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A genetic algorithm-based method for improving quality of travel time prediction intervals
Authors:Abbas Khosravi  Ehsan Mazloumi  Saeid Nahavandi  Doug Creighton  J.W.C. Van Lint
Affiliation:aCentre for Intelligent Systems Research (CISR), Deakin University, Geelong, VIC 3216, Australia;bInstitute of Transport Studies, Department of Civil Engineering, Monash University, Melbourne, Australia;cDepartment of Transport and Planning, Faculty of Civil Engineering and Geosciences, Delft University of Technology, 2600 Delft, The Netherlands
Abstract:The transportation literature is rich in the application of neural networks for travel time prediction. The uncertainty prevailing in operation of transportation systems, however, highly degrades prediction performance of neural networks. Prediction intervals for neural network outcomes can properly represent the uncertainty associated with the predictions. This paper studies an application of the delta technique for the construction of prediction intervals for bus and freeway travel times. The quality of these intervals strongly depends on the neural network structure and a training hyperparameter. A genetic algorithm–based method is developed that automates the neural network model selection and adjustment of the hyperparameter. Model selection and parameter adjustment is carried out through minimization of a prediction interval-based cost function, which depends on the width and coverage probability of constructed prediction intervals. Experiments conducted using the bus and freeway travel time datasets demonstrate the suitability of the proposed method for improving the quality of constructed prediction intervals in terms of their length and coverage probability.
Keywords:Travel time   Prediction interval   Neural network   Genetic algorithm
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