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This book introduces a robust H? physical generative AI-driven filter and controller, along with a nonlinear Luenberger observer model and a state estimation error dynamic model, to effectively address HJIEs for robust H? state estimation (filtering) and reference trajectory tracking control in nonlinear stochastic systems. Additionally, it presents a method for training deep neural networks (DNNs) using these models, alongside a physical generative AI-driven observer-based reference tracking control scheme, with applications in the guidance and control of relevant systems.
Key features-
-Provides theoretical analysis and detailed design procedure for physical generative AI-driven H? or mixed H2/H? filter
-Applies physical generative AI-driven robust H? or mixed H2/H? filter and reference tracking control schemes to the trajectory estimation and reference tracking control of man-made machines
-Introduces physical generative AI-driven decentralized H? observer-based team formation tracking control of large-scale quadrotor UAVs, biped robots or LEO satellites
-Describes robust physical generative AI-driven filter and control schemes for complex man-made machines
This book is aimed at graduate students and researchers in control science, signal processing and artificial intelligence.
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This book introduces a robust H? physical generative AI-driven filter and controller, along with a nonlinear Luenberger observer model and a state estimation error dynamic model, to effectively address HJIEs for robust H? state estimation (filtering) and reference trajectory tracking control in nonlinear stochastic systems. Additionally, it presents a method for training deep neural networks (DNNs) using these models, alongside a physical generative AI-driven observer-based reference tracking control scheme, with applications in the guidance and control of relevant systems.
Key features-
-Provides theoretical analysis and detailed design procedure for physical generative AI-driven H? or mixed H2/H? filter
-Applies physical generative AI-driven robust H? or mixed H2/H? filter and reference tracking control schemes to the trajectory estimation and reference tracking control of man-made machines
-Introduces physical generative AI-driven decentralized H? observer-based team formation tracking control of large-scale quadrotor UAVs, biped robots or LEO satellites
-Describes robust physical generative AI-driven filter and control schemes for complex man-made machines
This book is aimed at graduate students and researchers in control science, signal processing and artificial intelligence.