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Open AccessArticle
Proto-DISFNet: A Prototype-Guided Dual-Feature Transfer Learning Method for Cross-Condition Fault Diagnosis of Cotton Harvester Picking-Head Drivetrains
by
Huachao Jiao
Huachao Jiao 1,2
,
Wenlei Sun
Wenlei Sun 1,*
,
Hongwei Wang
Hongwei Wang 1
and
Xiaojing Wan
Xiaojing Wan 1
1
Intelligent Manufacturing Modern Industry College, Xinjiang University, Urumqi 830046, China
2
School of Mechanical and Electrical Engineering, Xinjiang Institute of Engineering, Urumqi 830091, China
*
Author to whom correspondence should be addressed.
Agriculture 2026, 16(1), 87; https://doi.org/10.3390/agriculture16010087 (registering DOI)
Submission received: 11 December 2025
/
Revised: 24 December 2025
/
Accepted: 29 December 2025
/
Published: 30 December 2025
Abstract
Cross-condition fault diagnosis of cotton harvester picking-head drivetrains remains challenging due to significant distribution discrepancies in vibration signals under different operating conditions. Existing transfer learning approaches predominantly focus on domain-invariant features while failing to sufficiently exploit domain-specific information and the structural constraints embedded in target-domain normal samples, which often leads to unstable diagnostic performance across conditions. To address this issue, this paper proposes a prototype-guided dual-feature transfer learning method termed Proto-DISFNet (Prototype-guided Domain-Invariant and Domain-Specific Feature Network). The proposed method explicitly disentangles domain-invariant and domain-specific features to alleviate the impact of operating condition variations. High-confidence pseudo-labeled samples, selected through a filtering strategy, are utilized to construct class prototypes in the target domain, thereby enhancing semantic consistency and structural awareness in the feature space. In addition, a stage-wise training strategy is introduced to coordinate multi-task optimization, which improves training stability and overall adaptability under representative complex engineering operating conditions. Experiments conducted on three vibration datasets, JNU, THU, and CHPH-FETB, demonstrate that Proto-DISFNet achieves stable and competitive cross-condition diagnostic performance under varying degrees of domain shift and operating conditions. These results indicate the engineering relevance and potential applicability of the proposed method for fault diagnosis of cotton harvester picking-head drivetrains.
Share and Cite
MDPI and ACS Style
Jiao, H.; Sun, W.; Wang, H.; Wan, X.
Proto-DISFNet: A Prototype-Guided Dual-Feature Transfer Learning Method for Cross-Condition Fault Diagnosis of Cotton Harvester Picking-Head Drivetrains. Agriculture 2026, 16, 87.
https://doi.org/10.3390/agriculture16010087
AMA Style
Jiao H, Sun W, Wang H, Wan X.
Proto-DISFNet: A Prototype-Guided Dual-Feature Transfer Learning Method for Cross-Condition Fault Diagnosis of Cotton Harvester Picking-Head Drivetrains. Agriculture. 2026; 16(1):87.
https://doi.org/10.3390/agriculture16010087
Chicago/Turabian Style
Jiao, Huachao, Wenlei Sun, Hongwei Wang, and Xiaojing Wan.
2026. "Proto-DISFNet: A Prototype-Guided Dual-Feature Transfer Learning Method for Cross-Condition Fault Diagnosis of Cotton Harvester Picking-Head Drivetrains" Agriculture 16, no. 1: 87.
https://doi.org/10.3390/agriculture16010087
APA Style
Jiao, H., Sun, W., Wang, H., & Wan, X.
(2026). Proto-DISFNet: A Prototype-Guided Dual-Feature Transfer Learning Method for Cross-Condition Fault Diagnosis of Cotton Harvester Picking-Head Drivetrains. Agriculture, 16(1), 87.
https://doi.org/10.3390/agriculture16010087
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