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Optimizing information content in MOF sensor arrays for analyzing methane-air mixtures

机译:优化MOF传感器阵列中的信息内容以分析甲烷-空气混合物

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摘要

In this study, multiple arrays of sensors composed from all possible combinations of nine different metal-organic framework (MOF) materials were evaluated for their methane-in-air sensing performance using molecular simulations. We considered all of the gas mixture compositions of CH4, N2, and O2, varying from 0% to 100% of each component in 1% steps (5151 mixtures in total), in all MOFs. Assuming the mass of adsorbed gas in each MOF can be measured using a microelectromechanical system (MEMS) device such as a surface acoustic wave (SAW) sensor, the expected signal response can be predicted from molecular gas adsorption simulations. By combining predicted signal responses from each MOF sensor element in an array, we are able to determine which sets of MOFs provide the most information about the gas mixture they are exposed to, as measured by the Kullback-Liebler divergence (KLD). The KLD values are then used for ranking array performances. We report results for both binary mixtures of CH4and N2and ternary mixtures that include O2. As expected, we found that increasing the number of elements in an array improves overall sensor performance; however, for a given array size, there is a wide disparity in KLD values between the best and worst arrays. This disparity highlights the potential inefficiency of choosing sensing materials for an array by experimental trial-and-error. Instead, we advocate the use of theory to intelligently select the best performing sensor arrays.
机译:在这项研究中,使用分子模拟评估了由九种不同金属有机框架(MOF)材料的所有可能组合组成的传感器的多个阵列的甲烷在空气中的传感性能。我们在所有MOF中考虑了CH4,N2和O2的所有气体混合物成分,每种成分的含量从0%到100%以1%的步长变化(总共5151种混合物)。假设可以使用诸如表面声波(SAW)传感器之类的微机电系统(MEMS)设备来测量每个MOF中吸附的气体的质量,则可以从分子气体吸附模拟中预测预期的信号响应。通过组合来自阵列中每个MOF传感器元件的预测信号响应,我们能够确定哪些MOF组提供了有关它们所暴露的气体混合物的最多信息,如Kullback-Liebler散度(KLD)所衡量的。然后,将KLD值用于对阵列性能进行排名。我们报告了CH4和N2的二元混合物以及包括O2的三元混合物的结果。不出所料,我们发现增加阵列中的元素数量可以提高整体传感器性能;但是,对于给定的阵列大小,最佳阵列和最差阵列之间的KLD值之间存在很大差异。这种差异凸显了通过实验反复试验为阵列选择传感材料的潜在效率低下。相反,我们提倡使用理论来智能地选择性能最佳的传感器阵列。

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