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Auteurs principaux: Rahman, Md Ashiqur, Kuhel, Mustofa Tanbir, Novoa, Clara
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2511.22218
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author Rahman, Md Ashiqur
Kuhel, Mustofa Tanbir
Novoa, Clara
author_facet Rahman, Md Ashiqur
Kuhel, Mustofa Tanbir
Novoa, Clara
contents The risk of oil spills in the Alaskan Arctic has become an urgent environmental and logistical concern as maritime traffic increases under climate driven sea ice retreat. Traditional deterministic response planning models fail to represent key uncertainties, including variable spill magnitudes, changing environmental sensitivity, and infrastructure limitations. This study develops a two-stage stochastic mixed integer linear programming framework that jointly optimizes the location of oil spill response stations and the allocation of heterogeneous resources across multiple probabilistic spill scenarios. The model integrates a weighted objective that combines spill volume, environmental sensitivity index (ESI), response time, and costs for station setup, deployment, and inter station transfer. Separate importance weights for coverage and cost, together with internal ecological weights, allow decision makers to balance ecological protection and operational efficiency. Data was compiled from Alaska Department of Environmental Conservation spill records and National Oceanic and Atmospheric Administration ESI layers and are converted into model ready scenarios through harmonization and sampling. The model is solved with the Gurobi optimizer, and sensitivity analysis is performed over 324 combinations of importance and ecological weights. Results show about a 35.45% percent improvement in response effectiveness over deterministic methods, as confirmed by the value of the stochastic solution, and reveal clear tradeoffs between cost and ecological coverage. The framework provides a data driven decision support tool for Arctic emergency planners that simultaneously accounts for uncertainty, environmental sensitivity, and realistic logistical constraints.
format Preprint
id arxiv_https___arxiv_org_abs_2511_22218
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Two-Stage Stochastic Optimization Framework for Environmentally Sensitive Oil Spill Response Resource Allocation in the Arctic
Rahman, Md Ashiqur
Kuhel, Mustofa Tanbir
Novoa, Clara
Optimization and Control
The risk of oil spills in the Alaskan Arctic has become an urgent environmental and logistical concern as maritime traffic increases under climate driven sea ice retreat. Traditional deterministic response planning models fail to represent key uncertainties, including variable spill magnitudes, changing environmental sensitivity, and infrastructure limitations. This study develops a two-stage stochastic mixed integer linear programming framework that jointly optimizes the location of oil spill response stations and the allocation of heterogeneous resources across multiple probabilistic spill scenarios. The model integrates a weighted objective that combines spill volume, environmental sensitivity index (ESI), response time, and costs for station setup, deployment, and inter station transfer. Separate importance weights for coverage and cost, together with internal ecological weights, allow decision makers to balance ecological protection and operational efficiency. Data was compiled from Alaska Department of Environmental Conservation spill records and National Oceanic and Atmospheric Administration ESI layers and are converted into model ready scenarios through harmonization and sampling. The model is solved with the Gurobi optimizer, and sensitivity analysis is performed over 324 combinations of importance and ecological weights. Results show about a 35.45% percent improvement in response effectiveness over deterministic methods, as confirmed by the value of the stochastic solution, and reveal clear tradeoffs between cost and ecological coverage. The framework provides a data driven decision support tool for Arctic emergency planners that simultaneously accounts for uncertainty, environmental sensitivity, and realistic logistical constraints.
title A Two-Stage Stochastic Optimization Framework for Environmentally Sensitive Oil Spill Response Resource Allocation in the Arctic
topic Optimization and Control
url https://arxiv.org/abs/2511.22218