Litcius/Paper detail

Travel Time Prediction for Congested Freeways With a Dynamic Linear Model

Semin Kwak, Nikolas Geroliminis

2020IEEE Transactions on Intelligent Transportation Systems26 citationsDOIOpen Access PDF

Abstract

Accurate prediction of travel time is an essential feature to support Intelligent Transportation Systems (ITS). The non-linearity of traffic states, however, makes this prediction a challenging task. Here we propose to use dynamic linear models (DLMs) to approximate the non-linear traffic states. Unlike a static linear regression model, the DLMs assume that their parameters are changing across time. We design a DLM with model parameters defined at each time unit to describe the spatio-temporal characteristics of time-series traffic data. Based on our DLM and its model parameters analytically trained using historical data, we suggest an optimal linear predictor in the minimum mean square error (MMSE) sense. We compare our prediction accuracy of travel time for freeways in California (I210-E and I5-S) under highly congested traffic conditions with those of other methods: the instantaneous travel time, k-nearest neighbor, support vector regression, and artificial neural network. We show significant improvements in the accuracy, especially for short-term prediction.

Topics & Concepts

Intelligent transportation systemTime seriesLinear regressionLinear modelArtificial neural networkComputer scienceSupport vector machineMean squared errorRegressionMean squared prediction errorRegression analysisFeature (linguistics)Data miningArtificial intelligenceMachine learningEngineeringStatisticsMathematicsCivil engineeringPhilosophyLinguisticsTraffic Prediction and Management TechniquesTransportation Planning and OptimizationTraffic control and management