This paper presents a combined method for short-term forecasting of detector counts in urban networks and subsequent traffic demand estimation using the forecasted counts as constraints to estimate origin-destination (OD) flows, route and link volumes. The method is intended to be used in the framework of an adaptive traffic control strategy with consecutive optimization intervals of 15. min. The method continuously estimates the forthcoming traffic demand that can be used as input data for the optimization. The forecasting uses current and reference space-time-patterns of detector counts. The reference patterns are derived from data collected in the past. The current pattern comprises all detector counts of the last four time intervals. A ...
This paper describes joint work done by IBM Research (development of the solution) and GrandLyon (as...
Reliable and accurate short-term traffic state prediction can improve the performance of real-time t...
The aim of this paper is to explore a new approach to obtain better traffic demand (Origin-Destinati...
This paper presents a combined method for short-term forecasting of detector counts in urban network...
Increasing traffic congestion (especially in areas of conurbation), the shortening of financial reso...
Abstract. This paper addresses the problem of determining the number and placement of signals on tra...
Availability of accurate trip demand estimates plays a key role for both long term and short term tr...
We optimize traffic signal timing sequences for a section of a traffic net-work in order to reduce c...
This paper addresses the problem of estimating the operational performance of extended urban transpo...
International audienceIn the context of Connected and Smart Cities, the need to predict short term t...
Recent advances in technology have made available numerous new monitoring systems that collect updat...
AbstractUrban traffic control systems evolved through three generations. The first generation of suc...
Centralization of work, population and economic growth alongside continued urbanization are the main...
International audienceThe probabilistic forecasting method described in this study is devised to lev...
AbstractReliable and accurate short-term traffic state prediction can improve the performance of rea...
This paper describes joint work done by IBM Research (development of the solution) and GrandLyon (as...
Reliable and accurate short-term traffic state prediction can improve the performance of real-time t...
The aim of this paper is to explore a new approach to obtain better traffic demand (Origin-Destinati...
This paper presents a combined method for short-term forecasting of detector counts in urban network...
Increasing traffic congestion (especially in areas of conurbation), the shortening of financial reso...
Abstract. This paper addresses the problem of determining the number and placement of signals on tra...
Availability of accurate trip demand estimates plays a key role for both long term and short term tr...
We optimize traffic signal timing sequences for a section of a traffic net-work in order to reduce c...
This paper addresses the problem of estimating the operational performance of extended urban transpo...
International audienceIn the context of Connected and Smart Cities, the need to predict short term t...
Recent advances in technology have made available numerous new monitoring systems that collect updat...
AbstractUrban traffic control systems evolved through three generations. The first generation of suc...
Centralization of work, population and economic growth alongside continued urbanization are the main...
International audienceThe probabilistic forecasting method described in this study is devised to lev...
AbstractReliable and accurate short-term traffic state prediction can improve the performance of rea...
This paper describes joint work done by IBM Research (development of the solution) and GrandLyon (as...
Reliable and accurate short-term traffic state prediction can improve the performance of real-time t...
The aim of this paper is to explore a new approach to obtain better traffic demand (Origin-Destinati...