Fault prediction of combine harvesters based on stacked denoising autoencoders
Abstract
Keywords: fault prediction, combine harvester, stacked denoising autoencoders, support vector machines
DOI: 10.25165/j.ijabe.20221502.6963
Citation: Qiu Z M, Shi G X, Zhao B, Jin X, Zhou L M, Ma T F. Fault prediction of combine harvesters based on stacked denoising autoencoders. Int J Agric & Biol Eng, 2022; 15(2): 189–196.
Keywords
Full Text:
PDFReferences
Wang L, Wang Y, Dai D, Wang X, Wang S. Review of electro-hydraulic hitch system control method of automated tractors. Int J Agric & Biol Eng, 2021; 14(3): 1–8.
Ylmaz D, Gkduman ME. Development of a measurement system for noise and vibration of combine harvester. Int J Agric & Biol Eng, 2020; 13(6): 104–108.
Luo X W, Liao J, Hu l, Zang Y, Zhou Z Y. Improving agricultural mechanization level to promote agricultural sustainable development. Editorial Office of Transactions of the CSAE, 2016; 32(1): 1–11. (in Chinese)
Gao Z, Cecati C, Ding S X. A survey of fault diagnosis and fault-tolerant techniques—Part I: fault diagnosis with model-based and signal-based approaches. IEEE Transactions on Industrial Electronics, 2015; 62(6): 3757–3767.
Cecchini M, Piccioni F, Ferri S, Coltrinari G, Colantoni A. Preliminary investigation on systems for the preventive diagnosis of faults on agricultural operating machines. Sensors, 2021; 21(4): 1547. https://doi.org/10.3390/s21041547.
Kamilaris A, Prenafeta-Boldu F X. Deep learning in agriculture: A survey. Computers and Electronics in Agriculture, 2018; 147: 70–90.
Cheng L, Zhang Y. Analysis of intelligent agricultural system and control mode based on fuzzy control and sensor network. Journal of Intelligent and Fuzzy Systems, 2019; 37(2): 1–12.
Zhang Z W, Chen H H, Li S M, Wang J R. A novel sparse filtering approach based on time-frequency feature extraction and softmax regression for intelligent fault diagnosis under different speeds. Journal of Central South University, 2019; 26(6): 1607–1618.
Zheng J X, Li M, Hu S K, Xiao X W, Li H, Li W F. Research on optimization of agricultural machinery fault monitoring system based on artificial neural network algorithm. INMATEH-Agricultural Engineering, 2021; 64: 297-306.
Gupta S, Khosravy M, Gupta N, D Ar B Ar I H, Patel N. Hydraulic system onboard monitoring and fault diagnostic in agricultural machine. Brazilian Archives of Biology and Technology, 2019; 62(3): e19180363. https://doi.org/10.1590/1678-4324-2019180363.
Wattanajitsiri V, Kanchana R, Triwanapong S, Kimapong K. Identifying preventive maintenance guideline for a combine harvester with application of fault mode and effect analysis technique. MATEC Web of Conferences, 2020; 319: 01004. https://schlr.cnki.net/Detail/doi/WWMERGEJLAST/ SJEQ5AFDF8B9341F9D89610B1F7A244685D7
Janotta R, Podsdek S, Bartoszuk M. The concept of a mechatronic system for monitoring the temperature of bearings in a combine harvester. 2nd International Conference on Chemistry, Chemical Process and Engineering (IC3PE). 2018. https://doi.org/10.1063/1.5066485.
Xiao M H, Wang W C, Wang K X, Zhang W, Zhang H. Fault diagnosis of high-power tractor engine based on competitive multiswarm cooperative particle swarm optimizer algorithm. Shock and Vibration, 2020; 2020: 1–13.
Mohammed A, Djurovic S. Electric machine bearing health monitoring and ball fault detection by simultaneous thermo-mechanical fiber optic sensing. IEEE Transactions on Energy Conversion, 2021; 36(1): 71–80.
Shi J, Wu X, Liu T. Bearing compound fault diagnosis based on HHT algorithm and convolution neural network. Transactions of the CSAE, 2020; 36(4): 34–43. (in Chinese)
Trinh H C, Kwon Y K. A data-independent genetic algorithm framework for fault-type classification and remaining useful life prediction. Applied Sciences, 2020; 10(1): 368. doi: 10.3390/app10010368
Chang L K, Wang S H, Tsai M C. Demagnetization fault diagnosis of a PMSM using auto-encoder and K-means clustering. Energies, 2020; 13(17): 4467. https://www.mdpi.com/1996-1073/13/17/4467
Liu Y, Duan L, Yuan Z, Wang N, Zhao J. An intelligent fault diagnosis method for reciprocating compressors based on LMD and SDAE. Sensors, 2019; 19(5): 1041. https://doi.org/10.3390/s19051041
Li S, He H, Li J. Big data driven lithium-ion battery modeling method based on SDAE-ELM algorithm and data pre-processing technology. Applied Energy, 2019; 242: 1259–1273.
Lu N, Chen C, Shi W, Zhang J, Ma, J. Weakly supervised change detection based on edge mapping and SDAE network in high-resolution remote sensing images. Remote Sensing, 2020; 12(23): 3907. https://doi.org/10.3390/rs12233907.
Rizwan-ul-Hassan, Li C, Liu Y. Online dynamic security assessment of wind integrated power system using SDAE with SVM ensemble boosting learner. International Journal of Electrical Power & Energy Systems, 2021; 125: 106429. https://doi.org/10.1016/j.ijepes.2020.106429.
Chen L, Wang Z Y, Qin W L, Ma J. Fault diagnosis of rotary machinery components using a stacked denoising autoencoder-based health state identification. Signal Processing, 2017; 130: 377–388.
Vincent P, Larochelle H, Lajoie I. Stacked de-noising auto-encoders: learning useful representations in a deep network with a local de-noising criterion. J Mach Learn Res 2010; 11: 3371–408.
Vincent P, Larochelle H, Lajoie I, Bengio Y, Manzagol P A. Extracting and composing robust features with de-noising auto-encoders. Proceedings of the Twenty-Fifth Int Conference on Machine Learning, 2008; pp. 1096–103. https://doi.org/10.1145/1390156.1390294.
Cai Z, Long Y, Shao L. Classification complexity assessment for hyper-parameter optimization. Pattern Recognition Letters, 2019; 125(7): 396–403.
Yang L, Shami A. On Hyperparameter optimization of machine learning algorithms: Theory and practice. Neurocomputing, 2020; 415: 295–316.
Copyright (c) 2022 International Journal of Agricultural and Biological Engineering
This work is licensed under a Creative Commons Attribution 4.0 International License.