comillas comillas

ES Instituto de Investigación Tecnológica IIT

español english browser default
Presentación Descripción Organización Personal Actividad Otros

Detalle de la publicación en revista

Título: Fuzzy optimal schedule of high speed train operation to minimize energy consumption with uncertain delays and driver’s behavioral response
Autores: A.P. Cucala , A. Fernández-Cardador , C. Sicre , M. Domínguez
Palabras clave: energy efficiency, ecodriving, railway operation, fuzzy, Genetic Algorithm, simulation
Líneas de investigación *Operación eficiente del tráfico ferroviario
*Conducción económica de trenes (Ecodriving)
Resumen: Energy efficiency is an important concern in for railway administrations and operators. Strategies focused on traffic operation can achieve energy savings in short term and with associated low investments. For that purpose the main strategies are the design of efficient timetables and driving (ecodriving). The ecodriving applies coasting commands (null traction force) to reduce energy consumption, taking into account downhill slopes, speed reductions, etc (Acikbas and Soylemez, 2008). However, timetable models in literature do not typically consider energy minimization as a goal, and punctuality requirements under uncertainty. In this paper a model for the joint design of ecodriving and timetable under uncertainty for high speed lines is proposed where the railway operator and administrator requirements are incorporated. Uncertainty in delays is modeled as fuzzy numbers and punctuality constraints, and the timetable optimization model is a fuzzy linear programming model, in which the objective function includes the consumptions of delayed scenarios and the behavioral response of the driver that will affect the consumption. The ecodriving design is based on a Genetic Algorithm that makes use of a detailed simulation model, taking into account the specific characteristics of high speed lines and trains. The proposed method is applied to a real Spanish high speed line to optimize the operation and it is compared to the current commercial service in order to evaluate the potential energy savings.
Referencia: Engineering Applications of Artificial Intelligence
Volumen: 25   Número: 8   Páginas: 1548-1557
Fecha de publicación:Diciembre 2012
Referencia DOI: DOI icon 10.1016/j.engappai.2012.02.006    
Índice de impacto de la revista: JCR impact factor 1.665 (2011)
Referencia para EndNote:

Descargar artículo:



© Universidad Pontificia Comillas, Escuela Técnica Superior de Ingeniería - ICAI, Instituto de Investigación Tecnológica
Dirección Postal: C/ Alberto Aguilera 23, 28015 Madrid, España
Sede SM26: C/ Santa Cruz de Marcenado 26, 28015 Madrid, España MAP
Sede FR3: C/ Francisco de Ricci 3, 28015 Madrid, España MAP
Información de contacto: Tel: +34 91 542-2800, Fax: +34 91 542-3176, email: info@iit.upcomillas.es
Locations of visitors to this page