Saved in:
Bibliographic Details
Main Authors: Sormoli, MReza Alipour, Koufos, Konstantinos, Dianati, Mehrdad, Woodman, Roger
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.05708
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913382466060288
author Sormoli, MReza Alipour
Koufos, Konstantinos
Dianati, Mehrdad
Woodman, Roger
author_facet Sormoli, MReza Alipour
Koufos, Konstantinos
Dianati, Mehrdad
Woodman, Roger
contents General-purpose motion planners for automated/autonomous vehicles promise to handle the task of motion planning (including tactical decision-making and trajectory generation) for various automated driving functions (ADF) in a diverse range of operational design domains (ODDs). The challenges of designing a general-purpose motion planner arise from several factors: a) A plethora of scenarios with different semantic information in each driving scene should be addressed, b) a strong coupling between long-term decision-making and short-term trajectory generation shall be taken into account, c) the nonholonomic constraints of the vehicle dynamics must be considered, and d) the motion planner must be computationally efficient to run in real-time. The existing methods in the literature are either limited to specific scenarios (logic-based) or are data-driven (learning-based) and therefore lack explainability, which is important for safety-critical automated driving systems (ADS). This paper proposes a novel general-purpose motion planning solution for ADS inspired by the theory of fluid mechanics. A computationally efficient technique, i.e., the lattice Boltzmann method, is then adopted to generate a spatiotemporal vector field, which in accordance with the nonholonomic dynamic model of the Ego vehicle is employed to generate feasible candidate trajectories. The trajectory optimising ride quality, efficiency and safety is finally selected to calculate the imminent control signals, i.e., throttle/brake and steering angle. The performance of the proposed approach is evaluated by simulations in highway driving, on-ramp merging, and intersection crossing scenarios, and it is found to outperform traditional motion planning solutions based on model predictive control (MPC).
format Preprint
id arxiv_https___arxiv_org_abs_2406_05708
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Towards A General-Purpose Motion Planning for Autonomous Vehicles Using Fluid Dynamics
Sormoli, MReza Alipour
Koufos, Konstantinos
Dianati, Mehrdad
Woodman, Roger
Robotics
Systems and Control
General-purpose motion planners for automated/autonomous vehicles promise to handle the task of motion planning (including tactical decision-making and trajectory generation) for various automated driving functions (ADF) in a diverse range of operational design domains (ODDs). The challenges of designing a general-purpose motion planner arise from several factors: a) A plethora of scenarios with different semantic information in each driving scene should be addressed, b) a strong coupling between long-term decision-making and short-term trajectory generation shall be taken into account, c) the nonholonomic constraints of the vehicle dynamics must be considered, and d) the motion planner must be computationally efficient to run in real-time. The existing methods in the literature are either limited to specific scenarios (logic-based) or are data-driven (learning-based) and therefore lack explainability, which is important for safety-critical automated driving systems (ADS). This paper proposes a novel general-purpose motion planning solution for ADS inspired by the theory of fluid mechanics. A computationally efficient technique, i.e., the lattice Boltzmann method, is then adopted to generate a spatiotemporal vector field, which in accordance with the nonholonomic dynamic model of the Ego vehicle is employed to generate feasible candidate trajectories. The trajectory optimising ride quality, efficiency and safety is finally selected to calculate the imminent control signals, i.e., throttle/brake and steering angle. The performance of the proposed approach is evaluated by simulations in highway driving, on-ramp merging, and intersection crossing scenarios, and it is found to outperform traditional motion planning solutions based on model predictive control (MPC).
title Towards A General-Purpose Motion Planning for Autonomous Vehicles Using Fluid Dynamics
topic Robotics
Systems and Control
url https://arxiv.org/abs/2406.05708