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一種基于混沌的非線性最優(yōu)化問(wèn)題:作業(yè)調(diào)度問(wèn)題(英文)

一種基于混沌的非線性最優(yōu)化問(wèn)題:作業(yè)調(diào)度問(wèn)題(英文)

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作 者: [埃],M.A.艾爾一薩爾巴吉
出版社: 哈爾濱工業(yè)大學(xué)出版社
叢編項(xiàng):
標(biāo) 簽: 暫缺

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ISBN: 9787576706789 出版時(shí)間: 2023-03-01 包裝: 平裝-膠訂
開本: 32開 頁(yè)數(shù): 字?jǐn)?shù):  

內(nèi)容簡(jiǎn)介

  本書展示了一種新的混合優(yōu)化方法來(lái)解決最重要的**化問(wèn)題之一——非線性**化問(wèn)題。本書共包含六章內(nèi)容,第一章提出了**化問(wèn)題的數(shù)學(xué)模型;第二章致力于介紹遺傳算法的工作原理,并解釋了遺傳算法是如何應(yīng)用到解**化問(wèn)題之中的;第三章提出了解非線性**化問(wèn)題的一個(gè)新算法;第四章提出了作業(yè)安排調(diào)度問(wèn)題的結(jié)構(gòu),引入了作業(yè)安排調(diào)度問(wèn)題的公式化;第五章的目的是實(shí)施解作業(yè)安排調(diào)度問(wèn)題的新方法,并解釋了它的細(xì)節(jié);第六章為結(jié)論以及給未來(lái)研究者的幾點(diǎn)建議。

作者簡(jiǎn)介

暫缺《一種基于混沌的非線性最優(yōu)化問(wèn)題:作業(yè)調(diào)度問(wèn)題(英文)》作者簡(jiǎn)介

圖書目錄

List of Figures
List of Tables
Abstract
CHAPTER 1: A Survey on Related Topoes
1.1 Introduction
1.2 Mathematical Model of Optimization Problems
1.3 Classification of optimization problems
1.3.1 Classification based on existence of constraints
1.3.2 Classification based on nature of the design variables
1.3.3 Classification based on physical structure of the problem
1.3.4 Classification based on nature of the equations involved
1.3.5 Classification based on permissible values of the design variables
1.3.6 Classification based on deterministic nature of the variables
1.3.7 Classification based on separability of the functions
1.3.8 Classification based on number of the objective functions
1.4 Optimization Techniques
1.4.1 Classical Optimization Techniques
1.4.1.1 Nonlinear Programming
1.4.2 Advanced Techniques
1.4.2.1 Genetic algorithm (GA)
1.4.2.2 Simulated annealing (SA)
1.4.2.3 Neural network optimization
1.4.2.4 Tabu search (TS)
1.4.2.5 Ant colony optimization (ACO)
1.4.2.6 Particle swarm optimization (PSO)
1.4.2.7 Harmony search (HS)
1.4.2.8 Artificial bee colony (ABC)
CHAPTER 2: Genetic Algorithm
2.1 Introduction
2.2 Working Principle of GA
2.3 Genetic algorithm procedure for optimization problems
2.3.1 Encoding
2.3.2 Initial Population
2.3.3 Evaluation
2.3.4 Create new population
2.3.4.1 Selection
2.3.4.2 Crossover
2.3.4.3 Mutation
2.3.5 Repair
2.3.6 Migration
2.3.7 Termination Test
2.4 Genetic algorithm Parameters
2.4.1 Crossover probability
2.4.2 Mutation probability(Pro)
2.4.3 Population Size
2.5 Advantages and disadvantages of GA
2.5.1 Advantages of GA
2.5.2 Disadvantages of GA
CHAPTER 3: A Chaos-based Evolutionary Algorithm for General Nonlinear Programming Problems
3.1 Introduction
3.2 Chaos Theory
3.3 Chaotic maps
3.4 The proposed algorithm
3.4.1 Phase I: GA
3.4.2 Phase II : Chaotic local search
3.5 Experimental results
3.5.1 Test function
3.5.1.1 Unconstrained benchmark problems
3.5.1.2 Constrained benchmark problems
3.5.2 Performance Analysis Using Different Chaotic Maps
3.5.3 Performance Analysis using logistic map
3.5.4 Speed Convergence analysis
3.6 Conclusion
CHAPTER 4: Job Shop Scheduling Problems
4.1 Introduction
4.2 Scheduling Problem Types
4.3 Job shop scheduling problem structure
4.4 Job shop scheduling problem formulation
4.4.1 Mathematical representation of JSSP
4.4.2 Disjunctive graph
4.4.3 Gantt-Chart
4.5 Complexity of JSSP
4.6 Job shop scheduling solving techniques
4.6.1 Exact techniques
4.6.1.1 Mathematical techniques
4.6.1.2 Enumerative techniques
4.6.1.3 Decomposition strategies
4.6.2 Approximate techniques
4.6.2.1 Constructive Methods
4.6.2.2 Insertion Algorithms
4.6.2.3 Evolutionary Methods
4.6.2.4 Local Search Techniques
CHAPTER 5: Hybrid Genetic Algorithm for Job Shop Scheduling Problems
5.1 Introduction
5.2 The proposed algorithm (HGA)
5.2.1 Phase I: GA
5.2.2 Phase II: Local search
5.3 Experimental Results
5.3.1 Test Problems
5.3.2 Results and discnssion
5.4 Conclusion
CHAPTER 6: Conclusions and Future Work
6.1 Conclusions
6.2 Future Work
Bibliography
編輯手記

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