Adaptive temperature compensation for MoS2 humidity sensor in complex environments using ISSA-BP neural network

Dapeng Li, Hechu Zhang, Aobei Chen, Xiaoyuan Dong, Yu Yang, Dezhi Zheng*, Rui Na

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

High-precision humidity detection in complex environments is essential across various fields. In this study, a high-performance MoS2 humidity sensor with a dynamic response time of less than 3 s was developed using molten salt-assisted chemical vapor deposition. To address the challenges posed by dynamic ambient temperature changes on sensor accuracy, an improved sparrow search algorithm-back propagation (ISSA-BP) neural network was constructed to mitigate temperature drift and correct nonlinear errors in the sensor output. The ISSA-BP neural network utilizes a global optimization strategy with adaptive learning, significantly enhancing accuracy and efficiency by optimizing the initialization and iterative update processes of traditional algorithms. Experimental results indicate that the proposed ISSA-BP achieves an average relative error of just 0.75% in humidity sensors across various environmental conditions, representing a 5.8-fold improvement in accuracy compared to traditional methods. Additionally, the algorithm demonstrated high robustness and accuracy across different environments, sensors, and datasets, confirming its applicability in complex and variable scenarios.

Original languageEnglish
Article number115982
JournalSensors and Actuators A: Physical
Volume379
DOIs
Publication statusPublished - 1 Dec 2024

Keywords

  • Adaptive temperature compensation
  • Back propagation neural network
  • Improved sparrow search algorithm
  • MoS humidity sensor

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