算法
计算机科学
涡轮机
适应性
学习迁移
机器学习
结冰
SCADA系统
断层(地质)
数据挖掘
人工智能
工程类
地质学
电气工程
地震学
海洋学
生物
机械工程
生态学
作者
Wanqiu Chen,Yingning Qiu,Yanhui Feng,Ye Li,Andrew Kusiak
标识
DOI:10.1016/j.renene.2020.10.121
摘要
Abstract A framework of using transfer learning algorithms, Inception V3 and TrAdaBoost, for fault diagnosis of two wind turbine faults is presented and verified. Two failure modes, blade icing accretion and gear cog belt fracture, are analyzed using SCADA data. A new index named ‘Comprehensive Index’ is defined to evaluate performance of different algorithms. Traditional machine learning algorithms do not perform well for data sets that are unbalanced and follow different distributions. The former causes bias in classification and the latter leads to poor adaptability of algorithms. A novel transfer learning algorithm studied in this paper, TrAdaBoost, has been proved to have superior performance on dealing with data imbalance and different distributions. A new approach to calibrate data labels using transfer learning algorithms is also proposed, which provides important insights into unsupervised learning for wind turbine fault diagnosis.
科研通智能强力驱动
Strongly Powered by AbleSci AI