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Qin, Peng; Okur, Salih; Jiang, Yunzhe; Heinke, Lars
Journal of materials chemistry. A, 12/2022, Volume: 1, Issue: 47Journal Article
The unequivocal detection of CO 2 is important in many situations, like in the living environment, plant cultivation and the conservation of cultural relics and archives. Due to their large specific surface areas and highly ordered and tunable structures, metal-organic frameworks (MOFs) have the potential to improve CO 2 sensing, however, they often suffer from low CO 2 affinity and selectivity. Ionic liquids (ILs) have high CO 2 affinity, but their performance in sensors is hampered by their nonporous, liquid form. Here, we present a low-cost and portable CO 2 sensor system based on an array of gravimetric sensors made of MOF films with embedded ILs in the pores. The array is composed of MOF films of two different structures, which are HKUST-1 and UiO-66, filled with 3 different types of ILs and 2 different pore-filling levels, resulting in an array of up to 14 different sensors. We show that the different combinations of IL and MOF result in different affinities for CO 2 and other analytes. With the help of machine learning using a neural network, the sensor array was used to quantify the CO 2 concentration as well as to distinguish CO 2 from other gases and vapors, like nitrogen, ethanol, methanol and water, and to distinguish certain binary mixtures. While the MOF-sensor array without IL achieves only a small accuracy for determining the CO 2 concentration, the IL@MOF sensor array can accurately classify the gas types (98% accuracy) in mixed gas atmospheres of unknown composition and concentration as well as can determine the CO 2 gas concentration with an average error of only 2.7%. Using only MOFs with a pronounced chemical stability (like UiO-66) in the sensor array also allows the detection and identification of CO 2 in a humid atmosphere. Moreover, the presented sensor system has very high sensitivity with a CO 2 limit of detection below 100 ppm, which is four times smaller than the CO 2 concentration in air. This work shows the unprecedented performance of the sensor arrays of MOFs with embedded ILs, referred to as IL@MOF-electronic nose (IL@MOF-e-nose), for sensing the composition and concentration of CO 2 gas mixtures. A sensor array (or e-nose) made of nanoporous metal-organic framework films filled with different ionic liquids shows high selectivity and sensitivity as well as a very low limit of detection for various common gases and vapors, especially for CO 2 .
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