Scientists develop new algorithm that may provide insights into battery corrosion

Scientists develop new algorithm that may provide insights into battery corrosion
Schematic of the neural network structure of AutoPhaseNN model during training. a) The model consists of a 3D CNN and the X-ray scattering forward model. The 3D CNN is implemented with a convolutional auto-encoder and two deconvolutional decoders using the convolutional, maximum pooling, upsampling and zero padding layers. The physical knowledge is enforced via the Sigmoid and Tanh activation functions in the final layers. b) The X-ray scattering forward model includes the numerical modeling of diffraction and the image shape constraints. It takes the amplitude and phase from the 3D CNN output to form the complex image. Then the estimated diffraction pattern is obtained from the FT of the current estimation of the real space image. Credit: npj Computational Materials (2022). DOI: 10.1038/s41524-022-00803-w

Argonne researchers have created an automatic technique that can fill in gaps in X-ray data.

Putting together a jigsaw puzzle is a great activity for a rainy Sunday afternoon. But the somewhat more difficult process of quickly assembling 3D scientific jigsaw puzzles—atomic structures of different materials—has recently gotten a lot easier, thanks to new research that pairs high-powered X-ray beams with advanced computing methodologies.

Researchers at the U.S. Department of Energy's (DOE) Argonne National Laboratory have developed a new technique that accelerates the solving of material structures from patterns uncovered in X-ray experiments. The technique allows researchers to study certain properties, such as or and discharging, in real time.

The technique, called AutoPhaseNN, is based on a method called , which trains an algorithm on certain experimental data and then uses it to choose the most likely outcome of the current experiment. The data used in this case are created by shining ultrabright X-ray beams from Argonne's Advanced Photon Source (APS) on a material and capturing the light as they bounce off, a process called diffraction. The APS is a DOE Office of Science user facility at Argonne.

New techniques are important as the APS is in the midst of a massive upgrade, which will increase the brightness of its X-ray beams by up to 500 times. This means that more data will be gathered more quickly once the upgraded APS comes online in 2024, and scientists will need a way to keep up with analysis of that data. Machine learning solutions such as AutoPhaseNN will be a vital part of the more rapid data analyses needed in the future at APS, as well as similar facilities around the globe.

AutoPhaseNN is an example of an "unsupervised" machine learning, which means that the computer algorithm learns from its own experience how to do a computation more accurately and efficiently, without having to be trained with labeled solutions that have already been figured out, a process that usually involves human intervention.

"This new algorithm is essentially able to solve what we call an inverse problem, going from the pieces of the puzzle to create the puzzle itself," said Argonne computational scientist and group leader Mathew Cherukara, an author of the study. "In essence, we're taking a set of observations and trying to identify the conditions that created them. Instead of solving the puzzle by iterating the process of trial and revision based on the prior knowledge, our algorithm assembles the puzzle from the broken pieces in a single step."

Getting information about the structure of a material requires scientists to obtain information pertaining not only to the amplitude of the diffracted signal, but also its phase. However, the amplitude, or intensity, is the only part that can be directly measured.

Because the X-ray beams used to illuminate the sample are coherent—meaning they all share the same phase initially—whatever change to the phase occurs as a result of the diffraction can be mapped back to the sample itself, said Argonne nanoscientist and co-author Henry Chan.

"Phase retrieval is essential for understanding the structure—most of the relevant information is found in the phase," said lead author Yudong Yao, an Argonne X-ray physicist at the time of this research. "With the kind of diffraction we're doing, getting the phase information is a challenge; it's like figuring out how all the pieces fit together solely based on the colors you can see on each piece."

For conventional, supervised to solve this inverse problem, the researchers would have had to pair "broken puzzles" with fully assembled examples so that the could have something to train against. With an unsupervised neural network, the algorithm can learn to stitch together the puzzle from just the broken pieces. The resulting network is fast, accurate and (unlike conventional methods) capable of providing 3D images in real time to scientific users of facilities like the APS.

A paper based on the study is published in npj Computational Materials.

More information: Yudong Yao et al, AutoPhaseNN: unsupervised physics-aware deep learning of 3D nanoscale Bragg coherent diffraction imaging, npj Computational Materials (2022). DOI: 10.1038/s41524-022-00803-w

Citation: Scientists develop new algorithm that may provide insights into battery corrosion (2022, November 3) retrieved 15 July 2024 from
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