Assuring Safe Operation of Robotic Systems under Uncertainty
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105,00 |
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108,43 |
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108,43 |
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Beschrijving
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This book applies set-theoretic and reinforcement learning approaches to formulate, analyze and solve the challenge of ensuring safe operation of robotic systems in an uncertain environment. Assuring Safe Operation of Robotic Systems under Uncertainty: Control and Learning Methods applies set-theoretic and reinforcement learning approaches to formulate, analyze, and solve the challenge of ensuring safe operation of robotic systems in an uncertain environment. The authors adopt learning-supported, set-theoretic methods—specifically, the barrier Lyapunov function and the control barrier function—to achieve desirable robust safety with guaranteed performance in continuous-time nonlinear control applications. They also combine reinforcement learning with control theory to ensure safe learning and optimization. The reinforcement learning-based optimization framework incorporates safety and robustness guarantees by applying theoretical analysis tools from the field of control. This book will be of interest to researchers, engineers, and students specializing in robot planning and control.
This book applies set-theoretic and reinforcement learning approaches to formulate, analyze and solve the challenge of ensuring safe operation of robotic systems in an uncertain environment. Assuring Safe Operation of Robotic Systems under Uncertainty: Control and Learning Methods applies set-theoretic and reinforcement learning approaches to formulate, analyze, and solve the challenge of ensuring safe operation of robotic systems in an uncertain environment. The authors adopt learning-supported, set-theoretic methods—specifically, the barrier Lyapunov function and the control barrier function—to achieve desirable robust safety with guaranteed performance in continuous-time nonlinear control applications. They also combine reinforcement learning with control theory to ensure safe learning and optimization. The reinforcement learning-based optimization framework incorporates safety and robustness guarantees by applying theoretical analysis tools from the field of control. This book will be of interest to researchers, engineers, and students specializing in robot planning and control.
AmazonPagina's: 114, Editie: Eerste editie, Hardcover, CRC Press