Search-Based Task and Motion Planning for Hybrid Systems: Agile Autonomous Vehicles
Zlatan Ajanovi\'c, Enrico Regolin, Barys Shyrokau, Hana \'Cati\'c,, Martin Horn, Antonella Ferrara

TL;DR
This paper introduces a search-based task and motion planning method for hybrid systems like autonomous vehicles, enabling optimal, real-time decision-making in complex, dynamic driving scenarios with nonlinear vehicle dynamics.
Contribution
It presents a novel search-based approach that efficiently explores high-dimensional, nonlinear state spaces using motion primitives and multiple models, improving real-time planning for autonomous vehicles.
Findings
Effective in simulated mixed-curvature tracks
Handles nonlinear, unstable vehicle dynamics
Uses learned models for motion primitives
Abstract
To achieve optimal robot behavior in dynamic scenarios we need to consider complex dynamics in a predictive manner. In the vehicle dynamics community, it is well know that to achieve time-optimal driving on low surface, the vehicle should utilize drifting. Hence many authors have devised rules to split circuits and employ drifting on some segments. These rules are suboptimal and do not generalize to arbitrary circuit shapes (e.g., S-like curves). So, the question "When to go into which mode and how to drive in it?" remains unanswered. To choose the suitable mode (discrete decision), the algorithm needs information about the feasibility of the continuous motion in that mode. This makes it a class of Task and Motion Planning (TAMP) problems, which are known to be hard to solve optimally in real-time. In the AI planning community, search methods are commonly used. However, they cannot be…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Software Testing and Debugging Techniques · Autonomous Vehicle Technology and Safety
