基于深度学习技术的低温温度传感器高精度温度测量技术

IF 1.8 3区 工程技术 Q3 PHYSICS, APPLIED
Huidong Liu , Kanglai Zhu , Minmin You , Yanjie Li , Jingquan Liu , Zude Lin
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引用次数: 0

摘要

非线性误差补偿是影响温度传感器测量精度的一个重要因素。低温温度传感器需要精确的校准技术才能实现准确的温度测量。BP(反向传播)神经网络由于收敛速度慢、学习能力差,不适合用于传感器温度预测。本研究提出了一种基于切比雪夫多项式的 BiLSTM(双向长短期记忆)算法(C-BiLSTM),以提高测量精度。首先,我们展示了基于氧化锆(ZrON)薄膜的真空包装温度传感器,该传感器在低温条件下具有超高灵敏度。其次,我们从上述五个传感器中获得了一个由传感器电阻和温度值组成的数据集,其中包含校准系统测量的 16 K-300 K 温度范围内的 29 个校准点。然后,将数据集分为两个温度范围(16 K-54.358 K 和 40 K-300 K)。在 16-54.358 K 范围内,选择 14 个设定点作为训练集,3 个设定点作为测试集。在 40-300 K 范围内,选择 12 个点作为训练集,2 个点作为测试集。第三,使用 TensorFlow 框架建立并训练神经网络模型。通过将我们提出的 C-BiLSTM 与 BP 神经网络和 BiLSTM 进行比较,结果表明,在加入切比雪夫多项式特征后,C-BiLSTM 模型收敛更快,预测精度大大提高。在 16 K-40 K 的温度范围内,拟合误差和预测误差均小于 1 mK。即使在 40 K-300 K 的宽温度范围内,它们也能保持在 10 mK 以下,这对于提高温度测量的准确性来说是一个显著的进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High precision temperature measurement for cryogenic temperature sensors based on deep learning technology

Nonlinear error compensation is a significant factor that affects the measurement accuracy of temperature sensors. Cryogenic temperature sensors require a precise calibration technique to achieve accurate temperature measurements. BP (Back Propagation) neural networks are not suitable for sensor temperature prediction due to slow convergence and poor learning ability. In this study, a Chebyshev polynomial-based BiLSTM (Bi-directional Long Short-Term Memory) algorithm (C-BiLSTM) is proposed to improve the accuracy of measurement. Firstly, we demonstrate vacuum packaged temperature sensors based on zirconium oxynitride (ZrOxNy) thin films with ultra-high sensitivity at cryogenic temperatures. Secondly, a dataset consisting of sensor resistance and temperature values was obtained from five above-mentioned sensors, which contains 29 calibration points in the temperature range of 16 K-300 K measured by the Calibration System. Then, the dataset was divided into two temperature ranges (16 K-54.358 K and 40 K-300 K). In the range 16–54.358 K, 14 set-points are selected as training set and 3 set-points as testing set. In the range 40–300 K, 12 set-points are selected as training set and 2 set-points as testing set. Thirdly, a neural network model was built and trained using the TensorFlow framework. By comparing C-BiLSTM we proposed with the BP neural network and BiLSTM, the results show that the C-BiLSTM model converges faster and greatly improves the prediction accuracy after adding Chebyshev polynomial features. The fitting error and prediction error are less than 1 mK in the temperature range of 16 K-40 K. They can also keep less than 10 mK even at the wide temperature range of 40 K-300 K, which is a significant improvement respect to improving the accuracy of temperature measurement.

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来源期刊
Cryogenics
Cryogenics 物理-热力学
CiteScore
3.80
自引率
9.50%
发文量
0
审稿时长
2.1 months
期刊介绍: Cryogenics is the world''s leading journal focusing on all aspects of cryoengineering and cryogenics. Papers published in Cryogenics cover a wide variety of subjects in low temperature engineering and research. Among the areas covered are: - Applications of superconductivity: magnets, electronics, devices - Superconductors and their properties - Properties of materials: metals, alloys, composites, polymers, insulations - New applications of cryogenic technology to processes, devices, machinery - Refrigeration and liquefaction technology - Thermodynamics - Fluid properties and fluid mechanics - Heat transfer - Thermometry and measurement science - Cryogenics in medicine - Cryoelectronics
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