MODELO INTENCIONAL DE TRAFICO...

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FACULTAD DE INGENIERÍA MAESTRÍA EN INGENIERÍA DE SISTEMAS Y COMPUTACIÓN PONTIFICIA UNIVERSIDAD JAVERIANA Marzo de 2012 MODELO INTENCIONAL DE TRAFICO COOPERATIVO ALEJANDRO TRIANA CASTAÑEDA

Transcript of MODELO INTENCIONAL DE TRAFICO...

FACULTAD DE INGENIERÍAMAESTRÍA EN INGENIERÍA DE SISTEMAS Y COMPUTACIÓN

PONTIFICIA UNIVERSIDAD JAVERIANAMarzo de 2012

MODELO INTENCIONAL DE TRAFICO COOPERATIVO

ALEJANDRO TRIANA CASTAÑEDA

AGENDA

1. PROBLEMA DEL TRÁFICO

2. SISTEMAS DE TRÁFICO INTELIGENTE Y AGENTES

3. OPORTUNIDAD

4. OBJETIVOS PROYECTO

5. MARCO METODOLÓGICO

AGENDA

1. PROBLEMA DEL TRÁFICO

2. SISTEMAS DE TRÁFICO INTELIGENTE Y AGENTES

3. OPORTUNIDAD

4. OBJETIVOS PROYECTO

5. MARCO METODOLÓGICO

PROBLEMA DEL TRÁFICO

600 MILLONES DE AUTOMOVILES.

CRECIMIENTO ANUAL50 MILLONES

MOVILIDAD

SEGURIDADAMBIENTE

AGENDA

1. PROBLEMA DEL TRÁFICO

2. SISTEMAS DE TRÁFICO INTELIGENTE Y AGENTES

3. OPORTUNIDAD

4. OBJETIVOS PROYECTO

5. MARCO METODOLÓGICO

SISTEMAS DE TRÁFICO INTELIGENTE (ITS)

TRÁFICO

TÉCNICAS IA

TRÁFICO CARRETERA

SISTEMAS TOMA DE DECISIONES

SISTEMAS CONTROL TRÁFICO

MO

DEL

AM

IEN

TO Y

SI

MU

LAC

IÓN

ITS – ENFOQUE AGENTES

SISTEMA TRAFICO

COMPLEJIDAD

DISTRIBUCIÓN

+AGENTE

AUTONOMÍA

PRO ACTIVIDAD

COOPERACIÓN

AGENDA

1. PROBLEMA DEL TRÁFICO

2. SISTEMAS DE TRÁFICO INTELIGENTE Y AGENTES

3. OPORTUNIDAD

4. OBJETIVOS PROYECTO

5. MARCO METODOLÓGICO

OPORTUNIDAD

RESOLUCIÓN CONFLICTOS

INTENCIÓN

INTENCIÓN

AGENDA

1. PROBLEMA DEL TRÁFICO

2. SISTEMAS DE TRÁFICO INTELIGENTE Y AGENTES

3. OPORTUNIDAD

4. OBJETIVOS PROYECTO

5. MARCO METODOLÓGICO

OBJETIVO GENERAL

Desarrollar un modelo de cooperación entreagentes de tráfico, basado en un enfoque

intencional y utilizando técnicas de inteligencia computacional, orientado a mitigar problemas

de congestión de tráfico en áreas urbanas.

OBJETIVOS ESPECIFICOS

1. Formular un modelo multiagente, utilizando unenfoque intencional explícito, que fomente lacooperación entre agentes tráfico.

2. Diseñar el sistema de toma de decisiones, para unode los tipos de agentes de tráfico, utilizando técnicasde inteligencia computacional.

3. Validar el modelo de cooperación y el sistema detoma de decisiones a través de un proceso desimulación.

AGENDA

1. PROBLEMA DEL TRÁFICO

2. SISTEMAS DE TRÁFICO INTELIGENTE Y AGENTES

3. OPORTUNIDAD

4. OBJETIVOS PROYECTO

5. MARCO METODOLÓGICO

MARCO METODOLÓGICO

MODELO COOPERATIVO

TOMA DE DECISIONES INTELIGENTE

IMPLEMENTACIÓN DEL MODELO

VALIDACIÓN EXPERIMENTAL

CA

SOS

DE

ESTU

DIO

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