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Model Predictive Control
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ISBN: 9789811300837 Year: 2019 Publisher: Singapore Springer Nature Singapore :Imprint: Springer

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Iterative Learning Stabilization and Fault-Tolerant Control for Batch Processes
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ISBN: 9789811357909 Year: 2020 Publisher: Singapore Springer Nature Singapore :Imprint: Springer

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This book is based on the authors’ research on the stabilization and fault-tolerant control of batch processes, which are flourishing topics in the field of control system engineering. It introduces iterative learning control for linear/nonlinear single/multi-phase batch processes; iterative learning optimal guaranteed cost control; delay-dependent iterative learning control; and iterative learning fault-tolerant control for linear/nonlinear single/multi-phase batch processes. Providing important insights and useful methods and practical algorithms that can potentially be applied in batch process control and optimization, it is a valuable resource for researchers, scientists, and engineers in the field of process system engineering and control engineering.


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DNA Computing Based Genetic Algorithm
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ISBN: 9789811554032 Year: 2020 Publisher: Singapore Springer Nature Singapore :Imprint: Springer

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This book focuses on the implementation, evaluation and application of DNA/RNA-based genetic algorithms in connection with neural network modeling, fuzzy control, the Q-learning algorithm and CNN deep learning classifier. It presents several DNA/RNA-based genetic algorithms and their modifications, which are tested using benchmarks, as well as detailed information on the implementation steps and program code. In addition to single-objective optimization, here genetic algorithms are also used to solve multi-objective optimization for neural network modeling, fuzzy control, model predictive control and PID control. In closing, new topics such as Q-learning and CNN are introduced. The book offers a valuable reference guide for researchers and designers in system modeling and control, and for senior undergraduate and graduate students at colleges and universities. .

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