题名: |
Towards Data-driven Simulations in Urban Mobility Analytics |
正文语种: |
中文 |
作者: |
Frederic Roulland Cesar e Souza Luis Ulloa Arturo Mondragon Michael Niemaz Victor Ciriza |
作者单位: |
Xerox Research entre Europe,Meylan 38240,France |
关键词: |
ITS data-driven modelling transport system simulation machine learning public transport parking |
摘要: |
In this work, we present recent advances on the creation of data-driven models to address the needs of transportation planners during the conception, understanding and maintenance of transport networks.More specifically, we present data-driven models to understand and analyse mobility and to simulate and predict the impact of changes in existing networks.This new modelling approach leverages the massive amount of data collected in the field from daily users' transactions and sensors' outputs, and proposes to use in a more extensive way machine learning techniques that have emerged over the last decade.First, we present how this new transportation modelling approach differs from traditional practices.We then illustrate this approach through some specific use cases where it has been applied and present the preliminary results we have obtained.We finally end up with a discussion highlighting both the main advantages and the high potential of adopting such an approach in the transportation planning domain and also the main obstacles to be overcome before a large adoption can happen. |
会议日期: |
20150427 |
会议举办地点: |
南京 |
会议名称: |
2015年南京第十四届亚太智能交通论坛 |
出版日期: |
2015-04-27 |
母体文献: |
2015年南京第十四届亚太智能交通论坛论文集 |