ÄûÃʵ¼º½

News

Machine learning gives material science researchers a peek at the answer key

A model trained to predict spectroscopic profiles helps to decipher the structure of materials
An illustration with a graph on the left and a molecular structure inset in a cube on the right. Each curve on the graph is a different colour, and each is connected by a line to an inset circle with a specific molecular feature corresponding to that curve. Above the cube with the molecular structure is a squigly arrow coming in, labelled "hv", and a straight arrow going out, labelled "e-". The entire figure (graph and inset cube) is labelled "XPS".
The new algorithm predicts the XPS spectra of complex materials based on individual atomic contributions (Image: Miguel Caro / Aalto University)

Carbon-based materials hold enormous potential for building a sustainable future, but material scientists need tools to properly analyse their atomic structure, which determines their functional properties. X-ray photoelectron spectroscopy (XPS) is one of the tools used to do this, but XPS results can be challenging to interpret. Now, researchers at Aalto have developed a machine-learning tool to improve XPS analyses, which they have made freely available as the .

XPS spectra are graphs with a collection of peaks that reflect the binding energy of the electrons deep in the atoms that make up a material. Because the binding energies depend on the atomic environment, they can be used to infer how the atoms are connected in a particular material or molecule. However, this also makes XPS spectra difficult to interpret, since many factors affect binding energies. The binding energies of different atomic features can also overlap, further complicating the analysis.

To help with this, a team led by Miguel Caro developed a computational method that can predict the binding energy spectrum of a material based on a computer-generated structural model. This simplifies XPS data interpretation by making it possible to match the experimentally observed binding energies against the computational predictions.

The idea itself isn’t new, but the problem has been the computational difficulty of calculating the XPS spectrum of a material accurately. Caro’s team solved this using machine learning. The trick was to train an inexpensive computer algorithm to predict the outcome of a computationally expensive reference method based on an efficient combination of computationally cheap and expensive quantum mechanical data.

The computationally cheaper method, DFT, doesn’t match experimental results very accurately. The more accurate method, GW, takes too long to compute when a molecule has many atoms. ‘We decided to construct a baseline model that uses abundant DFT data and then refine it with scarce and precious GW data. And it worked!’ says Caro.

The resulting algorithm can predict the spectrum of any disordered material made of carbon, hydrogen, and oxygen. ‘The predicted spectra are remarkably close to those obtained experimentally. This opens the door to better integration between experimental and computational characterisation of materials,’ says Caro. Next, the team plan to extend their technique to include a broader range of materials and other types of spectroscopy.

The was published in Chemistry of Materials.

  • Updated:
  • Published:
Share
URL copied!

Read more news

Unite! Seed Fund 2026: Call opens on 20 January. Applications open for student activities, teaching and learning, research and PhD.
Cooperation, Research & Art, Studies, University Published:

Unite! Seed Fund 2026: Call opens on 20 January 2026

Gain an early overview of the Unite! Seed Fund Call of Spring 2026. The call includes three funding lines: Student Activities, Teaching and Learning, and Research and PhD.
Deepika Yadav in the Computer science building in Otaniemi. Photo: Matti Ahlgren.
Appointments Published:

Deepika Yadav leverages technology to improve women's health

Deepika Yadav recently began as an assistant professor at the Department of Computer Science in the field of human-computer interaction (HCI) and interaction design for health and wellbeing.
A large cargo ship loaded with colourful containers sails across the blue ocean under a partly cloudy sky.
Research & Art Published:

Study: Internal combustion engine can achieve zero-emission combustion and double efficiency

A new combustion concept that utilizes argon could completely eliminate nitrogen oxide emissions from internal combustion engines and double their efficiency compared to diesel engines.
Microscopic view of several rod-shaped bacteria with hair-like structures, set against a dark red background.
Press releases, Research & Art Published:

A new way to measure contagion: the gut bacterium behind blood poisoning can spread like influenza

Neither the antibiotic-resistant nor the highly virulent strains are the most transmissible.