Synergistic Integration of Frequency-Dependent Impedance and Machine Learning in Semiconductor Metal Oxide-Based Breath Sensors for High-Performance Gas Discrimination
Frequency-dependent impedance spectroscopy in combination with machine learning offers a powerful strategy for discriminating among gas species using mutually interacting semiconductor metal oxide (SMO) gas sensors. In this study, 0.3 at% platinum-loaded SnO2 sensing materials were employed to breath-based disease detection, with a focus on machine learning-assisted discrimination of mixtures of acetone (0.5-2.5 ppm) and ethanol (0.5-2.5 ppm) under both dry and humid environments (80% relative humidity). Data features derived from the real, imaginary, and magnitude components of complex impedance obtained at the frequency range from 105 to 104 Hz were used to enhance gas discrimination performance through supervised deep learning neural networks (DNNs). Even with a single sensor designed through structural and compositional modifications, frequency-dependent impedance features enabled accurate identification of acetone concentrations in acetone-ethanol mixtures under humid conditions, achieving 99% accuracy using single-frequency impedance data (i.e., 105 Hz), compared to 66% with DC-based (voltage) signals. This innovative strategy offers an effective and scalable solution for detecting not only breath acetone but also gas mixtures composed of chemically similar gas species.