Título: Towards more efficient routing in dynamic networks
Ponente: Yury Nikulin, de la Universidad de Turku (Finlandia)
Organizador: Juan Parra
Fecha: Martes 13 de diciembre de 2022 a las 12:30 horas
Lugar: Sala de seminarios CIO
Abstract: This study proposes a customized genetic algorithm ( CGA ) to find the Pareto frontier for a bi-objective integer linear programming (ILP) model of routing in a dynamic network, where the number of nodes and edge weights varies over time. Utilizing a hybrid method, the CGA combines a genetic algorithm with dynamic programming (DP); it is a fast alternative to an ILP solver for finding efficient solutions, particularly for large dimensions. A non-dominated sorting genetic algorithm (NSGA-II) is used as a base multi-objective evolutionary algorithm. Real data are used for target trajectories, from a case study of the application of a surveillance boat to measure greenhouse-gas emissions of ships on the Baltic sea. The CGA’s performance is evaluated in comparison to ILP solutions in terms of accuracy and computation efficiency. Results over multiple runs indicate convergence to the efficient frontier, with a considerable computation speed-up relative to the ILP solver. The study stays as a model for hybridizing evolutionary optimization and DP methods together in solving complex real-world problems.
Comentarios recientes