Litcius/Paper detail

Integrating data-driven and simulation models to predict traffic state affected by road incidents

Sajjad Shafiei, Adriana‐Simona Mihăiţă, Hoàng Nguyên, Chen Cai

2021Transportation Letters18 citationsDOI

Abstract

Predicting the traffic conditions in urban networks is a priority for traffic management centres. This becomes very challenging, especially when the network is affected by traffic incidents that vary in both time and space. Although data-driven modelling can be considered an ideal tool for short-term traffic predictions, its performance is severely degraded if little historical traffic information is available under incident conditions. This paper addresses this challenge by integrating data-driven and traffic simulation modelling approaches. Instead of directly predicting the traffic states using limited historical data, we employ a traffic simulation reinforced by data-driven models. The traffic simulation uses newly reported incident information and the estimated origin-destination (OD) demand flows to capture the complex interaction between drivers and road network, and predicts traffic states under extreme conditions. We showcase the capability of the proposed data-driven enforced traffic simulation platform for incident impact analysis in a real-life sub-network in Sydney, Australia.

Topics & Concepts

Network traffic simulationTraffic generation modelComputer scienceTraffic simulationTraffic congestion reconstruction with Kerner's three-phase theoryFloating car dataTraffic flow (computer networking)Simulation modelingTransport engineeringNetwork traffic controlTraffic congestionReal-time computingEngineeringMicrosimulationComputer networkEconomicsMicroeconomicsNetwork packetTraffic Prediction and Management TechniquesTransportation Planning and OptimizationTraffic control and management