Article ID Journal Published Year Pages File Type
524959 Transportation Research Part C: Emerging Technologies 2013 17 Pages PDF
Abstract

This paper proposes a rule-based neural network model to simulate driver behavior in terms of longitudinal and lateral actions in two driving situations, namely car-following situation and safety critical events. A fuzzy rule based neural network is constructed to obtain driver individual driving rules from their vehicle trajectory data. A machine learning method reinforcement learning is used to train the neural network such that the neural network can mimic driving behavior of individual drivers. Vehicle actions by neural network are compared to actions from naturalistic data. Furthermore, this paper applies the proposed method to analyze the heterogeneities of driving behavior from different drivers’ data.Driving data in the two driving situations are extracted from Naturalistic Truck Driving Study and Naturalistic Car Driving Study databases provided by the Virginia Tech Transportation Institute according to pre-defined criteria. Driving actions were recorded in instrumented vehicles that have been equipped with specialized sensing, processing, and recording equipment.

► We simulate driver behavior though a rule-based neural network model. ► We train our model through a machine learning algorithm. ► We use naturalistic driving data of several individual drivers. ► Our model estimation shows a close match to naturalistic driver behavior. ► We present heterogeneities in drivers during safety critical events.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science Applications
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