[1] 么子云,汪成文,车煜全,等.往复机械连杆轴承磨损故障仿真与实验研究[J].机械强度,2018,40(2):255-260.[2] 郭煜敬,陈士刚,李少华,等.基于经验模态分解及支持向量机的高压隔离开关机械故障诊断方法[J].高压电器,2018,54(9):12-18.
[3] 汪崔洋,江全元,唐雅洁,等.基于告警信号文本挖掘的电力调度故障诊断[J].电力自动化设备,2019,39(4):126-132.
[4] 林江刚,胡正新,李晶,等.低转速下基于AE信号与LMD的滚动轴承故障诊断[J].动力工程学报,2019,39(4):293-298.
[5] 胡轲珽,刘志刚,胡冉冉,等.一种新型基于模型的动车组牵引逆变器开路故障诊断方法[J].铁道学报,2018,40(2):31-38.
[6] 陈奇,姚志刚,陈无畏,等.基于模型的液力变矩器故障诊断系统的设计与校验[J].汽车工程,2018,40(10):1246-1253.
[7] ZHANG H D,AHMED F,DOU Z.Fault diagnosis and life prediction of mechanical equipment based on artificial intelligence[J]. Journal of intelligent and fuzzy systems,201 ,37(12):3535-3544.
[8] 李梦诗,余达,陈子明,等.基于深度置信网络的风力发电机故障诊断方法[J].电机与控制学报,2019,23(2):114-122.
[9] 侯荣涛,周子贤,赵晓平,等.基于堆叠稀疏自编码的滚动轴承故障诊断[J].轴承,2018(3):49-54,60.
[10] 王珂,吕勇,易灿灿.压缩感知框架下的共振解调故障诊断方法[J].中国机械工程,2018,29(1 ):1907-1911.
[11] 李宗民,徐希云,刘玉杰,等.条件随机场像素建模与深度特征融合的目标区域分割算法[J].计算机辅助设计与图形学学报,2018,30(6):1000-1007.
[12] 邓芳明,温开云,何怡刚,等.基于RFID传感标签及QPSO-RVM的变压器绕组故障在线诊断技术[J].中国电机工程学报,2018,38(24):7183-7193.
[13] 王昆,周骅.深度学习中的卷积神经网络系统设计及硬件实现[J].电子技术应用,2018,44(5):56-59.
[14] SINGARAVEL S,SUYKENS J,GEYER P.Deep learning neural network architectures and methods:Using component-based models inbuilding-design energy prediction[J].Advanced engineering informatics,2018,38:81-90.
[15] GATOS I,TSANTIS S,SPILIOPOULOS S,et al.Temporal stability assessment in shear wave elasticity images validated by deep learning neural network for chronic liver disease fibrosis stage assessment[J].Medical physics,2019,46(5):2298-2309.