Abstract

Distracted driving behavior is one of the main factors of road accidents. Accurately predicting the risk of driving behavior is of great significance to the active safety of road transportation. The large amount of information collected by the sensors installed on the vehicle can be identified by the algorithm to obtain the distracted driving behavior data, which can be used to predict the driving behavior risk of the vehicle and the area. In this paper, a new neural network named Driving Behavior Risk Prediction Neural Network (DBRPNN) is developed for prediction based on the distracted driving behavior data. The network consists of three modules: the Feature Processing Module, the Memory Module, and the Prediction Module. In this process, attribute data (time in a day, daily driving time, and daily driving mileage) that can reflect external factors and driver statuses, are added to the network to increase the accuracy of the model. We predicted the driving behavior risk of different objects (Vehicle and Area). For the applicability improvement of the model, we further classify the distracted driving behavior categories, and DBRPNN can provide more accurate risk prediction. The results show that compared with traditional models (Classification and Regression Tree, Support Vector Machines, Recurrent Neural Network, and Long Short-Term Memory), DBRPNN has better prediction performance. The method proposed in this paper has been fully verified and may be transplanted into active safety early warning system for more accurate and flexible application.

Highlights

  • Driving behavior analysis is an important part of traffic safety research

  • Distracted driving behavior refers to a series of operations conducted by drivers on public roads that may lead to abnormal traffic conditions and road accidents [1]

  • The results show that Driving Behavior Risk Prediction Neural Network (DBRPNN) is capable of handling the risk prediction tasks of different categories

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Summary

Introduction

Driving behavior analysis is an important part of traffic safety research It reflects the status of drivers and vehicles in the process of vehicle operation. Effective prediction of distracted driving behavior of vehicles can timely remind drivers or forcibly take over the vehicle with safety control devices at critical moments, to effectively prevent traffic accidents. In the process of driving, no matter what factors the vehicle and the driver is affected by, the distracted driving behavior will eventually be reflected by the vehicle and the driver’s behavior. Based on this fact, this paper carries on the risk prediction research through the distracted driving behavior data. The results show that DBRPNN is capable of handling the risk prediction tasks of different categories

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