Mechanism Deduction from Noisy Chemical Reaction Networks
Jonny Proppe, Markus Reiher

TL;DR
KiNetX is an automated meta-algorithm that efficiently analyzes complex chemical reaction networks, handling model errors and uncertainty propagation to deduce key reaction mechanisms and properties from semi-accurate electronic data.
Contribution
It introduces KiNetX, a novel method for kinetic analysis that propagates uncertainties and reduces network complexity, enabling reliable mechanism deduction from approximate electronic structure calculations.
Findings
KiNetX accurately predicts product ratios and dominant pathways.
The method effectively manages model-inherent errors in electronic structure data.
Uncertainty propagation improves the reliability of kinetic analysis.
Abstract
We introduce KiNetX, a fully automated meta-algorithm for the kinetic analysis of complex chemical reaction networks derived from semi-accurate but efficient electronic structure calculations. It is designed to (i) accelerate the automated exploration of such networks, and (ii) cope with model-inherent errors in electronic structure calculations on elementary reaction steps. We developed and implemented KiNetX to possess three features. First, KiNetX evaluates the kinetic relevance of every species in a (yet incomplete) reaction network to confine the search for new elementary reaction steps only to those species that are considered possibly relevant. Second, KiNetX identifies and eliminates all kinetically irrelevant species and elementary reactions to reduce a complex network graph to a comprehensible mechanism. Third, KiNetX estimates the sensitivity of species concentrations toward…
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