Enhancing Hybrid Nanodevice Fabrication Efficiency Using Machine Learning

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Enhancing Hybrid Nanodevice Fabrication Efficiency Using Machine Learning

  • 言語:ENG
  • ISBN:9781394355280
  • eISBN:9781394355297

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Description

Gain a competitive edge in the semiconductor industry with this essential guide, which provides the practical insights and machine learning techniques needed to optimize the fabrication of hybrid nanodevices for integrated circuits.

Enhancing Hybrid Nanodevice Fabrication Efficiency Using Machine Learning explores the intersection of advanced manufacturing techniques and machine learning applications in the field of nanotechnology, specifically focusing on hybrid nanodevices for integrated circuits. This book provides a comprehensive understanding of how machine learning algorithms and techniques can optimize the fabrication processes of hybrid nanodevices, improving their efficiency, reliability, and performance in integrated circuit applications. The book begins with an introduction to the fundamentals of hybrid nanodevice fabrication and the role of machine learning in enhancing these processes. It then delves into various machine learning algorithms and models used for process optimization, quality control, and predictive maintenance in integrated circuit fabrication. Case studies and practical examples illustrate real-world applications of machine learning in improving yield, reducing costs, and accelerating time-to-market for hybrid nanodevices. It also addresses the pressing need for a comprehensive guide on machine learning applications in nanodevice fabrication. It provides researchers, engineers, and industry professionals with practical insights for implementing machine learning techniques to tackle challenges such as variability reduction, defect detection, and process optimization. By bridging the gap between theory and practice, the book equips readers with the knowledge and tools necessary to leverage machine learning for a competitive advantage in the semiconductor industry.

Table of Contents

Preface xxv

1 Challenges and Limitations in Implementation: Nanodevice Fabrication Efficiency Using Machine Learning 1
Amit Kumar Jain, Tarun Mishra and Mohamed M. Awad

1.1 Introduction 2
1.2 Related Study 4
1.3 Case Studies for ML-Driven Nanodevice Fabrication 5
1.4 Comparative Study between Challenges and Limitations in Hybrid Nanodevice Fabrication Efficiency Using ML 8
1.5 Applications 11
1.6 Advantages of ML in Hybrid Nanodevice Fabrication Efficiency 15
1.7 Disadvantages of ML in Hybrid Nanodevice Fabrication Efficiency 16
1.8 Future Scope 18
1.9 Conclusion 20

2 A Comprehensive Review of Machine Learning Algorithms and their Utilization in Nanodevice Fabrication 23
Basudha Dewan

2.1 Introduction 24
2.2 Universal ML Model 25
2.3 Types of ML Algorithms 27
2.4 Challenges in ML 32
2.5 Recent Developments in ML 33
2.6 Ethical Concerns and Fairness in ML 33
2.7 Role of ML in Nanodevice Fabrication 33
2.8 Proposed Model 35
2.9 Conclusion 36

3 Integrating Deep Learning in Rolling Process Design for Nanocomposites: A Novel Approach to Strength Prediction 41
Amit Tiwari, Payal Bansal, Rachid Amrousse and SeitkhanAzat

3.1 Introduction 42
3.2 Database Collection 46
3.3 Computational Modeling 46
3.4 Results and Discussion 49
3.5 Conclusion 59

4 Future Directions in Machine Learning–Driven Nanodevice Fabrication 63
Wasswa Shafik

4.1 Introduction 64
4.2 Fundamentals of Nanodevice Fabrication 65
4.3 ML Techniques in Nanodevice Fabrication 70
4.4 Applications of ML in Nanodevice Fabrication 77
4.5 Challenges and Limitations 80
4.6 Future Research Directions 83
4.7 Conclusion 89

5 Unlocking Machine Learning: Revolutionizing Fabrication of Nanocircuitry 93
Mohammed Firdos Alam Sheikh, Nikhil Kumar Goyal, Udit Mamodiya and Tien Anh Tran

6 Enabling Smarter Nanosystems: The Role of AI and Supervised Machine Learning in Nanotechnology 113
Indra Kishor, Udit Mamodiya, Sayed Sayeed Ahmad, Priya Goyal and Deepti Dwivedi

6.1 Introduction 114
6.2 Literature Review 116
6.3 Methodology 122
6.4 Results 128
6.5 Discussion 131
6.6 Conclusion 133

7 Harnessing Unsupervised Machine Learning for Advanced Nanodevice Fabrication 139
Indra Kishor, Udit Mamodiya, Sayed Sayeed Ahmad, Priya Goyal and Deepti Dwivedi

7.1 Introduction 140
7.2 Literature Review 141
7.3 Methodology 143
7.4 Results 146
7.5 Discussion 153
7.6 Conclusion 155

8 Supervised Learning Models for Fabrication Optimization in Semiconductor Nanodevices 159
Irfan Ahmad Pindoo and Suman Lata Tripathi

8.1 Introduction 160
8.2 The Semiconductor Industry and Machine Learning 163
8.3 Semiconductor Fabrication Process 164
8.4 Applications of Supervised Learning in Fabrication Optimization 168
8.5 Machine Learning–Based Semiconductor Process Optimization 170

9 Advancements and Challenges in Nanomaterial Integration for Next-Generation Devices 179
Mukesh Chand, Pooja Rani, Charul Bapna and Garima Kachhara

9.1 Introduction 180
9.2 Nanomaterials in Device Integration 184
9.3 Related Work 188
9.4 Fabrication Techniques for Nanomaterial Integration 189
9.5 Challenges in Nanomaterial Integration 193
9.6 Conclusions and Future Directions 194

10 An Efficient Exploration of Process Optimization through Deep Learning Approaches 197
Nikhil Kumar Goyal, Monika Dandotiya, Monika Kumari, Shikha Sharma and A. Anushya

10.1 Introduction 198
10.2 Deep Learning Architectures for Process Optimization 209
10.3 Challenges and Limitations in the Deep Learning Process Optimization Process 211
10.4 Conclusion 214

11 Machine Learning Approach for Quantum Dots Synthesis 219
Rajat Kumar Goyal, Nidhi Bharadwaj and Pramod Garhwal

11.1 Introduction 220
11.2 Basic and Operating Principles of ML 221
11.3 Various ML Algorithms for QD Research 223
11.4 Summary and Future Perspectives 231

12 Deep Learning for Process Optimization: Techniques, Applications, and Future Directions 239
Randhir Singh Baghel, Bindiya Jain, Udit Mamodiya and Harkaran Singh

12.1 Introduction 240
12.2 Overview of Process Optimization 241
12.3 Role of DL in Optimization 243
12.4 Optimization in Industrial and Business Contexts 245
12.5 Applications of DL in Process Optimization 246
12.6 Deep Learning Applications in Supply Chain and Logistics Optimization 248
12.7 Challenges in Implementing DL for Process Optimization 254

13 Advanced ML Algorithms for Nanotechnology 259
R. Remya, Shaik Saniya, O. Jeba Singh and Umesh Sampath

13.1 Introduction 260
13.2 Deep Learning for Nanoscale Imaging 262
13.3 Graph Neural Networks for Molecular Structure 264
13.4 Quantum ML for Nanotechnology Applications 269
13.5 RL in Nanofabrication 270
13.6 Meta Learning for Metal Discovery 271
13.7 Conclusion 272

14 Integrating Machine Learning and Nanotechnology: Driving Innovation and Sustainable Solutions 275
Shruti Gupta, Sourabh Kumar Jain and Gireesh Kumar

14.1 Introduction 276
14.2 Steps Involved in Building an ML Model 280
14.3 How AI and Nanotechnology are Revolutionizing Healthcare and Safety 284
14.4 Ensuring Quality in Nanomanufacturing 285
14.5 Environmental Monitoring and Remediation 286
14.6 Advancements in Nanotechnology and Quantum Computing 287
14.7 AI and Nanotechnology: Challenges and Future Opportunities 289
14.8 Conclusion 289

15 Case Studies in ML-Driven AI Nanodevice Fabrication 293
Yogita Thareja, Sakshi Khullar and Parulpreet Singh

15.1 Introduction 294
15.2 Experimental Survey and Materials 295
15.3 Methodology 297
15.4 Results 303
15.5 Conclusion 305

16 Data Acquisition and Preprocessing Techniques for Effective Machine Learning 311
B. Sarada, C. Gazala Akhtar, N. Shaleen Saroj and Sanjeevini S. Harwalka

16.1 Introduction 312
16.2 Data Acquisition—Definition and Role in ML 314
16.3 Data Cleaning 318
16.4 Data Transformation 321
16.5 Augmenting Data 324
16.6 Advanced Preprocessing Techniques 328
16.7 Case Study: Building a Preprocessing Pipeline 331
16.8 Best Practices in Data Preprocessing 334
16.9 Common Challenges and Solutions in Data Preprocessing 335
16.10 Emerging Trends and Future Directions in Data Preprocessing 336
16.11 Conclusion 337

17 Fundamentals of Machine Learning for Nanotechnology 341
K. Mahesh Babu, Karamsetty Shouryadhar, Sunkari Pradeep and Mahitha Dilli

17.1 Introduction 342
17.2 Foundations of ML for Nanotechnology 347
17.3 Key ML Techniques and Models in Nanotechnology 351
17.4 Clustering and Dimensionality Reduction Techniques 353
17.5 Challenges and Future Directions in ML for Nanotechnology 355
17.6 Case Studies 357
17.7 Conclusion 360

18 Optimizing Hybrid Nanodevice Fabrication Efficiency through Unsupervised Machine Learning Approaches 363
Raj Kishor Verma and Udit Mamodiya

18.1 Introduction 364
18.2 Experimental Methods and Materials/Literature Review 374
18.3 Proposed Diagram 374
18.4 Conclusion 379
18.5 Challenges 380

19 Emerging Trends in Micro and Nano Manufacturing: A Survey of Modern Technologies and Future Prospects 383
Nirmalya Pal, Shilpa Ghosh and Riya Sil

19.1 Introduction 384
19.2 Literature Survey 386
19.3 Micromanufacturing 387
19.4 Cyber Nanomanufacturing 396
19.5 Observational Analysis 398
19.6 Conclusion 401

20 Exploring Machine Learning in Nanotechnology 405
Sabhyata Uppal Soni and Ahmed A. Elngar

20.1 Introduction 406
20.2 Methods for Implementing ML in Nanomaterials 408
20.3 DL for Nanomaterial Image Analysis 409
20.4 Optimization of Nanomaterial Synthesis Using ML 410
20.5 Challenges and Future Directions 411
20.6 Modeling Properties and Behavior of Nanomaterials 411
20.7 Types of Modeling Techniques in Nanotechnology 414
20.8 Density Functional Theory 415
20.9 Machine Learning Models 415
20.10 Using DL to Analyze Nanomaterial Images 417
20.11 Applications of DL in Nanomaterial Image Analysis 420
20.12 Challenges in Using DL for Nanomaterial Image Analysis 421
20.13 The Role of XAI in Nanotechnology 422
20.14 Conclusion 423

21 Machine Learning as a Tool in Nanodevice Fabrication 425
Sumaiya Samreen and Sanjeevini S. Harwalkar

21.1 Introduction 425
21.2 Tools Used 427
21.3 Role of ML in Nanodevice Fabrication 428
21.4 Applications of ML in the Fabrication of Nanodevices 430
21.5 Advantages of ML in Nanodevice Fabrication 433
21.6 Challenges and Limitations 435
21.7 Future Directions 438
21.8 Conclusion 440

22 Optimizing Hybrid Nanodevice Fabrication Efficiency through Machine Learning: Applications in Precision Control and Defect Reduction 443
Sandeep Gupta and Budesh Kanwer

22.1 Introduction 444
22.2 THe Landscape of Hybrid Nanodevice Fabrication 445
22.3 ML: Transforming Hybrid Nanodevice Fabrication 447
22.4 ML Models in Action 447
22.5 Application in Biomedical Sensors 450
22.6 Advancements in Semiconductor Manufacturing 451
22.7 Challenges in ML Applications for Semiconductor Manufacturing 453
22.8 Future Directions 454
22.9 Conclusion 455

References 456
Index 459