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handle: 2117/384807
Epidemic outbreaks, such as the one generated by the coronavirus disease, have raised the need for more efficient healthcare logistics. One of the challenges that many governments have to face in such scenarios is the deployment of temporary medical facilities across a region with the purpose of providing medical services to their citizens. This work tackles this temporary-facility location and queuing problem with the goals of minimizing costs, the expected completion time, population travel and waiting times. The completion time for a facility depends on the numbers assigned to those facilities as well as stochastic arrival times. This work proposes a learnheuristic algorithm to solve the facility location and population assignment problem. Firstly a machine learning algorithm is trained using data from a queuing model (simulation module). The learnheuristic then constructs solutions using the machine learning algorithm to rapidly evaluate decisions in terms of facility completion and population waiting times. The efficiency and quality of the algorithm is demonstrated by comparison with exact and simulation-only (simheuristic) methodologies. A series of experiments are performed which explore the trade offs between solution cost, completion time, population travel and waiting times.
Peer Reviewed
Àrees temàtiques de la UPC::Matemàtiques i estadística, Programming (Mathematics), Facilities planning and design, Algorismes, Operations research, Investigació operativa, Sim-learnheuristics, Queuing, Machine learning, Programació (Matemàtica), Algorithms, Simulation
Àrees temàtiques de la UPC::Matemàtiques i estadística, Programming (Mathematics), Facilities planning and design, Algorismes, Operations research, Investigació operativa, Sim-learnheuristics, Queuing, Machine learning, Programació (Matemàtica), Algorithms, Simulation
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