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Rolling Bearing Feature Frequency Extraction using Extreme Average Envelope Decomposition 被引量:4
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作者 shi kunju LIU Shulin +1 位作者 JIANG Chao ZHANG Hongli 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2016年第5期1029-1036,共8页
The vibration signal contains a wealth of sensitive information which reflects the running status of the equipment. It is one of the most important steps for precise diagnosis to decompose the signal and extracts the ... The vibration signal contains a wealth of sensitive information which reflects the running status of the equipment. It is one of the most important steps for precise diagnosis to decompose the signal and extracts the effective information properly. The traditional classical adaptive signal decomposition method, such as EMD, exists the problems of mode mixing, low decomposition accuracy etc. Aiming at those problems, EAED(extreme average envelope decomposition) method is presented based on EMD. EAED method has three advantages. Firstly, it is completed through midpoint envelopment method rather than using maximum and minimum envelopment respectively as used in EMD. Therefore, the average variability of the signal can be described accurately. Secondly, in order to reduce the envelope errors during the signal decomposition, replacing two envelopes with one envelope strategy is presented. Thirdly, the similar triangle principle is utilized to calculate the time of extreme average points accurately. Thus, the influence of sampling frequency on the calculation results can be significantly reduced. Experimental results show that EAED could separate out single frequency components from a complex signal gradually. EAED could not only isolate three kinds of typical bearing fault characteristic of vibration frequency components but also has fewer decomposition layers. EAED replaces quadratic enveloping to an envelope which ensuring to isolate the fault characteristic frequency under the condition of less decomposition layers. Therefore, the precision of signal decomposition is improved. 展开更多
关键词 adaptive signal decomposition extreme average envelope decomposition EMD fault diagnosis
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Abnormality Degree Detection Method Using Negative Potential Field Group Detectors 被引量:1
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作者 ZHANG Hongli LIU Shulin +3 位作者 LI Dong shi kunju WANG Bo CUI Jiqiang 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2015年第5期983-993,共11页
Online monitoring methods have been widely used in many major devices, however the normal and abnormal states of equipment are estimated mainly based on the monitoring results whether monitored parameters exceed the s... Online monitoring methods have been widely used in many major devices, however the normal and abnormal states of equipment are estimated mainly based on the monitoring results whether monitored parameters exceed the setting thresholds. Using these monitoring methods may cause serious false positive or false negative results. In order to precisely monitor the state of equipment, the problem of abnormality degree detection without fault sample is studied with a new detection method called negative potential field group detectors(NPFG-detectors). This method achieves the quantitative expression of abnormality degree and provides the better detection results compared with other methods. In the process of Iris data set simulation, the new algorithm obtains the successful results in abnormal detection. The detection rates for 3 types of Iris data set respectively reach 100%, 91.6%, and 95.24% with 50% training samples. The problem of Bearing abnormality degree detection via an abnormality degree curve is successfully solved. 展开更多
关键词 negative potential field group detector(NPFG-detector) data negative Gaussian field kernel density estimation abnormality degree
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基于变分模态分解的轴承振动特征提取方法 被引量:4
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作者 石坤举 朱文华 +1 位作者 蔡宝 吴镝 《上海第二工业大学学报》 2017年第4期264-269,共6页
设备运转的状态信息能够通过振动信号实时反映出来,然而由于信号中混杂了大量背景噪声等干扰信息,使得信号分解技术成为关注的重点之一。变分模态分解(variational mode decomposition,VMD)克服了传统自适应信号分解方法的不足,分解出... 设备运转的状态信息能够通过振动信号实时反映出来,然而由于信号中混杂了大量背景噪声等干扰信息,使得信号分解技术成为关注的重点之一。变分模态分解(variational mode decomposition,VMD)克服了传统自适应信号分解方法的不足,分解出的信号消除了端点效应和模态混叠等失真现象,具有抗噪干扰能力强、计算速度快等优点。针对VMD模态K数难以选取的问题,以信号主频率个数作为K的选择依据,然后结合信息熵测度,提出了一种的新的振动信号提取方法,剔除干扰信息,便于故障类型的查找。仿真和轴承实验表明了该方法的有效性和可行性。 展开更多
关键词 变分模态分解 信息熵 滚动轴承 特征提取
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基于虚拟仿真的高职本科智能制造工程技术实训体系构建
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作者 李宇廷 刘江 +3 位作者 史东丽 许爱华 石坤举 王秋红 《模具制造》 2024年第6期50-52,共3页
分析了智能制造工程技术实训体系的痛难点,通过融入虚拟仿真实训元素,探索“虚实结合”专业实训教学体系的构建策略。以常州机电职业技术学院智能制造工程技术专业为例,构建实训教学虚实资源支撑专业学生知识、能力和素养目标要求的关... 分析了智能制造工程技术实训体系的痛难点,通过融入虚拟仿真实训元素,探索“虚实结合”专业实训教学体系的构建策略。以常州机电职业技术学院智能制造工程技术专业为例,构建实训教学虚实资源支撑专业学生知识、能力和素养目标要求的关联矩阵,形成“依托课程-实体实训-虚拟仿真实训—学生知识能力素养”专业实训资源配置矩阵图,指导实训资源建设、日常实训教学开展,建立目标资源一致的实训教学体系。 展开更多
关键词 智能制造 虚拟仿真 关联矩阵 高职本科
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