您当前所在位置: 首页 > 学者
在线提示

恭喜!关注成功

在线提示

确认取消关注该学者?

邀请同行关闭

只需输入对方姓名和电子邮箱,就可以邀请你的同行加入中国科技论文在线。

真实姓名:

电子邮件:

尊敬的

我诚挚的邀请你加入中国科技论文在线,点击

链接,进入网站进行注册。

添加个性化留言

已为您找到该学者18条结果 成果回收站

上传时间

2007年11月09日

【期刊论文】Utilization of Information Maximum for Condition Monitoring With Applications in a Machining Process and a Water Pump

李小俚, Xiaoli Li, R. Du, X. P. Guan

IEEE/ASME TRANSACTIONS ON MECHATRONICS, VOL. 9, NO. 4, DECEMBER 2004,-0001,():

-1年11月30日

摘要

This paper presents a new method for the condition monitoring based on the so-called information maximum (InfoMax). First, the InfoMax concept is employed to build a neural network. The neural network is used for independent component analysis to identify the source (input)that causes malfunctions (output). To demonstrate the new method, two application examples were included. First, tool breakage detection in an end milling process. The monitoring signal is the current of the feed-motor, which is used to detect the change of the cutting force and accordingly, to detect tool breakage. Second, is the monitoring of a water pump. In this example, seven acceleration signals were simultaneously acquired and used to identify the location of the fault (bearing crack). The experiment results indicate that the new method is effective.

Condition monitoring, end milling, independent component analysis, information maximum (, InfoMax), , pump.,

上传时间

2007年11月09日

【期刊论文】Tool Breakage Monitoring Using Motor Current Signals for Machine Tools With Linear Motors

李小俚, Xiaoli Li, R. Du, Berend Denkena, Joachim Imiela

IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, VOL. 52, NO. 5, OCTOBER 2005,-0001,():

-1年11月30日

摘要

In recent years, a number of machining centers have been built using linear motors. These machining centers have great potential for precision and high-speed machining. Nevertheless, a number of problems remain unsolved, such as monitoring and control. This paper presents a new tool breakage monitoring method for this type of machining center using the current signal of the linear motor. First, the relationship between the cutting force and the motor current is analyzed. Then, the new tool breakage method is presented. From a mathematical point of view, the new method uses a nonlinear energy operator to capture the abrupt changes of the motor current signal, which is directly related to the tool breakage. The experiment validation is included.

Cutting force,, linear motor,, machine tool,, motor current,, smoothed nonlinear energy operator,, tool breakage monitoring.,

上传时间

2007年11月09日

【期刊论文】Temporal structure of neuronal population oscillations with empirical model decomposition

李小俚, Xiaoli Li

Physics Letters A 356 (2006) 237-241,-0001,():

-1年11月30日

摘要

Frequency analysis of neuronal oscillation is very important for understanding the neural information processing and mechanism of disorder in the brain. This Letter addresses a new method to analyze the neuronal population oscillations with empirical mode decomposition (EMD). Following EMD of neuronal oscillation, a series of intrinsic mode functions (IMFs) are obtained, then Hilbert transform of IMFs can be used to extract the instantaneous time frequency structure of neuronal oscillation. The method is applied to analyze the neuronal oscillation in the hippocampus of epileptic rats in vivo, the results show the neuronal oscillations have different descriptions during the pre-ictal, seizure onset and ictal periods of the epileptic EEG at the different frequency band. This new method is very helpful to provide a view for the temporal structure of neural oscillation.

Neuronal oscillation, Empirical mode decomposition, Epileptic seizure, Hippocampus

上传时间

2007年11月09日

【期刊论文】Predictability analysis of absence seizures with permutation entropy

李小俚, Xiaoli Li, , Gaoxian Ouyang, Douglas A. Richards

Epilepsy Research (2007) 77, 70-74,-0001,():

-1年11月30日

摘要

In this study, we investigate permutation entropy as a tool to predict the absence seizures of genetic absence epilepsy rats from Strasbourg (GAERS) by using EEG recordings. The results show that permutation entropy can track the dynamical changes of EEG data, so as to describe transient dynamics prior to the absence seizures. Experiments demonstrate that permutation entropy can successfully detect pre-seizure state in 169 out of 314 seizures from 28 rats and the average anticipation time of permutation entropy is around 4.9 s. These findings could shed new light on the mechanism of absence seizure. In comparison with results of sample entropy, permutation entropy is better able to predict absence seizures.

Absence seizure, Predictions, Permutation entropy, Sample entropy, Genetic absence epilepsy rats

上传时间

2007年11月09日

【期刊论文】Nonlinear similarity analysis for epileptic seizures prediction

李小俚, Xiaoli Li, , G. Ouyang

Nonlinear Analysis xxx (xxx) xxx-xxx,-0001,():

-1年11月30日

摘要

The prediction of epileptic seizures can promise a new diagnostic application and a novel approach for seizure control. This paper proposes an improved dynamical similarity measure to predict epileptic seizures in electroencephalographic (EEG). First, mutual information and Cao’s method are employed to reconstruct a phase space of preprocessed EEG recordings by using the positive zero crossing method. Second, a Gaussian function replaces the Heavyside function within correlation integral at calculating a similarity index. The crisp boundary of the Heavyside function is eliminated because of the Gaussian function’s smooth boundary. Third, an adaptive detection method based on the similarity index is proposed to predict the epileptic seizures. In light of test results of EEG recordings of rats, it is found that the new dynamical similarity index is insensitive to the selection of the radius value of Gaussian function and the size of segmented EEG recordings. Comparing with the dynamical similarity index proposed by Le Van Quyen et al. [Anticipating epileptic seizures in real time by a non-linear analysis of similarity between EEG recordings, NeuroReport 10 (1999) 2149–2155], the tests of twelve rats show the new dynamical similarity index is better to predict the epileptic seizures.

Epileptic seizure, EEG, Similarity, Phase space, Gaussian function, Prediction References

合作学者

  • 李小俚 邀请

    燕山大学,河北

    尚未开通主页