2016
DOI: 10.1016/j.jom.2016.05.012
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Designing an efficient humanitarian supply network

Abstract: International audienceIncreasingly, humanitarian organizations have opened regional warehouses and pre-positioned resources locally. Choosing appropriate locations is not easy and frequently based on opportunities rather than rational decisions. Dedicated decision-support systems could help humanitarian practitioners design their supply networks. Academic literature suggests the use of commercial sector models but rarely considers the constraints and specific context of humanitarian operations, such as obtaini… Show more

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Cited by 96 publications
(65 citation statements)
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References 39 publications
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“…The authors presented a real-time, micro-level forecast; hence, the results might be used as a basis for scheduling the operations of rescue vehicles and the delivery of emergency goods in real time. To properly support humanitarian decision makers, Charles et al (2016) proposed a tooled methodology based on the definition of aggregate scenarios to reliably forecast demand using past disaster data and future trends. Tzeng et al (2007) developed a fuzzy multi-objective linear programming model for the design of relief delivery systems with the objectives of minimizing the total costs and total travel time and maximizing the minimal satisfaction during the planning period using a method of predicting the commodity demand at each established site and an uncertainty analysis of the achievement of each objective.…”
Section: Disaster Dynamic Predictionmentioning
confidence: 99%
“…The authors presented a real-time, micro-level forecast; hence, the results might be used as a basis for scheduling the operations of rescue vehicles and the delivery of emergency goods in real time. To properly support humanitarian decision makers, Charles et al (2016) proposed a tooled methodology based on the definition of aggregate scenarios to reliably forecast demand using past disaster data and future trends. Tzeng et al (2007) developed a fuzzy multi-objective linear programming model for the design of relief delivery systems with the objectives of minimizing the total costs and total travel time and maximizing the minimal satisfaction during the planning period using a method of predicting the commodity demand at each established site and an uncertainty analysis of the achievement of each objective.…”
Section: Disaster Dynamic Predictionmentioning
confidence: 99%
“…Humanitarian organizations have recognized the advantages of decentralized SCC through building regional hubs. The United Nations Humanitarian Response Depots and regional hubs deployed by the International Federation of Red Cross are real‐life benchmarks that were found to outperform centralized humanitarian SCC in terms of cost, responsiveness, and effectiveness (Charles et al, ; Gatignon, Van Wassenhove, & Charles, ). By the same token, the organization under study was interested in building hubs in Africa, as the destination of around 90% of its medical products, although the impact of such hubs on environmental sustainability of the supply chain was the question of researchers and organizational managers.…”
Section: Application Of the Proposed Mixed‐methods Researchmentioning
confidence: 99%
“…Jahre et al (2016) also focus on the UNHCR and present a prepositioning model that integrates short-term emergency response and longer term development operations. Charles et al (2016) develop a model to support IFRC's global warehouse location decisions. Toyasaki et al (2017) consider multi-agency inventory planning within a UNHRD depot.…”
Section: Prepositioning Network Designmentioning
confidence: 99%