6 resultados para Traffic Signal Control, Adaptive Signal Control, Genetic Algorithms, Artificial Intelligence (AI), Microsimulation Model

em Archivo Digital para la Docencia y la Investigación - Repositorio Institucional de la Universidad del País Vasco


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This study developed a framework for the shape optimization of aerodynamics profiles using computational fluid dynamics (CFD) and genetic algorithms. Agenetic algorithm code and a commercial CFD code were integrated to develop a CFD shape optimization tool. The results obtained demonstrated the effectiveness of the developed tool. The shape optimization of airfoils was studied using different strategies to demonstrate the capacity of this tool with different GA parameter combinations.

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[ES]El objetivo de este proyecto es el diseño e implementación del modelo de la estación FMS 201 (alimentación de la base) y el diseño e implementación del control de la estación. Esta estación pertenece a la serie FMS 200 (sistema didáctico modular de ensamblaje flexible) distribuido por la empresa SMC. Se dispone uno en el laboratorio de investigación del departamento de Ingeniería de Sistemas y Automática de la Escuela Superior de Ingeniería de Bilbao (EHU/UPV). Para el desarrollo e implementación del modelo se usará la herramienta informática Automation Studio. Para el control del modelo se usará el PLC. Para el intercambio de información entre modelo y controlador se utilizará la comunicación OPC Para el control de la estación se usa un PLC S7-300 de la marca SIEMENS. Se finaliza el documento realizando las pruebas de validación del modelo desarrollado, ejecutándose el programa de control en el PLC y corriendo el modelo desarrollado en el PC.

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This paper sets out an optimum synthesis methodology for wheel profiles of railway vehicles in order to secure good dynamic behaviour with different track configurations. Specifically, the optimisation process has been applied to the case of rail wheelsets mounted on double gauge bogies, that move over two different gauges, which also have different types of rail: the Iberian gauge (1668 mm) and the UIC gauge (1435 mm). Optimisation is performed using Genetic Algorithms and traditional optimisation methods in a complementary way. The objective function used is based on an ideal equivalent conicity curve which ensures good stability on straight sections and also proper negotiation of curves. To this end the curve is constructed in such a way that it is constant with a low value for small lateral wheelset displacements (with regard to stability), and increases as the displacements increase (to facilitate negotiation of curved sections). Using this kind of ideal conicity curve also enables a wheel profile to be secured where the contact points have a larger distribution over the active contact areas, making wear more homogeneous and reducing stresses. The result is a wheel profile with a conicity that is closer to the target conicity for both gauges studied, producing better curve negotiation while maintaining good stability on straight sections of track. The paper shows the resultant wheel profile, the contact curves it produces, and a number of dynamic analyses demonstrating better dynamic behaviour of the synthesised wheel on curved sections with respect to the original wheel.