Linked e-resources

Details

Intro
Preface
Contents
1 Fundamentals of Metaheuristic Computation
1.1 Formulation of an Optimization Problem
1.2 Classical Optimization Methods
1.3 Metaheuristic Computation Schemes
1.4 Generic Structure of a Metaheuristic Method
References
2 A Comparative Approach for Two-Dimensional Digital IIR Filter Design Applying Different Evolutionary Computational Techniques
2.1 Introduction
2.2 Evolutionary Computation Algorithms
2.2.1 Particle Swarm Optimization (PSO)
2.2.2 Artificial Bee Colony (ABC)
2.2.3 Differential Evolution (DE)

2.2.4 Harmony Search (HS)
2.2.5 Gravitational Search Algorithm (GSA)
2.2.6 Flower Pollination Algorithm (FPA)
2.3 2D-IIR Filter Design Procedure
2.3.1 Comparative Parameter Setting
2.4 Experimental Results
2.4.1 Accuracy Comparison
2.4.2 Convergence Study
2.4.3 Computational Cost
2.4.4 Comparison with Different Bandwidth Sizes
2.4.5 Filter Performance Features
2.4.6 Statistical Non-parametrical Analysis
2.4.7 Filter Design Study in Images
2.5 Conclusions
References
3 Comparison of Metaheuristics for Chaotic Systems Estimation
3.1 Introduction

3.2 Evolutionary Computation Techniques (ECT)
3.2.1 Particle Swarm Optimization (PSO)
3.2.2 Artificial Bee Colony (ABC)
3.2.3 Cuckoo Search (CS)
3.2.4 Harmony Search (HS)
3.2.5 Differential Evolution (DE)
3.2.6 Gravitational Search Algorithm (GSA)
3.3 Parameter Estimation for Chaotic Systems (CS)
3.4 Experimental Results
3.4.1 Chaotic System Parameter Estimation
3.4.2 Statistical Analysis
3.5 Conclusions
References
4 Comparison Study of Novel Evolutionary Algorithms for Elliptical Shapes in Images
4.1 Introduction
4.2 Problem Definition

4.2.1 Multiple Ellipse Detection
4.3 Evolutionary Optimization Techniques
4.3.1 Grey Wolf Optimizer (GWO) Algorithm
4.3.2 Whale Optimizer Algorithm (WOA)
4.3.3 Crow Search Algorithm (CSA)
4.3.4 Gravitational Search Algorithm (GSA)
4.3.5 Cuckoo Search (CS) Method
4.4 Comparative Perspective of the Five Metaheuristic Methods
4.5 Experimental Simulation Results
4.5.1 Performance Metrics
4.5.2 Experimental Comparison Study
4.6 Conclusions
References
5 IIR System Identification Using Several Optimization Techniques: A Review Analysis
5.1 Introduction

5.2 Evolutionary Computation (EC) Algorithms
5.2.1 Particle Swarm Optimization (PSO)
5.2.2 The Artificial Bee Colony (ABC)
5.2.3 The Electromagnetism-Like (EM) Technique
5.2.4 Cuckoo Search (CS) Technique
5.2.5 Flower Pollination Algorithm (FPA)
5.3 Formulation of IIR Model Identification
5.4 Experimental Results
5.4.1 Results of IIR Model Identification
5.4.2 Statistical Study
5.5 Conclusions
References
6 Fractional-Order Estimation Using via Locust Search Algorithm
6.1 Introduction
6.2 Fractional Calculus
6.3 Locust Search (LS) Algorithm

Browse Subjects

Show more subjects...

Statistics

from
to
Export