Buch, Englisch, 381 Seiten, Format (B × H): 160 mm x 241 mm, Gewicht: 752 g
Buch, Englisch, 381 Seiten, Format (B × H): 160 mm x 241 mm, Gewicht: 752 g
Reihe: Engineering Applications of Computational Methods
ISBN: 978-981-99-2523-0
Verlag: Springer
This book provides a comprehensive review of the latest modelling developments in flow batteries, as well as some new results and insights. Flow batteries have long been considered the most flexible answer to grid scale energy storage, and modelling is a key component in their development. Recent modelling has moved beyond macroscopic methods, towards mesoscopic and smaller scales to select materials and design components. This is important for both fundamental understanding and the design of new electrode, catalyst and electrolyte materials. There has also been a recent explosion in interest in machine learning for electrochemical energy technologies. The scope of the book includes these latest developments and is focused on advanced techniques, rather than traditional modelling paradigms. The aim of this book is to introduce these concepts and methods to flow battery researcher, but the book would have a much broader appeal since these methods also employed in other battery and fuel cell systems and far beyond. The methods will be described in detail (necessary fundamental material in Appendices). The book appeals to graduate students and researchers in academia/industry working in electrochemical systems, or those working in computational chemistry/machine learning wishing to seek new application areas.
Zielgruppe
Research
Autoren/Hrsg.
Fachgebiete
- Mathematik | Informatik EDV | Informatik Professionelle Anwendung Computersimulation & Modelle, 3-D Graphik
- Technische Wissenschaften Maschinenbau | Werkstoffkunde Technische Mechanik | Werkstoffkunde
- Naturwissenschaften Physik Physik Allgemein Theoretische Physik, Mathematische Physik, Computerphysik
- Technische Wissenschaften Technik Allgemein Modellierung & Simulation
Weitere Infos & Material
Chapter 1: Introduction to Energy Storage
Content: the role and types of energy storage, the need for medium- to large-scale storage solutions and the role of flow batteries
Authors: Puki Leung and Akeel ShahChapter 2: Introduction to Flow Batteries
Content: operating principles, types, architectures, materials, latest developments and opportunities for modelling
Authors: Puki Leung and Akeel Shah
Chapter 3: An Introduction Flow Battery Modelling
Content: Types of models from nanoscale to systems level, covering electronic structure (ab-initio) calculations, microscale (molecular dynamics), mesco-scale models and macroscale models. Derivations will be providedAuthors: Akeel Shah
Chapter 4: Latest Developments in Macroscale Models
Content: discussions on models for the design of systems, optimization and control, covering recent advances, new results and proposing new directions
Authors: Xu Qian
Chapter 5: Latest Developments in Ab-Initio to Mesoscopic Models
Content: discussions on models for computational screening or development of new materials, gaining fundamental insight into charge and mass transport, covering recent advances, new results and proposing new directions
Authors: Pang-Cheng Sui and Akeel ShahChapter 6: Machine Learning for Flow Battery Systems
Content: discussions on surrogate models for flow batteries based on machine learning and multi-fidelity approaches, machine learning for analyzing experimental data, machine learning methods for degradation analyses and prediction of capacity fade/end-of-life and future approaches involving deep learning for imaging of electrodes and machine learning for multiscale models, with new results and insights
Authors: Akeel Shah and Xing Wei
Chapter 7: Future Flow Battery Modelling
Content: A concise summary of the state of flow battery modelling and opportunities for future development
Authors: All authors
Bibliography
Appendices: Background material on numerical methods, including: finite difference, volume, element; linear algebra and solutions to linear systems; optimization techniques; probability, random variables and random process.
Authors: Akeel Shah and Xing WeiSupplementary: Selected Matlab and Python codes related to machine learning (Gaussian process and deep learning models)
Authors: Akeel Shah and Xing Wei




