2019-02-08T11:34:19Z
2019-02-08T11:34:19Z
2016-12
This paper presents an optimization approach which integrates Monte Carlo simulation (MCS) within a heuristic algorithm in order to deal with a rich and real-life vehicle routing problem. A set of customers' orders must be delivered from different depots and using a heterogeneous fleet of vehicles. Also, since the capacity of the firm's depots is limited, some vehicles might need to be replenished using external tanks. The MCS component, which is based on the use of a skewed probability distribution, allows to transform a deterministic heuristic into a probabilistic procedure. The geometric distribution is used to guide the local search process during the generation of high-quality solutions. The efficiency of our approach is tested against a real-world instance. The results show that our algorithm is capable of providing noticeable savings in short computing times.
Objeto de conferencia
Inglés
vehicle routing; Monte Carlo methods; optimisation; goods distribution; order processing; statistical distributions; ruta para vehículos; métodos Monte Carlo; optimización; distribución de productos; tramitación del pedido; distribuciones estadísticas; ruta per a vehicles; mètodes Monte Carlo; optimització; distribució de productes; tramitació de la comanda; distribucions estadístiques; Algorithms; Algorismes; Algoritmos
Winter Simulation Conference (WSC). Proceedings
Winter Simulation Conference (WSC). Proceedings, 2016
Winter Simulation Conference, Washington, DC., EUA, 11-14, desembre de 2016
https://ieeexplore.ieee.org/document/7822285
https://www.informs-sim.org/wsc16papers/215.pdf
Alemany, G., Garcia, A., De Armas, J., Garcia, R., Juan, A. & Ortega, M. (2016). Combining Monte Carlo Simulation with Heuristics to Solve a Rich and Real-life Multi-depot Vehicle Routing Problem. Winter Simulation Conference (WSC). Proceedings, 2016 (). 2466-2474. doi: 10.1109/WSC.2016.7822285
9781509044863
1558-4305
10.1109/WSC.2016.7822285
(c) Author/s & (c) Journal
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