Researchers Use Computer Simulations To Test the Promise of Perovskite Solar Cells
Computer simulations and machine learning have provided new insights into how perovskite materials function.
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More stable and efficient materials for solar cells are needed in the green transition. So-called halide perovskites are highlighted as a promising alternative to today’s silicon materials. Researchers at Chalmers University of Technology, in Sweden, using computer simulations and machine learning, have gained new insights into how perovskite materials function, which is an important step forward.
Halide perovskites are a collective name for a group of materials that are considered very promising and cost-effective for flexible and lightweight solar cells and various optical applications, such as LED lighting. This is because many of these materials absorb and emit light in an extremely efficient way. However, perovskite materials may degrade quickly, and in order to know how best to apply these materials, a deeper understanding is required of why this happens and how the material functions.
Computer simulations and machine learning as aids
Within the perovskite group, there are both 3D and 2D materials, the latter often being more stable. Using advanced computer simulations and machine learning, a research team at the Department of Physics at Chalmers University of Technology studied a series of 2D perovskite materials and gained crucial insights into what influences properties. The research results are presented in an article in ACS Energy Letters.
“By mapping out the material in computer simulations and subjecting it to different scenarios, we can draw conclusions about how the atoms in the material react when exposed to heat, light, and so on. In other words, we now have a microscopic description of the material that is independent of what experiments on the material have shown, but which we can show to lead to the same behaviour as the experiments. The difference between simulations and experiments is that we can observe, at a detailed level, exactly what led to the final measurement points in the experiments. This gives us much greater insight into how 2D perovskites work,” says Professor Paul Erhart, a member of the research team.
Both a broader overview and better detail
Using machine learning has been an important approach for the researchers. They have been able to study larger systems, over a longer period, than was previously possible with the standard methods used just a few years ago.
“This has given us both a much broader overview than before, but also the ability to study materials in much more detail. We can see that in these very thin layers of material, each layer behaves differently, and that’s something that is very, very difficult to detect experimentally,” says Associate Professor Julia Wiktor from the research team, which also included researcher Erik Fransson.
Better understanding of the material’s composition
2D perovskite materials consist of inorganic layers stacked on top of each other, separated by organic molecules. Understanding the precise mechanisms that influence the interaction between the layers and these molecules is crucial for designing efficient and stable optoelectronic devices based on perovskite materials.
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Subscribe for FREEThe research results provide greater insight into how 2D perovskite materials can be used to design devices for different applications and temperature variations.
"This really gives us an opportunity to understand where stability can come from in 2D perovskite materials, and thus possibly allows us to predict which linkers and dimensions can make the material both more stable and more efficient at the same time. Our next step is to move to even more complex systems and in particular interfaces that are fundamental for the function of devices,” says Julia Wiktor.
Reference: Fransson E, Wiktor J, Erhart P. Impact of organic spacers and dimensionality on templating of halide perovskites. ACS Energy Lett. 2024;9(8):3947-3954. doi: 10.1021/acsenergylett.4c01283
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