Department of Food, Agricultural and Biological Engineering, The Ohio State University/Ohio Agricultural Research and Development Center, 1680 Madison Ave, Wooster, OH 44691-4096, USA.
United States Department of Agriculture-Agricultural Research Service (USDA-ARS) Application Technology Research Unit, 1680 Madison Ave, Wooster, OH 44691-4096, USA.
Sensors (Basel). 2018 Jan 28;18(2):378. doi: 10.3390/s18020378.
This paper reviews artificial intelligent noses (or electronic noses) as a fast and noninvasive approach for the diagnosis of insects and diseases that attack vegetables and fruit trees. The particular focus is on bacterial, fungal, and viral infections, and insect damage. Volatile organic compounds (VOCs) emitted from plants, which provide functional information about the plant's growth, defense, and health status, allow for the possibility of using noninvasive detection to monitor plants status. Electronic noses are comprised of a sensor array, signal conditioning circuit, and pattern recognition algorithms. Compared with traditional gas chromatography-mass spectrometry (GC-MS) techniques, electronic noses are noninvasive and can be a rapid, cost-effective option for several applications. However, using electronic noses for plant pest diagnosis is still in its early stages, and there are challenges regarding sensor performance, sampling and detection in open areas, and scaling up measurements. This review paper introduces each element of electronic nose systems, especially commonly used sensors and pattern recognition methods, along with their advantages and limitations. It includes a comprehensive comparison and summary of applications, possible challenges, and potential improvements of electronic nose systems for different plant pest diagnoses.
本文综述了人工智能嗅觉(或电子鼻)作为一种快速、非侵入性的方法,用于诊断攻击蔬菜和果树木的昆虫和疾病。特别关注细菌、真菌和病毒感染以及昆虫损伤。植物释放的挥发性有机化合物(VOCs)提供了有关植物生长、防御和健康状况的功能信息,因此有可能使用非侵入性检测来监测植物的状态。电子鼻由传感器阵列、信号调理电路和模式识别算法组成。与传统的气相色谱-质谱联用(GC-MS)技术相比,电子鼻是非侵入性的,并且可以作为几种应用的快速、具有成本效益的选择。然而,使用电子鼻进行植物病虫害诊断仍处于早期阶段,在传感器性能、开放区域采样和检测以及测量扩展方面存在挑战。本文介绍了电子鼻系统的各个组成部分,特别是常用的传感器和模式识别方法,以及它们的优点和局限性。它包括对不同植物病虫害诊断中电子鼻系统的应用、可能的挑战和潜在改进的全面比较和总结。