Reliable Non-Parametric Techniques for Energy System Operation and Control: Fundamentals and Applications of Constraint Learning and Safe Reinforcement Learning Methods, a new Volume in the Advances in Intelligent Energy Systems, is a comprehensive guide to modern smart methods in energy system operation and control. This book covers fundamental concepts and applications in both deterministic and uncertain environments. It addresses the challenge of accuracy in imbalanced datasets and the limitations of measurements. The book delves into advanced topics such as safe reinforcement learning for…mehr
Reliable Non-Parametric Techniques for Energy System Operation and Control: Fundamentals and Applications of Constraint Learning and Safe Reinforcement Learning Methods, a new Volume in the Advances in Intelligent Energy Systems, is a comprehensive guide to modern smart methods in energy system operation and control. This book covers fundamental concepts and applications in both deterministic and uncertain environments. It addresses the challenge of accuracy in imbalanced datasets and the limitations of measurements. The book delves into advanced topics such as safe reinforcement learning for energy system control, including training-efficient intrinsic-motivated reinforcement learning, and physical layer-based control, and more. Other chapters cover barrier function-based control and CVaR-based control for systems without hard operation constraints. Designed for graduate students, researchers, and engineers, this book stands out for its practical approach to advanced methods in energy system control, enabling sustainable developments in real-world conditions.
Hongcai Zhang is currently an Assistant Professor with the State Key Laboratory of Internet of Things for Smart City and the Department of Electrical and Computer Engineering at the University of Macau, China. Prior to this, he was a postdoctoral scholar with the University of California, USA, from 2018-2019. His current research interests include Internet of Things for smart energy, optimal operation and optimization of power and transportation systems, and grid integration of distributed energy resources. He has published over 70 JCR Q1/Q2 journal papers with 3 identified as ESI highly cited papers, and is an Associate Editor for IEEE Transactions on Power Systems and the Journal of Modern Power Systems and Clean Energy.
Inhaltsangabe
1. Introduction PART I: ENERGY SYSTEM OPERATION BASED ON CONSTRAINT LEARNING 2. Fundamentals of Constraint Learning and Its Application in Deterministic Energy System Operation Problems 3. Extending Constraint Learning to Energy System Operations under Uncertain Environments 4. Ensuring Accuracy of Constraint learning in the Face of Imbalanced Operational Datasets 5. Overcoming Measurement Limitations by Combining Constraint Learning with Measurement Recovery 6. Mathematical Insights and Computationally-efficient Implementations of Constraint Learning PART II: ENERGY SYSTEM CONTROL BASED ON SAFE-REINFORCEMENT LEARNING 7. Training-efficient Intrinsic-motived Reinforcement Learning Control for Energy Systems with Soft Operation Constraint 8. Physical Layer-based Safe Reinforcement Learning Control for Energy Systems with Accurate Formula of Hard Operation Constraint 9. Barrier Function-based Safe Reinforcement Learning Control for Energy Systems with Partially Formulable Hard Operation Constraint 10. CVaR-based Safe Reinforcement Learning Control for Energy Systems without Formula of Hard Operation Constraint 11. Conclusion
1. Introduction PART I: ENERGY SYSTEM OPERATION BASED ON CONSTRAINT LEARNING 2. Fundamentals of Constraint Learning and Its Application in Deterministic Energy System Operation Problems 3. Extending Constraint Learning to Energy System Operations under Uncertain Environments 4. Ensuring Accuracy of Constraint learning in the Face of Imbalanced Operational Datasets 5. Overcoming Measurement Limitations by Combining Constraint Learning with Measurement Recovery 6. Mathematical Insights and Computationally-efficient Implementations of Constraint Learning PART II: ENERGY SYSTEM CONTROL BASED ON SAFE-REINFORCEMENT LEARNING 7. Training-efficient Intrinsic-motived Reinforcement Learning Control for Energy Systems with Soft Operation Constraint 8. Physical Layer-based Safe Reinforcement Learning Control for Energy Systems with Accurate Formula of Hard Operation Constraint 9. Barrier Function-based Safe Reinforcement Learning Control for Energy Systems with Partially Formulable Hard Operation Constraint 10. CVaR-based Safe Reinforcement Learning Control for Energy Systems without Formula of Hard Operation Constraint 11. Conclusion
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