logo
Loading...
Data-driven analysis and forecasting of highway traffic dynamics
TransportationNature Communications

Data-driven analysis and forecasting of highway traffic dynamics

A. M. Avila and I. Mezić

Highway traffic congestion poses major economic challenges. In their pioneering research, A. M. Avila and I. Mezić delve into a model-free, data-driven approach using Koopman mode decomposition (KMD) to analyze and forecast traffic dynamics, revealing exciting spatiotemporal patterns and improving highway network predictions.... show more
Abstract
The unpredictable elements involved in a vehicular traffic system, like human interaction and weather, lead to a very complicated, high-dimensional, nonlinear dynamical system. Therefore, it is difficult to develop a mathematical or artificial intelligence model that describes the time evolution of traffic systems. All the while, the ever-increasing demands on transportation systems has left traffic agencies in dire need of a robust method for analyzing and forecasting traffic. Here we demonstrate how the Koopman mode decomposition can offer a model-free, data-driven approach for analyzing and forecasting traffic dynamics. By obtaining a decomposition of data sets collected by the Federal Highway Administration and the California Department of Transportation, we are able to reconstruct observed data, distinguish any growing or decaying patterns, and obtain a hierarchy of previously identified and never before identified spatiotemporal patterns. Furthermore, it is demonstrated how this methodology can be utilized to forecast highway network conditions.
Publisher
Nature Communications
Published On
Apr 29, 2020
Authors
A. M. Avila, I. Mezić
Tags
traffic congestionKoopman mode decompositiondata-driven approachforecastingspatiotemporal patterns
Listen, Learn & Level Up
Over 10,000 hours of research content in 25+ fields, available in 22+ languages.
No more digging through PDFs, just hit play and absorb the world's latest research in your language, on your time.
listen to research audio papers with researchbunny