inorganic material
CrySPAI: A new Crystal Structure Prediction Software Based on Artificial Intelligence
Wang, Zongguo, Chen, Ziyi, Yuan, Yang, Wang, Yangang
Crystal structure predictions based on the combination of first-principles calculations and machine learning have achieved significant success in materials science. However, most of these approaches are limited to predicting specific systems, which hinders their application to unknown or unexplored domains. In this paper, we present CrySPAI, a crystal structure prediction package developed using artificial intelligence (AI) to predict energetically stable crystal structures of inorganic materials given their chemical compositions. The software consists of three key modules, an evolutionary optimization algorithm (EOA) that searches for all possible crystal structure configurations, density functional theory (DFT) that provides the accurate energy values for these structures, and a deep neural network (DNN) that learns the relationship between crystal structures and their corresponding energies. To optimize the process across these modules, a distributed framework is implemented to parallelize tasks, and an automated workflow has been integrated into CrySPAI for seamless execution. This paper reports the development and implementation of AI AI-based CrySPAI Crystal Prediction Software tool and its unique features.
Retrieval-Retro: Retrieval-based Inorganic Retrosynthesis with Expert Knowledge
Noh, Heewoong, Lee, Namkyeong, Na, Gyoung S., Park, Chanyoung
While inorganic retrosynthesis planning is essential in the field of chemical science, the application of machine learning in this area has been notably less explored compared to organic retrosynthesis planning. In this paper, we propose Retrieval-Retro for inorganic retrosynthesis planning, which implicitly extracts the precursor information of reference materials that are retrieved from the knowledge base regarding domain expertise in the field. Specifically, instead of directly employing the precursor information of reference materials, we propose implicitly extracting it with various attention layers, which enables the model to learn novel synthesis recipes more effectively. Moreover, during retrieval, we consider the thermodynamic relationship between target material and precursors, which is essential domain expertise in identifying the most probable precursor set among various options. Extensive experiments demonstrate the superiority of Retrieval-Retro in retrosynthesis planning, especially in discovering novel synthesis recipes, which is crucial for materials discovery. The source code for Retrieval-Retro is available at https://github.com/HeewoongNoh/Retrieval-Retro.
Precursor recommendation for inorganic synthesis by machine learning materials similarity from scientific literature
He, Tanjin, Huo, Haoyan, Bartel, Christopher J., Wang, Zheren, Cruse, Kevin, Ceder, Gerbrand
Synthesis prediction is a key accelerator for the rapid design of advanced materials. However, determining synthesis variables such as the choice of precursor materials is challenging for inorganic materials because the sequence of reactions during heating is not well understood. In this work, we use a knowledge base of 29,900 solid-state synthesis recipes, text-mined from the scientific literature, to automatically learn which precursors to recommend for the synthesis of a novel target material. The data-driven approach learns chemical similarity of materials and refers the synthesis of a new target to precedent synthesis procedures of similar materials, mimicking human synthesis design. When proposing five precursor sets for each of 2,654 unseen test target materials, the recommendation strategy achieves a success rate of at least 82%. Our approach captures decades of heuristic synthesis data in a mathematical form, making it accessible for use in recommendation engines and autonomous laboratories.
- North America > United States > Minnesota > Hennepin County > Minneapolis (0.28)
- North America > United States > California > Alameda County > Berkeley (0.14)
- Research Report (1.00)
- Instructional Material > Course Syllabus & Notes (0.40)
- Energy (1.00)
- Materials > Chemicals (0.93)
- Government > Regional Government (0.68)
- Education (0.64)
Generative adversarial networks (GAN) based efficient sampling of chemical space for inverse design of inorganic materials
Dan, Yabo, Zhao, Yong, Li, Xiang, Li, Shaobo, Hu, Ming, Hu, Jianjun
A major challenge in materials design is how to efficiently search the vast chemical design space to find the materials with desired properties. One effective strategy is to develop sampling algorithms that can exploit both explicit chemical knowledge and implicit composition rules embodied in the large materials database. Here, we propose a generative machine learning model (MatGAN) based on a generative adversarial network (GAN) for efficient generation of new hypothetical inorganic materials. Trained with materials from the ICSD database, our GAN model can generate hypothetical materials not existing in the training dataset, reaching a novelty of 92.53% when generating 2 million samples. The percentage of chemically valid (charge neutral and electronegativity balanced) samples out of all generated ones reaches 84.5% by our GAN when trained with materials from ICSD even though no such chemical rules are explicitly enforced in our GAN model, indicating its capability to learn implicit chemical composition rules. Our algorithm could be used to speed up inverse design or computational screening of inorganic materials.
- North America > United States > South Carolina > Richland County > Columbia (0.14)
- Asia > China > Guizhou Province (0.04)
How Pope Francis could shape the future of robotics
It might not be the first place you imagine when you think about robots. But in the Renaissance splendour of the Vatican, thousands of miles from Silicon Valley, scientists, ethicists and theologians gather to discuss the future of robotics. The ideas go to the heart of what it means to be human and could define future generations on the planet. The workshop, Roboethics: Humans, Machines and Health was hosted by The Pontifical Academy for Life. The Academy was created 25 years ago by Pope John Paul II in response to rapid changes in biomedicine.
- Europe > Holy See (0.27)
- North America > United States > California (0.25)
- Asia > Japan > Honshū > Kansai > Osaka Prefecture > Osaka (0.05)