2023
DOI: 10.48550/arxiv.2301.05980
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Deep-Reinforcement-Learning-based Path Planning for Industrial Robots using Distance Sensors as Observation

Abstract: Industrial robots are widely used in various manufacturing environments due to their efficiency in doing repetitive tasks such as assembly or welding. A common problem for these applications is to reach a destination without colliding with obstacles or other robot arms. Most commonly used sampling-based path planning approaches such as RRT require long computation times, especially in complex environments. Furthermore, the environment in which they are employed needs to be known beforehand. When utilizing the … Show more

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