Recent Metaheuristics Algorithms for Parameter Identification

Recent Metaheuristics Algorithms for Parameter Identification

Erik Cuevas , Jorge Gálvez , Omar Avalos
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Sep 3, 2019 · 英語 · キンドル (297 ページ)
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本の詳細

形式 キンドル
ページ数 297
言語 英語
公開されました Sep 3, 2019
出版社 Springer
ISBN-10 3030289176
ISBN-13 9783030289171

説明

This book delves into innovative metaheuristic algorithms designed for parameter identification, showcasing the cutting-edge approaches of the authors, Erik Cuevas, Jorge Gálvez, and Omar Avalos. Their research emphasizes the significance of these algorithms in enhancing accuracy and efficiency across various applications in optimization.

Readers will find a comprehensive overview of both established and newly proposed techniques, illustrating their effectiveness through detailed case studies and practical applications. The authors aim to bridge theoretical concepts with real-world issues, demonstrating the transformative potential of these methods.

Throughout the exploration, the clarity of explanations and the depth of analysis ensure that both newcomers and seasoned researchers can grasp the advancements made in the field. The book serves as a vital resource for those seeking to expand their knowledge in metaheuristics and its application in modern science and engineering challenges.
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