2024 AIChE Annual Meeting
(372t) Data-Driven Approach to Automated Reaction Process Analysis
This study presents a data-driven exploration aimed at automating the extraction of reaction mechanisms from time-series concentration data in chemical reactions, alongside the construction of corresponding physical models. We utilized dynamic mode decomposition (DMD) as our primary tool for determining reaction pathways and reaction rate coefficient values directly from the temporal data of reactants and product concentrations. Our research concentrated on the amination and Grignard reactions, both of which are widely used across various chemical processes. This study extended its scope by examining a diverse array of reaction mechanisms, diverging from the foundational reactions under consideration. For each reaction mechanism, we developed comprehensive mechanistic models and generated virtual experimental data through simulation. The implementation of the DMD technique allowed for the precise determination of reaction orders and kinetic parameters from this simulated dataset. As a progression of our work, we plan to undertake the validation of our developed methodology against actual experimental data.
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