Department of Physical Science and Engineering, King Abdullah University of Science and Technology, Thuwal 23955-6900, Saudi Arabia.
Sensors (Basel). 2021 Apr 20;21(8):2877. doi: 10.3390/s21082877.
Nowadays, there is increasing interest in fast, accurate, and highly sensitive smart gas sensors with excellent selectivity boosted by the high demand for environmental safety and healthcare applications. Significant research has been conducted to develop sensors based on novel highly sensitive and selective materials. Computational and experimental studies have been explored in order to identify the key factors in providing the maximum active location for gas molecule adsorption including bandgap tuning through nanostructures, metal/metal oxide catalytic reactions, and nano junction formations. However, there are still great challenges, specifically in terms of selectivity, which raises the need for combining interdisciplinary fields to build smarter and high-performance gas/chemical sensing devices. This review discusses current major gas sensing performance-enhancing methods, their advantages, and limitations, especially in terms of selectivity and long-term stability. The discussion then establishes a case for the use of smart machine learning techniques, which offer effective data processing approaches, for the development of highly selective smart gas sensors. We highlight the effectiveness of static, dynamic, and frequency domain feature extraction techniques. Additionally, cross-validation methods are also covered; in particular, the manipulation of the k-fold cross-validation is discussed to accurately train a model according to the available datasets. We summarize different chemresistive and FET gas sensors and highlight their shortcomings, and then propose the potential of machine learning as a possible and feasible option. The review concludes that machine learning can be very promising in terms of building the future generation of smart, sensitive, and selective sensors.
如今,人们对具有出色选择性的快速、准确且高灵敏度的智能气体传感器越来越感兴趣,这是对环境安全和医疗保健应用需求不断增长的结果。已经开展了大量研究来开发基于新型高灵敏度和选择性材料的传感器。为了确定为气体分子吸附提供最大活性位置的关键因素,包括通过纳米结构调整能带隙、金属/金属氧化物催化反应和纳米结形成,已经进行了计算和实验研究。然而,仍然存在很大的挑战,特别是在选择性方面,这就需要结合跨学科领域来构建更智能和高性能的气体/化学传感设备。本综述讨论了当前主要的气体传感性能增强方法、它们的优点和局限性,特别是在选择性和长期稳定性方面。然后,讨论为使用智能机器学习技术建立了案例,该技术为高度选择性的智能气体传感器的开发提供了有效的数据处理方法。我们强调了静态、动态和频域特征提取技术的有效性。此外,还涵盖了交叉验证方法;特别是讨论了 k 折交叉验证的操作,以便根据可用数据集准确地训练模型。我们总结了不同的化学电阻和 FET 气体传感器及其缺点,然后提出了机器学习作为一种可行选择的潜力。综述得出的结论是,机器学习在构建新一代智能、灵敏和选择性传感器方面具有很大的前景。