This book presents the result of an innovative challenge, to create a systematic literature overview driven by machine-generated content. This machine-generated volume, with chapter introductions by the human expert, of summaries of the existing studies furthers our understanding of the heuristic and metaheuristic optimization methods for structural engineering domain problems. It brings out nature inspired metaheuristic optimization methods such as Genetic Algorithm, Particle Swarm Optimization, Ant Colony Optimization, Cohort Intelligence, Firefly Algorithm, Differential Evolution, Bee Colony, Grey Wolf Optimizer, League Championship Algorithm, Harmony Search Algorithm, Water Cycle Algorithm, Neural Network Algorithm, and its different variations that have been widely used to solve structural engineering problems.
This book will be helpful for academicians and researchers in many kinds such as surveys of nature inspired optimization algorithms for structural optimization, its applicability for solving single objective and multi-objective structural engineering problems, constraint handling, solution quality, challenges, opportunities, key features, and limitations.
Questions and related keywords were prepared for the machine to query, discover, collate and structure by Artificial Intelligence (AI) clustering. The AI-based approach seemed especially suitable to provide an innovative perspective as the topics are indeed both complex, interdisciplinary and multidisciplinary. Springer Nature has published much on these topics in its journals over the years, so the challenge was for the machine to identify the most relevant content and present it in a structured way that the reader would find useful. The automatically generated literature summaries in this book are intended as a springboard to further discoverability. They are particularly useful to readers with limited time, looking to learn more about the subject quickly and especially if they are new to the topics. Springer Nature seeks to support anyone who needs a fast and effective start in their content discovery journey, from the undergraduate student exploring interdisciplinary content to Master- or PhD-thesis developing research questions, to the practitioner seeking support materials, this book can serve as an inspiration, to name a few examples.
It is important to us as a publisher to make advances in technology easily accessible to our authors and find new ways of AI-based author services that allow human-machine interaction to generate readable, usable, collated, research content.
Le informazioni nella sezione "Riassunto" possono far riferimento a edizioni diverse di questo titolo.
Ishaan R. Kale holds a Ph.D. in Nature-Inspired Optimization Techniques from the Faculty of Mechanical Engineering, Symbiosis International University. He received his Master of Engineering in Mechanical Design Engineering from the Maharashtra Institute of Technology, Pune University, and his Bachelor of Engineering from North Maharashtra University. Ishaan worked as an Assistant Professor at the Symbiosis Institute of Technology for six years. Since January 2022, he has been serving as a Research Assistant Professor at the Institute of Artificial Intelligence, MIT World Peace University. His research interests include design engineering, structural optimization, computational intelligence, constraint handling, probability collectives, socio-inspired optimization methods, physics-based optimization methods, cohort intelligence, particle swarm optimization, genetic algorithms, hybrid metaheuristics, game theory, operations research, and numerical methods. He has published several research papers in peer-reviewed journals, conferences, and book chapters, along with one authored book and three edited volumes.
This book presents the result of an innovative challenge, to create a systematic literature overview driven by machine-generated content. This machine-generated volume, with chapter introductions by the human expert, of summaries of the existing studies furthers our understanding of the heuristic and metaheuristic optimization methods for structural engineering domain problems. It brings out nature inspired metaheuristic optimization methods such as Genetic Algorithm, Particle Swarm Optimization, Ant Colony Optimization, Cohort Intelligence, Firefly Algorithm, Differential Evolution, Bee Colony, Grey Wolf Optimizer, League Championship Algorithm, Harmony Search Algorithm, Water Cycle Algorithm, Neural Network Algorithm, and its different variations that have been widely used to solve structural engineering problems.
This book will be helpful for academicians and researchers in many kinds such as surveys of nature inspired optimization algorithms for structural optimization, its applicability for solving single objective and multi-objective structural engineering problems, constraint handling, solution quality, challenges, opportunities, key features, and limitations.
Questions and related keywords were prepared for the machine to query, discover, collate and structure by Artificial Intelligence (AI) clustering. The AI-based approach seemed especially suitable to provide an innovative perspective as the topics are indeed both complex, interdisciplinary and multidisciplinary. Springer Nature has published much on these topics in its journals over the years, so the challenge was for the machine to identify the most relevant content and present it in a structured way that the reader would find useful. The automatically generated literature summaries in this book are intended as a springboard to further discoverability. They are particularly useful to readers with limited time, looking to learn more about the subject quickly and especially if they are new to the topics. Springer Nature seeks to support anyone who needs a fast and effective start in their content discovery journey, from the undergraduate student exploring interdisciplinary content to Master- or PhD-thesis developing research questions, to the practitioner seeking support materials, this book can serve as an inspiration, to name a few examples.
It is important to us as a publisher to make advances in technology easily accessible to our authors and find new ways of AI-based author services that allow human-machine interaction to generate readable, usable, collated, research content.
Le informazioni nella sezione "Su questo libro" possono far riferimento a edizioni diverse di questo titolo.
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Buch. Condizione: Neu. This item is printed on demand - it takes 3-4 days longer - Neuware -This book presents the result of an innovative challenge, to create a systematic literature overview driven by machine-generated content. This machine-generated volume, with chapter introductions by the human expert, of summaries of the existing studies furthers our understanding of the heuristic and metaheuristic optimization methods for structural engineering domain problems. It brings out nature inspired metaheuristic optimization methods such as Genetic Algorithm, Particle Swarm Optimization, Ant Colony Optimization, Cohort Intelligence, Firefly Algorithm, Differential Evolution, Bee Colony, Grey Wolf Optimizer, League Championship Algorithm, Harmony Search Algorithm, Water Cycle Algorithm, Neural Network Algorithm, and its different variations that have been widely used to solve structural engineering problems.This book will be helpful for academicians and researchers in many kinds such as surveys of nature inspired optimization algorithms for structural optimization, its applicability for solving single objective and multi-objective structural engineering problems, constraint handling, solution quality, challenges, opportunities, key features, and limitations.Questions and related keywords were prepared for the machine to query, discover, collate and structure by Artificial Intelligence (AI) clustering. The AI-based approach seemed especially suitable to provide an innovative perspective as the topics are indeed both complex, interdisciplinary and multidisciplinary. Springer Nature has published much on these topics in its journals over the years, so the challenge was for the machine to identify the most relevant content and present it in a structured way that the reader would find useful. The automatically generated literature summaries in this book are intended as a springboard to further discoverability. They are particularly useful to readers with limited time, looking to learn more about the subject quickly and especially if they are new to the topics. Springer Nature seeks to support anyone who needs a fast and effective start in their content discovery journey, from the undergraduate student exploring interdisciplinary content to Master- or PhD-thesis developing research questions, to the practitioner seeking support materials, this book can serve as an inspiration, to name a few examples.It is important to us as a publisher to make advances in technology easily accessible to our authors and find new ways of AI-based author services that allow human-machine interaction to generate readable, usable, collated, research content. 300 pp. Englisch. Codice articolo 9789819517107
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Buch. Condizione: Neu. Metaheuristic Methods for Structural Optimization | A Machine-Generated Literature Overview | Ishaan R. Kale | Buch | xi | Englisch | 2025 | Springer | EAN 9789819517107 | Verantwortliche Person für die EU: Springer Verlag GmbH, Tiergartenstr. 17, 69121 Heidelberg, juergen[dot]hartmann[at]springer[dot]com | Anbieter: preigu Print on Demand. Codice articolo 134143625
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Buch. Condizione: Neu. This item is printed on demand - Print on Demand Titel. Neuware -This book presents the result of an innovative challenge, to create a systematic literature overview driven by machine-generated content. This machine-generated volume, with chapter introductions by the human expert, of summaries of the existing studies furthers our understanding of the heuristic and metaheuristic optimization methods for structural engineering domain problems. It brings out nature inspired metaheuristic optimization methods such as Genetic Algorithm, Particle Swarm Optimization, Ant Colony Optimization, Cohort Intelligence, Firefly Algorithm, Differential Evolution, Bee Colony, Grey Wolf Optimizer, League Championship Algorithm, Harmony Search Algorithm, Water Cycle Algorithm, Neural Network Algorithm, and its different variations that have been widely used to solve structural engineering problems.This book will be helpful for academicians and researchers in many kinds such as surveys of nature inspired optimization algorithms for structural optimization, its applicability for solving single objective and multi-objective structural engineering problems, constraint handling, solution quality, challenges, opportunities, key features, and limitations.Questions and related keywords were prepared for the machine to query, discover, collate and structure by Artificial Intelligence (AI) clustering. The AI-based approach seemed especially suitable to provide an innovative perspective as the topics are indeed both complex, interdisciplinary and multidisciplinary. Springer Nature has published much on these topics in its journals over the years, so the challenge was for the machine to identify the most relevant content and present it in a structured way that the reader would find useful. The automatically generated literature summaries in this book are intended as a springboard to further discoverability. They are particularly useful to readers with limited time, looking to learn more about the subject quickly and especially if they are new to the topics. Springer Nature seeks to support anyone who needs a fast and effective start in their content discovery journey, from the undergraduate student exploring interdisciplinary content to Master- or PhD-thesis developing research questions, to the practitioner seeking support materials, this book can serve as an inspiration, to name a few examples.It is important to us as a publisher to make advances in technology easily accessible to our authors and find new ways of AI-based author services that allow human-machine interaction to generate readable, usable, collated, research content.Springer-Verlag KG, Sachsenplatz 4-6, 1201 Wien 300 pp. Englisch. Codice articolo 9789819517107
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