The State Key Laboratory of Fluid Power and Mechatronic Systems, Zhejiang University, Hangzhou 310027, China.
Faculty of Engineering and Environment, University of Northumbria, Newcastle upon Tyne NE1 8ST, U.K.
ACS Sens. 2021 Aug 27;6(8):3072-3081. doi: 10.1021/acssensors.1c01187. Epub 2021 Aug 18.
Timely detection and elimination of surface condensation is crucial for diverse applications in agriculture, automotive, oil and gas industries, and respiratory monitoring. In this paper, a smart patch based on a ZnO/aluminum (∼5 μm/50 μm thick) flexible Lamb wave device has been proposed to detect, prevent, and eliminate condensation, which can be realized using both of its surfaces. The patch is operated using a machine-learning algorithm which consists of data preprocessing (feature selection and optimization) and model training by a random forest algorithm. It has been tested in six cases, and the results show good detection performance with average precision = 94.40% and average 1 score = 93.23%. The principle of accelerating evaporation is investigated to understand the elimination and prevention functions for surface condensation. Results show that both dielectric heating and acoustothermal effect have their contributions, whereas the former is found more dominant. Furthermore, the functional relationship between the evaporation rate and the input power is calibrated, showing a high linearity ( = 97.64%) with a slope of ∼3.6 × 10 1/(s·mW). With an input power of ∼0.6 W, the flexible device has been proven effective in the prevention of condensation.
及时检测和消除表面冷凝对于农业、汽车、石油和天然气工业以及呼吸监测等多种应用至关重要。在本文中,提出了一种基于 ZnO/铝(∼5 μm/50 μm 厚)柔性兰姆波器件的智能贴片,可通过其两个表面来检测、防止和消除冷凝。该贴片使用机器学习算法进行操作,该算法包括数据预处理(特征选择和优化)以及通过随机森林算法进行模型训练。它已经在六种情况下进行了测试,结果表明具有良好的检测性能,平均精度 = 94.40%,平均 1 分 = 93.23%。研究了加速蒸发的原理,以了解表面冷凝的消除和预防功能。结果表明,介电加热和热声效应都有贡献,而前者更为重要。此外,还校准了蒸发率与输入功率之间的函数关系,表现出高度的线性(= 97.64%),斜率约为 3.6×10 1/(s·mW)。在输入功率约为 0.6 W 的情况下,该柔性器件已被证明可有效防止冷凝。