posted on 2025-03-24, 16:05authored byJiaqing Zhu, Lechen Chen, Wangze Ni, Weiwei Cheng, Zhi Yang, Shusheng Xu, Tao Wang, Bowei Zhang, Fuzhen Xuan
Gas sensor arrays designed for pattern recognition face
persistent
challenges in achieving high sensitivity and selectivity for multiple
volatile organic compounds (VOCs), particularly under varying environmental
conditions. To address these limitations, we developed multimodal
intelligent MEMS gas sensors by precisely tailoring the nanocomposite
ratio of NiO and ZnO components. These sensors demonstrate enhanced
responses to ethylene glycol (EG) and limonene (LM) at different operating
temperatures, demonstrating material-specific selectivity. Additionally,
a multitask deep learning model is employed for real-time, quantitative
detection of VOCs, accurately predicting their concentration and type.
These results showcase the effectiveness of combining material optimization
with advanced algorithms for real-world VOCs detection, advancing
the field of odor analysis tools.