Reinforcement learning and approximate dynamic programming for feedback control

書誌事項

Reinforcement learning and approximate dynamic programming for feedback control

edited by Frank L. Lewis, Derong Liu

(IEEE series on computational intelligence / David B. Fogel, series editor)

IEEE Press , Wiley, c2013

  • : hardback

この図書・雑誌をさがす
注記

Includes bibliographical references and index

内容説明・目次

内容説明

Reinforcement learning (RL) and adaptive dynamic programming (ADP) has been one of the most critical research fields in science and engineering for modern complex systems. This book describes the latest RL and ADP techniques for decision and control in human engineered systems, covering both single player decision and control and multi-player games. Edited by the pioneers of RL and ADP research, the book brings together ideas and methods from many fields and provides an important and timely guidance on controlling a wide variety of systems, such as robots, industrial processes, and economic decision-making.

目次

PREFACE xix CONTRIBUTORS xxiii PART I FEEDBACK CONTROL USING RL AND ADP 1. Reinforcement Learning and Approximate Dynamic Programming (RLADP)-Foundations, Common Misconceptions, and the Challenges Ahead 3 Paul J. Werbos 1.1 Introduction 3 1.2 What is RLADP? 4 1.3 Some Basic Challenges in Implementing ADP 14 2. Stable Adaptive Neural Control of Partially Observable Dynamic Systems 31 J. Nate Knight and Charles W. Anderson 2.1 Introduction 31 2.2 Background 32 2.3 Stability Bias 35 2.4 Example Application 38 3. Optimal Control of Unknown Nonlinear Discrete-Time Systems Using the Iterative Globalized Dual Heuristic Programming Algorithm 52 Derong Liu and Ding Wang 3.1 Background Material 53 3.2 Neuro-Optimal Control Scheme Based on the Iterative ADP Algorithm 55 3.3 Generalization 67 3.4 Simulation Studies 68 3.5 Summary 74 4. Learning and Optimization in Hierarchical Adaptive Critic Design 78 Haibo He, Zhen Ni, and Dongbin Zhao 4.1 Introduction 78 4.2 Hierarchical ADP Architecture with Multiple-Goal Representation 80 4.3 Case Study: The Ball-and-Beam System 87 4.4 Conclusions and Future Work 94 5. Single Network Adaptive Critics Networks-Development, Analysis, and Applications 98 Jie Ding, Ali Heydari, and S.N. Balakrishnan 5.1 Introduction 98 5.2 Approximate Dynamic Programing 100 5.3 SNAC 102 5.4 J-SNAC 104 5.5 Finite-SNAC 108 5.6 Conclusions 116 6. Linearly Solvable Optimal Control 119 K. Dvijotham and E. Todorov 6.1 Introduction 119 6.2 Linearly Solvable Optimal Control Problems 123 6.3 Extension to Risk-Sensitive Control and Game Theory 130 6.4 Properties and Algorithms 134 6.5 Conclusions and Future Work 139 7. Approximating Optimal Control with Value Gradient Learning 142 Michael Fairbank, Danil Prokhorov, and Eduardo Alonso 7.1 Introduction 142 7.2 Value Gradient Learning and BPTT Algorithms 144 7.3 A Convergence Proof for VGL(1) for Control with Function Approximation 148 7.4 Vertical Lander Experiment 154 7.5 Conclusions 159 8. A Constrained Backpropagation Approach to Function Approximation and Approximate Dynamic Programming 162 Silvia Ferrari, Keith Rudd, and Gianluca Di Muro 8.1 Background 163 8.2 Constrained Backpropagation (CPROP) Approach 163 8.3 Solution of Partial Differential Equations in Nonstationary Environments 170 8.4 Preserving Prior Knowledge in Exploratory Adaptive Critic Designs 174 8.5 Summary 179 9. Toward Design of Nonlinear ADP Learning Controllers with Performance Assurance 182 Jennie Si, Lei Yang, Chao Lu, Kostas S. Tsakalis, and Armando A. Rodriguez 9.1 Introduction 183 9.2 Direct Heuristic Dynamic Programming 184 9.3 A Control Theoretic View on the Direct HDP 186 9.4 Direct HDP Design with Improved Performance Case 1-Design Guided by a Priori LQR Information 193 9.5 Direct HDP Design with Improved Performance Case 2-Direct HDP for Coorindated Damping Control of Low-Frequency Oscillation 198 9.6 Summary 201 10. Reinforcement Learning Control with Time-Dependent Agent Dynamics 203 Kenton Kirkpatrick and John Valasek 10.1 Introduction 203 10.2 Q-Learning 205 10.3 Sampled Data Q-Learning 209 10.4 System Dynamics Approximation 213 10.5 Closing Remarks 218 11. Online Optimal Control of Nonaffine Nonlinear Discrete-Time Systems without Using Value and Policy Iterations 221 Hassan Zargarzadeh, Qinmin Yang, and S. Jagannathan 11.1 Introduction 221 11.2 Background 224 11.3 Reinforcement Learning Based Control 225 11.4 Time-Based Adaptive Dynamic Programming-Based Optimal Control 234 11.5 Simulation Result 247 12. An Actor-Critic-Identifier Architecture for Adaptive Approximate Optimal Control 258 S. Bhasin, R. Kamalapurkar, M. Johnson, K.G. Vamvoudakis, F.L. Lewis, and W.E. Dixon 12.1 Introduction 259 12.2 Actor-Critic-Identifier Architecture for HJB Approximation 260 12.3 Actor-Critic Design 263 12.4 Identifier Design 264 12.5 Convergence and Stability Analysis 270 12.6 Simulation 274 12.7 Conclusion 275 13. Robust Adaptive Dynamic Programming 281 Yu Jiang and Zhong-Ping Jiang 13.1 Introduction 281 13.2 Optimality Versus Robustness 283 13.3 Robust-ADP Design for Disturbance Attenuation 288 13.4 Robust-ADP for Partial-State Feedback Control 292 13.5 Applications 296 13.6 Summary 300 PART II LEARNING AND CONTROL IN MULTIAGENT GAMES 14. Hybrid Learning in Stochastic Games and Its Application in Network Security 305 Quanyan Zhu, Hamidou Tembine, and Tamer Basar 14.1 Introduction 305 14.2 Two-Person Game 308 14.3 Learning in NZSGs 310 14.4 Main Results 314 14.5 Security Application 322 14.6 Conclusions and Future Works 326 15. Integral Reinforcement Learning for Online Computation of Nash Strategies of Nonzero-Sum Differential Games 330 Draguna Vrabie and F.L. Lewis 15.1 Introduction 331 15.2 Two-Player Games and Integral Reinforcement Learning 333 15.3 Continuous-Time Value Iteration to Solve the Riccati Equation 337 15.4 Online Algorithm to Solve Nonzero-Sum Games 339 15.5 Analysis of the Online Learning Algorithm for NZS Games 342 15.6 Simulation Result for the Online Game Algorithm 345 15.7 Conclusion 347 16. Online Learning Algorithms for Optimal Control and Dynamic Games 350 Kyriakos G. Vamvoudakis and Frank L. Lewis 16.1 Introduction 350 16.2 Optimal Control and the Continuous Time Hamilton-Jacobi-Bellman Equation 352 16.3 Online Solution of Nonlinear Two-Player Zero-Sum Games and Hamilton-Jacobi-Isaacs Equation 360 16.4 Online Solution of Nonlinear Nonzero-Sum Games and Coupled Hamilton-Jacobi Equations 366 PART III FOUNDATIONS IN MDP AND RL 17. Lambda-Policy Iteration: A Review and a New Implementation 381 Dimitri P. Bertsekas 17.1 Introduction 381 17.2 Lambda-Policy Iteration without Cost Function Approximation 386 17.3 Approximate Policy Evaluation Using Projected Equations 388 17.4 Lambda-Policy Iteration with Cost Function Approximation 395 17.5 Conclusions 406 18. Optimal Learning and Approximate Dynamic Programming 410 Warren B. Powell and Ilya O. Ryzhov 18.1 Introduction 410 18.2 Modeling 411 18.3 The Four Classes of Policies 412 18.4 Basic Learning Policies for Policy Search 416 18.5 Optimal Learning Policies for Policy Search 421 18.6 Learning with a Physical State 427 19. An Introduction to Event-Based Optimization: Theory and Applications 432 Xi-Ren Cao, Yanjia Zhao, Qing-Shan Jia, and Qianchuan Zhao 19.1 Introduction 432 19.2 Literature Review 433 19.3 Problem Formulation 434 19.4 Policy Iteration for EBO 435 19.5 Example: Material Handling Problem 441 19.6 Conclusions 448 20. Bounds for Markov Decision Processes 452 Vijay V. Desai, Vivek F. Farias, and Ciamac C. Moallemi 20.1 Introduction 452 20.2 Problem Formulation 455 20.3 The Linear Programming Approach 456 20.4 The Martingale Duality Approach 458 20.5 The Pathwise Optimization Method 461 20.6 Applications 463 20.7 Conclusion 470 21. Approximate Dynamic Programming and Backpropagation on Timescales 474 John Seiffertt and Donald Wunsch 21.1 Introduction: Timescales Fundamentals 474 21.2 Dynamic Programming 479 21.3 Backpropagation 485 21.4 Conclusions 492 22. A Survey of Optimistic Planning in Markov Decision Processes 494 Lucian Busoniu, Remi Munos, and Robert Babu!ska 22.1 Introduction 494 22.2 Optimistic Online Optimization 497 22.3 Optimistic Planning Algorithms 500 22.4 Related Planning Algorithms 509 22.5 Numerical Example 510 23. Adaptive Feature Pursuit: Online Adaptation of Features in Reinforcement Learning 517 Shalabh Bhatnagar, Vivek S. Borkar, and L.A. Prashanth 23.1 Introduction 517 23.2 The Framework 520 23.3 The Feature Adaptation Scheme 522 23.4 Convergence Analysis 525 23.5 Application to Traffic Signal Control 527 23.6 Conclusions 532 24. Feature Selection for Neuro-Dynamic Programming 535 Dayu Huang, W. Chen, P. Mehta, S. Meyn, and A. Surana 24.1 Introduction 535 24.2 Optimality Equations 536 24.3 Neuro-Dynamic Algorithms 542 24.4 Fluid Models 551 24.5 Diffusion Models 554 24.6 Mean Field Games 556 24.7 Conclusions 557 25. Approximate Dynamic Programming for Optimizing Oil Production 560 Zheng Wen, Louis J. Durlofsky, Benjamin Van Roy, and Khalid Aziz 25.1 Introduction 560 25.2 Petroleum Reservoir Production Optimization Problem 562 25.3 Review of Dynamic Programming and Approximate Dynamic Programming 564 25.4 Approximate Dynamic Programming Algorithm for Reservoir Production Optimization 566 25.5 Simulation Results 573 25.6 Concluding Remarks 578 23.6 Conclusions 532 24. Feature Selection for Neuro-Dynamic Programming 535 Dayu Huang, W. Chen, P. Mehta, S. Meyn, and A. Surana 24.1 Introduction 535 24.2 Optimality Equations 536 24.3 Neuro-Dynamic Algorithms 542 24.4 Fluid Models 551 24.5 Diffusion Models 554 24.6 Mean Field Games 556 24.7 Conclusions 557 25. Approximate Dynamic Programming for Optimizing Oil Production 560 Zheng Wen, Louis J. Durlofsky, Benjamin Van Roy, and Khalid Aziz 25.1 Introduction 560 25.2 Petroleum Reservoir Production Optimization Problem 562 25.3 Review of Dynamic Programming and Approximate Dynamic Programming 564 25.4 Approximate Dynamic Programming Algorithm for Reservoir Production Optimization 566 25.5 Simulation Results 573 25.6 Concluding Remarks 578 26. A Learning Strategy for Source Tracking in Unstructured Environments 582 Titus Appel, Rafael Fierro, Brandon Rohrer, Ron Lumia, and John Wood 26.1 Introduction 582 26.2 Reinforcement Learning 583 26.3 Light-Following Robot 589 26.4 Simulation Results 592 26.5 Experimental Results 595 26.6 Conclusions and Future Work 599 References 599 INDEX 601

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