Materials Genes of CO 2 Hydrogenation on Supported Cobalt Catalysts: An Artificial Intelligence Approach Integrating Theoretical and Experimental Data.
Ray MiyazakiKendra S BelthleHarun TüysüzLucas FoppaMatthias SchefflerPublished in: Journal of the American Chemical Society (2024)
Designing materials for catalysis is challenging because the performance is governed by an intricate interplay of various multiscale phenomena, such as the chemical reactions on surfaces and the materials' restructuring during the catalytic process. In the case of supported catalysts, the role of the support material can be also crucial. Here, we address this intricacy challenge by a symbolic-regression artificial intelligence (AI) approach. We identify the key physicochemical parameters correlated with the measured performance, out of many offered candidate parameters characterizing the materials, reaction environment, and possibly relevant underlying phenomena. Importantly, these parameters are obtained by both experiments and ab initio simulations. The identified key parameters might be called "materials genes", in analogy to genes in biology: they correlate with the property or function of interest, but the explicit physical relationship is not (necessarily) known. To demonstrate the approach, we investigate the CO 2 hydrogenation catalyzed by cobalt nanoparticles supported on silica. Crucially, the silica support is modified with the additive metals magnesium, calcium, titanium, aluminum, or zirconium, which results in six materials with significantly different performances. These systems mimic hydrothermal vents, which might have produced the first organic molecules on Earth. The key parameters correlated with the CH 3 OH selectivity reflect the reducibility of cobalt species, the adsorption strength of reaction intermediates, and the chemical nature of the additive metal. By using an AI model trained on basic elemental properties of the additive metals (e.g., ionization potential) as physicochemical parameters, new additives are suggested. The predicted CH 3 OH selectivity of cobalt catalysts supported on silica modified with vanadium and zinc is confirmed by new experiments.
Keyphrases
- artificial intelligence
- big data
- machine learning
- deep learning
- metal organic framework
- genome wide
- reduced graphene oxide
- room temperature
- human health
- risk assessment
- high resolution
- mass spectrometry
- body composition
- molecular dynamics
- electronic health record
- dna methylation
- resistance training
- mental health
- genome wide identification
- gold nanoparticles
- candida albicans
- water soluble
- structural basis
- gas chromatography