|
|
Research on Multi-Sensor Fusion Intelligent Temperature Detection Method
|
CHEN Cheng1,KONG Fanxing2*,JIA Xiaoxi1,CHENG Yuhao1
|
1. School of Information and Control Engineering,Jilin University of Chemical Technology, Jilin City 132000,China;
2. School of Mechanical and Electrical Engineering, Jilin University of Chemical Technology, Jilin City 132000, China
|
|
|
Abstract
An intelligent temperature detection method based on multi-sensor fusion was proposed in order to solve the problem that the precision instrument would generate heat when running in special environment, which would cause the temperature to rise and lead to the life of the precision instrument to be shortened and the original parts to be processed incorrectly. The multi-layer feedforward neural network intelligent detection technology optimized by genetic algorithm is applied to the temperature detection of the incubator. The results show that the predicted temperature value obtained by the multi-layer feedforward neural network optimized by genetic algorithm is basically consistent with the change trend of the actual temperature value, and has high generalization ability and robustness.
|
Published: 25 November 2023
|
|
|
|
[1] |
CHEN Fang, WANG Ji, SONG Jianzhao, CHEN Yaxiao, WU Meng, CHEN Haipeng.
The Optimization Scheduling Strategy Sonsidering the Consumer Satisfaction for the Smart Industrial Parks
[J]. Journal of Jilin Institute of Chemical Technology, 2023, 40(9): 86-94. |
[2] |
LI Qianxin , ZHANG Shengjie , YU Tianming.
Research on Long-term Wind Speed Interval Prediction based on Fuzzy Cognitive Maps and Granular Computing
[J]. Journal of Jilin Institute of Chemical Technology, 2023, 40(7): 71-76. |
|
|
|
|