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Soft computing and AI: Fundamentals and applications

By: Material type: TextTextLanguage: English Publication details: New Delhi: Narosa Publishing House 2025.Description: xxiii, 288p. : ill ; 24 cmISBN:
  • 9788184877991
Subject(s): Other classification:
  • D65,8(B),27 R5 TF
Summary: This textbook has been revised and renamed as Soft Computing and AI: Fundamentals and Applications – earlier published as Soft Computing: Fundamentals and Applications, begins with an introduction to Soft Computing, a family of many members, namely Genetic Algorithms (GAs), Fuzzy Logic (FL), Neural Networks (NNs), etc., including AI tools. To realize the need for a non-traditional and nature-inspired optimization tool like GA, one chapter is devoted to explain the principle of traditional optimization. The working cycle of a GA is explained in depth along with the mechanisms of some specialized GAs with appropriate examples. Working principles of non-traditional optimization tools like Simulated Annealing (SA), Particle Swarm Optimization (PSO) and Bonobo Optimization (BO) algorithm are discussed. Multi-objective optimization is covered, where the working principles of a few approaches are explained. Fuzzy sets are introduced before explaining the principle of fuzzy reasoning and clustering. The fundamentals of NNs are presented, prior to the discussion on various forms of NN including Deep Learning Neural Network (DLNN). The combined techniques, such as GA-FL, GA-NN, NN-FL and GA-FL-NN are then explained, and the last chapter deals with the applications of soft computing and AI tools in two different fields of research. This book fulfils the requirements of a large number of readers belonging to various disciplines of engineering and general sciences. The algorithms are discussed with a number of solved numerical examples. It will be a valuable book for the undergraduate and postgraduate students, researchers, scientists and practicing engineers and others.
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Item type Current library Home library Call number Status Barcode
Textbook Textbook Faculty of Technology Library Central Science Library D65,8(B),27 R5 TF (Browse shelf(Opens below)) Available FT1793187
Textbook Textbook Faculty of Technology Library Central Science Library D65,8(B),27 R5;1 TF (Browse shelf(Opens below)) Available FT1793188
Textbook Textbook Faculty of Technology Library Central Science Library D65,8(B),27 R5;2 TF (Browse shelf(Opens below)) Available FT1793189
Textbook Textbook Faculty of Technology Library Central Science Library D65,8(B),27 R5;3 TF (Browse shelf(Opens below)) Available FT1793190
Textbook Textbook Faculty of Technology Library Central Science Library D65,8(B),27 R5;4 TF (Browse shelf(Opens below)) Available FT1793191

Includes Nomenclature, Greek symbols, abbreviations and Index

This textbook has been revised and renamed as Soft Computing and AI: Fundamentals and Applications – earlier published as Soft Computing: Fundamentals and Applications, begins with an introduction to Soft Computing, a family of many members, namely Genetic Algorithms (GAs), Fuzzy Logic (FL), Neural Networks (NNs), etc., including AI tools. To realize the need for a non-traditional and nature-inspired optimization tool like GA, one chapter is devoted to explain the principle of traditional optimization. The working cycle of a GA is explained in depth along with the mechanisms of some specialized GAs with appropriate examples. Working principles of non-traditional optimization tools like Simulated Annealing (SA), Particle Swarm Optimization (PSO) and Bonobo Optimization (BO) algorithm are discussed. Multi-objective optimization is covered, where the working principles of a few approaches are explained. Fuzzy sets are introduced before explaining the principle of fuzzy reasoning and clustering. The fundamentals of NNs are presented, prior to the discussion on various forms of NN including Deep Learning Neural Network (DLNN). The combined techniques, such as GA-FL, GA-NN, NN-FL and GA-FL-NN are then explained, and the last chapter deals with the applications of soft computing and AI tools in two different fields of research. This book fulfils the requirements of a large number of readers belonging to various disciplines of engineering and general sciences. The algorithms are discussed with a number of solved numerical examples. It will be a valuable book for the undergraduate and postgraduate students, researchers, scientists and practicing engineers and others.

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