Print Email Facebook Twitter A methodology for developing evidence-based optimization models in humanitarian logistics Title A methodology for developing evidence-based optimization models in humanitarian logistics Author Baharmand, Hossein (University of Agder; Hanken School of Economics) Vega, Diego (Hanken School of Economics) Lauras, Matthieu (Université de Toulouse) Comes, M. (TU Delft Transport and Logistics; TU Delft System Engineering) Date 2022 Abstract The growing need for humanitarian assistance has inspired an increasing amount of academic publications in the field of humanitarian logistics. Over the past two decades, the humanitarian logistics literature has developed a powerful toolbox of standardized problem formulations to address problems ranging from distribution to scheduling or locations planning. At the same time, the humanitarian field is quickly evolving, and problem formulations heavily rely on the context, leading to calls for more evidence-based research. While mixed methods research designs provide a promising avenue to embed research in the reality of the field, there is a lack of rigorous mixed methods research designs tailored to translating field findings into relevant HL optimization models. In this paper, we set out to address this gap by providing a systematic mixed methods research design for HL problem in disasters response. The methodology includes eight steps taking into account specifics of humanitarian disasters. We illustrate our methodology by applying it to the 2015 Nepal earthquake response, resulting in two evidence-based HL optimization models. Subject Case studyField researchHumanitarian logisticsMixed methodsOptimizationResearch design To reference this document use: http://resolver.tudelft.nl/uuid:86f20c68-7907-4d30-9095-2edca3cc67cc DOI https://doi.org/10.1007/s10479-022-04762-9 ISSN 0254-5330 Source Annals of Operations Research, 319 (1), 1197-1229 Part of collection Institutional Repository Document type journal article Rights © 2022 Hossein Baharmand, Diego Vega, Matthieu Lauras, M. Comes Files PDF Baharmand2022_Article_AMe ... gEvide.pdf 2 MB Close viewer /islandora/object/uuid:86f20c68-7907-4d30-9095-2edca3cc67cc/datastream/OBJ/view