Author:
Zang Chongquan,Wei Xinhua,Li Lin,Hu Cong,Tong Hao
Abstract
The structure of combined harvester is complex, and its operation process includes many processes. There is material transportation between each process, so blocking faults often occur. The blockage fault of combined harvester will seriously affect the efficiency of working and harvest quality, so this paper designs a remote diagnosis system of blockage fault of combined harvester. The system can carry out remote monitoring, fault diagnosis and fault alarm for the operation status of the combine, and also provide information management and other functions, which can effectively carry out remote maintenance services. This paper presents an IPSO-BP fault diagnosis model, which is tested by simulation test. The results show that the accuracy of fault prediction by this method is 97.78%. Compared with BP neural network model and PSO-BP model, the accuracy of fault prediction is improved by 5.28% and 13.45%, meeting the fault diagnosis requirements of combined harvester.
Subject
General Physics and Astronomy
Reference6 articles.
1. Fault prediction of combined harvesters based on stacked denoising autoencoders[J];Qiu;International Journal of Agricultural and Biological Engineering,2022
2. Research on Comprehensive Operation and Maintenance Based on the Fault Diagnosis System of Combined harvester[J];Zhang;Agriculture,2022
3. Design and Experiment of Multi-information Collection System for Grain Combined harvesters[C];Yin;International Federation of Automatic Control-Papers on Line2018
4. Target threat assessment based on BP neural network optimized by modified particle swarm optimization [J];Xuan;Journal of Jilin University (Engineering and Technology Edition),2017
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