal of Modelling in Management 16: 714–727.
  • Rau, H., S. D. Budiman, and G. A. Widyadana. 2018. “Optimization of the Multi-Objective Green Cyclical Inventory Routing Problem Using Discrete Multi-Swarm PSO Method.” Transportation Research Part E: Logistics and Transportation Review 120: 51–75.
  • Rauniyar, A., R. Nath, and P. K. Muhuri. 2019. “Multi-factorial Evolutionary Algorithm Based Novel Solution Approach for Multi-Objective Pollution-Routing Problem.” Computers & Industrial Engineering 130: 757–771.
  • Reyes-Rubiano, L., L. Calvet, A. A. Juan, J. Faulin, and L. Bové. 2020. “A Biased-Randomized Variable Neighborhood Search for Sustainable Multi-Depot Vehicle Routing Problems.” Journal of Heuristics 26 (3): 401–422.
  • Ritzinger, U., J. Puchinger, and R. F. Hartl. 2016. “A Survey on Dynamic and Stochastic Vehicle Routing Problems.” International Journal of Production Research 54 (1): 215–231.
  • Robles, J. O., C. Azzaro-Pantel, and A. Aguilar-Lasserre. 2020. “Optimization of a Hydrogen Supply Chain Network Design Under Demand Uncertainty by Multi-Objective Genetic Algorithms.” Computers & Chemical Engineering 140: 106853.
  • Sadeghi, J., and K. R. Haapala. 2019. “Optimizing a Sustainable Logistics Problem in a Renewable Energy Network Using a Genetic Algorithm.” OPSEARCH 56 (1): 73–90.
  • Salhi, S., B. Gutierrez, N. Wassan, S. Wu, and R. Kaya. 2020. “An Effective Real Time GRASP-Based Meta-Heuristic: Application to Order Consolidation and Dynamic Selection of Transshipment Points for Time-Critical Freight Logistics.” Expert Systems with Applications 158: 113574.
  • Sarker, B. R., B. Wu, and K. P. Paudel. 2019. “Modeling and Optimization of a Supply Chain of Renewable Biomass and Biogas: Processing Plant Location.” Applied Energy 239: 343–355.
  • Seuring, S. 2013. “A Review of Modeling Approaches for Sustainable Supply Chain Management.” Decision Support Systems 54 (4): 1513–1520.
  • Seuring, S., and M. Müller. 2008. “From a Literature Review to a Conceptual Framework for Sustainable Supply Chain Management.” Journal of Cleaner Production 16 (15): 1699–1710.
  • Shen, J. 2020. “An Uncertain Sustainable Supply Chain Network.” Applied Mathematics and Computation 378: 125213.
  • Shi, Y., Y. Zhou, W. Ye, and Q. Q. Zhao. 2020. “A Relative Robust Optimization for a Vehicle Routing Problem with Time-Window and Synchronized Visits Considering Greenhouse gas Emissions.” Journal of Cleaner Production 275: 124112.
  • Simoni, M. D., P. Bujanovic, S. D. Boyles, and E. Kutanoglu. 2018. “Urban Consolidation Solutions for Parcel Delivery Considering Location, Fleet and Route Choice.” Case Studies on Transport Policy 6 (1): 112–124.
  • Snyder, H. 2019. “Literature Review as a Research Methodology: An Overview and Guidelines.” Journal of Business Research 104: 333–339.
  • Soni, G., V. Jain, F. T. Chan, B. Niu, and S. Prakash. 2019. “Swarm Intelligence Approaches in Supply Chain Management: Potentials, Challenges and Future Research Directions.” Supply Chain Management: An International Journal 24 (1): 107–123.
  • Su, J. C., C. H. Chu, and Y. T. Wang. 2012. “A Decision Support System to Estimate the Carbon Emission and Cost of Product Designs.” International Journal of Precision Engineering and Manufacturing 13 (7): 1037–1045.
  • Suzuki, Y. 2016. “A Dual-Objective Meta-Heuristic Approach to Solve Practical Pollution Routing Problem.” International Journal of Production Economics 176: 143–153.
  • Talbi, E. G. 2002. “A Taxonomy of Hybrid Meta-Heuristics.” Journal of Heuristics 8 (5): 541–564.
  • Talbi, E. G. 2013. “A Taxonomy of Meta-Heuristics for bi-Level Optimization.” In Meta-heuristics for bi-Level Optimization, edited by El-Ghazali Talbi, 1–39. Berlin, Heidelberg: Springer.
  • Talbi, E. G. 2016. “Combining Meta-Heuristics with Mathematical Programming, Constraint Programming and Machine Learning.” Annals of Operations Research 240 (1): 171–215.
  • Talbi, E. G. 2021. “Machine Learning Into Meta-Heuristics: A Survey and Taxonomy.” ACM Computing Surveys (CSUR) 54 (6): 1–32.
  • Tan, Y., L. Deng, L. Li, and F. Yuan. 2019. “The Capacitated Pollution Routing Problem with Pickup and Delivery in the Last Mile.” Asia Pacific Journal of Marketing and Logistics 31 (4): 1193–1215.
  • Tautenhain, C. P., A. P. Barbosa-Povoa, and M. C. Nascimento. 2019. “A Multi-Objective Matheuristic for Designing and Planning Sustainable Supply Chains.” Computers & Industrial Engineering 135: 1203–1223.
  • Teran-Somohano, A., and A. E. Smith. 2019. “Locating Multiple Capacitated Semi-Obnoxious Facilities Using Evolutionary Strategies.” Computers & Industrial Engineering 133: 303–316.
  • Tirkolaee, E. B., A. Goli, A. Faridnia, M. Soltani, and G. W. Weber. 2020. “Multi-objective Optimization for the Reliable Pollution-Routing Problem with Cross-Dock Selection Using Pareto-Based Algorithms.” Journal of Cleaner Production 276: 122927.
  • Tranfield, D., D. Denyer, and P. Smart. 2003. “Towards a Methodology for Developing Evidence-Informed Management Knowledge by Means of Systematic Review.” British Journal of Management 14 (3): 207–222.
  • Turken, N., V. Cannataro, A. Geda, and A. Dixit. 2020. “Nature Inspired Supply Chain Solutions: Definitions, Analogies, and Future Research Directions.” International Journal of Production Research 58 (15): 4689–4715.
  • Vahedi-Nouri, B., R. Tavakkoli-Moghaddam, Z. Hanzálek, H. Arbabi, and M. Rohaninejad. 2021. “Incorporating Order Acceptance, Pricing and Equity Considerations in the Scheduling of Cloud Manufacturing Systems: Matheuristic Methods.” International Journal of Production Research 59 (7): 2009–2027.
  • Validi, S., A. Bhattacharya, and P. J. Byrne. 2014a. “A Case Analysis of a Sustainable Food Supply Chain Distribution System—A Multi-Objective Approach.” International Journal of Production Economics 152: 71–87.
  • Validi, S., A. Bhattacharya, and P. J. Byrne. 2014b. “Integrated low-Carbon Distribution System for the Demand Side of a Product Distribution Supply Chain: A DoE-Guided MOPSO Optimiser-Based Solution Approach.” International Journal of Production Research 52 (10): 3074–3096.
  • Validi, S., A. Bhattacharya, and P. J. Byrne. 2020. “Sustainable Distribution System Design: A two-Phase DoE-Guided Meta-Heuristic Solution Approach for a Three-Echelon bi-Objective AHP-Integrated Location-Routing Model.” Annals of Operations Research 290 (1): 191–222.
  • Velazquez Abad, A., T. Cherrett, and B. Waterson. 2017. “Sim-heuristics low-Carbon Technologies’ Selection Framework for Reducing Costs and Carbon Emissions of Heavy Goods Vehicles.” International Journal of Logistics Research and Applications 20 (1): 3–19.
  • Wang, K., Y. Shao, and W. Zhou. 2017a. “Matheuristic for a two-Echelon Capacitated Vehicle Routing Problem with Environmental Considerations in City Logistics Service.” Transportation Research Part D: Transport and Environment 57: 262–276.
  • Wang, M., J. Wu, N. Kafa, and W. Klibi. 2020a. “Carbon Emission-Compliance Green Location-Inventory Problem with Demand and Carbon Price Uncertainties.” Transportation Research Part E: Logistics and Transportation Review 142: 102038.
  • Wang, W., X. Xu, Y. Jiang, Y. Xu, Z. Cao, and S. Liu. 2020b. “Integrated Scheduling of Intermodal Transportation with Seaborne Arrival Uncertainty and Carbon Emission.” Transportation Research Part D: Transport and Environment 88: 102571.
  • Wang, W., X. Xu, Y. Peng, Y. Zhou, and Y. Jiang. 2020c. “Integrated Scheduling of Port-Centric Supply Chain: A Special Focus on the Seaborne Uncertainties.” Journal of Cleaner Production 262: 121240.
  • Wang, J., S. Yao, J. Sheng, and H. Yang. 2019a. “Minimizing Total Carbon Emissions in an Integrated Machine Scheduling and Vehicle Routing Problem.” Journal of Cleaner Production 229: 1004–1017.
  • Wang, Y., Y. Yuan, X. Guan, M. Xu, L. Wang, H. Wang, and Y. Liu. 2020d. “Collaborative two-Echelon Multicenter Vehicle Routing Optimization Based on State–Space–Time Network Representation.” Journal of Cleaner Production 258: 120590.
  • Wang, Y., S. Zhang, K. Assogba, J. Fan, M. Xu, and Y. Wang. 2018. “Economic and Environmental Evaluations in the two-Echelon Collaborative Multiple Centers Vehicle Routing Optimization.” Journal of Cleaner Production 197: 443–461.
  • Wang, M., R. Zhang, and X. Zhu. 2017b. “A bi-Level Programming Approach to the Decision Problems in a Vendor-Buyer eco-Friendly Supply Chain.” Computers & Industrial Engineering 105: 299–312.
  • Wang, R., J. Zhou, X. Yi, and A. A. Pantelous. 2019b. “Solving the Green-Fuzzy Vehicle Routing Problem Using a Revised Hybrid Intelligent Algorithm.” Journal of Ambient Intelligence and Humanized Computing 10 (1): 321–332.
  • Webster, J., and R. T. Watson. 2002. “Analyzing the Past to Prepare for the Future: Writing a Literature Review.” MIS Quarterly 16: xiii–xxiii.
  • Wee, B. V., and D. Banister. 2016. “How to Write a Literature Review Paper?” Transport Reviews 36 (2): 278–288.
  • Winston, W. L., and J. B. Goldberg. 2004. Operations Research: Applications and Algorithms (Vol. 3). Belmont: Thomson Brooks/Cole.
  • Wu, C., and D. Barnes. 2016. “Partner Selection in Green Supply Chains Using PSO–a Practical Approach.” Production Planning & Control 27 (13): 1041–1061.
  • Wu, C., Y. Zhang, H. Pun, and C. Lin. 2020. “Construction of Partner Selection Criteria in Sustainable Supply Chains: A Systematic Optimization Model.” Expert Systems with Applications 158: 113643.
  • Xiao, Y., and A. Konak. 2016. “The Heterogeneous Green Vehicle Routing and Scheduling Problem with Time-Varying Traffic Congestion.” Transportation Research Part E: Logistics and Transportation Review 88: 146–166.
  • Xiao, Y., and A. Konak. 2017. “A Genetic Algorithm with Exact Dynamic Programming for the Green Vehicle Routing & Scheduling Problem.” Journal of Cleaner Production 167: 1450–1463.
  • Xu, Z., A. Elomri, S. Pokharel, and F. Mutlu. 2019. “A Model for Capacitated Green Vehicle Routing Problem with the Time-Varying Vehicle Speed and Soft Time Windows.” Computers & Industrial Engineering 137: 106011.
  • Yang, X. S., and S. Deb. 2010. “Engineering Optimisation by Cuckoo Search.” International Journal of Mathematical Modelling and Numerical Optimisation 1 (4): 330–343.
  • Yang, X. S., and X. He. 2013. “Bat Algorithm: Literature Review and Applications.” International Journal of Bio-Inspired Computation 5 (3): 141–149.
  • Yang, B., Z. H. Hu, C. Wei, S. Q. Li, L. Zhao, and S. Jia. 2015. “Routing with Time-Windows for Multiple Environmental Vehicle Types.” Computers & Industrial Engineering 89: 150–161.
  • Yang, X. S., M. Karamanoglu, and X. He. 2013. “Multi-objective Flower Algorithm for Optimization.” Procedia Computer Science 18: 861–868.
  • Yeh, W. C., and M. C. Chuang. 2011. “Using Multi-Objective Genetic Algorithm for Partner Selection in Green Supply Chain Problems.” Expert Systems with Applications 38 (4): 4244–4253.
  • Yin, P. Y., and Y. L. Chuang. 2016. “Adaptive Memory Artificial bee Colony Algorithm for Green Vehicle Routing with Cross-Docking.” Applied Mathematical Modelling 40 (21-22): 9302–9315.
  • Yong, W. A. N. G., K. Assogba, F. A. N. Jianxin, X. U. Maozeng, Y. Liu, and W. A. N. G. Haizhong. 2019. “Multi-depot Green Vehicle Routing Problem with Shared Transportation Resource: Integration of Time-Dependent Speed and Piecewise Penalty Cost.” Journal of Cleaner Production 230: 12–29.
  • Zahiri, B., J. Zhuang, and M. Mohammadi. 2017. “Toward an Integrated Sustainable-Resilient Supply Chain: A Pharmaceutical Case Study.” Transportation Research Part E: Logistics and Transportation Review 103: 109–142.
  • Zhalechian, M., R. Tavakkoli-Moghaddam, B. Zahiri, and M. Mohammadi. 2016. “Sustainable Design of a Closed-Loop Location-Routing-Inventory Supply Chain Network Under Mixed Uncertainty.” Transportation Research Part E: Logistics and Transportation Review 89: 182–214.
  • Zhang, S., N. Chen, X. Song, and J. Yang. 2019b. “Optimizing Decision-Making of Regional Cold Chain Logistics System in View of low-Carbon Economy.” Transportation Research Part A: Policy and Practice 130: 844–857.
  • Zhang, L. L., D. U. Gang, W. U. Jun, and M. A. Yujie. 2020. “Joint Production Planning, Pricing and Retailer Selection with Emission Control Based on Stackelberg Game and Nested Genetic Algorithm.” Expert Systems with Applications 161: 113733.
  • Zhang, S., C. K. Lee, H. K. Chan, K. L. Choy, and Z. Wu. 2015b. “Swarm Intelligence Applied in Green Logistics: A Literature Review.” Engineering Applications of Artificial Intelligence 37: 154–169.
  • Zhang, S., C. K. M. Lee, K. L. Choy, W. Ho, and W. H. Ip. 2014. “Design and Development of a Hybrid Artificial bee Colony Algorithm for the Environmental Vehicle Routing Problem.” Transportation Research Part D: Transport and Environment 31: 85–99.
  • Zhang, S., C. K. M. Lee, K. Wu, and K. L. Choy. 2016. “Multi-objective Optimization for Sustainable Supply Chain Network Design Considering Multiple Distribution Channels.” Expert Systems with Applications 65: 87–99.
  • Zhang, B., H. Li, S. Li, and J. Peng. 2018a. “Sustainable Multi-Depot Emergency Facilities Location-Routing Problem with Uncertain Information.” Applied Mathematics and Computation 333: 506–520.
  • Zhang, L. Y., M. L. Tseng, C. H. Wang, C. Xiao, and T. Fei. 2019a. “Low-carbon Cold Chain Logistics Using Ribonucleic Acid-ant Colony Optimization Algorithm.” Journal of Cleaner Production 233: 169–180.
  • Zhang, D., Q. Zhan, Y. Chen, and S. Li. 2018b. “Joint Optimization of Logistics Infrastructure Investments and Subsidies in a Regional Logistics Network with CO2 Emission Reduction Targets.” Transportation Research Part D: Transport and Environment 60: 174–190.
  • Zhang, J., Y. Zhao, W. Xue, and J. Li. 2015a. “Vehicle Routing Problem with Fuel Consumption and Carbon Emission.” International Journal of Production Economics 170: 234–242.
  • Zhen, L., Z. Xu, C. Ma, and L. Xiao. 2020. “Hybrid Electric Vehicle Routing Problem with Mode Selection.” International Journal of Production Research 58 (2): 562–576.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.