无定形固体
材料科学
丙酮
退火(玻璃)
钴
氧化物
兴奋剂
氧化钴
硼
化学工程
纳米技术
光电子学
化学
结晶学
复合材料
有机化学
冶金
工程类
作者
Liang Zhao,Sun Zhi,Chengchao Yu,Yunpeng Xing,Hongda Zhang,Teng Fei,Sen Liu,Haiyan Zhang,Tong Zhang
出处
期刊:ACS Sensors
[American Chemical Society]
日期:2025-08-14
卷期号:10 (9): 6665-6677
被引量:6
标识
DOI:10.1021/acssensors.5c01181
摘要
Enhancing the gas-solid interface interaction between sensing materials and O2 is promising for the development of high-performance metal oxide-based chemiresistive gas sensors. Nevertheless, high-performance gas sensors have not been developed owing to the lack of a deep understanding of the sensing mechanism with regards to gas-solid interface interactions. In this study, boron-doped cobalt oxide (B-Co3O4) with crystalline/amorphous interfaces was synthesized for acetone detection. The crystalline/amorphous interfaces reduce the valence of Co species (64.2% Co2+) and endow sensing materials with rich oxygen vacancies. The improvement of gas-solid interactions by modulating the d-band center (increase from -3.34 eV to -2.67 eV) level was innovatively developed by the novel in situ construction of crystalline/amorphous interfaces through a low-temperature annealing strategy, subsequently leading to improved acetone-sensing performance. Theoretical calculations and energy band structure analysis revealed that the construction of crystalline/amorphous interfaces led to an upshift in the d-band center of Co3O4 from -3.34 eV to -2.67 eV, which enhanced the interaction between Co 3d and O 2p, thus accelerating the interaction of BCo-225 and O2. Consequently, the BCo-225 sensor showed a high response (105.6-100 ppm acetone), a low limit of detection (20 ppb), excellent stability in 4 days (only 2.7% response fluctuation vs 46.2% changes for Co3O4-225), and good stability for 6 months (109.3 to100 ppm acetone). The present BCo-225 sensor outperforms acetone sensors based on metal oxides synthesized via high-temperature annealing and overcomes the poor stability of traditional amorphous sensing materials.
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