TY - GEN
T1 - Deployment Optimization of Roadside Sensing Units Based on NSGA-II for Vehicle Infrastructure Cooperated Autonomous Driving
AU - Zhao, Yueran
AU - Wang, Ziyu
AU - Sun, Chao
N1 - Publisher Copyright:
© The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2024.
PY - 2024
Y1 - 2024
N2 - Currently, the Vehicle Infrastructure Cooperated Autonomous Driving has been rapidly developing, and the deployment of road-side perception devices for vehicles has also become a hot research topic. However, the traditional deployment methods based on human experience suffer from problems such as high cost, subjective factors, uneven quantification of coverage area, and lack of the performance models of sensors. Therefore, there still lacks a scientific and systematic deployment optimization schemes and evaluation system based on sensor performance models for road-side device deployment. To address these issues, this paper, which is based on research of current perception devices, proposes a genetic algorithm and NSGA-II algorithm by using a multi-objective optimization method for coverage, redundancy, and cost on two-dimensional grid maps of typical road surfaces, such as intersections, using sensor performance models. Optimize coverage, redundancy, and cost while meeting the constraints of coverage and redundancy. To further verify the model algorithm, real road scenario experiments are conducted. The input of the experiment includes the perception sensor type, two-dimensional grid map, and basic algorithm parameters while the output is the Pareto-optimal solution for perception devices deployment. The experimental results show that the coverage rate converges to 100%, the redundancy rate converges to 1%, and the cost is optimized by 73.1%, which is much faster and accurate than traditional GA. In a nutshell, the innovation of this paper lies in the modeling of roadside sensing units and applying NSGA-II algorithm for global deployment optimization on road grid maps.
AB - Currently, the Vehicle Infrastructure Cooperated Autonomous Driving has been rapidly developing, and the deployment of road-side perception devices for vehicles has also become a hot research topic. However, the traditional deployment methods based on human experience suffer from problems such as high cost, subjective factors, uneven quantification of coverage area, and lack of the performance models of sensors. Therefore, there still lacks a scientific and systematic deployment optimization schemes and evaluation system based on sensor performance models for road-side device deployment. To address these issues, this paper, which is based on research of current perception devices, proposes a genetic algorithm and NSGA-II algorithm by using a multi-objective optimization method for coverage, redundancy, and cost on two-dimensional grid maps of typical road surfaces, such as intersections, using sensor performance models. Optimize coverage, redundancy, and cost while meeting the constraints of coverage and redundancy. To further verify the model algorithm, real road scenario experiments are conducted. The input of the experiment includes the perception sensor type, two-dimensional grid map, and basic algorithm parameters while the output is the Pareto-optimal solution for perception devices deployment. The experimental results show that the coverage rate converges to 100%, the redundancy rate converges to 1%, and the cost is optimized by 73.1%, which is much faster and accurate than traditional GA. In a nutshell, the innovation of this paper lies in the modeling of roadside sensing units and applying NSGA-II algorithm for global deployment optimization on road grid maps.
KW - Multi-objective Optimization Algorithm
KW - RSU Deployment
KW - VICAD
UR - http://www.scopus.com/inward/record.url?scp=85201932710&partnerID=8YFLogxK
U2 - 10.1007/978-981-97-3682-9_30
DO - 10.1007/978-981-97-3682-9_30
M3 - Conference contribution
AN - SCOPUS:85201932710
SN - 9789819736812
T3 - Lecture Notes in Electrical Engineering
SP - 305
EP - 316
BT - Developments and Applications in SmartRail, Traffic, and Transportation Engineering - Proceedings of ICSTTE 2023
A2 - Jia, Limin
A2 - Qin, Yong
A2 - Easa, Said
PB - Springer Science and Business Media Deutschland GmbH
T2 - International Conference on SmartRail, Traffic, and Transportation Engineering, ICSTTE 2023
Y2 - 28 July 2023 through 30 July 2023
ER -