About this Research Topic
Learning behavioral skills is the domain of reinforcement learning algorithms, which acquire behaviors through trial and error. These deep learning systems are difficult to analyze. Indeed, proving (for example) the convergence of deep learning algorithms such as backpropagation is a difficult task in a highly non-convex, high-dimensional problem. In this context, theoretical analysis of stability, convergence, and robustness is an essential procedure for ensuring that robotic systems operate predictably and safely. Furthermore, keeping a human-level interpretability and explainability of the decision-making process of machine learning policies is another challenging objective in end-to-end learning process. Advancing in these fields is a necessary step for building industry-grade standards for robot control.
Therefore, this Research Topic gives priority to research focusing on knowledge and results that can improve the effectiveness of learning methods, especially targeted to meeting the requirements of actual deployment, regardless of the field of application. We especially encourage Original Research, Systematic Reviews, Data Reports on the following themes (but not limited to):
- End-to-end control/model architectures
- Deep learning architectures and algorithms suitable for embedded systems
- Deep neural embedded systems
- Theory of neural networks for convergence, robustness, and other characteristics
- Deep reinforcement learning control of robotic systems
- Dynamic neural networks (DNN) to control robots
- Innovative design to improve the performance of End-to-end learning (convergence, robustness, stability solving speed, control performance, learning efficiency),
Keywords: Robotics, Autonomous Robots, Reinforcement learning, Deep learning, Robotic systems
Important Note: All contributions to this Research Topic must be within the scope of the section and journal to which they are submitted, as defined in their mission statements. Frontiers reserves the right to guide an out-of-scope manuscript to a more suitable section or journal at any stage of peer review.