Machine Learning and Bayesian Methods in Inverse Heat Transfer



de

,

Éditeur :

Elsevier


Paru le : 2026-03-04



eBook Téléchargement ebook sans DRM
Lecture en ligne (streaming)
196,22

Téléchargement immédiat
Dès validation de votre commande
Ajouter à ma liste d'envies
Image Louise Reader présentation

Louise Reader

Lisez ce titre sur l'application Louise Reader.

Description
Machine Learning and Bayesian Methods in Inverse Heat Transfer offers a comprehensive exploration of inverse problems in heat transfer, blending classical techniques with modern advancements in machine learning and Bayesian methods. This essential guide provides a hands-on approach with practical examples, making complex concepts accessible to readers seeking to deepen their understanding of this critical field. The text covers essential topics including Introduction to Inverse Problems, Statistical Description of Errors and General Approach, Classical Techniques, Bayesian Methods, and a Machine Learning Approach to Inverse Problems. Readers will explore key concepts such as Gaussian distribution, linear and non-linear regression, Gauss-Newton algorithm, Tikhonov regularization, and more, gaining a solid foundation in applying these methods to real-world heat transfer scenarios. For engineers, scientists, senior undergraduates, graduates, and researchers in heat transfer and related fields, this book serves as a vital resource. By offering clear explanations, practical examples, and MATLAB codes, it empowers readers to tackle inverse problems with confidence. Whether readers are practicing engineers or graduate students specializing in heat and mass transfer, this book equips them with the tools and knowledge to excel and further advances in their field. - Emphasizes a machine learning approach to solving inverse heat transfer problems - Provides detailed explanations of fundamental scientific concepts in a clear, precise manner - Integrates modern techniques with traditional methods to provide comprehensive understanding - Offers practical examples throughout, allowing readers to apply theoretical knowledge to real-world scenarios, enhancing learning and advancing interdisciplinary applications - Supports sustainability and responsible energy consumption -- especially UN SDGs 4, 7, 11, 12, 13, and 15 -- inverse heat transfer problems are important for researchers advancing efficient energy utilization
Pages
n.c
Collection
n.c
Parution
2026-03-04
Marque
Elsevier
EAN papier
9780443367915
EAN EPUB SANS DRM
9780443454929

Prix
196,22 €

Dr. Balaji Srinivasan is currently an Associate Professor in the Department of Mechanical Engineering at the Indian Institute of Technology (IIT) Madras, Chennai. His areas of research interest include computational fluid dynamics, numerical analysis, turbulence, and applied machine learning.Professor C. Balaji is currently a Professor in the Department of Mechanical Engineering at the Indian Institute of Technology (IIT) Madras, Chennai. Balaji brings over 25 years of experience in teaching and research. His areas of interest include heat transfer, optimization, computational radiation, atmospheric radiation, and inverse heat transfer. He is currently Editor-in-Chief of Elsevier's International Journal of Thermal Sciences.

Suggestions personnalisées