Produktbild: Optimization Techniques for Solving Complex Problems

Optimization Techniques for Solving Complex Problems

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Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

01.03.2009

Herausgeber

Enrique Alba + weitere

Verlag

John Wiley & Sons

Seitenzahl

504

Maße (L/B/H)

24/16,1/3,1 cm

Gewicht

915 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-0-470-29332-4

Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

01.03.2009

Herausgeber

Verlag

John Wiley & Sons

Seitenzahl

504

Maße (L/B/H)

24/16,1/3,1 cm

Gewicht

915 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-0-470-29332-4

Herstelleradresse

Libri GmbH
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

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  • Produktbild: Optimization Techniques for Solving Complex Problems
  • Contributors xv

    Foreword xix

    Preface xxi

    Part I Methodologies for Complex Problem Solving 1

    1 Generating Automatic Projections by Means of Genetic Programming 3
    C. Estébanez and R. Aler

    1.1 Introduction 3

    1.2 Background 4

    1.3 Domains 6

    1.4 Algorithmic Proposal 6

    1.5 Experimental Analysis 9

    1.6 Conclusions 11

    References 13

    2 Neural Lazy Local Learning 15
    J. M. Valls, I. M. Galván, and P. Isasi

    2.1 Introduction 15

    2.2 Lazy Radial Basis Neural Networks 17

    2.3 Experimental Analysis 22

    2.4 Conclusions 28

    References 30

    3 Optimization Using Genetic Algorithms with Micropopulations 31
    Y. Sáez

    3.1 Introduction 31

    3.2 Algorithmic Proposal 33

    3.3 Experimental Analysis: The Rastrigin Function 40

    3.4 Conclusions 44

    References 45

    4 Analyzing Parallel Cellular Genetic Algorithms 49
    G. Luque, E. Alba, and B. Dorronsoro

    4.1 Introduction 49

    4.2 Cellular Genetic Algorithms 50

    4.3 Parallel Models for cGAs 51

    4.4 Brief Survey of Parallel cGAs 52

    4.5 Experimental Analysis 55

    4.6 Conclusions 59

    References 59

    5 Evaluating New Advanced Multiobjective Metaheuristics 63
    A. J. Nebro, J. J. Durillo, F. Luna, and E. Alba

    5.1 Introduction 63

    5.2 Background 65

    5.3 Description of the Metaheuristics 67

    5.4 Experimental Methodology 69

    5.5 Experimental Analysis 72

    5.6 Conclusions 79

    References 80

    6 Canonical Metaheuristics for Dynamic Optimization Problems 83
    G. Leguizamón, G. Ordóñez, S. Molina, and E. Alba

    6.1 Introduction 83

    6.2 Dynamic Optimization Problems 84

    6.3 Canonical MHs for DOPs 88

    6.4 Benchmarks 92

    6.5 Metrics 93

    6.6 Conclusions 95

    References 96

    7 Solving Constrained Optimization Problems with Hybrid Evolutionary Algorithms 101
    C. Cotta and A. J. Fernández

    7.1 Introduction 101

    7.2 Strategies for Solving CCOPs with HEAs 103

    7.3 Study Cases 105

    7.4 Conclusions 114

    References 115

    8 Optimization of Time Series Using Parallel, Adaptive, and Neural Techniques 123
    J. A. Gómez, M. D. Jaraiz, M. A. Vega, and J. M. Sánchez

    8.1 Introduction 123

    8.2 Time Series Identification 124

    8.3 Optimization Problem 125

    8.4 Algorithmic Proposal 130

    8.5 Experimental Analysis 132

    8.6 Conclusions 136

    References 136

    9 Using Reconfigurable Computing for the Optimization of Cryptographic Algorithms 139
    J. M. Granado, M. A. Vega, J. M. Sánchez, and J. A. Gómez

    9.1 Introduction 139

    9.2 Description of the Cryptographic Algorithms 140

    9.3 Implementation Proposal 144

    9.4 Expermental Analysis 153

    9.5 Conclusions 154

    References 155

    10 Genetic Algorithms, Parallelism, and Reconfigurable Hardware 159
    J. M. Sánchez, M. Rubio, M. A. Vega, and J. A. Gómez

    10.1 Introduction 159

    10.2 State of the Art 161

    10.3 FPGA Problem Description and Solution 162

    10.4 Algorithmic Proposal 169

    10.5 Experimental Analysis 172

    10.6 Conclusions 177

    References 177

    11 Divide and Conquer: Advanced Techniques 179
    C. León, G. Miranda, and C. Rodríguez

    11.1 Introduction 179

    11.2 Algorithm of the Skeleton 180

    11.3 Experimental Analysis 185

    11.4 Conclusions 189

    References 190

    12 Tools for Tree Searches: Branch-and-Bound and A¿ Algorithms 193
    C. León, G. Miranda, and C. Rodríguez

    12.1 Introduction 193

    12.2 Background 195

    12.3 Algorithmic Skeleton for Tree Searches 196

    12.4 Experimentation Methodology 199

    12.5 Experimental Results 202

    12.6 Conclusions 205

    References 206

    13 Tools for Tree Searches: Dynamic Programming 209
    C. León, G. Miranda, and C. Rodríguez

    13.1 Introduction 209

    13.2 Top-Down Approach 210

    13.3 Bottom-Up Approach 212

    13.4 Automata Theory and Dynamic Programming 215

    13.5 Parallel Algorithms 223

    13.6 Dynamic Programming Heuristics 225

    13.7 Conclusions 228

    References 229

    Part II Applications 231

    14 Automatic Search of Behavior Strategies in Auctions 233
    D. Quintana and A. Mochón

    14.1 Introduction 233

    14.2 Evolutionary Techniques in Auctions 234

    14.3 Theoretical Framework: The Ausubel Auction 238

    14.4 Algorithmic Proposal 241

    14.5 Experimental Analysis 243

    14.6 Conclusions 246

    References 247

    15 Evolving Rules for Local Time Series Prediction 249
    C. Luque, J. M. Valls, and P. Isasi

    15.1 Introduction 249

    15.2 Evolutionary Algorithms for Generating Prediction Rules 250

    15.3 Experimental Methodology 250

    15.4 Experiments 256

    15.5 Conclusions 262

    References 263

    16 Metaheuristics in Bioinformatics: DNA Sequencing and Reconstruction 265
    C. Cotta, A. J. Fernández, J. E. Gallardo, G. Luque, and E. Alba

    16.1 Introduction 265

    16.2 Metaheuristics and Bioinformatics 266

    16.3 DNA Fragment Assembly Problem 270

    16.4 Shortest Common Supersequence Problem 278

    16.5 Conclusions 282

    References 283

    17 Optimal Location of Antennas in Telecommunication Networks 287
    G. Molina, F. Chicano, and E. Alba

    17.1 Introduction 287

    17.2 State of the Art 288

    17.3 Radio Network Design Problem 292

    17.4 Optimization Algorithms 294

    17.5 Basic Problems 297

    17.6 Advanced Problem 303

    17.7 Conclusions 305

    References 306

    18 Optimization of Image-Processing Algorithms Using FPGAs 309
    M. A. Vega, A. Gómez, J. A. Gómez, and J. M. Sánchez

    18.1 Introduction 309

    18.2 Background 310

    18.3 Main Features of FPGA-Based Image Processing 311

    18.4 Advanced Details 312

    18.5 Experimental Analysis: Software Versus FPGA 321

    18.6 Conclusions 322

    References 323

    19 Application of Cellular Automata Algorithms to the Parallel Simulation of Laser Dynamics 325
    J. L. Guisado, F. Jiménez-Morales, J. M. Guerra, and F. Fernández

    19.1 Introduction 325

    19.2 Background 326

    19.3 Laser Dynamics Problem 328

    19.4 Algorithmic Proposal 329

    19.5 Experimental Analysis 331

    19.6 Parallel Implementation of the Algorithm 336

    19.7 Conclusions 344

    References 344

    20 Dense Stereo Disparity from an Artificial Life Standpoint 347
    G. Olague, F. Fernández, C. B. Pérez, and E. Lutton

    20.1 Introduction 347

    20.2 Infection Algorithm with an Evolutionary Approach 351

    20.3 Experimental Analysis 360

    20.4 Conclusions 363

    References 363

    21 Exact, Metaheuristic, and Hybrid Approaches to Multidimensional Knapsack Problems 365
    J. E. Gallardo, C. Cotta, and A. J. Fernández

    21.1 Introduction 365

    21.2 Multidimensional Knapsack Problem 370

    21.3 Hybrid Models 372

    21.4 Experimental Analysis 377

    21.5 Conclusions 379

    References 380

    22 Greedy Seeding and Problem-Specific Operators for Gas Solution of Strip Packing Problems 385
    C. Salto, J. M. Molina, and E. Alba

    22.1 Introduction 385

    22.2 Background 386

    22.3 Hybrid GA for the 2SPP 387

    22.4 Genetic Operators for Solving the 2SPP 388

    22.5 Initial Seeding 390

    22.6 Implementation of the Algorithms 391

    22.7 Experimental Analysis 392

    22.8 Conclusions 403

    References 404

    23 Solving the KCT Problem: Large-Scale Neighborhood Search and Solution Merging 407
    C. Blum and M. J. Blesa

    23.1 Introduction 407

    23.2 Hybrid Algorithms for the KCT Problem 409

    23.3 Experimental Analysis 415

    23.4 Conclusions 416

    References 419

    24 Experimental Study of GA-Based Schedulers in Dynamic Distributed Computing Environments 423
    F. Xhafa and J. Carretero

    24.1 Introduction 423

    24.2 Related Work 425

    24.3 Independent Job Scheduling Problem 426

    24.4 Genetic Algorithms for Scheduling in Grid Systems 428

    24.5 Grid Simulator 429

    24.6 Interface for Using a GA-Based Scheduler with the Grid Simulator 432

    24.7 Experimental Analysis 433

    24.8 Conclusions 438

    References 439

    25 Remote Optimization Service 443
    J. García-Nieto, F. Chicano, and E. Alba

    25.1 Introduction 443

    25.2 Background and State of the Art 444

    25.3 ROS Architecture 446

    25.4 Information Exchange in ROS 448

    25.5 XML in ROS 449

    25.6 Wrappers 450

    25.7 Evaluation of ROS 451

    25.8 Conclusions 454

    References 455

    26 Remote Services for Advanced Problem Optimization 457
    J. A. Gómez, M. A. Vega, J. M. Sánchez, J. L. Guisado, D. Lombraña, and F. Fernández

    26.1 Introduction 457

    26.2 SIRVA 458

    26.3 MOSET and TIDESI 462

    26.4 ABACUS 465

    References 470

    Index 473