Faculty of Physics, Warsaw University of Technology, Ul. Koszykowa 75, 00-662 Warszawa, Poland.
Forest Protection Department, Forest Research Institute, Ul. Braci Leśnej 3, 05-090 Sękocin Stary, Poland.
Sensors (Basel). 2024 Jul 2;24(13):4312. doi: 10.3390/s24134312.
An electronic device based on the detection of volatile substances was developed in response to the need to distinguish between fungal infestations in food and was applied to wheat grains. The most common pathogens belong to the fungi of the genus : , , , and . The electronic nose prototype is a low-cost device based on commercially available TGS series sensors from Figaro Corp. Two types of gas sensors that respond to the perturbation are used to collect signals useful for discriminating between the samples under study. First, an electronic nose detects the transient response of the sensors to a change in operating conditions from clean air to the presence of the gas being measured. A simple gas chamber was used to create a sudden change in gas composition near the sensors. An inexpensive pneumatic system consisting of a pump and a carbon filter was used to supply the system with clean air. It was also used to clean the sensors between measurement cycles. The second function of the electronic nose is to detect the response of the sensor to temperature disturbances of the sensor heater in the presence of the gas to be measured. It has been shown that features extracted from the transient response of the sensor to perturbations by modulating the temperature of the sensor heater resulted in better classification performance than when the machine learning model was built from features extracted from the response of the sensor in the gas adsorption phase. By combining features from both phases of the sensor response, a further improvement in classification performance was achieved. The E-nose enabled the differentiation of from the other fungal species tested with excellent performance. The overall classification rate using the Support Vector Machine model reached 70 per cent between the four fungal categories tested.
为了区分食品中的真菌侵染,开发了一种基于挥发性物质检测的电子设备,并将其应用于麦粒。最常见的病原体属于真菌属: , , ,和 。电子鼻原型是一种基于 Figaro 公司 TGS 系列传感器的低成本设备。使用两种对干扰有响应的气体传感器来收集有助于区分研究样本的信号。首先,电子鼻检测传感器对从清洁空气到测量气体存在的操作条件瞬态变化的瞬态响应。使用简单的气室在传感器附近产生气体成分的突然变化。使用由泵和碳过滤器组成的廉价气动系统为系统提供清洁空气。它还用于在测量周期之间清洁传感器。电子鼻的第二个功能是检测传感器在存在待测量气体时对传感器加热器温度干扰的响应。结果表明,与从传感器在气体吸附阶段的响应中提取的特征构建机器学习模型相比,从传感器对温度干扰的瞬态响应中提取的特征可实现更好的分类性能。通过结合传感器响应的两个阶段的特征,可进一步提高分类性能。电子鼻能够出色地将 与其他测试真菌物种区分开来。使用支持向量机模型,在测试的四个真菌类别之间,整体分类率达到了 70%。