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Risk-Aware Motion Planning in Partially Known Environments

Fernando S. Barbosa, Bruno Lacerda, Paul Duckworth, Jana Tůmová, Nick Hawes

20212021 60th IEEE Conference on Decision and Control (CDC)26 citationsDOIOpen Access PDF

Abstract

Recent trends envisage robots being deployed in areas deemed dangerous to humans, such as buildings with gas and radiation leaks. In such situations, the model of the underlying hazardous process might be unknown to the agent a priori, giving rise to the problem of planning for safe behaviour in partially known environments. We employ Gaussian process regression to create a probabilistic model of the hazardous process from local noisy samples. The result of this regression is then used by a risk metric, such as the Conditional Value-at-Risk, to reason about the safety at a certain state. The outcome is a risk function that can be employed in optimal motion planning problems. We demonstrate the use of the proposed function in two approaches. First is a sampling-based motion planning algorithm with an event-based trigger for online replanning. Second is an adaptation to the incremental Gaussian Process motion planner (iGPMP2), allowing it to quickly react and adapt to the environment. Both algorithms are evaluated in representative simulation scenarios, where they demonstrate the ability of avoiding high-risk areas.

Topics & Concepts

KrigingComputer scienceGaussian processMotion planningMetric (unit)Probabilistic logicProcess (computing)Artificial intelligenceA priori and a posterioriFunction (biology)Machine learningEvent (particle physics)Motion (physics)GaussianRobotEngineeringEvolutionary biologyPhysicsEpistemologyBiologyQuantum mechanicsOperations managementPhilosophyOperating systemRobotic Path Planning AlgorithmsAI-based Problem Solving and PlanningRobot Manipulation and Learning
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