特征(语言学)
断层(地质)
计算机科学
传递函数
模式识别(心理学)
系列(地层学)
故障检测与隔离
学习迁移
时间序列
人工智能
特征向量
特征提取
数据挖掘
控制理论(社会学)
机器学习
工程类
执行机构
古生物学
哲学
语言学
地震学
电气工程
生物
地质学
控制(管理)
作者
Xueqing Ni,Dongsheng Yang,Huaguang Zhang,Fuming Qu,Jia Qin
标识
DOI:10.1109/tie.2022.3229351
摘要
Early stage fault detection plays a pivotal role in Industrial equipment accidents avoidance and scientific maintenance. While limited by the complex operation background, its application encounters with the conundrum of fault feature indistinctness. To address the challenge, a time-series transfer learning (TSTL) method is proposed, which contains two phases: first, early stage series are transferred to their corresponding serious stage for fault feature enhancement. Moreover, due to the improvement of model structure and loss function, the limitation of mismatched working condition is well-weaken. Second, a transferred fault mode recognition model is trained by using transferred normal series that provides a novel solution for data imbalance. Finally, the TSTL method is verified by actual vibration datasets of power pole tower bolts. Its superiority in feature transfer and fault detection is confirmed by several groups of comparative experiments and results demonstrate TSTL outperforms mainstream methods.
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