2024
DOI: 10.1021/acssuschemeng.3c08356
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Enhancing Predictions of Acetate and Ethanol Production from Microbial Electrosynthesis Using Optimized Machine Learning Models

Chunyan Li,
Huyang Li,
Pengsong Li
et al.

Abstract: Microbial electrosynthesis (MES) offers a promising pathway for CO 2 -based sustainable chemical production. However, the accurate prediction of product yields, notably acetate and ethanol concentrations, has been challenging. Here, we employed machine learning (ML) algorithms, including random forest, gradient-boosted decision trees, and eXtreme gradient boosting (XGBoost), to address this challenge. The models were trained on experimental data gathered by varying cathode material, pH, applied potential, temp… Show more

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