Dynamic Identification Method for Potential Threat Vehicles beyond Line of Sight in Expressway Scenarios
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Published:2023-12-01
Issue:23
Volume:13
Page:12899
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ISSN:2076-3417
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Container-title:Applied Sciences
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language:en
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Short-container-title:Applied Sciences
Author:
Zou Fumin12, Xia Chenxi12, Guo Feng12, Cai Xinjian2, Cai Qiqin3ORCID, Luo Guanghao12, Ye Ting12
Affiliation:
1. Fujian Key Laboratory of Automotive Electronics and Electric Drive, Fujian University of Technology, Fuzhou 350118, China 2. Renewable Energy Technology Research Institute, Fujian University of Technology, Fuzhou 350118, China 3. School of Mechanical Engineering and Automation, Huaqiao University, Xiamen 362021, China
Abstract
Due to the challenge of limited line of sight in the perception system of intelligent driving vehicles (cameras, radar, body sensors, etc.), which can only perceive threats within a limited range, potential threats outside the line of sight cannot be fed back to the driver. Therefore, this article proposes a safety perception detection method for beyond the line of sight for intelligent driving. This method can improve driving safety, enabling drivers to perceive potential threats to vehicles in the rear areas beyond the line of sight earlier and make decisions in advance. Firstly, the electronic toll collection (ETC) transaction data are preprocessed to construct the vehicle trajectory speed dataset; then, wavelet transform (WT) is used to decompose and reconstruct the speed dataset, and lightweight gradient noosting machine learning (LightGBM) is adopted to train and learn the features of the vehicle section speed. On this basis, we also consider the features of vehicle type, traffic flow, and other characteristics, and construct a quantitative method to identify potential threat vehicles (PTVs) based on a fuzzy set to realize the dynamic safety assessment of vehicles, so as to effectively detect PTVs within the over-the-horizon range behind the driver. We simulated an expressway scenario using an ETC simulation platform to evaluate the detection of over-the-horizon PTVs. The simulation results indicate that the method can accurately detect PTVs of different types and under different road scenarios with an identification accuracy of 97.66%, which verifies the effectiveness of the method in this study. This result provides important theoretical and practical support for intelligent driving safety assistance in vehicle–road collaboration scenarios.
Funder
the Renewable Energy Technology Research institution of Fujan University of Technology Ningde, China the 2020 Fujian Province “Belt and Road” Technology Innovation Platform the Provincial Candidates for the Hundred, Thousand and Ten Thousand Talent of Fujian the Patent Grant project Horizontal projects municipal-level science and technology projects Fujian Provincial Department of Science and Technology Foreign Cooperation Project the Open Fund project
Subject
Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science
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