CarAT: Carbon Atom Tracing across Industrial Chemical Value Chains via Chemistry Language Models
Emma Pajak, David Walz, Olga Walz, Laura Marie Helleckes, Klaus Hellgardt, Antonio del Rio Chanona

TL;DR
CarAT is an automated, scalable method that uses chemistry language models and data analysis to accurately track biogenic carbon content across industrial chemical value chains, supporting sustainability and compliance.
Contribution
This work introduces CarAT, a novel automated approach leveraging chemistry language models and linear programming for real-time biogenic carbon content calculation in industrial processes.
Findings
Validated on a 27-node industrial toluene diisocyanate chain
Successfully analyzed scenarios with fossil and renewable feedstocks
Visualized carbon flow with Sankey diagrams
Abstract
The chemical industry is increasingly prioritising sustainability, with a focus on reducing carbon footprints to achieve net zero. By 2026, the Together for Sustainability (TfS) consortium will require reporting of biogenic carbon content (BCC) in chemical products, posing a challenge as BCC depends on feedstocks, value chain configuration, and process-specific variables. While carbon-14 isotope analysis can measure BCC, it is impractical for continuous industrial monitoring. This work presents CarAT (Carbon Atom Tracker), an automated methodology for calculating BCC across industrial value chains, enabling dynamic and accurate sustainability reporting. The approach leverages existing Enterprise Resource Planning data in three stages: (1) preparing value chain data, (2) performing atom mapping in chemical reactions using chemistry language models, and (3) applying a linear program to…
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