Complex Engineering Systems – Modeling and Optimization
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Edited by:
Satyvir Singh
and Mukesh Kumar Awasthi
About this book
Complex Engineering Systems - Modeling and Optimization offers an in-depth exploration of the foundational principles, advanced methodologies, and interdisciplinary applications essential for understanding and managing intricate engineering systems. Spanning mathematical modeling, numerical simulation, optimization strategies, and AI-assisted techniques, the book presents a rich blend of theory and real-world problem-solving tools. This comprehensive volume is tailored for researchers, professionals, and graduate students engaged in engineering, applied mathematics, and computational sciences.
Covering diverse themes-from system-of-systems behavior and multiphysics modeling to nanofluid dynamics, fractional heat transfer, queuing theory, and machine learning integration - the chapters collectively emphasize the interplay between complexity, adaptability, and innovation. The contributors shed light on modern challenges like cryogenic flow analysis, pressure sensing in microfluidics, MHD flow behavior, and AI-driven predictive modeling.
- Integrates advanced mathematical modeling, simulation, and optimization techniques for complex engineering systems, ensuring practical applicability.
- Interdisciplinary case studies bridging environmental, manufacturing, and smart city domains.
Author / Editor information
Dr. Satyvir Singh: Dr. Satyvir Singh is a Research Associate Fellow at the Institute of Applied and Computational Mathematics (ACoM), RWTH Aachen University, Germany (QS ranking #97). He earned his Ph.D. in Computational Fluid Mechanics from Gyeongsang National University, South Korea (QS ranking #301-350), with a thesis on 3D discontinuous Galerkin methods for Boltzmann-type gas kinetic equations. He has held research positions at Nanyang Technological University, Singapore (QS ranking #19), and Research Center for Aircraft Parts Technology, South Korea. Dr. Singh's research focuses on computational fluid dynamics, hydrodynamic instability, gas kinetic theory, and computational biology, with 50+ publications and 1 book. He has presented his work globally and recently co-led a research project on brain tumor dynamics at Jazan University, Saudi Arabia.
Dr. Mukesh Kumar Awasthi: Dr. Mukesh Kumar Awasthi, Assistant Professor at Babasaheb Bhimrao Ambedkar University, Lucknow, specializes in mathematical modeling of flow problems, including viscous potential flow, electro-hydrodynamics, and magneto-hydrodynamics. He has taught postgraduate courses such as Fluid Mechanics and Mathematical Methods. With over 125 research publications and 14 books, Dr. Awasthi is also the series editor of Artificial Intelligence and Machine Learning for Intelligent Engineering Systems (CRC Press). A recipient of multiple research awards and a UGC-funded project, he is listed among the top 2% influential researchers worldwide (Stanford University, 2022–2023).
Topics
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Frontmatter
I -
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Aim and Scope
V -
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Preface
VII -
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Acknowledgments
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Contents
XI -
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Editors’ Biography
XV -
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List of Contributors
XVII -
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Chapter 1 Introduction to Complex Engineering Systems
1 -
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Chapter 2 Mathematical Foundations for Modeling Complex Systems
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Chapter 3 Optimization Techniques for Engineering Systems
37 -
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Chapter 4 Multiphysics Modeling in Engineering
57 -
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Chapter 5 Robust Numerical Methods for Time-Delayed Semilinear Parabolic Problems with a Small Parameter Arising in Fluid Dynamics
75 -
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Chapter 6 Comparison of Various Weighted Residual Methods up to Three-Step Solution
105 -
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Chapter 7 Boundary Element Analysis for MHD Stokes Flow Through a Microchannel Exhibiting Surface Roughness
119 -
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Chapter 8 A Study of Approximation Techniques Used to Solve Queueing Models Arise in Optimizing Complex Engineering Systems
145 -
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Chapter 9 Influence of Fluid Pressure in MEMS-Based Microfluidic Device Application: A Review
161 -
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Chapter 10 The Xue Model-Based Quadratic Convective Flow Analysis of Radiative Trihybrid Nanofluid over Porous Plate Using Cattaneo-Christov Model
215 -
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Chapter 11 Numerical Investigation of Non-Darcy MHD Boundary Layer Nanofluids Flow Over a Nonlinear Stretching Surface
239 -
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Chapter 12 Multiphase Flow and Heat Transfer Analysis of Liquid Methane in Cryogenic Engine Feed Pipes
259 -
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Chapter 13 Advanced Heat Transfer Analysis: Numerical Methods and Fractional Calculus Approaches
285 -
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Chapter 14 Controlling the Discretized Complex System’s Dynamics with the Allee Effect
301 -
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Chapter 15 Machine Learning-Assisted Prediction of Thermo-diffusion and Diffusion-Thermo effects in a Jeffery-Hamel Flow
321 -
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Chapter 16 A Comprehensive Study of the Diverse Applicability of Computational Fluid Dynamics to Complex Systems
335 -
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Index
351 -
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