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Implementation of multi-task learning neural network architectures for robust industrial optical sensing

机译:用于鲁棒工业光学传感的多任务学习神经网络架构的实现

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The simultaneous determination of multiple physical or chemical parameters can be very advantageous in many sensor applications. In some cases, it is unavoidable because the parameters of interest display cross sensitivities or depend on multiple quantities varying simultaneously. One notable example is the determination of oxygen partial pressure via luminescence quenching. The measuring principle is based on the measurement of the luminescence of a specific molecule, whose intensity and decay time are reduced due to collisions with oxygen molecules. Since both the luminescence and the quenching phenomena are strongly temperature-dependent, this type of sensor needs continuous monitoring of the temperature. This is typically achieved by adding temperature sensors and employing a multi-parametric model (Stern Volmer equation), whose parameters are all temperature-dependent. As a result, the incorrect measurement of the temperature of the indicator is a major source of error. In this work a new approach based on multi-task learning (MTL) artificial neural networks (ANN) was successfully implemented to achieve robust sensing for industrial applications. These were integrated in a sensor that not only does not need the separate detection of temperature but even exploits the intrinsic cross-interferences of the sensing principle to predict simultaneously oxygen partial pressure and temperature. A detailed analysis of the robustness of the method was performed to demonstrate its potential for industrial applications. This type of sensor could in the future significantly simplify the design of the sensor and at the same time increase its performance.
机译:在许多传感器应用中,多种物理或化学参数的同时测定可以是非常有利的。在某些情况下,它是不可避免的,因为感兴趣的参数显示交叉敏感度或取决于同时变化的多个数量。一个值得注意的例子是通过发光淬火的氧分压的测定。测量原理基于测量特定分子的发光,其强度和衰减时间由于与氧分子的碰撞而降低。由于发光和淬火现象都依赖性强烈依赖,因此这种类型的传感器需要连续监测温度。这通常通过添加温度传感器并采用多参数模型(Stern Volmer方程)来实现,其参数依赖于其参数。结果,指标温度的不正确测量是误差的主要来源。在这项工作中,成功实施了一种基于多任务学习(MTL)人工神经网络(ANN)的新方法,以实现工业应用的强大感测。这些被整合在传感器中,不仅不需要单独检测温度,而且甚至利用感测原理的内在交叉干扰,以预测同时氧气压力和温度。对该方法的稳健性进行了详细分析,以证明其对工业应用的潜力。这种类型的传感器可以在未来显着简化传感器的设计,同时增加其性能。

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