Yang Lei, Wang Yunfei, Zhao Zhibin, Guo Yanjie, Chen Sicheng, Zhang Weiqiang, Guo Xiao
Key Laboratory of Education Ministry for Modern Design and Rotor-Bearing System, Xi'an Jiaotong University, Xi'an 710049, China.
Three Gorges Cascade Dispatch & Communication Center, China Yangtze Power Company, Ltd., Yichang 443133, China.
ACS Appl Mater Interfaces. 2020 Aug 26;12(34):38192-38201. doi: 10.1021/acsami.0c10714. Epub 2020 Aug 12.
Continuous information on the suspended sediment in the water system is critical in various areas of industry and hydrological studies. However, because of the high variation of suspended sediment flow, challenges still remain in developing new techniques implementing simple, reliable, and real-time sediment monitoring. Herein, we report a potential method to realize real-time sediment monitoring by introducing a particle-laden droplet-driven triboelectric nanogenerator (PLDD-TENG) combined with a deep learning method. The PLDD-TENG was operated under the single-electrode mode with a triboelectric layer of polytetrafluoroethylene (PTFE) thin film. The working mechanism of the PLDD-TENG was proved to be induced by liquid-PTFE contact electrification and sand particle-electrode electrostatic induction. Then, its performance was explored under various particle parameters, and the results indicated that the output signal of the PLDD-TENG was very sensitive to the sand particle size and mass fraction. A convolutional neural network-based deep learning method was finally adopted to identify the particle parameters based on the output signal. High identifying accuracies over 90% were achieved in most of the cases by the proposed method, which sheds light on the application of the PLDD-TENG in real-time sediment monitoring.
水系统中悬浮泥沙的连续信息在工业和水文研究的各个领域都至关重要。然而,由于悬浮泥沙流量变化很大,在开发实施简单、可靠和实时泥沙监测的新技术方面仍然存在挑战。在此,我们报告一种潜在的方法,即通过引入载有颗粒的液滴驱动摩擦纳米发电机(PLDD-TENG)并结合深度学习方法来实现实时泥沙监测。PLDD-TENG在单电极模式下运行,摩擦电层为聚四氟乙烯(PTFE)薄膜。PLDD-TENG的工作机制被证明是由液体-PTFE接触起电和沙粒-电极静电感应引起的。然后,在各种颗粒参数下对其性能进行了探索,结果表明PLDD-TENG的输出信号对沙粒尺寸和质量分数非常敏感。最后采用基于卷积神经网络的深度学习方法根据输出信号识别颗粒参数。所提出的方法在大多数情况下实现了超过90%的高识别准确率,这为PLDD-TENG在实时泥沙监测中的应用提供了启示。