A Priori Calibration of Transient Kinetics Data via Machine Learning
- URL: http://arxiv.org/abs/2109.15042v1
- Date: Mon, 27 Sep 2021 20:15:28 GMT
- Title: A Priori Calibration of Transient Kinetics Data via Machine Learning
- Authors: M. Ross Kunz, Adam Yonge, Rakesh Batchu, Zongtang Fang, Yixiao Wang,
Gregory Yablonsky, Andrew J. Medford, Rebecca Fushimi
- Abstract summary: The temporal analysis of products reactor provides a vast amount of transient kinetic information.
Herein we use machine learning techniques combined with physical constraints to convert the raw instrument signal to chemical information.
- Score: 0.8208704543835964
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The temporal analysis of products reactor provides a vast amount of transient
kinetic information that may be used to describe a variety of chemical features
including the residence time distribution, kinetic coefficients, number of
active sites, and the reaction mechanism. However, as with any measurement
device, the TAP reactor signal is convoluted with noise. To reduce the
uncertainty of the kinetic measurement and any derived parameters or
mechanisms, proper preprocessing must be performed prior to any advanced
analysis. This preprocessing consists of 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 current methodology of preprocessing requires
significant user discretion and reliance on previous experiments that may drift
over time. Herein we use machine learning techniques combined with physical
constraints to convert the raw instrument signal to chemical information. As
such, the proposed methodology demonstrates clear benefits over the traditional
preprocessing in the calibration of the inert and feed mixture products without
need of prior calibration experiments or heuristic input from the user.
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