Faculty of Physics, Warsaw University of Technology, ul. Koszykowa 75, 00-662 Warszawa, Poland.
Faculty of Electrical Engineering, Institute of Theory of Electrical Engineering, Measurement and Information Systems, Warsaw University of Technology, ul. Koszykowa 75, 00-662 Warszawa, Poland.
Sensors (Basel). 2020 Jun 23;20(12):3542. doi: 10.3390/s20123542.
Recent advances in the field of electronic noses (e-noses) have led to new developments in both sensors and feature extraction as well as data processing techniques, providing an increased amount of information. Therefore, feature selection has become essential in the development of e-nose applications. Sophisticated computation techniques can be applied for solving the old problem of sensor number optimization and feature selections. In this way, one can find an optimal application-specific sensor array and reduce the potential cost associated with designing new e-nose devices. In this paper, we examine a procedure to extract and select modeling features for optimal e-nose performance. The usefulness of this approach is demonstrated in detail. We calculated the model's performance using cross-validation with the standard leave-one-group-out and group shuffle validation methods. Our analysis of wine spoilage data from the sensor array shows when a transient sensor response is considered, both from gas adsorption and desorption phases, it is possible to obtain a reasonable level of odor detection even with data coming from a single sensor. This requires adequate extraction of modeling features and then selection of features used in the final model.
电子鼻(e-nose)领域的最新进展使得传感器和特征提取以及数据处理技术都得到了新的发展,提供了更多的信息。因此,特征选择在电子鼻应用的开发中变得至关重要。复杂的计算技术可用于解决传感器数量优化和特征选择这一老问题。通过这种方式,可以找到最佳的特定于应用的传感器阵列,并降低与设计新的电子鼻设备相关的潜在成本。在本文中,我们研究了一种用于提取和选择建模特征以实现最佳电子鼻性能的方法。详细展示了这种方法的有效性。我们使用标准的留一集团外和集团洗牌验证方法进行交叉验证,计算了模型的性能。我们对来自传感器阵列的葡萄酒变质数据的分析表明,当考虑瞬态传感器响应时,即使来自单个传感器的数据,也可以通过气体吸附和解吸两个阶段来获得合理的气味检测水平。这需要对建模特征进行充分的提取,然后选择最终模型中使用的特征。