Internal calibration of transient kinetic data via machine learning

M. Ross Kunz, Adam Yonge, Xiaolong He, Rakesh Batchu, Zongtang Fang, Yixiao Wang, Gregory S. Yablonsky, Andrew J. Medford, Rebecca R. Fushimi

Research output: Contribution to journalArticlepeer-review

Abstract

The temporal analysis of products (TAP) reactor provides a vast amount of transient kinetic information that may be used to describe a variety of chemical features including residence time distributions, kinetic coefficients, number of active sites, reaction mechanism, etc. However, as with any measurement device, the TAP reactor signal is convoluted with noise and drift is common. To reduce the uncertainty of the kinetic measurement and any derived parameters or mechanisms, proper preprocessing must be performed prior to any advanced type of analysis. This preprocessing includes baseline correction, i.e., a shift in the voltage response, and calibration, i.e., a scaling of the flux response based on prior experiments. The traditional methodology of preprocessing requires significant user discretion and reliance on separate calibration experiments that may drift over time. Herein we use machine learning techniques combined with physical constraints to understand the noise and drift that is being generated within and between experiments for enhancement of the chemical kinetic signal. As such, the proposed methodology demonstrates clear benefits over the traditional preprocessing approach by eliminating the need for separate calibration experiments or heuristic input from the user.

Original languageEnglish
Article number113650
JournalCatalysis Today
Volume417
Early online dateFeb 22 2022
DOIs
StatePublished - May 1 2023

Keywords

  • Calibration
  • Cheminformatics
  • Convex optimization
  • TAP
  • Transient Kinetics

Fingerprint

Dive into the research topics of 'Internal calibration of transient kinetic data via machine learning'. Together they form a unique fingerprint.

Cite this