期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
优质服务创品牌,优质服务增效益,优质服务赢客户——浅谈计量器具检定的“窗口”部门
1
作者 宋为霖 《计量与测试技术》 2017年第10期124-125,共2页
文章简要介绍了法定计量技术机构的"窗口"部门的服务工作,强调了做好优质服务的工作,是创造品牌,增加效益,赢得客户的关键。
关键词 “窗口”部门 优质服务
下载PDF
A data-driven threshold for wavelet sliding window denoising in mechanical fault detection 被引量:9
2
作者 CHEN YiMin ZI YanYang +2 位作者 CAO HongRui HE ZhengJia SUN HaiLiang 《Science China(Technological Sciences)》 SCIE EI CAS 2014年第3期589-597,共9页
Wavelet denoising is an effective approach to extract fault features from strong background noise.It has been widely used in mechanical fault detection and shown excellent performance.However,traditional thresholds ar... Wavelet denoising is an effective approach to extract fault features from strong background noise.It has been widely used in mechanical fault detection and shown excellent performance.However,traditional thresholds are not suitable for nonstationary signal denoising because they set universal thresholds for different wavelet coefficients.Therefore,a data-driven threshold strategy is proposed in this paper.First,the signal is decomposed into different subbands by wavelet transformation.Then a data-driven threshold is derived by estimating the noise power spectral density in different subbands.Since the data-driven threshold is dependent on the noise estimation and adapted to data,it is more robust and accurate for denoising than traditional thresholds.Meanwhile,sliding window method is adopted to set a flexible local threshold.When this method was applied to simulation signal and an inner race fault diagnostic case of dedusting fan bearing,the proposed method has good result and provides valuable advantages over traditional methods in the fault detection of rotating machines. 展开更多
关键词 wavelet denoising data-driven threshold noise estimation bearing fault diagnosis
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部