...
首页> 外文期刊>Sensors and Actuators. B >Classification performance of carbon black-polymer composite vapor detector arrays as a function of array size and detector composition
【24h】

Classification performance of carbon black-polymer composite vapor detector arrays as a function of array size and detector composition

机译:炭黑-聚合物复合蒸气检测器阵列的分类性能随阵列尺寸和检测器组成的变化

获取原文
获取原文并翻译 | 示例

摘要

The vapor classification performance of arrays of conducting polymer composite vapor detectors has been evaluated as a function of the number and type of detectors in an array. Quantitative performance comparisons were facilitated by challenging a collection of detector arrays with vapor discrimination tasks that were sufficiently difficult that at least some of the arrays did not exhibit perfect classification ability for all of the tasks of interest. Specific discrimination tasks involved differentiating between low concentration (<1% of the vapor pressure) exposures to 1-propanol versus 2-propanol, low concentration exposures to n-hexane versus n-heptane, and differentiating between compositionally similar mixtures of closely related analytes, such as 9.37 ppm m-xylene with 10.2 ppm p-xylene versus 7.67 ppm m-xylene with 12.4 ppm p-xylene. A decision boundary was developed using a cross-validated Fisher linear discriminant algorithm on a training set of analyte presentations and the resulting chemometric model was then used to classify a subsequent collection of test analyte presentations to the array being evaluated. In other cases, classification performance was evaluated using the Fisher linear discriminant and a leave-one-out (LOO) cross-validation procedure. For nearly all of the discrimination tasks investigated in this work, classification performance either increased or did not significantly decrease as the number of chemically different detectors in the array increased. Any given subset of the full array of detectors, selected because it yielded the best classification performance at a given array size for one particular task, was invariably outperformed by a different subset of detectors, and by the entire array of 20 chemically diverse detectors when used in at least one other vapor discrimination task. Arrays of detectors were nevertheless identified that yielded robust discrimination performance between compositionally close mixtures of 1-propanol and 2-propanol, n-hexane and n-heptane, and m-xylene and p-xylene, attesting to the excellent analyte classification performance that can be obtained through the use of such semi-selective vapor detector arrays.
机译:导电聚合物复合蒸汽检测器阵列的蒸汽分类性能已根据阵列中检测器的数量和类型进行了评估。通过挑战具有蒸汽辨别任务的检测器阵列的集合来促进定量性能比较,这些任务非常困难,以至于至少一些阵列不能对所有感兴趣的任务表现出完美的分类能力。具体的判别任务包括区分1-丙醇与2-丙醇的低浓度(<1%蒸气压)暴露,正己烷与正庚烷的低浓度暴露,以及密切相关的分析物的成分相似混合物之间的区别,例如9.37 ppm间二甲苯和10.2 ppm对二甲苯,而7.67 ppm间二甲苯和12.4 ppm对二甲苯。使用交叉验证的Fisher线性判别算法在分析物表示的训练集上确定决策边界,然后使用所得的化学计量学模型对测试分析物表示的后续集合进行分类,以评估阵列。在其他情况下,使用Fisher线性判别法和留一法(LOO)交叉验证程序评估分类性能。对于这项工作中研究的几乎所有识别任务,随着阵列中化学性质不同的检测器数量的增加,分类性能会提高或不会显着降低。选择整个探测器阵列的任何给定子集,是因为它在给定阵列大小下可以针对一项特定任务产生最佳的分类性能,因此选择不同的探测器子集以及使用20种化学多样性探测器的整个阵列时,其性能总是胜过在至少一项其他蒸气鉴别任务中。尽管如此,仍然确定了一系列检测器,这些检测器在1-丙醇和2-丙醇,正己烷和正庚烷以及间二甲苯和对二甲苯的成分紧密混合物之间产生了强大的区分性能,证明了出色的分析物分类性能可以通过使用这样的半选择性蒸气检测器阵列可以得到。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号