Deep Learning-Assisted Colorimetric/Electrical Dual-Sensing System for Ultrafast Detection of Hydrogen Sulfide.
Yajing ChenDongzhi ZhangMingcong TangZijian WangPublished in: ACS sensors (2024)
This study presents a colorimetric/electrical dual-sensing system (CEDS) for low-power, high-precision, adaptable, and real-time detection of hydrogen sulfide (H 2 S) gas. The lead acetate/poly(vinyl alcohol) (Pb(Ac) 2 /PVA) nanofiber film was transferred onto a polyethylene terephthalate (PET) flexible substrate by electrospinning to obtain colorimetric/electrical sensors. The CEDS was constructed to simultaneously record both the visual and electrical response of the sensor, and the improved Manhattan segmentation algorithm and deep neural network (DNN) were used as its intelligent algorithmic aids to achieve quantitative exposure to H 2 S. By exploring the mechanism of color change and resistance response of the sensor, a dual-sensitivity mechanism explanation model was proposed to verify that the system, as a dual-mode parallel system, can adequately solve the sensor redundancy problem. The results show that the CEDS can achieve a wide detection range of H 2 S from 0.1-100 ppm and identify the H 2 S concentration in 4 s at the fastest. The sensor can be stabilized for 180 days with excellent selectivity and a low limit of detection (LOD) to 0.1 ppm of H 2 S. In addition, the feasibility of the CEDS for measuring H 2 S levels in underground waterways was validated. This work provides a new method for adaptable, wide range of applications and low-power, high-precision H 2 S gas detection.