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A new humanitarian relief logistic network for multi-objective optimization under stochastic programming

Published: 01 September 2022 Publication History

Abstract

Millions of affected people and thousands of victims are consequences of earthquakes, every year. Therefore, it is necessary to prepare a proper preparedness and response planning. The objectives of this paper are i) minimizing the expected value of the total costs of relief supply chain, ii) minimizing the maximum number of unsatisfied demands for relief staff and iii) minimizing the total probability of unsuccessful evacuation in routes. In this paper, a scenario based stochastic multi-objective location-allocation-routing model is proposed for a real humanitarian relief logistics problem which focused on both pre- and post-disaster situations in presence of uncertainty. To cope with demand uncertainty, a simulation approach is used. The proposed model integrates these two phases simultaneously. Then, both strategic and operational decisions (pre-disaster and post-disaster), fairness in the evacuation, and relief item distribution including commodities and relief workers, victim evacuation including injured people, corpses and homeless people are also considered simultaneously in this paper. The presented model is solved utilizing the Epsilon-constraint method for small- and medium-scale problems and using three metaheuristic algorithms for the large-scale problem (case study). Empirical results illustrate that the model can be used to locate the shelters and relief distribution centers, determine appropriate routes and allocate resources in uncertain and real-life disaster situations.

References

[1]
Aghdam FH, Kalantari NT, and Mohammadi-Ivatloo B A stochastic optimal scheduling of multi-microgrid systems considering emissions: a chance constrained model J Clean Prod 2020 275 122965
[2]
Alizadeh R, Nishi T, Bagherinejad J, and Bashiri M Multi-period maximal covering location problem with capacitated facilities and modules for natural disaster relief services Appl Sci 2021 11 1 397
[3]
Anusha M and Sathiaseelan JGR An empirical study on multi-objective genetic algorithms using clustering techniques International Journal of Advanced Intelligence Paradigms 2016 8 3 343-354
[4]
Balcik B and Beamon BM Facility location in humanitarian relief Int J Logist 2008 11 2 101-121
[5]
Balcik B Site selection and vehicle routing for post-disaster rapid needs assessment Transportation research part E: logistics and transportation review 2017 101 30-58
[6]
Cavdur F, Kose-Kucuk M, and Sebatli A Allocation of temporary disaster-response facilities for relief-supplies distribution: a stochastic optimization approach for Afterdisaster uncertainty Natural Hazards Review 2021 22 1 05020013
[7]
Charnes A and Cooper WW Chance-constrained programming Manag Sci 1959 6 1 73-79
[8]
Chen G and Li J A diversity ranking based evolutionary algorithm for multi-objective and many-objective optimization Swarm and Evolutionary Computation 2019 48 274-287
[9]
Chowdhury S, Emelogu A, Marufuzzaman M, Nurre SG, and Bian L Drones for disaster response and relief operations: a continuous approximation model Int J Prod Econ 2017 188 167-184
[10]
Coburn AW and Spence RJ Earthquake protection (p. 420) 2002 Chichester Wiley
[11]
Corne DW, Jerram NR, Knowles JD, Oates MJ (2001) PESA-II: Region-based selection in evolutionary multiobjective optimization. In Proceedings of the 3rd Annual Conference on Genetic and Evolutionary Computation 3(2):283–290
[12]
Diabat A, Jebali A (2020) Multi-product and multi-period closed loop supply chain network design under take-back legislation. Int J Prod Econ 231:107–118
[13]
Du B, Zhou H, and Leus R A two-stage robust model for a reliable p-center facility location problem Appl Math Model 2020 77 99-114
[14]
Ergün S, Usta P, Gök SZA, Weber GW (2021) A game theoretical approach to emergency logistics planning in natural disasters. Ann Oper Res:1–14
[15]
Eydi A and Bakhtiari M A multi-product model for evaluating and selecting two layers of suppliers considering environmental factors RAIRO-Operations Research 2017 51 4 875-902
[16]
Firuzi E, Ansari A, Hosseini KA, and Rashidabadi M Probabilistic earthquake loss model for residential buildings in Tehran, Iran to quantify annualized earthquake loss Bull Earthq Eng 2019 17 5 2383-2406
[17]
Gadhvi B, Savsani V, and Patel V Multi-objective optimization of vehicle passive suspension system using NSGA-II, SPEA2 and PESA-II Procedia Technology 2016 23 2016 361-368
[18]
Ghasemi P, Goodarzian F, Muñuzuri J, and Abraham A A cooperative game theory approach for location-routing-inventory decisions in humanitarian relief chain incorporating stochastic planning Appl Math Model 2021 104 750-781
[19]
Ghasemi P, Khalili-Damghani K, Hafezalkotob A, and Raissi S Stochastic optimization model for distribution and evacuation planning (A case study of Tehran earthquake) Stochastic optimization model for distribution and evacuation planning (a case study of Tehran earthquake) 2019 Socio-Economic Planning Sciences 100745
[20]
Ghasemi P, Khalili-Damghani K, Hafezalkotob A, and Raissi S Uncertain multi-objective multi-commodity multi-period multi-vehicle location-allocation model for earthquake evacuation planning Appl Math Comput 2019 350 105-132
[21]
Ghasemi P, Khalili-Damghani K, Hafezalkotob A, and Raissi S Stochastic optimization model for distribution and evacuation planning (a case study of Tehran earthquake) Socio Econ Plan Sci 2020 71 100745
[22]
Goli A, Bakhshi M, and Babaee Tirkolaee E A review on main challenges of disaster relief supply chain to reduce casualties in case of natural disasters Journal of Applied Research on Industrial Engineering 2017 4 2 77-88
[23]
Goodarzian F, Ghasemi P, Gunasekaren A, Taleizadeh AA, Abraham A (2021) A sustainable-resilience healthcare network for handling COVID-19 pandemic. Ann Oper Res:1–65
[24]
Habibi-Kouchaksaraei M, Paydar MM, and Asadi-Gangraj E Designing a bi-objective multi-echelon robust blood supply chain in a disaster Appl Math Model 2018 55 583-599
[25]
Haghjoo N, Tavakkoli-Moghaddam R, Shahmoradi-Moghadam H, and Rahimi Y Reliable blood supply chain network design with facility disruption: a real-world application Eng Appl Artif Intell 2020 90 103493
[26]
Hawe GI, Coates G, Wilson DT, and Crouch RS Agent-based simulation of emergency response to plan the allocation of resources for a hypothetical two-site major incident Eng Appl Artif Intell 2015 46 336-345
[27]
Hong X, Lejeune MA, and Noyan N Stochastic network design for disaster preparedness IIE Trans 2015 47 4 329-357
[28]
Hosseini SA, de la Fuente A, and Pons O Multi-criteria decision-making method for assessing the sustainability of post-disaster temporary housing units technologies: a case study in bam, 2003 Sustain Cities Soc 2016 20 38-51
[29]
Jia H, Ordóñez F, and Dessouky M A modeling framework for facility location of medical services for large-scale emergencies IIE Trans 2007 39 1 41-55
[30]
Jia L and Kefan X Preparation and scheduling system of emergency supplies in disasters Kybernetes 2015 44 423-439
[31]
Khalili-Damghani K, Nojavan M, and Tavana M Solving fuzzy multidimensional multiple-choice knapsack problems: the multi-start partial bound enumeration method versus the efficient epsilon-constraint method Appl Soft Comput 2013 13 4 1627-1638
[32]
Khalili-Damghani K, Tavana M, Ghasemi P (2022) A stochastic bi-objective simulation–optimization model for cascade disaster location-allocation-distribution problems. Ann Oper Res 309(1):103–141
[33]
Khalilpourazari S, Soltanzadeh S, Weber GW, and Roy SK Designing an efficient blood supply chain network in crisis: neural learning, optimization and case study Ann Oper Res 2020 289 1 123-152
[34]
Khojasteh SB and Macit I A stochastic programming model for decision-making concerning medical supply location and allocation in disaster management Disaster Medicine and Public Health Preparedness 2017 11 6 747-755
[35]
Khorsi M, Chaharsooghi SK, Bozorgi-Amiri A, Kashana AH (2020) A multi-objective multi-period model for humanitarian relief logistics with Split delivery and multiple uses of vehicles. J Syst Sci Syst Eng 29(3):360–378
[36]
Kropat E, Weber GW, and Tirkolaee EB Foundations of semialgebraic gene-environment networks Journal of Dynamics & Games 2020 7 4 253-268
[37]
Kumar M and Guria C The elitist non-dominated sorting genetic algorithm with inheritance (i-NSGA-II) and its jumping gene adaptations for multi-objective optimization Inf Sci 2017 382 15-37
[38]
Lawrence JM, Hossain NUI, Jaradat R, Hamilton M (2020) Leveraging a Bayesian network approach to model and analyze supplier vulnerability to severe weather risk: a case study of the US pharmaceutical supply chain following hurricane Maria. Int J Disaster Risk Reduct 49:101–116
[39]
Li P, Arellano-Garcia H, and Wozny G Chance constrained programming approach to process optimization under uncertainty Comput Chem Eng 2008 32 1–2 25-45
[40]
Lim GJ, Rungta M, and Davishan A A robust chance constraint programming approach for evacuation planning under uncertain demand distribution IISE Transactions 2019 51 6 589-604
[41]
Liu J and Xie K Emergency materials transportation model in disasters based on dynamic programming and ant colony optimization Kybernetes 2017 46 656-671
[42]
Liu Y, Lei H, Zhang D, and Wu Z Robust optimization for relief logistics planning under uncertainties in demand and transportation time Appl Math Model 2018 55 262-280
[43]
Maharjan R, Hanaoka S, (2018) “A multi-actor multi-objective optimization approach for locating temporary logistics hubs during disaster response”. J Human Logistics Supply Chain Manag 8(1):2–21
[44]
Moayedikia A Multi-objective community detection algorithm with node importance analysis in attributed networks Appl Soft Comput 2018 67 434-451
[45]
Nedjati A, Izbirak G, and Arkat J Bi-objective covering tour location routing problem with replenishment at intermediate depots: formulation and meta-heuristics Comput Ind Eng 2017 110 191-206
[46]
Nikoo N, Babaei M, and Mohaymany AS Emergency transportation network design problem: identification and evaluation of disaster response routes International journal of disaster risk reduction 2018 27 7-20
[47]
Noham R and Tzur M Designing humanitarian supply chains by incorporating actual post-disaster decisions Eur J Oper Res 2018 265 3 1064-1077
[48]
Oksuz MK and Satoglu SI A two-stage stochastic model for location planning of temporary medical centers for disaster response International Journal of Disaster Risk Reduction 2020 44 101426
[49]
Özdamar L and Ertem MA Models, solutions and enabling technologies in humanitarian logistics Eur J Oper Res 2015 244 1 55-65
[50]
Rahimi M, Baboli A, and Rekik Y Multi-objective inventory routing problem: a stochastic model to consider profit, service level and green criteria Transportation Research Part E: Logistics and Transportation Review 2017 101 59-83
[51]
Ransikarbum K and Mason SJ Goal programming-based post-disaster decision making for integrated relief distribution and early-stage network restoration Int J Prod Econ 2016 182 324-341
[52]
Rytilä JS, Spens KM (2006) Using simulation to increase efficiency in blood supply chains. Manag Res News 2(3):11–19
[53]
Shahabi A, Raissi S, Khalili-Damghani K, Rafei M (2021) Designing a resilient skip-stop schedule in rapid rail transit using a simulation-based optimization methodology. Oper Res 21(3):1691–1721
[54]
Shirazi H, Kia R, and Ghasemi P A stochastic bi-objective simulation–optimization model for plasma supply chain in case of COVID-19 outbreak Appl Soft Comput 2021 112 107725
[55]
Tavana M, Abtahi AR, Di Caprio D, Hashemi R, and Yousefi-Zenouz R An integrated location-inventory-routing humanitarian supply chain network with pre-and post-disaster management considerations Socio Econ Plan Sci 2018 64 21-37
[56]
Tirkolaee EB, Aydın NS, Ranjbar-Bourani M, and Weber GW A robust bi-objective mathematical model for disaster rescue units allocation and scheduling with learning effect Comput Ind Eng 2020 149 106790
[57]
Tirkolaee EB, Goli A, Ghasemi P, Goodarzian F (2022) Designing a sustainable closed-loop supply chain network of face masks during the COVID-19 pandemic: Pareto-based algorithms. J Clean Prod 333:130056
[58]
Tlili T, Abidi S, and Krichen S A mathematical model for efficient emergency transportation in a disaster situation Am J Emerg Med 2018 36 9 1585-1590
[59]
Vahdani B, Veysmoradi D, Noori F, and Mansour F Two-stage multi-objective location-routing-inventory model for humanitarian logistics network design under uncertainty International journal of disaster risk reduction 2018 27 290-306
[60]
Zhan SL, Liu S, Ignatius J, Chen D, and Chan FT Disaster relief logistics under demand-supply incongruence environment: a sequential approach Appl Math Model 2021 89 592-609
[61]
Zitzler E and Thiele L September. Multi-objective optimization using evolutionary algorithms—a comparative case study. In International conference on parallel problem solving from nature (pp. 292–301) 1998 Berlin, Heidelberg Springer
[62]
Zitzler E Evolutionary algorithms for multi-objective optimization: methods and applications 1999 Ithaca Shaker
[63]
Zitzler E, Laumanns M, Thiele L (2001) SPEA2: Improving the strength Pareto evolutionary algorithm. TIK-report 2(1):103

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  • (2024)Application of Metaheuristic algorithm in intelligent logistics scheduling and environmental sustainabilityIntelligent Decision Technologies10.3233/IDT-24028018:3(1727-1740)Online publication date: 16-Sep-2024
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  • (2024)A location-inventory-distribution model under gradual injection of pre-disaster budgets with application in disaster relief logistics: a case studySoft Computing - A Fusion of Foundations, Methodologies and Applications10.1007/s00500-023-09184-828:3(2125-2159)Online publication date: 1-Feb-2024
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Published In

cover image Applied Intelligence
Applied Intelligence  Volume 52, Issue 12
Sep 2022
1229 pages

Publisher

Kluwer Academic Publishers

United States

Publication History

Published: 01 September 2022
Accepted: 09 May 2022

Author Tags

  1. Humanitarian relief logistics
  2. Distribution planning
  3. Simulation-optimization model
  4. Meta-heuristic algorithms

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  • (2024)Application of Metaheuristic algorithm in intelligent logistics scheduling and environmental sustainabilityIntelligent Decision Technologies10.3233/IDT-24028018:3(1727-1740)Online publication date: 16-Sep-2024
  • (2024)Many-objective emergency aided decision making based on knowledge graphApplied Intelligence10.1007/s10489-024-05557-054:17-18(7733-7749)Online publication date: 1-Sep-2024
  • (2024)A location-inventory-distribution model under gradual injection of pre-disaster budgets with application in disaster relief logistics: a case studySoft Computing - A Fusion of Foundations, Methodologies and Applications10.1007/s00500-023-09184-828:3(2125-2159)Online publication date: 1-Feb-2024
  • (2023)Big Data Swarm Intelligence Optimization Algorithm Application in the Intelligent Management of an E-Commerce Logistics WarehouseJournal of Cases on Information Technology10.4018/JCIT.33280926:1(1-19)Online publication date: 26-Oct-2023
  • (2023)Designing a closed-loop green outsourced maintenance supply chain network for advanced manufacturing systems with redundancy strategy and eco-friendly partsApplied Intelligence10.1007/s10489-023-04821-z53:20(23905-23928)Online publication date: 1-Oct-2023

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