Scientific Machine Learning with Engineering Applications
暫譯: 科學機器學習與工程應用
Rabczuk, Timon, Anitescu, Cosmin, Goswami, Somdatta
- 出版商: Springer
- 出版日期: 2026-05-26
- 售價: $5,390
- 貴賓價: 9.5 折 $5,120
- 語言: 英文
- 頁數: 232
- 裝訂: Hardcover - also called cloth, retail trade, or trade
- ISBN: 3032203066
- ISBN-13: 9783032203069
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相關分類:
Machine Learning、工程數學 Engineering-mathematics
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商品描述
This book equips readers with a rigorous and practical framework for solving complex engineering problems directly from governing equations using modern machine learning techniques. It bridges established principles from mechanics, numerical analysis, and scientific computing with emerging physics-based learning approaches, enabling reliable modeling, simulation, optimization, and inverse analysis beyond purely data-driven methods. A distinctive feature is its critical comparison of machine learning-based solvers with classical techniques such as the finite element method, isogeometric analysis, and meshfree methods, highlighting strengths, limitations, and domains of applicability. The scope ranges from foundational concepts to advanced engineering applications, supported by worked examples, reproducible code, and extensive references. The book is intended for graduate students, researchers, and practitioners in engineering, applied mathematics, and computational sciences who seek a principled entry point and a state-of-the-art reference for physics-based machine learning in modeling and simulation.
商品描述(中文翻譯)
本書為讀者提供了一個嚴謹且實用的框架,利用現代機器學習技術直接從控制方程式解決複雜的工程問題。它將力學、數值分析和科學計算的既有原則與新興的基於物理的學習方法相結合,使得在純數據驅動方法之外,能夠進行可靠的建模、模擬、優化和反演分析。本書的一個顯著特點是對基於機器學習的求解器與經典技術(如有限元素法、等幾何分析和無網格方法)進行了關鍵比較,突顯了各自的優勢、局限性和適用範圍。內容涵蓋從基礎概念到高級工程應用,並提供了實作範例、可重現的程式碼和廣泛的參考文獻。本書旨在為研究生、研究人員以及工程、應用數學和計算科學的實務工作者提供一個有原則的入門點和一個最先進的參考資料,專注於基於物理的機器學習在建模和模擬中的應用。