基于计算的挥发性有机化合物鉴别:一种低成本的实验装置

V. Di Lecce, M. Calabrese, R. Dario
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引用次数: 14

摘要

在这项工作中,一组低成本的交叉敏感传感器被用于在一组挥发性有机化合物(VOCs)中识别最佳候选者。我们的实验设置的挑战是处理低选择性的问题,特别是在正常的操作条件下,因此,模糊的传感器响应(即可参考多个VOC)至少可以给出一个定性的解释。为了完成信号消歧任务,设计了一种采用简单分类规则和模糊描述的计算技术。其基本思想是,如果同一种气体实际上是由两个或多个传感器测量的,那么估计的浓度将显示出低方差,其精度与协调传感器的数量有关。实验表明,尽管设置成本低,所提供的响应具有粗粒度性质,但可以获得令人鼓舞的结果,并可以进行后续工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational-based volatile organic compounds discrimination: An experimental low-cost setup
In this work, an array of low-cost cross-sensitive sensors is used for discriminating the best candidate within a set of volatile organic compounds (VOCs). The challenge of our experimental setting is to deal with the problems of low selectivity, especially in normal operating conditions, so that ambiguous sensor responses (i.e. referable to more than one VOC) can be given, at least, a qualitative interpretation. In order to carry out the signal disambiguation task, a computational technique employing simple classifying rules and fuzzy descriptions has been engineered. The basic idea is that, if the same gas is actually measured by two or more sensors, then the estimated concentrations will show a low variance, with an accuracy related to the number of concordant sensors. Experiments show that, despite the cheapness of the setup and the coarse-grained nature of the provided response, encouraging results can be obtained and prospective work can follow.
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