Park Huijae, Yoon Sangjin, Bang Junhyuk, Ahn Jiyong, Choi Gyuho, Kim Dohyung, Min JinKi, Shin Jaeho, Ko Seung Hwan
Wearable Soft Electronics Lab, Department of Mechanical Engineering, Seoul National University, 1 Gwanak-ro, Gwanak-gu, Seoul 08826, Korea.
Molecular Recognition Research Center, Korea Institute of Science and Technology (KIST), Seoul 02792, South Korea.
ACS Nano. 2025 Sep 2;19(34):30961-30972. doi: 10.1021/acsnano.5c07646. Epub 2025 Aug 12.
Flow sensing is essential in various fields, including industrial, environmental, and biomedical applications, where accurate measurement of fluid dynamics is crucial. Traditional flow sensors are often bulky and complex, which can distort the flow and complicate installation when placed directly in the flow path. To address these issues, we developed a deep-learned monolithic asymmetric thermal flow sensor. The sensor is fabricated via laser-induced selective sintering and reduction of nickel oxide nanoparticles, seamlessly integrating a microheater and temperature sensors into a thin-film device. This thin-film design minimizes flow disturbance and improves measurement accuracy. Unlike conventional calorimetric flow sensors that require complex multiarray electrode configurations, our system features a temperature sensor designed in an asymmetric spiral shape around the heater. This optimized hardware configuration not only simplifies the structural design but also supports deep learning algorithms for accurate flow estimation. By integrating this asymmetric design with reinforcement learning algorithms, the sensor efficiently bridges hardware and software, enabling precise flow vector estimation based on changes in sensor resistance. Furthermore, equipped with an embedded wireless communication system for real-time data monitoring, the sensor ensures reliable flow assessment, making it a versatile solution for diverse flow estimation applications.
流量传感在包括工业、环境和生物医学应用在内的各个领域都至关重要,在这些领域中,流体动力学的精确测量至关重要。传统的流量传感器通常体积庞大且复杂,当直接放置在流路中时,可能会使流量失真并使安装复杂化。为了解决这些问题,我们开发了一种深度学习的单片非对称热流量传感器。该传感器通过激光诱导选择性烧结和氧化镍纳米颗粒的还原制造而成,将微型加热器和温度传感器无缝集成到一个薄膜器件中。这种薄膜设计可将流量干扰降至最低并提高测量精度。与需要复杂的多阵列电极配置的传统量热式流量传感器不同,我们的系统具有一个围绕加热器以非对称螺旋形状设计的温度传感器。这种优化的硬件配置不仅简化了结构设计,还支持用于精确流量估计的深度学习算法。通过将这种非对称设计与强化学习算法相结合,该传感器有效地连接了硬件和软件,能够根据传感器电阻的变化进行精确的流量矢量估计。此外,该传感器配备了用于实时数据监测的嵌入式无线通信系统,可确保可靠的流量评估,使其成为各种流量估计应用的通用解决方案。