• Medientyp: E-Artikel
  • Titel: Personalized Subjective Driving Risk: Analysis and Prediction
  • Beteiligte: Bao, Naren; Carballo, Alexander; Miyajima, Chiyomi; Takeuchi, Eijiro; Takeda, Kazuya
  • Erschienen: Fuji Technology Press Ltd., 2020
  • Erschienen in: Journal of Robotics and Mechatronics, 32 (2020) 3, Seite 503-519
  • Sprache: Englisch
  • DOI: 10.20965/jrm.2020.p0503
  • ISSN: 1883-8049; 0915-3942
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  • Beschreibung: Subjective risk assessment is an important technology for enhancing driving safety, because an individual adjusts his/her driving behavior according to his/her own subjective perception of risk. This study presents a novel framework for modeling personalized subjective driving risk during expressway lane changes. The objectives of this study are twofold: (i) to use ego vehicle driving signals and surrounding vehicle locations in a data-driven and explainable approach to identify the possible influential factors of subjective risk while driving and (ii) to predict the specific individual’s subjective risk level just before a lane change. We propose the personalized subjective driving risk model, a combined framework that uses a random forest-based method optimized by genetic algorithms to analyze the influential risk factors, and uses a bidirectional long short term memory to predict subjective risk. The results demonstrate that our framework can extract individual differences of subjective risk factors, and that the identification of individualized risk factors leads to better modeling of personalized subjective driving risk.
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