Metaheuristic computation with MATLAB® / Erik Cuevas, Alma Rodríguez.

Cuevas, Erik
Call Number
519.6
Author
Cuevas, Erik, author.
Title
Metaheuristic computation with MATLAB® / Erik Cuevas, Alma Rodríguez.
Edition
First edition.
Physical Description
1 online resource (xx, 260 pages) : illustrations
Contents
Preface. Acknowledgments. Authors. Chapter 1 Introduction and Main Concepts. Chapter 2 Genetic Algorithms (GA). Chapter 3 Evolutionary Strategies (ES). Chapter 4 Moth-Flame Optimization (MFO) Algorithm. Chapter 5 Differential Evolution (DE). Chapter 6 Particle Swarm Optimization (PSO) Algorithm. Chapter 7 Artificial Bee Colony (ABC) Algorithm. Chapter 8 Cuckoo Search (CS) Algorithm. Chapter 9 Metaheuristic Multimodal Optimization. Index.
Summary
Metaheuristic algorithms are considered as generic optimization tools that can solve very complex problems characterized by having very large search spaces. Metaheuristic methods reduce the effective size of the search space through the use of effective search strategies. Book Features: Provides a unified view of the most popular metaheuristic methods currently in use Includes the necessary concepts to enable readers to implement and modify already known metaheuristic methods to solve problems Covers design aspects and implementation in MATLAB® Contains numerous examples of problems and solutions that demonstrate the power of these methods of optimization The material has been written from a teaching perspective and, for this reason, this book is primarily intended for undergraduate and postgraduate students of artificial intelligence, metaheuristic methods, and/or evolutionary computation. The objective is to bridge the gap between metaheuristic techniques and complex optimization problems that profit from the convenient properties of metaheuristic approaches. Therefore, engineer practitioners who are not familiar with metaheuristic computation will appreciate that the techniques discussed are beyond simple theoretical tools, since they have been adapted to solve significant problems that commonly arise in such areas.
Added Author
Rodríguez, Alma, author.
Subject
Metaheuristics.
MATHEMATICAL OPTIMIZATION.
COMPUTERS / Computer Engineering
COMPUTERS / Machine Theory
COMPUTERS / Computer Science
Multimedia
Total Ratings: 0
No records found to display.
 
 
 
03931cam a2200601Ki 4500
001
 
 
vtls001592480
003
 
 
VRT
005
 
 
20220808223100.0
006
 
 
m     o  d       
007
 
 
cr cnu|||unuuu
008
 
 
220808s2021    flua    ob    000 0 eng d
020
$a 9781003006312 $q (electronic bk.)
020
$a 1003006310 $q (electronic bk.)
020
$z 9780367523800
020
$a 9781000096521 $q (electronic bk. : Mobipocket)
020
$a 1000096521 $q (electronic bk. : Mobipocket)
020
$z 9780367438869
020
$a 9781000096514 $q (electronic bk. : PDF)
020
$a 1000096513 $q (electronic bk. : PDF)
020
$a 9781000096538 $q (electronic bk. : EPUB)
020
$a 100009653X $q (electronic bk. : EPUB)
035
$a (OCoLC)1197637612
035
$a (OCoLC-P)1197637612
035
$a (FlBoTFG)9781003006312
039
9
$a 202208082231 $b santha $y 202206301324 $z santha
040
$a OCoLC-P $b eng $e rda $e pn $c OCoLC-P
050
4
$a QA76.9.A43
072
7
$a COM $x 059000 $2 bisacsh
072
7
$a COM $x 037000 $2 bisacsh
072
7
$a COM $x 014000 $2 bisacsh
072
7
$a UMB $2 bicssc
082
0
4
$a 519.6 $2 23
100
1
$a Cuevas, Erik, $e author.
245
1
0
$a Metaheuristic computation with MATLAB® / $c Erik Cuevas, Alma Rodríguez.
250
$a First edition.
264
1
$a Boca Raton, FL : $b Chapman and Hall/CRC, $c 2021.
300
$a 1 online resource (xx, 260 pages) : $b illustrations
336
$a text $b txt $2 rdacontent
337
$a computer $b c $2 rdamedia
338
$a online resource $b cr $2 rdacarrier
505
0
$a Preface. Acknowledgments. Authors. Chapter 1 Introduction and Main Concepts. Chapter 2 Genetic Algorithms (GA). Chapter 3 Evolutionary Strategies (ES). Chapter 4 Moth-Flame Optimization (MFO) Algorithm. Chapter 5 Differential Evolution (DE). Chapter 6 Particle Swarm Optimization (PSO) Algorithm. Chapter 7 Artificial Bee Colony (ABC) Algorithm. Chapter 8 Cuckoo Search (CS) Algorithm. Chapter 9 Metaheuristic Multimodal Optimization. Index.
520
$a Metaheuristic algorithms are considered as generic optimization tools that can solve very complex problems characterized by having very large search spaces. Metaheuristic methods reduce the effective size of the search space through the use of effective search strategies. Book Features: Provides a unified view of the most popular metaheuristic methods currently in use Includes the necessary concepts to enable readers to implement and modify already known metaheuristic methods to solve problems Covers design aspects and implementation in MATLAB® Contains numerous examples of problems and solutions that demonstrate the power of these methods of optimization The material has been written from a teaching perspective and, for this reason, this book is primarily intended for undergraduate and postgraduate students of artificial intelligence, metaheuristic methods, and/or evolutionary computation. The objective is to bridge the gap between metaheuristic techniques and complex optimization problems that profit from the convenient properties of metaheuristic approaches. Therefore, engineer practitioners who are not familiar with metaheuristic computation will appreciate that the techniques discussed are beyond simple theoretical tools, since they have been adapted to solve significant problems that commonly arise in such areas.
588
$a OCLC-licensed vendor bibliographic record.
630
0
0
$a MATLAB.
650
0
$a Metaheuristics.
650
0
$a MATHEMATICAL OPTIMIZATION.
650
7
$a COMPUTERS / Computer Engineering $2 bisacsh
650
7
$a COMPUTERS / Machine Theory $2 bisacsh
650
7
$a COMPUTERS / Computer Science $2 bisacsh
700
1
$a Rodríguez, Alma, $e author.
856
4
0
$3 Taylor & Francis $u https://www.taylorfrancis.com/books/9781003006312
856
4
2
$3 OCLC metadata license agreement $u http://www.oclc.org/content/dam/oclc/forms/terms/vbrl-201703.pdf
999
$a VIRTUA               
No Reviews to Display
Summary
Metaheuristic algorithms are considered as generic optimization tools that can solve very complex problems characterized by having very large search spaces. Metaheuristic methods reduce the effective size of the search space through the use of effective search strategies. Book Features: Provides a unified view of the most popular metaheuristic methods currently in use Includes the necessary concepts to enable readers to implement and modify already known metaheuristic methods to solve problems Covers design aspects and implementation in MATLAB® Contains numerous examples of problems and solutions that demonstrate the power of these methods of optimization The material has been written from a teaching perspective and, for this reason, this book is primarily intended for undergraduate and postgraduate students of artificial intelligence, metaheuristic methods, and/or evolutionary computation. The objective is to bridge the gap between metaheuristic techniques and complex optimization problems that profit from the convenient properties of metaheuristic approaches. Therefore, engineer practitioners who are not familiar with metaheuristic computation will appreciate that the techniques discussed are beyond simple theoretical tools, since they have been adapted to solve significant problems that commonly arise in such areas.
Contents
Preface. Acknowledgments. Authors. Chapter 1 Introduction and Main Concepts. Chapter 2 Genetic Algorithms (GA). Chapter 3 Evolutionary Strategies (ES). Chapter 4 Moth-Flame Optimization (MFO) Algorithm. Chapter 5 Differential Evolution (DE). Chapter 6 Particle Swarm Optimization (PSO) Algorithm. Chapter 7 Artificial Bee Colony (ABC) Algorithm. Chapter 8 Cuckoo Search (CS) Algorithm. Chapter 9 Metaheuristic Multimodal Optimization. Index.
Subject
Metaheuristics.
MATHEMATICAL OPTIMIZATION.
COMPUTERS / Computer Engineering
COMPUTERS / Machine Theory
COMPUTERS / Computer Science
Multimedia