Measuring self-assembled micelle topologies of functionalised rylenes to build a predictive machine learning model
收藏DataCite Commons2024-02-12 更新2025-04-15 收录
下载链接:
https://doi.esrf.fr/10.15151/ESRF-ES-1428654393
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资源简介:
This project centres around the creation of machine learning models which will ultimately allow for the prediction of the morphology and ultimately the physical properties of self-assembled aggregates. Due to the mechanisms which lead to molecular self-assembly being poorly understood, the design of new materials for devices is often unachievable. We therefore are developing a model that would predict the morphology of the aggregate from chemical structure alone. In order to generate models capable of predicting the properties of self-assembled aggregates, high-resolution data across a range of compounds needs to be acquired to achieve a prediction with sufficient confidence in order to be useful. This could pave the way for the design of responsive organic materials with the capability of replacing metals in high-value mechanoresponsive devices, amongst other applications.
提供机构:
European Synchrotron Radiation Facility
创建时间:
2024-02-12



