Proactive Motion Planning for Uncontrolled Blind Intersections to Improve the Safety and Traffic Efficiency of Autonomous Vehicles

For the last two decades, autonomous vehicles have been proposed and developed to extend the operational design domain from the motorway to urban environments. However, there have been few studies on autonomous driving for uncontrolled and blind intersections. This paper presents a proactive motion...

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Main Authors: Sunyeap Park, Yonghwan Jeong
Format: Article
Language:English
Published: MDPI AG 2022-11-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/12/22/11570
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author Sunyeap Park
Yonghwan Jeong
author_facet Sunyeap Park
Yonghwan Jeong
author_sort Sunyeap Park
collection DOAJ
description For the last two decades, autonomous vehicles have been proposed and developed to extend the operational design domain from the motorway to urban environments. However, there have been few studies on autonomous driving for uncontrolled and blind intersections. This paper presents a proactive motion planning algorithm to enhance safety and traffic efficiency simultaneously for autonomous driving in uncontrolled blind intersections. The target states of approach motion are decided based on the field of view of the laser scanner and the pre-defined intersection map with connectivity information. The model predictive controller is used to follow the target states and determine the longitudinal motion of an autonomous vehicle. A Monte Carlo simulation with a case study was conducted to evaluate the performance of the proposed proactive motion planner. The simulation results show that the risk caused by approaching vehicles from the occluded region is properly managed. In addition, the traffic flow is improved by reducing the required time to cross the intersections.
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spelling doaj.art-7082e0a7f747478eb4f8c65ed4432aa02023-11-24T07:37:24ZengMDPI AGApplied Sciences2076-34172022-11-0112221157010.3390/app122211570Proactive Motion Planning for Uncontrolled Blind Intersections to Improve the Safety and Traffic Efficiency of Autonomous VehiclesSunyeap Park0Yonghwan Jeong1Department of Automotive Engineering, Seoul National University of Science and Technology, Seoul 01811, Republic of KoreaDepartment of Mechanical and Automotive Engineering, Seoul National University of Science and Technology, Seoul 01811, Republic of KoreaFor the last two decades, autonomous vehicles have been proposed and developed to extend the operational design domain from the motorway to urban environments. However, there have been few studies on autonomous driving for uncontrolled and blind intersections. This paper presents a proactive motion planning algorithm to enhance safety and traffic efficiency simultaneously for autonomous driving in uncontrolled blind intersections. The target states of approach motion are decided based on the field of view of the laser scanner and the pre-defined intersection map with connectivity information. The model predictive controller is used to follow the target states and determine the longitudinal motion of an autonomous vehicle. A Monte Carlo simulation with a case study was conducted to evaluate the performance of the proposed proactive motion planner. The simulation results show that the risk caused by approaching vehicles from the occluded region is properly managed. In addition, the traffic flow is improved by reducing the required time to cross the intersections.https://www.mdpi.com/2076-3417/12/22/11570autonomous vehicleproactive motion planninguncontrolled intersectionblind intersectionvehicle motion predictionmodel predictive control (MPC)
spellingShingle Sunyeap Park
Yonghwan Jeong
Proactive Motion Planning for Uncontrolled Blind Intersections to Improve the Safety and Traffic Efficiency of Autonomous Vehicles
Applied Sciences
autonomous vehicle
proactive motion planning
uncontrolled intersection
blind intersection
vehicle motion prediction
model predictive control (MPC)
title Proactive Motion Planning for Uncontrolled Blind Intersections to Improve the Safety and Traffic Efficiency of Autonomous Vehicles
title_full Proactive Motion Planning for Uncontrolled Blind Intersections to Improve the Safety and Traffic Efficiency of Autonomous Vehicles
title_fullStr Proactive Motion Planning for Uncontrolled Blind Intersections to Improve the Safety and Traffic Efficiency of Autonomous Vehicles
title_full_unstemmed Proactive Motion Planning for Uncontrolled Blind Intersections to Improve the Safety and Traffic Efficiency of Autonomous Vehicles
title_short Proactive Motion Planning for Uncontrolled Blind Intersections to Improve the Safety and Traffic Efficiency of Autonomous Vehicles
title_sort proactive motion planning for uncontrolled blind intersections to improve the safety and traffic efficiency of autonomous vehicles
topic autonomous vehicle
proactive motion planning
uncontrolled intersection
blind intersection
vehicle motion prediction
model predictive control (MPC)
url https://www.mdpi.com/2076-3417/12/22/11570
work_keys_str_mv AT sunyeappark proactivemotionplanningforuncontrolledblindintersectionstoimprovethesafetyandtrafficefficiencyofautonomousvehicles
AT yonghwanjeong proactivemotionplanningforuncontrolledblindintersectionstoimprovethesafetyandtrafficefficiencyofautonomousvehicles