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Subgraph Isomorphic Decision Tree to Predict Radical Thermochemistry with Bounded Uncertainty Estimation. | LitMetric

AI Article Synopsis

  • Detailed chemical kinetic models are crucial for understanding industrial processes, and accurate radical thermochemistry estimation is essential for generating reliable kinetic models efficiently.* -
  • The subgraph isomorphic decision tree (SIDT) algorithm has been enhanced to estimate hydrogen bond increment (HBI) corrections, improving accuracy and providing better uncertainty estimates compared to traditional methods.* -
  • A comprehensive data set of thermochemical parameters for 2210 radicals was created, enabling the SIDT model to offer automatic generation of estimators, enhanced speed, and more precise predictions for radical thermochemistry.*

Article Abstract

Detailed chemical kinetic models offer valuable mechanistic insights into industrial applications. Automatic generation of reliable kinetic models requires fast and accurate radical thermochemistry estimation. Kineticists often prefer hydrogen bond increment (HBI) corrections from a closed-shell molecule to the corresponding radical for their interpretability, physical meaning, and facilitation of error cancellation as a relative quantity. Tree estimators, used due to limited data, currently rely on expert knowledge and manual construction, posing challenges in maintenance and improvement. In this work, we extend the subgraph isomorphic decision tree (SIDT) algorithm originally developed for rate estimation to estimate HBI corrections. We introduce a physics-aware splitting criterion, explore a bounded weighted uncertainty estimation method, and evaluate aleatoric uncertainty-based and model variance reduction-based prepruning methods. Moreover, we compile a data set of thermochemical parameters for 2210 radicals involving C, O, N, and H based on quantum chemical calculations from recently published works. We leverage the collected data set to train the SIDT model. Compared to existing empirical tree estimators, the SIDT model (1) offers an automatic approach to generating and extending the tree estimator for thermochemistry, (2) has better accuracy and , (3) provides significantly more realistic uncertainty estimates, and (4) has a tree structure much more advantageous in descent speed. Overall, the SIDT estimator marks a great leap in kinetic modeling, offering more precise, reliable, and scalable predictions for radical thermochemistry.

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Source
http://dx.doi.org/10.1021/acs.jpca.4c00569DOI Listing

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