International Center for Materials Nanoarchitectonics (MANA), National Institute for Materials Science (NIMS), World Premier International Research Center Initiative (WPI), 1-1 Namiki, Tsukuba 305-0044, Japan.
Center for Functional Sensor & Actuator (CFSN), Research Center for Functional Materials, National Institute for Materials Science (NIMS), 1-1 Namiki, Tsukuba 305-0044, Japan.
Sensors (Basel). 2020 Oct 30;20(21):6190. doi: 10.3390/s20216190.
Practical applications of machine olfaction have been eagerly awaited. A free-hand measurement, in which a measurement device is manually exposed to sample odors, is expected to be a key technology to realize practical machine olfaction. To implement odor identification systems based on the free-hand measurement, the comprehensive development of a measurement system including hardware, measurement protocols, and data analysis is necessary. In this study, we developed palm-size wireless odor measurement devices equipped with Membrane-type Surface stress Sensors (MSS) and investigated the effect of measurement protocols and feature selection on odor identification. By using the device, we measured vapors of liquids as odor samples through the free-hand measurement in different protocols. From the measurement data obtained with these protocols, datasets of transfer function ratios (TFRs) were created and analyzed by clustering and machine learning classification. It has been revealed that TFRs in the low-frequency range below 1 Hz notably contributed to vapor identification because the frequency components in that range reflect the dynamics of the detection mechanism of MSS. We also showed the optimal measurement protocol for accurate classification. This study has shown a guideline of the free-hand measurement and will contribute to the practical implementation of machine olfaction in society.
机器嗅觉的实际应用备受期待。手动测量,即手动将测量设备暴露于样品气味中,有望成为实现实用机器嗅觉的关键技术。为了实现基于自由手测量的气味识别系统,需要综合开发包括硬件、测量协议和数据分析在内的测量系统。在这项研究中,我们开发了手掌大小的无线气味测量设备,配备了膜型表面应力传感器(MSS),并研究了测量协议和特征选择对气味识别的影响。使用该设备,我们通过不同的协议以自由手测量的方式测量液体蒸气作为气味样本。从这些协议获得的测量数据中,创建了传递函数比(TFR)数据集,并通过聚类和机器学习分类进行分析。结果表明,低于 1 Hz 的低频 TFR 对蒸气识别有显著贡献,因为该范围内的频率成分反映了 MSS 检测机制的动态。我们还展示了用于准确分类的最佳测量协议。本研究提供了自由手测量的指导方针,将有助于机器嗅觉在社会中的实际应用。