¾ÅÖÝÓ°Ôº

Important update on event submissions and edits 01-May-2024
We are currently transitioning to a new RSC events submission system and website.
• New event submissions may take up to one week to be published while we complete the transition.
• Editing existing events is temporarily unavailable. New edit links will be issued next week.
Your patience is appreciated while we finalise these improvements to the RSC events website.
If you have any questions, please contact the Events Database Team eventsdatabase@rsc.org

Machine learning and Inverse design of soft materials

19 February 2025 16:00-17:00


Introduction
Predicting the emergent properties of a material from a microscopic description is a scientific challenge. Machine learning and reverse-engineering have opened new paradigms in the understanding and design of materials. However, this approach for the design of soft materials is highly non-trivial. The main difficulty stems from the importance of entropy, the ubiquity of multi-scale and many-body interactions, and the prevalence of non-equilibrium and active matter systems. The abundance of exotic soft-matter phases with (partial) orientation and positional order like liquid crystals, quasicrystals, plastic crystals, along with the omnipresent thermal noise, makes the classification of these states of matter using ML tools highly non-trivial. In this talk, I will address questions like: Can we use machine learning to autonomously identify local structures [1], detect phase transitions, classify phases and find the corresponding order parameters [2] in soft-matter systems, can we identify the kinetic pathways for phase transformations [1], and can we use machine learning to coarse-grain our models? [3,4] Finally, I will show how one can use machine learning to reverse-engineer the particle interactions to stabilize nature’s impossible phase of matter, namely quasicrystals? [5]
 
[1] An artificial neural network reveals the nucleation mechanism of a binary colloidal AB13 crystal
G.M. Coli and M. Dijkstra, ASC Nano 15, 4335-4346 (2021).
[2] Classifying crystals of rounded tetrahedra and determining their order parameters using dimensionality reduction
R. van Damme, G.M. Coli, R. van Roij, and M. Dijkstra, ACS Nano 14, 15144-15153 (2020).
[3] Machine learning many-body potentials for colloidal systems
G. Campos-Villalobos, E. Boattini, L. Filion and M. Dijkstra, The Journal of Chemical Physics 155 (17), 174902 (2021).
[4] Machine-learning effective many-body potentials for anisotropic particles using orientation-dependent symmetry functions
G. Campos-Villalobos, G. Giunta, S. Marín-Aguilar and M. Dijkstra, The Journal of Chemical Physics 157 (2), 024902 (2022).
[5] Inverse design of soft materials via a deep learning–based evolutionary strategy
G.M. Coli, E. Boattini, L. Filion, and M. Dijkstra, Science Advances 8 (3), eabj6731 (2022).
Speakers
Committee
Contact information
Search
 
 
Showing all upcoming events
Start Date
End Date
Location
Subject area
Event type

Advertisement
Spotlight


E-mail Enquiry
*
*
*
*