Methods and Applications of Autonomous Experimentation

 
Edition number: 1
Publisher: Chapman and Hall
Date of Publication:
 
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Product details:

ISBN13:9781032314655
ISBN10:1032314656
Binding:Hardback
No. of pages:444 pages
Size:254x178 mm
Weight:980 g
Language:English
Illustrations: 8 Illustrations, black & white; 118 Illustrations, color; 9 Halftones, color; 8 Line drawings, black & white; 109 Line drawings, color; 5 Tables, black & white
670
Category:

Mathematics in general

Combinatorics and graph theory

Applied mathematics

Mathematics in engineering and natural sciences

Energy industry

Theory of computing, computing in general

Computer architecture, logic design

Supercomputers

Operating systems and graphical user interfaces

Computer programming in general

Software development

High-level programming

Artificial Intelligence

Computer modeling and simulation

Environmental sciences

Economics

Mathematics in general (charity campaign)

Combinatorics and graph theory (charity campaign)

Applied mathematics (charity campaign)

Mathematics in engineering and natural sciences (charity campaign)

Energy industry (charity campaign)

Theory of computing, computing in general (charity campaign)

Computer architecture, logic design (charity campaign)

Supercomputers (charity campaign)

Operating systems and graphical user interfaces (charity campaign)

Computer programming in general (charity campaign)

Software development (charity campaign)

High-level programming (charity campaign)

Artificial Intelligence (charity campaign)

Computer modeling and simulation (charity campaign)

Environmental sciences (charity campaign)

Economics (charity campaign)

Short description:

Illustrating theoretical foundations and incorporating practitioners? first-hand experience, book is a practical guide to successful Autonomous Experimentation.

Long description:

Autonomous Experimentation is poised to revolutionize scientific experiments at advanced experimental facilities. Whereas previously, human experimenters were burdened with the laborious task of overseeing each measurement, recent advances in mathematics, machine learning and algorithms have alleviated this burden by enabling automated and intelligent decision-making, minimizing the need for human interference. Illustrating theoretical foundations and incorporating practitioners? first-hand experiences, this book is a practical guide to successful Autonomous Experimentation.


Despite the field?s growing potential, there exists numerous myths and misconceptions surrounding Autonomous Experimentation. Combining insights from theorists, machine-learning engineers and applied scientists, this book aims to lay the foundation for future research and widespread adoption within the scientific community.


This book is particularly useful for members of the scientific community looking to improve their research methods but also contains additional insights for students and industry professionals interested in the future of the field.

Table of Contents:

Preface


Contributors


Chapter 1 Autonomous Experimentation in Practice
Kevin G. Yager


Chapter 2 A Friendly Mathematical Perspective on Autonomous Experimentation
Marcus M. Noack


Chapter 3 A Perspective on Machine Learning for Autonomous Experimentation
Joshua Schrier and Alexander J. Norquist


Chapter 4 Gaussian Processes
Marcus M. Noack


Chapter 5 Uncertainty Quantification
Mark D. Risser and Marcus M. Noack


Chapter 6 Surrogate Model Guided Optimization
Juliane Mueller


Chapter 7 Artificial Neural Networks
Daniela Ushizima


Chapter 8 NSLS2
Philip M. Maffettone, Daniel B. Allan, Andi Barbour, Thomas A. Caswell, Dmitri Gavrilov, Marcus D. Handwell, Thomas Morris, Daniel Olds, Maksim Rakitin, Stuart I. Campbell and Bruce Ravel


Chapter 9 Reinforcement Learning
Yixuan Sun, Krishnan Raghavan and Prasanna Balaprakash


Chapter 10 Applications of Autonomous Methods to Synchrotron X-ray Scattering and Diffraction Experiments
Masafumi Fukuto, Yu-Chen Wiegart, Marcus M. Noack and Kevin G. Yager


Chapter 11 Autonomous Infrared Absorption Spectroscopy
Hoi-Ying Holman, Steven Lee, Liang Chen, Petrus H. Zwart and Marcus M. Noack


Chapter 12 Autonomous Hyperspectral Scanning Tunneling Spectroscopy
Antonio Rossi, Darian Smalley, Masahiro Ishigami, Eli Rotenberg, Alexander Weber-Barigoni and John C. Thomas


Chapter 13 Autonomous Control and Analyses of Fabricated Ecosystems
Trent R. Northern, Peter Andeer, Marcus M. Noack, Ptrus H. Zwart and Daniela Ushizima


Chapter 14 Autonomous Neutron Experiments
Martin Boehm, David E. Perryman, Alessio De Francesco, Luisa Scaccia, Alessandro Cunsolo, Tobias Weber, Yannick LeGoc and Paolo Mutti


Chapter 15 Material Discovery in Poorly Explored High-Dimensional Targeted Spaces
Suchismita Sarker and Apurva Mehta


Chapter 16 Autonomous Optical Microscopy for Exploring Nucleation and Growth of DNA Crystals
Aaron N. Michelson


Chapter 17 Constratined Autonomous Modelin of Metal-Mineral Adsorption
Elliot Chang, Linda Beverly and Haruko Wainwright


Chapter 18 Physics-In-The-Loop
Aaron Gilad Kusne


Chapter 19 A Closed Loop of Diverse Disciplines
Marucs M. Noack and Kevin G. Yager


Chapter 20 Analysis of Raw Data
Marcus M. Noack and Kevin G. Yager


Chapter 21 Autonomous Intelligent Decision Making
Marcus M. Noack and Kevin G. Yager


Chapter 22 Data Infrastructure
Marcus M. Noack and Kevin G. Yager


Bibliography


Index