本文图示机构为单万向联轴节,端部有叉的轴1和轴3分别与机架4和十字形构件2组成转动副 A、B、C、D,其轴线汇交于十字形构件中心 O,且 A 与 B、B 与 C 及 C 与 D 的轴线夹角均为90°,而 A 与 D 的轴线所夹锐角为α,即两轴间夹角称轴...本文图示机构为单万向联轴节,端部有叉的轴1和轴3分别与机架4和十字形构件2组成转动副 A、B、C、D,其轴线汇交于十字形构件中心 O,且 A 与 B、B 与 C 及 C 与 D 的轴线夹角均为90°,而 A 与 D 的轴线所夹锐角为α,即两轴间夹角称轴角,十字形构件的 OB 和 OC互相垂直,它们的长度相等。展开更多
To decrease breakdown time and improve machine operation reliability,accurate residual useful life(RUL) prediction has been playing a critical role in condition based monitoring.A data fusion method was proposed to ac...To decrease breakdown time and improve machine operation reliability,accurate residual useful life(RUL) prediction has been playing a critical role in condition based monitoring.A data fusion method was proposed to achieve online RUL prediction of slewing bearings,which consisted of a reliability based RUL prediction model and a data driven failure rate(FR) estimation model.Firstly,an RUL prediction model was developed based on modified Weibull distribution to build the relationship between RUL and FR.Secondly,principal component analysis(PCA) was introduced to process multi-dimensional life-cycle vibration signals,and continuous squared prediction error(CSPE) and its time-domain features were employed as equipment performance degradation features.Afterwards,an FR estimation model was established on basis of the degradation features and relevant FRs using simplified fuzzy adaptive resonance theory map(SFAM) neural network.Consequently,real-time FR of equipment can be obtained through FR estimation model,and then accurate RUL can be calculated through the RUL prediction model.Results of a slewing bearing life test show that CSPE is an effective indicator of performance degradation process of slewing bearings,and that by combining actual load condition and real-time monitored data,the calculation time is reduced by 87.3%and the accuracy is increased by 0.11%,which provides a potential for online RUL prediction of slewing bearings and other various machineries.展开更多
文摘本文图示机构为单万向联轴节,端部有叉的轴1和轴3分别与机架4和十字形构件2组成转动副 A、B、C、D,其轴线汇交于十字形构件中心 O,且 A 与 B、B 与 C 及 C 与 D 的轴线夹角均为90°,而 A 与 D 的轴线所夹锐角为α,即两轴间夹角称轴角,十字形构件的 OB 和 OC互相垂直,它们的长度相等。
基金Projects(51375222,51175242)supported by the National Natural Science Foundation of China
文摘To decrease breakdown time and improve machine operation reliability,accurate residual useful life(RUL) prediction has been playing a critical role in condition based monitoring.A data fusion method was proposed to achieve online RUL prediction of slewing bearings,which consisted of a reliability based RUL prediction model and a data driven failure rate(FR) estimation model.Firstly,an RUL prediction model was developed based on modified Weibull distribution to build the relationship between RUL and FR.Secondly,principal component analysis(PCA) was introduced to process multi-dimensional life-cycle vibration signals,and continuous squared prediction error(CSPE) and its time-domain features were employed as equipment performance degradation features.Afterwards,an FR estimation model was established on basis of the degradation features and relevant FRs using simplified fuzzy adaptive resonance theory map(SFAM) neural network.Consequently,real-time FR of equipment can be obtained through FR estimation model,and then accurate RUL can be calculated through the RUL prediction model.Results of a slewing bearing life test show that CSPE is an effective indicator of performance degradation process of slewing bearings,and that by combining actual load condition and real-time monitored data,the calculation time is reduced by 87.3%and the accuracy is increased by 0.11%,which provides a potential for online RUL prediction of slewing bearings and other various machineries.