To address control difficulties in laser welding, we propose the idea of a self-learning and self-improving laser welding system
that combines three modern machine learning techniques. We first show the ability of a deep neural network to extract
meaningful, low-dimensional features from high-dimensional laser-welding camera data. These features are then used by a
temporal-difference learning algorithm to predict and anticipate important aspects of the system’s sensor data. The third part of
our proposed architecture suggests using these features and predictions to learn to deliver situation-appropriate welding power;
preliminary control results are demonstrated using a laser-welding simulator. The intelligent laser-welding architecture
introduced in this work has the capacity to improve its performance without further human assistance and therefore addresses key
requirements of modern industry. To our knowledge, it is the first demonstrated combination of deep learning and Nexting with
general value functions and also the first usage of deep learning for laser welding specifically and production engineering in
general. This work also provides a unique example of how predictions can be explicitly learned using reinforcement learning to
support laser welding. We believe that it would be straightforward to adapt our approach to other production engineering
applications.
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To address control difficulties in laser welding, we propose the idea of a self-learning and self-improving laser welding system
that combines three modern machine learning techniques. We first show the ability of a deep neural network to extract
meaningful, low-dimensional features from high-dimensional laser-welding camera data. These features are then used by a
temporal-difference learning algorithm to predict and anticipate important aspects of the system’s sensor data. The third part of...
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