Capacitated mobile facility location problem with mobile demand: Efficient relief aid provision to en route refugees

العنوان Capacitated mobile facility location problem with mobile demand: Efficient relief aid provision to en route refugees
المؤلف Yucel, E., Salman, F. S., Gunnec, D., Pashapour, A.
تاريخ النشر: 2024-12
مكان النشر - Elsevier
الموضوع Matheuristic, Accelerated benders decomposition, Mixed integer linear program, En route refugees, Mobile demand, Capacitated mobile facility location, Humanitarian logistics
النوع دورية
اللغة الإنجليزية
رقمي نعم
مخطوط لا
المكتبة: جامعة اوزيجين
معرف أصل المكتبة 0305-0483
رقم السجل cd53162a-c200-4906-a463-db6d0ff269af
موقع المكتبة Industrial Engineering
التاريخ 2024-12
ملاحظات TÜBİTAK
نص عينة As a humanity crisis, the tragedy of forced displacement entails relief aid distribution efforts among en route refugees to alleviate their migration hardships. This study aims to assist humanitarian organizations in cost-efficiently optimizing the logistics of capacitated mobile facilities utilized to deliver relief aid to transiting refugees in a multi-period setting. The problem is referred to as the Capacitated Mobile Facility Location Problem with Mobile Demands (CMFLP-MD). In CMFLP-MD, refugee groups follow specific paths, and meanwhile, they receive relief aid at least once every fixed number of consecutive periods, maintaining continuity of service. To this end, the overall costs associated with capacitated mobile facilities, including fixed, service provision, and relocation costs, are minimized. We formulate a mixed integer linear programming (MILP) model and propose two solution methods to solve this complex problem: an accelerated Benders decomposition approach as an exact solution method and a matheuristic algorithm that relies on an enhanced fix-and-optimize agenda. We evaluate our methodologies by designing realistic instances based on the Honduras migration crisis that commenced in 2018. Our numerical results reveal that the accelerated Benders decomposition excels MILP with a 46% run time improvement on average while acquiring solutions at least as good as the MILP across all instances. Moreover, our matheuristic acquires high-quality solutions with a 2.4% average gap compared to best-incumbents rapidly. An in-depth exploration of the solution properties underscores the robustness of our relief distribution plans under varying migration circumstances. Across several metrics, our sensitivity analyses also highlight the managerial advantages of implementing CMFLP-MD solutions.
DOI 10.1016/j.omega.2024.103138
Cilt 129
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Capacitated mobile facility location problem with mobile demand: Efficient relief aid provision to en route refugees

المؤلف Yucel, E., Salman, F. S., Gunnec, D., Pashapour, A.
تاريخ النشر 2024-12
مكان النشر - Elsevier
الموضوع Matheuristic, Accelerated benders decomposition, Mixed integer linear program, En route refugees, Mobile demand, Capacitated mobile facility location, Humanitarian logistics
النوع دورية
اللغة الإنجليزية
رقمي نعم
مخطوط لا
المكتبة جامعة اوزيجين
معرف أصل المكتبة 0305-0483
رقم السجل cd53162a-c200-4906-a463-db6d0ff269af
موقع المكتبة Industrial Engineering
التاريخ 2024-12
ملاحظات TÜBİTAK
نص عينة As a humanity crisis, the tragedy of forced displacement entails relief aid distribution efforts among en route refugees to alleviate their migration hardships. This study aims to assist humanitarian organizations in cost-efficiently optimizing the logistics of capacitated mobile facilities utilized to deliver relief aid to transiting refugees in a multi-period setting. The problem is referred to as the Capacitated Mobile Facility Location Problem with Mobile Demands (CMFLP-MD). In CMFLP-MD, refugee groups follow specific paths, and meanwhile, they receive relief aid at least once every fixed number of consecutive periods, maintaining continuity of service. To this end, the overall costs associated with capacitated mobile facilities, including fixed, service provision, and relocation costs, are minimized. We formulate a mixed integer linear programming (MILP) model and propose two solution methods to solve this complex problem: an accelerated Benders decomposition approach as an exact solution method and a matheuristic algorithm that relies on an enhanced fix-and-optimize agenda. We evaluate our methodologies by designing realistic instances based on the Honduras migration crisis that commenced in 2018. Our numerical results reveal that the accelerated Benders decomposition excels MILP with a 46% run time improvement on average while acquiring solutions at least as good as the MILP across all instances. Moreover, our matheuristic acquires high-quality solutions with a 2.4% average gap compared to best-incumbents rapidly. An in-depth exploration of the solution properties underscores the robustness of our relief distribution plans under varying migration circumstances. Across several metrics, our sensitivity analyses also highlight the managerial advantages of implementing CMFLP-MD solutions.
DOI 10.1016/j.omega.2024.103138
Cilt 129
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