Lin Jiawen, Dong Hui, Cui Shilong, Dong Wei, Sun Hao
School of Mechanical Engineering and Automation, Fuzhou University, Fuzhou 350108, China.
School of Mechatronics Engineering, Harbin Institute of Technology, Harbin 150006, China.
ACS Appl Mater Interfaces. 2024 Nov 20;16(46):63723-63734. doi: 10.1021/acsami.4c13193. Epub 2024 Nov 7.
Classifications of fluids using miniaturized sensors are of substantial importance for various fields of application. Modified with functional nanomaterials, a moisture-enabled electricity generation (MEG) device can execute a dual-purpose operation as both a self-powered framework and a fluid detection platform. In this study, a novel intelligent self-sustained sensing approach was implemented by integrating MEG with deep learning in microfluidics. Following a multilayer design, the MEG device including three individual units for power generation/fluid classification was fabricated in this study by using nonwoven fabrics, hydroxylated carbon nanotubes, poly(vinyl alcohol)-mixed gels, and indium tin bismuth liquid alloy. A composite configuration utilizing hydrophobic microfluidic channels and hydrophilic porous substrates was conducive to self-regulation of the on-chip flow. As a generator, the MEG device was capable of maintaining a continuous and stable power output for at least 6 h. As a sensor, the on-chip units synchronously measured the voltage (V), current (C), and resistance (R) signals as functions of time, whose transitions were completed using relays. These signals can serve as straightforward indicators of a fluid presence, such as the distinctive "fingerprint". After normalization and Fourier transform of raw V/C/R signals, a lightweight deep learning model (wide-kernel deep convolutional neural network, WDCNN) was employed for classifying pure water, kiwifruit, clementine, and lemon juices. In particular, the accuracy of the sample distinction using the WDCNN model was 100% within 15 s. The proposed integration of MEG, microfluidics, and deep learning provides a novel paradigm for the development of sustainable intelligent environmental perception, as well as new prospects for innovations in analytical science and smart instruments.
使用微型传感器对流体进行分类在各个应用领域都具有至关重要的意义。通过功能纳米材料改性,一种湿气发电(MEG)装置可以作为自供电框架和流体检测平台执行双重操作。在本研究中,通过将MEG与微流控中的深度学习相结合,实现了一种新型的智能自维持传感方法。按照多层设计,本研究使用无纺布、羟基化碳纳米管、聚乙烯醇混合凝胶和铟锡铋液态合金制造了包括三个用于发电/流体分类的独立单元的MEG装置。利用疏水微流控通道和亲水多孔基板的复合结构有利于片上流动的自我调节。作为发电机,MEG装置能够保持至少6小时的连续稳定功率输出。作为传感器,片上单元同步测量作为时间函数的电压(V)、电流(C)和电阻(R)信号,其转换通过继电器完成。这些信号可以作为流体存在的直接指标,例如独特的“指纹”。在对原始V/C/R信号进行归一化和傅里叶变换后,采用轻量级深度学习模型(宽核深度卷积神经网络,WDCNN)对纯水、猕猴桃汁、克莱门氏小柑橘汁和柠檬汁进行分类。特别是,使用WDCNN模型进行样品区分的准确率在15秒内达到100%。所提出的MEG、微流控和深度学习的集成提供了一种可持续智能环境感知发展的新范式,以及分析科学和智能仪器创新的新前景。