Produktbild: Optimization in Sustainable Energy

Optimization in Sustainable Energy Methods and Applications

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Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

02.07.2025

Herausgeber

Prasenjit Chatterjee + weitere

Verlag

John Wiley & Sons

Seitenzahl

528

Maße (L/B/H)

23,3/15,7/3,3 cm

Gewicht

1176 g

Sprache

Englisch

ISBN

978-1-394-24210-8

Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

02.07.2025

Herausgeber

Verlag

John Wiley & Sons

Seitenzahl

528

Maße (L/B/H)

23,3/15,7/3,3 cm

Gewicht

1176 g

Sprache

Englisch

ISBN

978-1-394-24210-8

Herstelleradresse

Libri GmbH
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

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  • Produktbild: Optimization in Sustainable Energy
  • Preface xvii

    Acknowledgment xxi

    Part I: Multi-Criteria Optimization and Strategic Planning in Sustainable Energy 1

    1 Strategic Roadmap for Turkey's Sustainable Energy Transition: A Multi-Criteria Perspective 3
    Gülay Demir and Prasenjit Chatterjee

    1.1 Introduction 4

    1.1.1 Research Goals 5

    1.1.1.1 Research Questions 5

    1.1.1.2 Contributions and Novelty 6

    1.1.1.3 Organization of the Chapter 6

    1.2 Literature Review 6

    1.2.1 MCDM Research on Renewable Energy 7

    1.2.2 Studies Used WENSLO and RAWEC Methods 8

    1.2.3 Research Gaps 8

    1.3 Methodology for Research 8

    1.3.1 WENSLO Method for Criteria Prioritization 9

    1.3.2 RAWEC Method to Rank Alternatives 11

    1.3.2.1 Case Study 12

    1.4 Results 14

    1.4.1 Application of WENSLO Method 14

    1.4.2 Application of the RAWEC Method 17

    1.4.3 Sensitivity Analysis 17

    1.4.3.1 Sensitivity Analysis Based on Changes in Criteria Weights 17

    1.4.3.2 Comparison With Other MCDM Methods 20

    1.5 Discussion, Practical and Managerial Implications 21

    1.6 Conclusions, Limitations, and Future Directions 21

    References 23

    2 A Novel p, q-Quasirung Orthopair Fuzzy Group Decision-Making Framework for Selection of Renewable Energy Sources 27
    Sanjib Biswas, Gülay Demir and Prasenjit Chatterjee

    2.1 Introduction 28

    2.2 Literature Review 30

    2.2.1 Research Gaps 31

    2.2.2 Research Objectives 31

    2.3 Preliminary Concepts: p, q-QOFS 32

    2.4 Fairly Operations and p, q-QOFS Weighted Fairly Aggregation 35

    2.5 Materials and Methods 42

    2.5.1 Theoretical Framework: Selection of Criteria 43

    2.5.2 Expert Group 44

    2.5.3 Methodological Framework 45

    2.5.3.1 Stages in the Methodological Framework 45

    2.5.3.2 Procedural Steps 45

    2.6 Findings 50

    2.7 Discussions 56

    2.8 Conclusion and Future Scope 58

    References 59

    Appendix A 64

    3 Evaluating Carbon Footprint Reduction Strategies: A Fuzzy Multi-Criteria Decision-Making Approach 69
    Gülay Demir and Prasenjit Chatterjee

    3.1 Introduction 70

    3.1.1 Purpose and Importance of the Study 72

    3.1.2 Research Questions 73

    3.1.3 Contributions 74

    3.1.4 Research Gaps 76

    3.2 Literature Review 78

    3.2.1 Carbon Footprint Assessment and MCDM Methods 78

    3.2.2 Studies with WENSLO and RAWEC Methods 80

    3.3 Research Methodology 81

    3.3.1 Fundamentals of FST 81

    3.3.2 F-WENSLO Method for Prioritization of Criteria Affecting Strategies 82

    3.3.3 F-RAWEC Method for Ranking Strategies 85

    3.4 Case Study 87

    3.4.1 Identification and Explanation of Criteria 87

    3.4.2 Carbon Footprint Reduction Strategies 87

    3.4.3 Data Collection and Analysis 87

    3.4.4 Determining Subjective Weights Using F-WENSLO Method 93

    3.4.5 Results of F-RAWEC Application 103

    3.5 Insights, Applications, and Managerial Implications 105

    3.5.1 Analysis of Rankings 105

    3.5.2 Application Implications 106

    3.5.3 Managerial Implications 107

    3.6 Conclusions, Limitations, and Future Directions 108

    References 110

    4 Prioritizing Sustainable Energy Strategies Using Multi-Criteria Decision-Making Models in Type-2 Neutrosophic Environment 113
    Ömer Faruk Görçün, Hande Küçükönder and Ahmet Çal¿k

    4.1 Introduction 114

    4.2 The Research Background 116

    4.2.1 Common Findings in the Literature 124

    4.2.2 Trends in the Literature 125

    4.2.3 Current State of the Literature 125

    4.2.4 Research and Theoretical Gaps 126

    4.2.5 Motivations and Objectives of the Study 128

    4.3 The Suggested Model 129

    4.3.1 Preliminaries on Neutrosophic Sets 129

    4.3.2 Identifying the Experts' Reputation 132

    4.3.3 Identifying the Criteria Weights 135

    4.3.3.1 Determining the Subjective Weights of the Criteria 135

    4.3.3.2 Identifying the Objective Weights of the Criteria 136

    4.3.3.3 Associating the Subjective and Objective Weights 139

    4.3.4 Ranking the Alternatives 139

    4.4 Implementing the Model to Identify the Best Sustainable Energy Strategy 142

    4.4.1 The Preparation Process 142

    4.4.1.1 Description of the Problem 142

    4.4.1.2 Forming the Board of Experts 143

    4.4.1.3 Identifying the Criteria and Alternatives 145

    4.4.2 Determining the Weights of the Criteria 153

    4.4.3 Ranking the Alternatives 167

    4.5 Results and Discussions 167

    4.5.1 Rank and Influence of the Criteria 168

    4.5.2 Sustainable Energy Strategies and Their Ranking 168

    4.5.3 Importance, Influence, and Impacts of Results 170

    4.5.4 Novelties, Managerial, and Policy Implications 170

    4.5.5 Theoretical Contributions of the Decision-Making Model 171

    4.6 Conclusions and Future Research Direction 171

    References 172

    5 ENTROPY-Based Evaluation of Global Renewable Energy Trends 183
    Rahim Arslan

    5.1 Introduction 183

    5.2 Renewable Energy Concepts 185

    5.3 World Countries and Türkiye in Clean Energy 187

    5.4 Evaluation of Renewable Energy Resources Using MCDM Methods 189

    5.5 ENTROPY Method 189

    5.6 Case Study 192

    5.6.1 Renewable Energy Weights According to Installed Capacity 193

    5.7 Conclusions 204

    References 205

    Part II: Optimization Techniques in Sustainable Energy 207

    6 Optimization in Sustainable Energy: A Bibliometric Analysis 209
    Rajeev Ranjan, Sonu Rajak, Prasenjit Chatterjee and Divesh Chauhan

    6.1 Introduction 210

    6.1.1 Types of Sustainable Energy 211

    6.2 Optimization in Sustainable Energy 212

    6.2.1 Role of Optimization in Sustainable Energy 213

    6.2.2 Bibliometric Analysis 214

    6.2.3 Research Gaps and Research Questions 216

    6.3 Materials and Methods 217

    6.4 The Optimization Results in Sustainable Energy by Bibliometric Analysis 219

    6.4.1 Performance Analysis 219

    6.4.1.1 Overall Review of the Database 219

    6.4.1.2 Annual Publication Increase 220

    6.4.1.3 Average Annual Citations 220

    6.4.1.4 Sankey Diagram 221

    6.4.1.5 Most Cited and Most Published Journals 221

    6.4.1.6 The Affiliations that Matter Most 223

    6.4.1.7 Frequently Cited Authors 223

    6.4.1.8 The Most Productive Countries 224

    6.4.1.9 Most Cited Document 227

    6.4.2 Analysis of Science Mapping 227

    6.4.2.1 Conceptual Structure Map 227

    6.4.2.2 Thematic Map 230

    6.4.2.3 Trend Topics 230

    6.4.2.4 Word Cloud 232

    6.4.2.5 Keyword Co-Occurrence Analysis 232

    6.5 Discussions 233

    6.6 Conclusions 235

    References 236

    7 A Novel Optimization-Based Cooling System for Improving Efficacy of Solar Panels Under Changing Climatic Conditions 241
    J. Sivakumar, A. G. Karthikeyan, R. Karthikeyan and R. Girimurugan

    7.1 Introduction 242

    7.2 Solar PV 242

    7.2.1 Cooling Technologies 245

    7.3 Hybrid PV Panel 247

    7.4 Optimization 248

    7.5 Conventional Optimization Approaches 249

    7.5.1 Genetic Algorithm (GA) 249

    7.5.2 Particle Swarm Optimization (PSO) 250

    7.5.3 Firefly Optimization (FF) 252

    7.5.4 Cuckoo Search (CS) Optimization 252

    7.5.5 Bat Optimization Algorithm 253

    7.5.6 Jelly Fish Optimization 255

    7.5.7 Other Meta-Heuristic Models 257

    7.6 Proposed Optimization Algorithm 258

    7.7 Conclusion 260

    References 261

    8 Multi-Objective Optimization in Sustainable Energy 267
    Sevtap T¿r¿nk

    8.1 Introduction 268

    8.2 Sustainable Development and Energy Sustainability 269

    8.3 Sustainable Energy System Models 271

    8.4 Foundations of Multi-Objective Optimization 276

    8.5 Challenges and Future Directions in Multi-Objective Optimization for Sustainable Energy 281

    8.6 Conclusions 282

    References 283

    9 Data Analytics for Performance Optimization in Renewable Energy 291
    Aparna Unni and Harpreet Kaur Channi

    9.1 Introduction 292

    9.2 Literature Review 294

    9.2.1 Scope and Objectives 295

    9.3 Renewable Energy Technologies 296

    9.3.1 Challenges in Renewable Energy Performance 297

    9.3.2 Role of Data Analytics in Renewable Energy 297

    9.3.3 Machine Learning Techniques 298

    9.4 Statistical Modeling 300

    9.4.1 Predictive Analytics 301

    9.5 Methodology 302

    9.6 Challenges and Opportunities 305

    9.7 Application Areas of Data Analytics in Renewable Energy 309

    9.8 Real-Time Implementation Using PVsyst 314

    9.9 Top World-Level Case Studies 316

    9.9.1 Wind Farm Optimization in Denmark 316

    9.9.2 Solar Energy Grid Management in Germany 317

    9.9.3 Hydroelectric Power Plant Efficiency in Canada 318

    9.9.4 Energy Storage Optimization in California 318

    9.9.5 Smart Grid Implementation in South Korea 319

    9.9.6 Future Directions 321

    9.10 Conclusion 323

    References 324

    10 Integration of Smart Grids in Energy Optimization 329
    Harpreet Kaur Channi, Ramandeep Sandhu and Aayush Anand

    10.1 Introduction 330

    10.1.1 Literature Survey 331

    10.1.2 Scope and Significance of the Study 332

    10.2 Smart Grid Fundamentals 333

    10.2.1 Renewable Energy Integration 334

    10.3 Demand-Side Management 337

    10.3.1 Demand-Side Management Techniques 339

    10.4 Data Analytics in Smart Grid 341

    10.4.1 Artificial Intelligence and Machine Learning Applications in Smart Grid 343

    10.4.2 Energy Storage Systems in Smart Grid 345

    10.5 Smart Grid Deployment Worldwide 346

    10.5.1 Clean, Reliable, and Resilient Electricity Systems Need Smart Grids 347

    10.6 Conclusion 352

    References 353

    11 Markov Model-Based Reliability Evaluation of Multiport Converter Fed Induction Motor Drive for Electric Vehicle Applications 357
    Manas Taneja and Dheeraj Joshi

    11.1 Introduction 357

    11.2 Markov's Modeling 359

    11.3 Thermal Model 361

    11.4 Transition Rate Evaluation 362

    11.5 Genetic Algorithm 364

    11.6 Reliability Calculations 365

    11.7 Conclusion 369

    References 369

    12 Forecasting Wind Energy Produced from Wind Turbine: A Markov Chain-Based Approach 373
    Yasin Atci and Sibel Atan

    12.1 Introduction 373

    12.2 Literature Review 375

    12.3 Wind Energy 376

    12.3.1 Wind Energy Potential 377

    12.3.2 Wind Theorems 379

    12.3.2.1 Betz Theorem 379

    12.3.2.2 Weibull Distribution 380

    12.3.3 Stochastic Structure of Wind Power 381

    12.4 Markov Processes 383

    12.4.1 Stochastic Processes 383

    12.4.1.1 Index Set 384

    12.4.1.2 State Spaces 384

    12.4.2 Markov Processes 384

    12.4.3 Markov Chains 385

    12.4.3.1 Markov Transition Probabilities Matrix 385

    12.4.3.2 Equilibrium Distributions 386

    12.4.3.3 Multi-Step Transition Probabilities 387

    12.4.3.4 Limit Behavior of Markov Chains 387

    12.5 Wind Energy Forecasting with Markov Chains 388

    12.5.1 Purpose and Content of the Study 389

    12.5.2 Data Set and Data Properties 389

    12.5.2.1 Characteristics of Wind Turbines in Hatay Province 391

    12.5.3 Constructing the Markov Transition Matrix 392

    12.5.4 Cumulative Transition Matrix 395

    12.5.5 Generation of Synthetic Data 396

    12.6 Conclusions and Recommendations 399

    References 402

    13 Efficient Optimization Techniques for Renewable and Sustainable Energy Systems 405
    Swati Sharma and Ikbal Ali

    13.1 Introduction 406

    13.2 Renewable Energy Approaches: An Introductory Overview 407

    13.2.1 Renewable Energy Technologies: Types, Applications, and Advancements 410

    13.2.1.1 Solar Energy and Wind Energy 412

    13.2.1.2 Hydro and Ocean Power 417

    13.2.1.3 Geothermal and Bioenergy 418

    13.3 Efficiency Unbound: Unconstrained Optimization Techniques for Renewable Energy Systems 420

    13.3.1 Common Replicas of Unconstrained Optimization Problems 421

    13.3.2 Convex Optimization 422

    13.3.2.1 Duality 423

    13.3.2.2 Simplex Method 425

    13.3.3 Optimization Strategies for Unconstrained Problems 427

    13.3.3.1 Nelder-Mead Method 428

    13.3.3.2 Golden Section Search Method (GSS) 429

    13.3.3.3 Fibonacci Search 430

    13.3.3.4 Hookes' and Jeeves' Method 430

    13.3.3.5 Gradient Descent Method 432

    13.3.3.6 Coordinate Descent Method 432

    13.4 Enhancing Renewable Energy Efficiency: Constrained Optimization Methods 433

    13.4.1 Particle Swarm Optimization 433

    13.4.2 Genetic Algorithm 435

    13.4.3 Simulated Annealing 439

    13.4.4 Ant Colony Optimization 441

    13.4.5 Firefly Optimization 442

    13.4.6 Artificial Bee Colony Optimization 444

    13.4.7 Gray Wolf Optimization 446

    13.4.8 Red Fox Optimization 448

    13.4.9 Jaya Algorithm 450

    13.4.10 Teaching-Learning-Based Optimization (TLBO) 451

    13.4.11 Artificial Immune System 452

    13.4.12 Game Theory 453

    13.4.13 Mixed Integer Linear Programming 454

    13.5 Conclusions and Discussion 455

    References 456

    14 Energy Optimization: Challenges, Issues, and Role of Machine Learning Techniques 465
    Anshuka Bansal, Ashwani Kumar Aggarwal and Anita Khosla

    14.1 Introduction 466

    14.2 Challenges in Energy Optimization 468

    14.3 Energy Optimization Methods 470

    14.4 Role of Machine Learning Methods 473

    14.5 Machine Learning Models 475

    14.6 Conclusions 478

    References 479

    Index 487