规划师
碰撞
计算机科学
避碰
实时计算
人机交互
分布式计算
人工智能
计算机安全
作者
Geesara Kulathunga,Abdurrahman Yılmaz,Zhuoling Huang,Ibrahim Hroob,Hariharan Arunachalam,Leonardo Guevara,Alexandr Klimchik,Grzegorz Cielniak,Marc Hanheide
出处
期刊:Cornell University - arXiv
日期:2024-12-04
标识
DOI:10.48550/arxiv.2412.03174
摘要
In autonomous navigation, trajectory replanning, refinement, and control command generation are essential for effective motion planning. This paper presents a resilient approach to trajectory replanning addressing scenarios where the initial planner's solution becomes infeasible. The proposed method incorporates a hybrid A* algorithm to generate feasible trajectories when the primary planner fails and applies a soft constraints-based smoothing technique to refine these trajectories, ensuring continuity, obstacle avoidance, and kinematic feasibility. Obstacle constraints are modelled using a dynamic Voronoi map to improve navigation through narrow passages. This approach enhances the consistency of trajectory planning, speeds up convergence, and meets real-time computational requirements. In environments with around 30\% or higher obstacle density, the ratio of free space before and after placing new obstacles, the Resilient Timed Elastic Band (RTEB) planner achieves approximately 20\% reduction in traverse distance, traverse time, and control effort compared to the Timed Elastic Band (TEB) planner and Nonlinear Model Predictive Control (NMPC) planner. These improvements demonstrate the RTEB planner's potential for application in field robotics, particularly in agricultural and industrial environments, where navigating unstructured terrain is crucial for ensuring efficiency and operational resilience.
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