商品描述
This book enables readers to understand, model, and predict complex dynamical systems using new methods with stochastic tools. The author presents a unique combination of qualitative and quantitative modeling skills, novel efficient computational methods, rigorous mathematical theory, as well as physical intuitions and thinking. An emphasis is placed on the balance between computational efficiency and modeling accuracy, providing readers with ideas to build useful models in practice. Successful modeling of complex systems requires a comprehensive use of qualitative and quantitative modeling approaches, novel efficient computational methods, physical intuitions and thinking, as well as rigorous mathematical theories. As such, mathematical tools for understanding, modeling, and predicting complex dynamical systems using various suitable stochastic tools are presented. Both theoretical and numerical approaches are included, allowing readers to choose suitable methods in different practical situations. The author provides practical examples and motivations when introducing various mathematical and stochastic tools and merges mathematics, statistics, information theory, computational science, and data science. In addition, the author discusses how to choose and apply suitable mathematical tools to several disciplines including pure and applied mathematics, physics, engineering, neural science, material science, climate and atmosphere, ocean science, and many others. Readers will not only learn detailed techniques for stochastic modeling and prediction, but will develop their intuition as well. Important topics in modeling and prediction including extreme events, high-dimensional systems, and multiscale features are discussed.
商品描述(中文翻譯)
本書使讀者能夠理解、建模和預測複雜的動態系統,並使用新的隨機工具方法。作者展示了定性與定量建模技能的獨特結合、創新的高效計算方法、嚴謹的數學理論,以及物理直覺和思維。書中強調計算效率與建模準確性之間的平衡,為讀者提供在實踐中建立有用模型的思路。成功建模複雜系統需要全面運用定性和定量建模方法、創新的高效計算方法、物理直覺和思維,以及嚴謹的數學理論。因此,書中介紹了使用各種合適的隨機工具來理解、建模和預測複雜動態系統的數學工具。書中包含理論和數值方法,讓讀者能夠在不同的實際情況中選擇合適的方法。作者在介紹各種數學和隨機工具時提供了實際範例和動機,並融合了數學、統計學、信息理論、計算科學和數據科學。此外,作者討論了如何選擇和應用合適的數學工具於多個學科,包括純數學和應用數學、物理學、工程學、神經科學、材料科學、氣候與大氣科學、海洋科學等。讀者不僅將學習到隨機建模和預測的詳細技術,還將發展他們的直覺。書中討論了建模和預測中的重要主題,包括極端事件、高維系統和多尺度特徵。
作者簡介
Nan Chen, Ph.D., is an Assistant Professor in the Department of Mathematics at the University of Wisconsin-Madison. He is also a Faculty Affiliate of the Institute for Foundations of Data Science. Dr. Chen received his Ph.D. from the Courant Institute of Mathematical Sciences and the Center of Atmosphere and Ocean Science at New York University. Dr. Chen's research interests include contemporary applied mathematics, stochastic modeling, data assimilation, uncertainty quantification, geophysical fluids, dynamical systems, scientific computing, machine learning, and general data science. He is also active in developing both dynamical and stochastic models and uses these models to predict real-world phenomena related to atmosphere-ocean science, climate, geophysics, and many other complex systems such as the Madden-Julian Oscillation (MJO), the monsoon, the El Nino-Southern Oscillation (ENSO), and the sea ice based on real observational data. Dr. Chen's research work has beenpublished in top journals in both applied mathematics and many interdisciplinary areas.
作者簡介(中文翻譯)
Nan Chen, Ph.D.,是威斯康辛大學麥迪遜分校數學系的助理教授。他同時也是數據科學基礎研究所的教職員夥伴。陳博士在紐約大學的Courant數學科學研究所及大氣與海洋科學中心獲得博士學位。陳博士的研究興趣包括當代應用數學、隨機建模、數據同化、不確定性量化、地球物理流體、動力系統、科學計算、機器學習以及一般數據科學。他也積極開發動態和隨機模型,並利用這些模型來預測與大氣-海洋科學、氣候、地球物理學及許多其他複雜系統(如馬登-朱利安振盪(MJO)、季風、厄爾尼諾-南方震盪(ENSO)以及基於實際觀測數據的海冰)相關的現實現象。陳博士的研究成果已發表於應用數學及許多跨學科領域的頂尖期刊。