Machine-Learning-Based Calibration of Temperature Sensors

Sensors (Basel). 2023 Aug 23;23(17):7347. doi: 10.3390/s23177347.

Abstract

Temperature sensors are widely used in industrial production and scientific research, and accurate temperature measurement is crucial for ensuring the quality and safety of production processes. To improve the accuracy and stability of temperature sensors, this paper proposed using an artificial neural network (ANN) model for calibration and explored the feasibility and effectiveness of using ANNs to calibrate temperature sensors. The experiment collected multiple sets of temperature data from standard temperature sensors in different environments and compared the calibration results of the ANN model, linear regression, and polynomial regression. The experimental results show that calibration using the ANN improved the accuracy of the temperature sensors. Compared with traditional linear regression and polynomial regression, the ANN model produced more accurate calibration. However, overfitting may occur due to a small sample size or a large amount of noise. Therefore, the key to improving calibration using the ANN model is to design reasonable training samples and adjust the model parameters. The results of this study are important for practical applications and provide reliable technical support for industrial production and scientific research.

Keywords: accuracy; artificial neural network (ANN); calibration; linear regression; overfitting; polynomial regression; stability; temperature sensor.

Grants and funding

This research was supported by the Science and Technology Planning Project of Xiamen City (3502Z20191021), the Science and Technology Planning Project of Fujian Province, China (2022H0044), and the Strategic Priority Research Program of the Chinese Academy of Sciences (XDA23030203).