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DNA Computing Based Genetic Algorithm: Applications in Industrial Process Modeling and Control

✍ Scribed by Jili Tao; Ridong Zhang; Yong Zhu


Publisher
Springer
Year
2020
Tongue
English
Leaves
280
Category
Library

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✦ Synopsis


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.

✦ Table of Contents


Contents
1 Introduction
1.1 Standard Genetic Algorithm
1.2 State of Art for GA
1.2.1 Theoretical Research of GA
1.2.2 Encoding Problem of GA
1.2.3 Constraint Handling in GA
1.2.4 Multi-objective Genetic Algorithm
1.2.5 Applications of GA
1.3 DNA Computing Based GA
1.3.1 DNA Molecular Structure of DNA Computing
1.3.2 Biological Operators of DNA Computing
1.3.3 DNA Computing Based Genetic Algorithm
1.4 The Main Content of This Book
References
2 DNA Computing Based RNA Genetic Algorithm
2.1 Introduction
2.2 RNA-GA Based on DNA Computing
2.2.1 Digital Encoding of RNA Sequence
2.2.2 Operations of RNA Sequence
2.2.3 Encoding and Operators in RNA-GA
2.2.4 The Procedure of RNA-GA
2.3 Global Convergence Analysis of RNA-GA
2.4 Performance of the RNA-GA
2.4.1 Test Functions
2.4.2 Adaptability of the Parameters
2.4.3 Comparisons Between RNA-GA and SGA
2.5 Summary
Appendix
References
3 DNA Double-Helix and SQP Hybrid Genetic Algorithm
3.1 Introduction
3.2 Problem Description and Constraint Handling
3.3 DNA Double-Helix Hybrid Genetic Algorithm (DNA-DHGA)
3.3.1 DNA Double-Helix Encoding
3.3.2 DNA Computing Based Operators
3.3.3 Hybrid Genetic Algorithm with SQP
3.3.4 Convergence Rate Analysis of DNA-DHGA
3.4 Numeric Simulation
3.4.1 Test Functions
3.4.2 Simulation Analysis
3.5 Summary
Appendix
References
4 DNA Computing Based Multi-objective Genetic Algorithm
4.1 Introduction
4.2 Multi-objective Optimization Problems
4.3 DNA Computing Based MOGA (DNA-MOGA)
4.3.1 RNA Encoding
4.3.2 Pareto Sorting and Density Information
4.3.3 Elitist Archiving and Maintaining Scheme
4.3.4 DNA Computing Based Crossover and Mutation Operators
4.3.5 The Procedure of DNA-MOGA
4.3.6 Convergence Analysis of DNA-MOGA
4.4 Simulations on Test Functions by DNA-MOGA
4.4.1 Test Functions and Performance Metrics
4.4.2 Calculation Results
4.5 Summary
Appendix
References
5 Parameter Identification and Optimization of Chemical Processes
5.1 Introduction
5.2 Problem Description of System Identification
5.2.1 Lumping Models for a Heavy Oil Thermal Cracking Process
5.2.2 Parameter Estimation of FCC Unit Main Fractionator
5.3 Gasoline Blending Recipe Optimization
5.3.1 Formulation of Gasoline Blending Scheduling
5.3.2 Optimization Results for Gasoline Blending Scheduling
5.4 Summary
Appendix
References
6 GA-Based RBF Neural Network for Nonlinear SISO System
6.1 Introduction
6.2 The Coke Unit
6.3 RBF Neural Network
6.4 RNA-GA Based RBFNN for Temperature Modeling
6.4.1 Encoding and Decoding
6.4.2 Fitness Function
6.4.3 Operators of RBFNN Optimization
6.4.4 Procedure of the Algorithm
6.4.5 Temperature Modeling in a Coke Furnace
6.5 Improved MOEA Based RBF Neural Network for Chamber Pressure
6.5.1 Encoding of IMOEA
6.5.2 Optimization Objectives of RBFNN Model
6.5.3 Operators of IMOEA for RBFNN
6.5.4 The Procedure of IMOEA
6.5.5 The Chamber Pressure Modeling in a Coke Furnace
6.6 PCA and INSGA-II Based RBFNN Disturbance Modeling of Chamber Pressure
6.6.1 RV Criterion in PCA Variable Selection
6.6.2 Encoding of RBFNN
6.6.3 Operators of INSGA-II
6.6.4 The Procedure of Improved NSGA-II
6.6.5 Main Disturbance Modeling of Chamber Pressure
6.7 Summary
References
7 GA Based Fuzzy Neural Network Modeling for Nonlinear SISO System
7.1 Introduction
7.2 T-S Fuzzy Model
7.2.1 T-S Fuzzy ARX Model
7.2.2 T-S Fuzzy Plus Tah Function Model
7.3 Improved GA based T-S Fuzzy ARX Model Optimization
7.3.1 Hybrid Encoding Method
7.3.2 Objectives of T-S Fuzzy Modeling
7.3.3 Operators of IGA for T-S Fuzzy Model
7.3.4 Optimization Procedure
7.3.5 Computing Complexity Analysis
7.3.6 Oxygen Content Modeling by Fuzzy ARX Model
7.4 IGA Based Fuzzy ARX Plus Tanh Function Model
7.4.1 Encoding of IGA for Fuzzy Neural Network
7.4.2 Operators of IGA for New Fuzzy Model
7.4.3 Liquid Level Modeling by Nonlinear Fuzzy Neural Network
7.5 Summary
References
8 PCA and GA Based ARX Plus RBF Modeling for Nonlinear DPS
8.1 Introduction
8.2 DPS Modeling Issue
8.2.1 Time/Space Separation via PCA
8.2.2 Decoupled ARX Model Identification
8.2.3 RBF Neural Network Modeling
8.2.4 Structure and Parameter Optimization by GA
8.2.5 Encoding Method
8.3 Simulation Results
8.3.1 Catalytic Rod
8.3.2 Heat Conduction Equation
8.4 Summary
References
9 GA-Based Controller Optimization Design
9.1 Introduction
9.2 Non-minimal State-Space Predictive Function PID Controller
9.2.1 Process Model Formulation
9.2.2 PID Controller Design
9.2.3 GA-Based Weighting Matrix Tuning
9.2.4 The Chamber Pressure Control by PFC-PID
9.3 RNA-GA-Based Fuzzy Neuron Hybrid Controller
9.3.1 Neuron Controller
9.3.2 Simple Fuzzy PI Control
9.3.3 Fuzzy Neuron Hybrid Control (FNHC)
9.3.4 Parameters Optimization of RNA-GA
9.3.5 Continuous Steel Casting Description
9.3.6 FNHC Controller Performance Analysis
9.4 Stabilization Subspaces Based MOGA for PID Controller Optimization
9.4.1 Generalized Hermite-Biehler Theorem
9.4.2 Hermite-Biehler Theorem Based PID Controller Stabilizing
9.4.3 Optimizing PID Controller Parameters Based on Stabilization Subspaces
9.4.4 Simulation for Optimization of PID Controllers
9.5 Summary
References
10 Further Idea on Optimal Q-Learning Fuzzy Energy Controller for FC/SC HEV
10.1 Introduction
10.2 FC/SC HEV System Description
10.3 Q-Learning Based Fuzzy Energy Management Controller
10.3.1 Fuzzy Energy Management Controller
10.3.2 Q-Learning in HEV Energy Control
10.3.3 GA Optimal Q-Learning Algorithm
10.3.4 Initial Value Optimization of Q-Table
10.3.5 Procedure of Improved Q-Learning Fuzzy EMS
10.3.6 Real-Time Energy Management
10.4 Summary
References


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