A machine learning framework for the analysis and pbkp_rediction of catalytic activity from experimental data


Abstract:

We present a machine learning framework to explore the pbkp_redictability limits of catalytic activity from experimental descriptor data (which characterizes catalyst formulations and reaction conditions). Artificial neural networks are used to fuse descriptor data to pbkp_redict activity and we use principal component analysis (PCA) and sparse PCA to project the experimental data into an information space and with this identify regions that exhibit low- and high-pbkp_redictability. Our framework also incorporates a constrained-PCA optimization formulation that identifies new experimental points while filtering out regions in the experimental space due to constraints on technology, economics, and expert knowledge. This allows us to navigate the experimental space in a more targeted manner. Our framework is applied to a comprehensive water–gas shift reaction data set, which contains 2228 experimental data points collected from the literature. Neural network analysis reveals strong pbkp_redictability of activity across reaction conditions (e.g., varying temperature) but also reveals important gaps in pbkp_redictability across catalyst formulations (e.g., varying metal, support, and promoter). PCA analysis reveals that these gaps are due to the fact that most experiments reported in the literature lie within narrow regions in the information space. We demonstrate that our framework can systematically guide experiments and the selection of descriptors in order to improve pbkp_redictability and identify new promising formulations.

Año de publicación:

2020

Keywords:

  • pbkp_redictability
  • Data Analysis
  • Catalysis
  • High-dimensional
  • Machine learning

Fuente:

scopusscopus

Tipo de documento:

Article

Estado:

Acceso restringido

Áreas de conocimiento:

  • Aprendizaje automático
  • Catálisis
  • Ciencias de la computación

Áreas temáticas:

  • Métodos informáticos especiales
  • Funcionamiento de bibliotecas y archivos
  • Química física