›› 2001, Vol. 37 ›› Issue (10): 59-63.
• Article • Previous Articles Next Articles
Yang Yikang;Song Anjun;Huang Yongxuan;Hu Baosheng
Published:
Abstract: An approach based on time-frequency analysis to recognize outliers in measured data series by spectrogram is proposed, which discovers the time-frequency character of measured data series. To obtain the best estimation of anti-jamming for measured series, the rule of weighted-square error is introduced to optimize the parameters of estimating model. Example shows that diagnosing outliers by spectrogram is accurate and reliable, and wavelet neural network of weighted error-energy function has excellent approximation ability and fast convergence speed. Moreover, the outliers’ influence on the estimate result can be eliminated efficiently by this way.
Key words: Outlier, Spectrogram, Wavelet neural network, Weighted error-energy function
CLC Number:
P207
Yang Yikang;Song Anjun;Huang Yongxuan;Hu Baosheng. TECHNOLOGY OF DIAGNOSIS AND ADJUSTMENT FOR OUTLIERS IN MEASURED DATA OF ENGINEERING[J]. , 2001, 37(10): 59-63.
0 / / Recommend
Add to citation manager EndNote|Reference Manager|ProCite|BibTeX|RefWorks
URL: http://www.cjmenet.com.cn/EN/
http://www.cjmenet.com.cn/EN/Y2001/V37/I10/59