Fault prediction of combine harvesters based on stacked denoising autoencoders

Zhaomei Qiu, 1. College of Agricultural Equipment Engineering, Henan University of Science and Technology, Luoyang 471003, Henan, China, Gaoxiang Shi, Bo Zhao, Xin Jin, Liming Zhou, Tengfei Ma, 2. China Academy of Agricultural Mechanization Science, Beijing 100083, China
2022 International Journal of Agricultural and Biological Engineering  
Accurate fault prediction is essential to ensure the safety and reliability of combine harvester operation. In this study, a combine harvester fault prediction method based on a combination of stacked denoising autoencoders (SDAE) and multi-classification support vector machines (SVM) is proposed to predict combine harvester faults by extracting operational features of key combine components. In general, SDAE contains autoencoders and uses a deep network architecture to learn complex non-linear
more » ... input-output relationships in a hierarchical manner. Selected features are fed into the SDAE network, deep-level features of the input parameters are extracted by SDAE, and an SVM classifier is then added to its top layer to achieve combine harvester fault prediction. The experimental results show that the method can achieve accurate and efficient combine harvester fault prediction. In particular, the experiments uses Gaussian noise with a distribution center of 0.05 to corrupt the test data samples obtained by random sampling of the whole population, and the results showed that the prediction accuracy of the method is 95.31%, which has better robustness and generalization ability compared to SVM (77.03%), BP (74.61%), and SAE (90.86%).
doi:10.25165/j.ijabe.20221502.6963 fatcat:zs5f7rcjqjhcpm4ehhyc22jrvy