2022
DOI: 10.3390/cryst12111526
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Nanocomposite-Based Electrode Structures for EEG Signal Acquisition

Abstract: Objective: To fabricate a lightweight, breathable, comfortable, and able to contour to the curvilinear body shape, electrodes built on a flexible substrate are a significant growth in wearable health monitoring. This research aims to create a GNP/FE electrode-based EEG signal acquisition system that is both efficient and inexpensive. Methodology: Three distinct electrode concentrations were developed for EEG signal acquisition, three distinct electrode concentrations (1.5:1.5, 2:1, and 3:0). The high strength-… Show more

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Cited by 5 publications
(1 citation statement)
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“…Among the commonly used preprocessing stages that allow the researcher to achieve an optimal signal-to-noise ratio are line noise removal, the detection and interpolation of bad channels, epoch segmentation to ensure the assumption of quasi-stationarity, the elimination of defective EEG epochs, and the removal of physiological artifacts (Bigdely-Shamlo et al, 2015;Kim et al, 2019;Suárez-Revelo et al, 2016). Different studies show that preprocessing EEG signals has a big impact on the final results (Vajravelu et al, 2021;Pedroni et al, 2019). Therefore, it is necessary to find ways to identify and separate the different sources of noise in order to obtain a clean EEG signal for subsequent analyses (Jiang et al, 2019;Kaur et al, 2020).…”
Section: Introductionmentioning
confidence: 99%
“…Among the commonly used preprocessing stages that allow the researcher to achieve an optimal signal-to-noise ratio are line noise removal, the detection and interpolation of bad channels, epoch segmentation to ensure the assumption of quasi-stationarity, the elimination of defective EEG epochs, and the removal of physiological artifacts (Bigdely-Shamlo et al, 2015;Kim et al, 2019;Suárez-Revelo et al, 2016). Different studies show that preprocessing EEG signals has a big impact on the final results (Vajravelu et al, 2021;Pedroni et al, 2019). Therefore, it is necessary to find ways to identify and separate the different sources of noise in order to obtain a clean EEG signal for subsequent analyses (Jiang et al, 2019;Kaur et al, 2020).…”
Section: Introductionmentioning
confidence: 99%