Illustrating theoretical foundations and incorporating practitioners’ first-hand experience, book is a practical guide to successful Autonomous Experimentation.
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 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
Marcus Noack received his Ph.D. in applied mathematics from Oslo University, Norway.
At Lawrence Berkeley National Laboratory he is working on stochastic function approximation, optimization, and uncertainty quantification, applied to Autonomous Experimentation.
Daniela Ushizima, Ph.D. from the University of Sao Paulo, Brazil, majored in computer science and has been associated with Lawrence Berkeley National Laboratory since 2007, where she investigates machine learning algorithms applied to image processing. Her primary focus has been on developing computer vision software for scientific imaging.