Rényi entropy based failure detection of medical electrodes

I. Marasović, N. Saulig, Zeljka Milanovic
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引用次数: 1

Abstract

Medical electrodes used for measuring low amplitude signals, such as EEG electrodes, have to be robust and guarantee a high level of reliability. Corkscrew electrodes, considered in this paper, can become faulty due to cold solder that can appear immediately after the manufacturing process or due to mechanical stress after a few months of use. This problem is hard to detect and is usually manifested as noisy output signal. Commonly used method for monitoring the reliability of materials or circuit interconnects is the resistance measurement. Although very easy to implement, this method does not provide a reliable failure detection. Motivated by these facts, in this paper we propose a computer model based on resistance measurements, for predicting and detecting failure in EEG electrodes supported by laboratory measurements. Level and type of noise is obtained from the comparison of resistance fluctuations of the electrodes tip recorded under stress, and simulated signals. Time-frequency analysis has been applied to real and simulated reference and faulty electrode signals and results compared in order to establish a failure detection measure. Since the energy spectrum of the signal is shown to be an unreliable indicator of the failure appearance, the Rényi entropy is used to determine the difference between reference and faulty electrodes. This measure is applied to measured and simulated spectrograms, denoised using the K-means algorithm. It is shown that the difference between global entropies of the reference and faulty electrode spectrograms is significant when K-means based denoising is applied, thus providing a method for reliable failure detection.
基于rsamnyi熵的医用电极故障检测
用于测量低幅度信号的医用电极,如脑电图电极,必须具有鲁棒性,并保证高水平的可靠性。在本文中考虑的螺旋形电极可能由于制造过程后立即出现的冷焊料或在使用几个月后由于机械应力而出现故障。这个问题很难检测,通常表现为有噪声的输出信号。监测材料或电路互连可靠性的常用方法是电阻测量。虽然很容易实现,但这种方法不能提供可靠的故障检测。基于这些事实,本文提出了一种基于电阻测量的计算机模型,用于在实验室测量的支持下预测和检测脑电电极的故障。噪声的级别和类型是通过比较在应力下记录的电极尖端的电阻波动和模拟信号得到的。将时频分析应用于真实和模拟的参考电极和故障电极信号,并对结果进行比较,以建立一种故障检测措施。由于信号的能量谱显示为故障外观的不可靠指标,因此使用rsamnyi熵来确定参考电极和故障电极之间的差异。该措施适用于测量和模拟频谱图,使用K-means算法去噪。结果表明,当基于k均值的去噪时,参考电极和故障电极谱图的全局熵差异显著,从而为可靠的故障检测提供了一种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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