TY - JOUR
T1 - A task-oriented theil index-based meta-learning network with gradient calibration strategy for rotating machinery fault diagnosis with limited samples
AU - Mu, Mingzhe
AU - Jiang, Hongkai
AU - Wang, Xin
AU - Dong, Yutong
N1 - Publisher Copyright:
© 2024
PY - 2024/10
Y1 - 2024/10
N2 - In industrial scenarios, rotating machinery operates in harsh environments under complex and variable conditions, which leads to a scarcity of available data. This brings challenges to intelligent model-based rotating machinery fault diagnosis. For this issue, a task-oriented theil index-based meta-learning network with gradient calibration strategy (TTIMN-GCS) is proposed for rotating machinery fault diagnosis with limited samples. Firstly, a fine-grained feature learner (FGFL) is designed to extract high-dimensional fine-grained fault information from limited samples. The FGFL is modeled after the human recognition process of fine-grained objects, enhancing distinguishing between fault categories with subtle differences. Secondly, a task inequality metric named task-oriented theil index is developed to acquire more competitive update rules from limited samples, which creatively frees the initial performance of the meta-FGFL from being overly tied to specific tasks. Finally, a gradient calibration strategy is proposed to adjust the optimization trajectory of TTIMN-GCS, which facilitates the diagnostic model evolution toward robust generalization performance. Four diagnostic cases on several datasets are designed, and the diagnostic accuracies under the 5-shot setting reach 98.18 %, 96.68 %, 94.60 %, and 93.90 %, respectively, which are better than other state-of-the-art methods. Experimental results exhibit that the TTIMN-GCS has a remarkable capability to identify new fault categories from a few samples and is potentially promising for engineering applications.
AB - In industrial scenarios, rotating machinery operates in harsh environments under complex and variable conditions, which leads to a scarcity of available data. This brings challenges to intelligent model-based rotating machinery fault diagnosis. For this issue, a task-oriented theil index-based meta-learning network with gradient calibration strategy (TTIMN-GCS) is proposed for rotating machinery fault diagnosis with limited samples. Firstly, a fine-grained feature learner (FGFL) is designed to extract high-dimensional fine-grained fault information from limited samples. The FGFL is modeled after the human recognition process of fine-grained objects, enhancing distinguishing between fault categories with subtle differences. Secondly, a task inequality metric named task-oriented theil index is developed to acquire more competitive update rules from limited samples, which creatively frees the initial performance of the meta-FGFL from being overly tied to specific tasks. Finally, a gradient calibration strategy is proposed to adjust the optimization trajectory of TTIMN-GCS, which facilitates the diagnostic model evolution toward robust generalization performance. Four diagnostic cases on several datasets are designed, and the diagnostic accuracies under the 5-shot setting reach 98.18 %, 96.68 %, 94.60 %, and 93.90 %, respectively, which are better than other state-of-the-art methods. Experimental results exhibit that the TTIMN-GCS has a remarkable capability to identify new fault categories from a few samples and is potentially promising for engineering applications.
KW - Gradient-calibration strategy
KW - Limited samples
KW - Meta-learning network
KW - Rotating machinery fault diagnosis
KW - Task-oriented theil index
UR - http://www.scopus.com/inward/record.url?scp=85206271441&partnerID=8YFLogxK
U2 - 10.1016/j.aei.2024.102870
DO - 10.1016/j.aei.2024.102870
M3 - 文章
AN - SCOPUS:85206271441
SN - 1474-0346
VL - 62
JO - Advanced Engineering Informatics
JF - Advanced Engineering Informatics
M1 - 102870
ER -