Toward Totally Defined Nanocatalysis: Deep Learning Reveals the Extraordinary Activity of Single Pd/C Particles.
Dmitry B EreminAlexey S GalushkoDaniil A BoikoEvgeniy O PentsakIgor V ChistyakovValentine P AnanikovPublished in: Journal of the American Chemical Society (2022)
Homogeneous catalysis is typically considered "well-defined" from the standpoint of catalyst structure unambiguity. In contrast, heterogeneous nanocatalysis often falls into the realm of "poorly defined" systems. Supported catalysts are difficult to characterize due to their heterogeneity, variety of morphologies, and large size at the nanoscale. Furthermore, an assortment of active metal nanoparticles examined on the support are negligible compared to those in the bulk catalyst used. To solve these challenges, we studied individual particles of the supported catalyst. We made a significant step forward to fully characterize individual catalyst particles. Combining a nanomanipulation technique inside a field-emission scanning electron microscope with neural network analysis of selected individual particles unexpectedly revealed important aspects of activity for widespread and commercially important Pd/C catalysts. The proposed approach unleashed an unprecedented turnover number of 10 9 attributed to individual palladium on a nanoglobular carbon particle. Offered in the present study is the Totally Defined Catalysis concept that has tremendous potential for the mechanistic research and development of high-performance catalysts.
Keyphrases
- highly efficient
- metal organic framework
- reduced graphene oxide
- room temperature
- visible light
- ionic liquid
- neural network
- deep learning
- carbon dioxide
- single cell
- magnetic resonance imaging
- bone mineral density
- machine learning
- transition metal
- electron microscopy
- human health
- computed tomography
- postmenopausal women
- climate change