ROSep 13, 2021

Pareto-optimal lane-changing motion planning in mixed traffic

arXiv:2109.06080v32 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for autonomous driving technology, focusing on optimizing lane-changing impacts in mixed traffic environments.

The paper tackles lane-changing motion planning in mixed traffic by applying Pareto-optimal concepts to jointly model comfort, efficiency, and safety, resulting in a reduction of total costs by 10.94% to 48.66%.

This paper applies the pareto-optimal concept to LC (lane-changing) motion planning in the presence of mixed traffic including manual and autonomous vehicles. Firstly, a multiobjective optimization problem is presented, in which the comfort, efficiency and safety of the LC vehicle and the surrounding vehicles are jointly modelled. Thereafter, the pareto-optimal solutions are obtained through employing the NSGA-II (Non-dominated Sorting Genetic -II) algorithm. Finally, the experiment section analyzes the (macroscopic and microscopic) lane-changing impact from a pareto-optimal perspective. Also, a comprehensive sensitivity analysis is conducted. Our results demonstrate that our algorithm could significantly reduce the lane-changing impact within its region, and the total costs are reduced in the range of 10.94% to 48.66%. This paper could be considered as a preliminary research framework for the application of the pareto-optimal concept. We hope this research will provide valuable insights into autonomous driving technology.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes