IEEE Access (Jan 2022)

Equipment Pattern Recognition of Unbalanced Fuel Consumption Data Based on Grouping Multi-BP Neural Network

  • Huange Xing,
  • Xiaoying Zheng,
  • Wei Zhang

DOI
https://doi.org/10.1109/ACCESS.2022.3168846
Journal volume & issue
Vol. 10
pp. 44170 – 44177

Abstract

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Artificial intelligence technology provides an unprecedented opportunity to assess the state of large-scale equipment with oil monitoring data. One of the key challenges in analyzing HFC (Hydraulic Fluid Composition) data is constructing a small sample classification, identifying abnormal equipment subgroups, and finding the significant impact indicators in unbalanced equipment. We propose GMBPN, a monitoring framework to identify the abnormal state and the order of influence index through multiple BP neural networks with group sampling. In order to improve the accuracy of small sample classification caused by the unbalanced number of samples, the classification model of small sample training is established by the quantitative grouping index. For the optimal classification model, the contribution order of each feature is compared by increased information gain. When GMBPN is applied to HFC data, it successfully captures the representative characteristics of abnormal equipment and impactors and shows its advantages over classical K-means and BP neural models in accuracy, classification consistency, and sampling methods.

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