Mei Haixia, Peng Jingyi, Wang Tao, Zhou Tingting, Zhao Hongran, Zhang Tong, Yang Zhi
Key Lab Intelligent Rehabil & Barrier Free Disable (Ministry of Education), Changchun University, Changchun, 130022, People's Republic of China.
Shanghai Key Laboratory of Intelligent Sensing and Detection Technology, School of Mechanical and Power Engineering, East China University of Science and Technology, Shanghai, 200237, People's Republic of China.
Nanomicro Lett. 2024 Aug 14;16(1):269. doi: 10.1007/s40820-024-01489-z.
As information acquisition terminals for artificial olfaction, chemiresistive gas sensors are often troubled by their cross-sensitivity, and reducing their cross-response to ambient gases has always been a difficult and important point in the gas sensing area. Pattern recognition based on sensor array is the most conspicuous way to overcome the cross-sensitivity of gas sensors. It is crucial to choose an appropriate pattern recognition method for enhancing data analysis, reducing errors and improving system reliability, obtaining better classification or gas concentration prediction results. In this review, we analyze the sensing mechanism of cross-sensitivity for chemiresistive gas sensors. We further examine the types, working principles, characteristics, and applicable gas detection range of pattern recognition algorithms utilized in gas-sensing arrays. Additionally, we report, summarize, and evaluate the outstanding and novel advancements in pattern recognition methods for gas identification. At the same time, this work showcases the recent advancements in utilizing these methods for gas identification, particularly within three crucial domains: ensuring food safety, monitoring the environment, and aiding in medical diagnosis. In conclusion, this study anticipates future research prospects by considering the existing landscape and challenges. It is hoped that this work will make a positive contribution towards mitigating cross-sensitivity in gas-sensitive devices and offer valuable insights for algorithm selection in gas recognition applications.
作为人工嗅觉的信息采集终端,化学电阻式气体传感器常常受到交叉敏感性的困扰,降低其对环境气体的交叉响应一直是气体传感领域的难点和重点。基于传感器阵列的模式识别是克服气体传感器交叉敏感性的最显著方法。选择合适的模式识别方法对于增强数据分析、减少误差、提高系统可靠性以及获得更好的分类或气体浓度预测结果至关重要。在这篇综述中,我们分析了化学电阻式气体传感器交叉敏感性的传感机制。我们进一步研究了气体传感阵列中使用的模式识别算法的类型、工作原理、特点以及适用的气体检测范围。此外,我们报告、总结并评估了气体识别模式识别方法中的杰出和新颖进展。同时,这项工作展示了利用这些方法进行气体识别的最新进展,特别是在食品安全保障、环境监测和医疗诊断这三个关键领域。总之,本研究通过考虑现有情况和挑战来展望未来的研究前景。希望这项工作将为减轻气敏器件中的交叉敏感性做出积极贡献,并为气体识别应用中的算法选择提供有价值的见解。