Safety and optimality in learning-based control at low computational cost
Safety and optimality in learning-based control at low computational cost
Applying machine learning methods to physical systems that are supposed to act in the real world requires providing safety guarantees. However, methods that include such guarantees often come at a high computational cost, making them inapplicable to large datasets and embedded devices with low computational power. In this paper, we propose CoLSafe, a computationally lightweight safe learning algorithm whose computational complexity grows sublinearly with the number of data points. We derive both safety and optimality guarantees and showcase the effectiveness of our algorithm on a seven-degrees-of-freedom robot arm.
Dominik Baumann、Krzysztof Kowalczyk、Cristian R. Rojas、Koen Tiels、Pawel Wachel
自动化基础理论计算技术、计算机技术
Dominik Baumann,Krzysztof Kowalczyk,Cristian R. Rojas,Koen Tiels,Pawel Wachel.Safety and optimality in learning-based control at low computational cost[EB/OL].(2025-05-12)[2025-06-09].https://arxiv.org/abs/2505.08026.点此复制
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