ABSTRACT
The paper aims to study the identification and diagnosis of infrared thermal fault of airborne circuit board of equipment, expand the application of intelligent algorithm in infrared thermal fault diagnosis, and promote the development of computer image processing technology and neural network technology in the field of thermal diagnosis. Taking the airborne circuit board in the boiler plant as the research object, first, the sequential analysis method was selected to collect the temperature changes during the operation of the circuit board. Second, on the basis of convolutional neural network, the program was written in Python, and the Relu function was used as the activation function establish the thermal fault diagnosis method of the on-board circuit board of the boiler plant equipment based on the convolutional neural network model. Third, based on the support vector machine intelligent algorithm, genetic algorithm was used to optimize the parameters, and combined with the grey prediction model, the infrared thermal fault diagnosis scheme of the circuit board of the multistage support vector machine boiler plant equipment was constructed. The results showed that the accuracy of the model after 6000 iterations was stable between 0.92-0.96, and the loss function value was stable at about 0.17. After the optimization of genetic algorithm, the accuracy of thermal fault diagnosis based on support vector machine model was optimized. Compared with grey prediction model, the accuracy of support vector machine model for fault diagnosis was higher, mean square error value was 0.0258, and the correlation coefficient was 91.55%. To sum up, the support vector machin model shows higher accuracy than grey prediction model, which can be used for thermal fault diagnosis.
KEYWORDS
PAPER SUBMITTED: 2019-12-18
PAPER REVISED: 2020-01-21
PAPER ACCEPTED: 2020-02-08
PUBLISHED ONLINE: 2020-03-28
THERMAL SCIENCE YEAR
2020, VOLUME
24, ISSUE
Issue 5, PAGES [3367 - 3374]
- Xu, Y., et al., A New Method of Computer Image Processing and Detection Based on AHP Analysis, Journal of Computational and Theoretical Nanoscience, 13 (2016), 7, pp. 4368-4372.
- Mu, Z. H., 3D Reconstruction Algorithm of Weld Pool Surface Based on Computer Vision Technology, Open Petroleum Engineering Journal, 81 (2015), 1, pp. 434-439.
- Nykaza, E. T., et al., Deep learning for unsupervised feature extraction in audio signals: Monaural source separation, The Journal of the Acoustical Society of America, 140 (2016), 4, pp. 3424.
- Wang, Z., et al., Deep learning based monitoring of furnace combustion state and measurement of heat release rate, Energy, 131 (2017), pp. 106-112.
- Shaofei Wu,A Traffic Motion Object Extraction Algorithm,International Journal of Bifurcation and Chaos, 25(2015),14,Article Number 1540039
- Yan, R., Shao, L., Blind Image Blur Estimation via Deep Learning, IEEE Transactions on Image Processing, 25 (2016), 4, pp. 1910-1921.
- Xu, Z., et al., Three-Point-Bending Fatigue Behavior of AZ31B Magnesium Alloy Based on Infrared Thermography Technology, International Journal of Fatigue, 95 (2016), pp. 156-167.
- McHugh, T., Pan, Z., Innovative Infrared Food Processing, Food Technology, 69 (2015), 2, pp. 79-81.
- Xu, et al., Minimum detectable gas concentration performance evaluation method for gas leak infrared imaging detection systems, Applied Optics, 56 (2017), 10, pp. 2952-2959.
- Shaofei Wu. Study and evaluation of clustering algorithm for solubility and thermodynamic data of glycerol derivatives, Thermal Science, 23(2019), 5, pp.2867-2875.
- Labeur, L., et al., Infrared thermal imaging as a method to evaluate heat loss in newborn lambs, Research in Veterinary Science, 115 (2017), pp. 517-522.
- Bernard, V., et al., Infrared thermal imaging: A potential tool used in open colorectal surgery, Minerva Chirurgica, 72 (2017), 5, pp. 442-446.
- Zhao, X., et al., Identification and Characterization of a Novel 2,3-Butanediol Dehydrogenase/Acetoin Reductase from Corynebacterium crenatum SYPA5-5, Letters in Applied Microbiology, 61 (2015), 6, pp. 573-579.
- Ferreira, A., Giraldi, G., Convolutional Neural Network Approaches to Granite Tiles Classification, Expert Systems with Applications, 84 (2017), pp. 1-11.
- Min, W., et al., A New Approach to Track Multiple Vehicles With the Combination of Robust Detection and Two Classifiers, IEEE Transactions on Intelligent Transportation Systems, 19 (2018), 1, pp. 174-186.