Solv Differ Equat & Inverse..(P1)
暫譯: 解決微分方程與反演..(P1)
Protopapas Pavlos
- 出版商: Wspc (Europe)
- 出版日期: 2026-06-21
- 售價: $2,190
- 貴賓價: 9.5 折 $2,080
- 語言: 英文
- 頁數: 200
- 裝訂: Quality Paper - also called trade paper
- ISBN: 1800619286
- ISBN-13: 9781800619289
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相關分類:
Machine Learning
海外代購書籍(需單獨結帳)
商品描述
This book explores the exciting intersection of machine learning and differential equations (DEs), presenting modern techniques to solve one of the most fundamental mathematical challenges. DEs govern the laws of nature, appearing in contexts as diverse as Einstein's general relativity, human behavior, and financial markets. Despite their ubiquity, no general analytical method exists to solve them, making numerical computation the only viable approach.
Over the past decade, advances in neural networks have opened a new approach: Physics-Informed Neural Networks (PINNs). These models transform DEs into trainable neural architectures, enabling solutions with remarkable flexibility and efficiency. Drawing on over ten years of lectures at Harvard University, the authors provide a comprehensive introduction to PINNs, covering the theoretical foundations, algorithmic constructions, and practical techniques needed to implement them.
Readers will gain a thorough understanding of differential equations, numerical methods, neural network architectures, boundary and initial value problems, optimization and sampling methods, and transfer learning strategies. Whether you are a student, researcher, or practitioner, this book equips you with the knowledge and tools to explore and contribute to this rapidly growing field at the cutting edge of science and technology.
商品描述(中文翻譯)
這本書探討了機器學習與微分方程(DEs)之間令人興奮的交集,呈現了解決這一最基本數學挑戰的現代技術。微分方程支配著自然法則,出現在愛因斯坦的廣義相對論、人類行為和金融市場等多種背景中。儘管它們無處不在,但目前並不存在通用的解析方法來解決這些方程,使得數值計算成為唯一可行的方法。
在過去十年中,神經網絡的進步開啟了一種新方法:物理知識引導的神經網絡(PINNs)。這些模型將微分方程轉化為可訓練的神經架構,使得解決方案具有卓越的靈活性和效率。作者基於在哈佛大學超過十年的講座經驗,提供了對PINNs的全面介紹,涵蓋了理論基礎、算法構建以及實施所需的實用技術。
讀者將深入了解微分方程、數值方法、神經網絡架構、邊界和初始值問題、優化和抽樣方法,以及遷移學習策略。無論您是學生、研究者還是實務工作者,本書都將為您提供探索和貢獻於這一快速發展的科學與技術前沿領域所需的知識和工具。