Real-time accident detection: Coping with imbalanced data.

Journal: Accident; analysis and prevention
PMID:

Abstract

Detecting accidents is of great importance since they often impose significant delay and inconvenience to road users. This study compares the performance of two popular machine learning models, Support Vector Machine (SVM) and Probabilistic Neural Network (PNN), to detect the occurrence of accidents on the Eisenhower expressway in Chicago. Accordingly, since the detection of accidents should be as rapid as possible, seven models are trained and tested for each machine learning technique, using traffic condition data from 1 to 7 min after the actual occurrence. The main sources of data used in this study consist of weather condition, accident, and loop detector data. Furthermore, to overcome the problem of imbalanced data (i.e., underrepresentation of accidents in the dataset), the Synthetic Minority Oversampling TEchnique (SMOTE) is used. The results show that although SVM achieves overall higher accuracy, PNN outperforms SVM regarding the Detection Rate (DR) (i.e., percentage of correct accident detections). In addition, while both models perform best at 5 min after the occurrence of accidents, models trained at 3 or 4 min after the occurrence of an accident detect accidents more rapidly while performing reasonably well. Lastly, a sensitivity analysis of PNN for Time-To-Detection (TTD) reveals that the speed difference between upstream and downstream of accidents location is particularly significant to detect the occurrence of accidents.

Authors

  • Amir Bahador Parsa
    Department of Civil and Materials Engineering, University of Illinois at Chicago, 842 W Taylor St, 2054 ERF, Chicago, IL 60607, United States. Electronic address: aparsa2@uic.edu.
  • Homa Taghipour
    Department of Civil and Materials Engineering, University of Illinois at Chicago, 842 W Taylor St, 2054 ERF, Chicago, IL 60607, United States. Electronic address: htaghi2@uic.edu.
  • Sybil Derrible
    Department of Civil and Materials Engineering, Institute of Environmental Science and Policy, University of Illinois at Chicago, 842 W Taylor St, 2071 ERF, Chicago, IL 60607, United States. Electronic address: derrible@uic.edu.
  • Abolfazl Kouros Mohammadian
    Department of Civil and Materials Engineering, University of Illinois at Chicago, 842 W Taylor St, 2093 ERF, Chicago, IL 60607, United States. Electronic address: kouros@uic.edu.