TOELT LLC, Birchlenstr. 25, 8600 Dübendorf, Switzerland.
Institute of Applied Mathematics and Physics, Zurich University of Applied Sciences, Technikumstrasse 9, 8401 Winterthur, Switzerland.
Sensors (Basel). 2019 Feb 14;19(4):777. doi: 10.3390/s19040777.
Luminescence-based sensors for measuring oxygen concentration are widely used in both industry and research due to the practical advantages and sensitivity of this type of sensing. The measuring principle is the luminescence quenching by oxygen molecules, which results in a change of the luminescence decay time and intensity. In the classical approach, this change is related to an oxygen concentration using the Stern-Volmer equation. This equation, which in most cases is non-linear, is parameterized through device-specific constants. Therefore, to determine these parameters, every sensor needs to be precisely calibrated at one or more known concentrations. This study explored an entirely new artificial intelligence approach and demonstrated the feasibility of oxygen sensing through machine learning. The specifically developed neural network learns very efficiently to relate the input quantities to the oxygen concentration. The results show a mean deviation of the predicted from the measured concentration of 0.5% air, comparable to many commercial and low-cost sensors. Since the network was trained using synthetically generated data, the accuracy of the model predictions is limited by the ability of the generated data to describe the measured data, opening up future possibilities for significant improvement by using a large number of experimental measurements for training. The approach described in this work demonstrates the applicability of artificial intelligence to sensing technology and paves the road for the next generation of sensors.
基于发光的氧气浓度传感器由于这种传感类型的实用性和灵敏度,在工业和研究中都得到了广泛应用。测量原理是氧分子对发光的猝灭,这导致发光衰减时间和强度的变化。在经典方法中,通过斯特恩-沃尔默方程将这种变化与氧气浓度相关联。该方程在大多数情况下是非线性的,需要通过设备特定的常数进行参数化。因此,为了确定这些参数,每个传感器都需要在一个或多个已知浓度下进行精确校准。本研究探索了一种全新的人工智能方法,并通过机器学习证明了氧气传感的可行性。专门开发的神经网络可以非常有效地学习将输入量与氧气浓度相关联。结果表明,预测浓度与实测浓度的平均偏差为 0.5%空气,与许多商业和低成本传感器相当。由于网络是使用合成生成的数据进行训练的,因此模型预测的准确性受到生成数据描述测量数据的能力的限制,通过使用大量实验测量进行训练,为显著提高精度开辟了未来的可能性。本文所述的方法证明了人工智能在传感技术中的适用性,并为下一代传感器铺平了道路。