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Machine learning-motivated trace triethylamine identification by bismuth vanadate/tungsten oxide heterostructures

JOURNAL OF COLLOID AND INTERFACE SCIENCE [2025]
Wei Ding, Min Feng, Ziqi Zhang, Faying Fan, Long Chen, Kewei Zhang
ABSTRACT

Triethylamine, an extensively used material in industrial organic synthesis, is hazardous to the human respiratory and nervous systems, but its accurate detection and prediction has been a long-standing challenge. Herein, a machine learning-motivated chemiresistive sensor that can predict ppm-level triethylamine is designed. The zero-dimensional (0D) bismuth vanadate (BiVO 4 ) nanoparticles were anchored on the surface of three-dimensional (3D) tungsten oxide (WO 3 ) architectures to form hierarchical BiVO 4 /WO 3 heterostructures, which demonstrates remarkable triethylamine-sensing performance such as high response of 21 (4 times higher than pristine WO 3 ) at optimal temperature of 190 °C, low detection limit of 57 ppb, long-term stability, reproducibility and good anti-interference property. Furthermore, an intelligent framework with good visibility was developed to identify ppm-level triethylamine and predict its definite concentration. Using feature parameters extracted from the sensor responses, the machine learning-based classifier provides a decision boundary with 92.3 % accuracy, and the prediction of unknown gas concentration was successfully achieved by linear regression model after training a series of as-known concentrations. This work not only provides a fundamental understanding of BiVO 4 -based heterostructures in gas sensors but also offers an intelligent strategy to identify and predict trace triethylamine under an interfering atmosphere.

MATERIALS

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