Raman Baranidharan, Hertz Joshua L, Benkstein Kurt D, Semancik Steve
Chemical Science and Technology Laboratory, National Institute of Standards and Technology, 100 Bureau Drive, Gaithersburg, Maryland 20899, USA.
Anal Chem. 2008 Nov 15;80(22):8364-71. doi: 10.1021/ac8007048. Epub 2008 Oct 15.
Artificial olfaction is a potential tool for noninvasive chemical monitoring. Application of "electronic noses" typically involves recognition of "pretrained" chemicals, while long-term operation and generalization of training to allow chemical classification of "unknown" analytes remain challenges. The latter analytical capability is critically important, as it is unfeasible to pre-expose the sensor to every analyte it might encounter. Here, we demonstrate a biologically inspired approach where the recognition and generalization problems are decoupled and resolved in a hierarchical fashion. Analyte composition is refined in a progression from general (e.g., target is a hydrocarbon) to precise (e.g., target is ethane), using highly optimized response features for each step. We validate this approach using a MEMS-based chemiresistive microsensor array. We show that this approach, a unique departure from existing methodologies in artificial olfaction, allows the recognition module to better mitigate sensor-aging effects and to better classify unknowns, enhancing the utility of chemical sensors for real-world applications.
人工嗅觉是一种用于非侵入式化学监测的潜在工具。“电子鼻”的应用通常涉及对“预训练”化学物质的识别,而长期运行以及将训练推广以实现对“未知”分析物的化学分类仍然是挑战。后一种分析能力至关重要,因为让传感器预先接触其可能遇到的每种分析物是不可行的。在此,我们展示了一种受生物启发的方法,其中识别和推广问题以分层方式解耦并解决。使用针对每个步骤高度优化的响应特征,分析物组成从一般(例如,目标是碳氢化合物)到精确(例如,目标是乙烷)逐步细化。我们使用基于微机电系统(MEMS)的化学电阻微传感器阵列验证了这种方法。我们表明,这种方法与人工嗅觉中的现有方法有独特的不同,它使识别模块能够更好地减轻传感器老化效应并更好地对未知物进行分类,从而提高化学传感器在实际应用中的效用。