Welcome to Journal of Automotive Safety and Energy,

Journal of Automotive Safety and Energy ›› 2022, Vol. 13 ›› Issue (4): 697-704.DOI: 10.3969/j.issn.1674-8484.2022.04.011

• Intelligent Driving and Intelligent Transportation • Previous Articles     Next Articles

Complexity evaluation of vehicle-vehicle accident scenarios for autonomous driving simulation tests

LI Pingfei1,2(), JIN Siyu1(), HU Wenhao3, GAO Li1, CHE Yaoyu1, TAN Zhengping1,2, DONG Xiaofei4   

  1. 1. School of Automobile and Transportation, Xihua University, Chengdu 610039, China
    2. Sichuan Xihua Jiaotong Forensics Center, Chengdu 610039, China
    3. State Administration for Market Regulation, Defective Product Administrative Center, Beijing 100191, China
    4. Shanghai Motor Vehicle Inspection Certification &Tech Innovation Center, LTD, Shanghai 201805, China
  • Received:2021-11-29 Revised:2022-08-09 Online:2022-12-31 Published:2023-01-01

Abstract:

The complexity of vehicle-vehicle accident scenarios was evaluated to solve the problem of lack of basis for selecting autonomous driving simulation test scenarios. 670 vehicle-vehicle accidents were selected from the National Automobile Accident In-depth Investigation System (NAIS) database of China. 13 variables were extracted according to different dimensions of the scenario. The complexity evaluation model of vehicle-vehicle accident scenarios was established based on information entropy theory. The logical regression was used to obtain the variable level odds ratio to calculate the level complexity, and the dimensions and variables weights of the scenario were obtained by Back Propagation (BP) neural network algorithms. The model was applied to calculate the complexity of the scenario for each accident case. The scenario complexity was divided into four levels by K-means clustering. The dominant characteristics and deaths of various scenarios were obtained. The results show that level 4 complexity scenarios account for 1.6 %, but with a mortality rate of 90.9 %, such scenarios deserve priority attention

Key words: autonomous driving, vehicle-vehicle accidents, accident scenarios, complexity, information entropy

CLC Number: