📣 Help Shape the Future of UKRI's Gateway to Research (GtR)

We're improving UKRI's Gateway to Research and are seeking your input! If you would be interested in being interviewed about the improvements we're making and to have your say about how we can make GtR more user-friendly, impactful, and effective for the Research and Innovation community, please email gateway@ukri.org.

Real time optimisation of laser-matter interaction experiments using Machine Learning

Lead Research Organisation: Imperial College London
Department Name: Physics

Abstract

The goal of this project is to explore the effectiveness of Machine Learning for the real-time control and optimisation of laser-matter experiments. The initial goal will be to maximise the number of x-ray photons produced via the process of high harmonic generation (HHG), where an intense, infra-red femtosecond laser pulse interacts with a gas sample. The student will need to set up an experimental system, where a computer changes the experimental parameters in real-time under control of a computer code while recording the x-ray flux measured with an x-ray detector (for example, the pulse intensity is computer controlled via a motorised waveplate in combination with a polariser, the gas density is computer controlled via an electronic valve etc). A variety of computational approaches will be explored, including Bayesian Optimisation, Genetic Algorithms and Neural Networks. HHG optimisation provides a useful starting point for this project since this is an important and long-standing problem that has been tackled in numerous ways in the scientific literature and will provide useful benchmarking. This would provide a foundation for exploring the control and optimisation of other experiments, e.g., the interaction of two light pulses with a molecular sample, where the products are ions and electrons measured using time-of-flight spectroscopy and velocity map imaging and one wants to maximise (or minimise) a particular ionisation or fragmentation channel.

People

ORCID iD

Tim KLEE (Student)

Publications

10 25 50

Studentship Projects

Project Reference Relationship Related To Start End Student Name
EP/T51780X/1 30/09/2020 29/09/2025
2759310 Studentship EP/T51780X/1 30/09/2022 30/03/2026 Tim KLEE
EP/W524323/1 30/09/2022 29/09/2028
2759310 Studentship EP/W524323/1 30/09/2022 30/03/2026 Tim KLEE