menu
{ "item_title" : "Advanced Optimization by Nature-Inspired Algorithms", "item_author" : [" Omid Bozorg-Haddad "], "item_description" : "Chapter 1: Overview of OptimizationSummaryThis chapter briefly explains optimization and its basic concepts. Also, examples of the different types of engineering optimization problems are presented in this chapter.1.1 Optimization1.2 Examples of engineering optimization problems1.3 Conclusion Chapter 2: Introduction to Meta-heuristic and Evolutionary AlgorithmsSummaryThis chapter begins with a brief review of different independent-problem methods for searching the decision space, describes the components of meta-heuristic and evolutionary algorithms by relating them to engineering optimization problems. Other related topics such as coding meta-heuristic and evolutionary algorithms, dealing with constraints, objective functions, solution strategies, are reviewed. A general algorithm is presented that encompasses most of the steps of all known meta-heuristic and evolutionary algorithms. This generic presentation provides a standard reference with which to compare all the known meta-heuristic and evolutionary algorithms. The chapter closes with the performance evaluation of the meta-heuristic and evolutionary algorithms covered by the book.2.1 Searching decision space for optima2.2 Definition of terms related meta-heuristic and evolutionary algorithms2.3 Foundation of meta-heuristic and evolutionary algorithms2.4 Classification of meta-heuristic and evolutionary algorithms2.5 Coding meta-heuristic and evolutionary algorithms in both discrete and continuous domains2.6 Generating random values2.7 Dealing with constraints2.8 Fitness functions2.9 Selection of decision variables, parameters2.10 Generating new solutions2.11 The best solution2.12 Termination criteria2.13 General algorithm2.14 Performance evaluation of meta-heuristic and evolutionary algorithms2.15 Conclusion Chapter 3: Pattern Search (PS)SummaryThis chapter explains the pattern search (PS) algorithm, which is classified as a direct search method. The chapter starts with a brief literature review of the development of PS, important modification of the algorithm, and its applications to engineering domains. The basic idea underlying the algorithm is presented and mapped to its mathematical statement. Afterwards, the different steps of the algorithm are described in detail. A pseudo code of the algorithm is presented that serves as an easy and sufficient guideline for coding the algorithm.3.1 Introduction3.2 Pattern search (PS) foundation3.3 Generating initial solution3.4 Generate trial solutions3.5 Update mesh size3.6 Termination criteria3.7 User-defined parameters of the PS3.8 Pseudo code of the PS3.9 Conclusion3.10 References Chapter 4: The Genetic Algorithm (GA)SummaryThis chapter describes the genetic algorithm (GA), which is a well-known evolutionary algorithm. The chapter starts with a brief literature review of the GA's development, followed by presentation of the modification that it has experienced, and its applications in engineering domains. The basic idea underlying the algorithm is presented and mapped to its mathematical statement. Afterwards, the different steps of the algorithm are described in detail. A pseudo code of the algorithm is presented that serves as an easy and sufficient guideline for coding the algorithm.4.1 Introduction4.2 Mapping natural evolution into genetic algorithm (GA)4.3 Creating the initial population4.4 Selection of decision variables, parameters4.4.1. Proportionate selection4.4.2. Ranking selection4.4.3. Tournament selection4.5 Reproduction4.6 Population diversity and selective pressure4.7 T", "item_img_path" : "https://covers4.booksamillion.com/covers/bam/9/81/135/345/981135345X_b.jpg", "price_data" : { "retail_price" : "99.99", "online_price" : "99.99", "our_price" : "99.99", "club_price" : "99.99", "savings_pct" : "0", "savings_amt" : "0.00", "club_savings_pct" : "0", "club_savings_amt" : "0.00", "discount_pct" : "10", "store_price" : "" } }
Advanced Optimization by Nature-Inspired Algorithms|Omid Bozorg-Haddad

Advanced Optimization by Nature-Inspired Algorithms

local_shippingShip to Me
In Stock.
FREE Shipping for Club Members help

Overview

Chapter 1: Overview of Optimization
Summary
This chapter briefly explains optimization and its basic concepts. Also, examples of the different types of engineering optimization problems are presented in this chapter.
1.1 Optimization
1.2 Examples of engineering optimization problems
1.3 Conclusion Chapter 2: Introduction to Meta-heuristic and Evolutionary Algorithms
Summary
This chapter begins with a brief review of different independent-problem methods for searching the decision space, describes the components of meta-heuristic and evolutionary algorithms by relating them to engineering optimization problems. Other related topics such as coding meta-heuristic and evolutionary algorithms, dealing with constraints, objective functions, solution strategies, are reviewed. A general algorithm is presented that encompasses most of the steps of all known meta-heuristic and evolutionary algorithms. This generic presentation provides a standard reference with which to compare all the known meta-heuristic and evolutionary algorithms. The chapter closes with the performance evaluation of the meta-heuristic and evolutionary algorithms covered by the book.
2.1 Searching decision space for optima
2.2 Definition of terms related meta-heuristic and evolutionary algorithms
2.3 Foundation of meta-heuristic and evolutionary algorithms
2.4 Classification of meta-heuristic and evolutionary algorithms
2.5 Coding meta-heuristic and evolutionary algorithms in both discrete and continuous domains
2.6 Generating random values
2.7 Dealing with constraints
2.8 Fitness functions
2.9 Selection of decision variables, parameters
2.10 Generating new solutions
2.11 The best solution
2.12 Termination criteria
2.13 General algorithm
2.14 Performance evaluation of meta-heuristic and evolutionary algorithms
2.15 Conclusion Chapter 3: Pattern Search (PS)
Summary
This chapter explains the pattern search (PS) algorithm, which is classified as a direct search method. The chapter starts with a brief literature review of the development of PS, important modification of the algorithm, and its applications to engineering domains. The basic idea underlying the algorithm is presented and mapped to its mathematical statement. Afterwards, the different steps of the algorithm are described in detail. A pseudo code of the algorithm is presented that serves as an easy and sufficient guideline for coding the algorithm.
3.1 Introduction
3.2 Pattern search (PS) foundation
3.3 Generating initial solution
3.4 Generate trial solutions
3.5 Update mesh size
3.6 Termination criteria
3.7 User-defined parameters of the PS
3.8 Pseudo code of the PS
3.9 Conclusion
3.10 References Chapter 4: The Genetic Algorithm (GA)
Summary
This chapter describes the genetic algorithm (GA), which is a well-known evolutionary algorithm. The chapter starts with a brief literature review of the GA's development, followed by presentation of the modification that it has experienced, and its applications in engineering domains. The basic idea underlying the algorithm is presented and mapped to its mathematical statement. Afterwards, the different steps of the algorithm are described in detail. A pseudo code of the algorithm is presented that serves as an easy and sufficient guideline for coding the algorithm.
4.1 Introduction
4.2 Mapping natural evolution into genetic algorithm (GA)
4.3 Creating the initial population
4.4 Selection of decision variables, parameters
4.4.1. Proportionate selection
4.4.2. Ranking selection
4.4.3. Tournament selection
4.5 Reproduction
4.6 Population diversity and selective pressure4.7 T

This item is Non-Returnable

Details

  • ISBN-13: 9789811353451
  • ISBN-10: 981135345X
  • Publisher: Springer
  • Publish Date: December 2018
  • Dimensions: 9.21 x 6.14 x 0.38 inches
  • Shipping Weight: 0.56 pounds
  • Page Count: 159

Related Categories

You May Also Like...

    1

BAM Customer Reviews