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
Reinforcement Learning and Approximate Dynamic Programming for Feedback Control
β Scribed by IEEE Press.;John Wiley;Sons.;Lewis, Frank L.;Liu, Derong
- Publisher
- IEEE Press, John Wiley & Sons, Inc., Publication
- Year
- 2013
- Tongue
- English
- Series
- IEEE Series on Computational Intelligence
- Category
- Library
No coin nor oath required. For personal study only.
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