Abstract

Real-time crash prediction helps identify and prevent the occurrence of traffic crash. For years, various real-time crash prediction models have been investigated to provide effective information for proactive traffic management. When building real-time crash prediction model, a suitable variable space together with a specific time interval for traffic data aggregation and an appropriate modelling algorithm should be applied. Regarding the intercorrelation problem with variable space, comprehensive real-time crash prediction model considering available traffic data characteristics in applicable circumstances needs to be explored. Taking Xi’an G3001 Expressway as study area, real road traffic and accident data during the period from January 2014 to January 2019 on this expressway are applied for real-time crash prediction. To better capture traffic flow characteristics on expressway and improve the practicality of real-time crash prediction model, two new variables (segment difference coefficient and lane difference coefficient) describing the smoothness and continuity of traffic flow in spatial dimension are developed and incorporated in building the crash prediction model to solve the intercorrelation problem with variable space. Random forest (RF) is then adopted to specify the quantitative relationship between specific variable and crash risk. Real-time crash prediction model based on support vector machine (SVM) using new composed variable space is built. The results show that simplified variable space could contribute to the same classification power in currently used real-time crash prediction models compared with traditional variable space. Moreover, the prediction model based on SVM reaches an accuracy level of 0.9, which performs better than other currently used prediction models.

Highlights

  • Expressway safety has remained as a major concern in traffic system management

  • Based on available traffic data obtained on G3001, considering the variable space adopted in existing researches, a comprehensive variable system considering the importance of traffic flow continuity characteristics was built in the previous part

  • Real-time crash prediction models will be built through support vector machine (SVM) using MATLAB LibSVM toolbox, based on both simplified variable space and traditional variable space. e accuracy and practicality will be further proved using comparison analysis

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Summary

Introduction

Expressway safety has remained as a major concern in traffic system management. E increasing need to reduce traffic fatalities and injuries has prompted research on proactive traffic management strategies for crash prevention. With the advancement of transportation information systems and traffic sensing technology, real-time crash prediction on expressway receives much attention from transportation professionals as it is regarded as a promising solution to road safety issues. Rough predicting the time and location of possible crash occurrences in real time, proactive traffic management strategies can be applied to prevent crashes in time and improve traffic safety. With the rapid development of autonomous vehicle techniques, it is important to accurately identify unsafe traffic condition to ensure the fast reaction of these new techniques and improve the proactive safety control of traffic systems [3].

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