2021
DOI: 10.48550/arxiv.2102.08080
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Learning the Noise of Failure: Intelligent System Tests for Robots

Abstract: Roboticists usually test new control software in simulation environments before evaluating its functionality on real-world robots. Simulations reduce the risk of damaging the hardware and can significantly increase the development process's efficiency in the form of automated system tests.However, many flaws in the software remain undetected in simulation data, revealing their harmful effects on the system only in time-consuming experiments. In reality, such irregularities are often easily recognized solely by… Show more

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