ROSYSYMay 26

Provably Safe Motion Planning Under Unknown Disturbances

arXiv:2605.2662511.4
Predicted impact top 85% in RO · last 90 daysOriginality Incremental advance
AI Analysis

For roboticists needing safe motion planning under unknown disturbances, this work provides a probabilistically complete algorithm with reduced conservatism and improved scalability.

The paper presents a provably safe sampling-based motion planning algorithm for robotic systems with unknown random disturbances, using Wasserstein ambiguity tubes learned from data to satisfy chance constraints. The algorithm outperforms state-of-the-art methods in cluttered environments under strict safety thresholds.

We present a provably safe sampling-based motion planning algorithm for robotic systems affected by random disturbances of unknown distribution. We consider systems with linear or linearizable dynamics evolving in workspace with arbitrary-shaped obstacles subject to state and control constraints. Safety requirements are formulated as chance-constraints. Our approach leverages data from trajectories of the system to learn a Wasserstein ambiguity tube, i.e., a sequence of ambiguity sets, which contains the trajectory of the system's state distribution with high confidence. This ambiguity tube is then used in a probabilistically complete algorithm to grow a sampling-based motion planning tree that respects the constraints of the problem. We show that learning several lower-dimensional ambiguity tubes instead of a single high-dimensional one effectively reduces the conservatism and boosts scalability. Additionally, we design an efficient bandit-based validity checker that remarkably increases the empirical performance of our approach without sacrificing probabilistic completeness. Case studies show our algorithm finds valid plans in cluttered environments under strict safety thresholds, outperforming state-of-the-art methods.

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