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Krishna Ponukumati B, Sinha P, Paul K, Mbadjoun Wapet DE, Hussein HS, Hassan AM, Mahmoud MM. Evolving fault diagnosis scheme for unbalanced distribution network using fast normalized cross-correlation technique. PLoS One 2024; 19:e0305407. [PMID: 39418222 PMCID: PMC11486406 DOI: 10.1371/journal.pone.0305407] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [MESH Headings] [Grants] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Received: 11/09/2023] [Accepted: 05/30/2024] [Indexed: 10/19/2024] Open
Abstract
There has been a lack of a satisfactory solution for identifying and locating evolving faults in unbalanced distribution systems. The proposed approach is based on the cross-correlation technique as a key element for fault detection and location. Evolving faults, in this context, refer to two sequential faults that result in a change of fault phase. The captured QRS value reflects the occurrence of the second fault occurrence. In order to identify Evolving Faults, it makes use of the signal that is currently being monitored at any given point in the network. Typical system occurrences, such as a short circuit fault that grew into another short circuit fault, as well as cross-country faults, are simulated, and according to the suggested technique, they are accurately differentiated from one another. Using a real-time simulator, rigorous simulations are performed on the modified IEEE 240 bus distribution system. The results of these simulations reveal that they have the potential to uncover defects that are constantly changing. Regardless of the fault (location\resistance\inception angle), location of the monitored point, or sample frequency that is selected, the suggested approach is unaffected by any of these factors. In addition, the slime mold optimization approach is utilized in order to get the best monitoring points that accurately identify the bus in which the evolving fault has taken place.
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Affiliation(s)
| | - Pampa Sinha
- School of Electrical Engineering, KIIT University, Bhubaneswar, India
| | - Kaushik Paul
- Department of Electrical Engineering, BIT Sindri, Dhanbad, India
| | | | - Hany S. Hussein
- Electrical Engineering Department, College of Engineering, King Khalid University, Abha, Saudi Arabia
- Electrical Engineering Department, Aswan Faculty of Engineering, Aswan University, Aswan, Egypt
| | - Ammar M. Hassan
- Arab Academy for Science, Technology and Maritime Transport, South Valley Branch, Aswan, Egypt
| | - Mohamed Metwally Mahmoud
- Department of Electrical Engineering, Faculty of Energy Engineering, Aswan University, Aswan, Egypt
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Bauer SW, Jeng FC, Carriero A. Machine Learning Recognizes Frequency-Following Responses in American Adults: Effects of Reference Spectrogram and Stimulus Token. Percept Mot Skills 2024; 131:1584-1602. [PMID: 39151072 DOI: 10.1177/00315125241273993] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [MESH Headings] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Indexed: 08/18/2024]
Abstract
Electrophysiological research has been widely utilized to study brain responses to acoustic stimuli. The frequency-following response (FFR), a non-invasive reflection of how the brain encodes acoustic stimuli, is a particularly propitious electrophysiologic measure. While the FFR has been studied extensively, there are limitations in obtaining and analyzing FFR recordings that recent machine learning algorithms may address. In this study, we aimed to investigate whether FFRs can be enhanced using an "improved" source-separation machine learning algorithm. For this study, we recruited 28 native speakers of American English with normal hearing. We obtained two separate FFRs from each participant while they listened to two stimulus tokens /i/ and /da/. Electroencephalographic signals were pre-processed and analyzed using a source-separation non-negative matrix factorization (SSNMF) machine learning algorithm. The algorithm was trained using individual, grand-averaged, or stimulus token spectrograms as a reference. A repeated measures analysis of variance revealed that FFRs were significantly enhanced (p < .001) when the "improved" SSNMF algorithm was trained using both individual and grand-averaged spectrograms, but not when utilizing the stimulus token spectrogram. Similar results were observed when extracting FFRs elicited by using either stimulus token, /i/ or /da/. This demonstration shows how the SSNMF machine learning algorithm, using individual and grand-averaged spectrograms as references in training the algorithm, significantly enhanced FFRs. This improvement has important implications for the obtainment and analytical processes of FFR, which may lead to advancements in clinical applications of FFR testing.
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Affiliation(s)
- Sydney W Bauer
- Communication Sciences and Disorders, Ohio University, Athens, OH, USA
| | - Fuh-Cherng Jeng
- Communication Sciences and Disorders, Ohio University, Athens, OH, USA
| | - Amanda Carriero
- Communication Sciences and Disorders, Ohio University, Athens, OH, USA
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Jeng FC, Matzdorf K, Hickman KL, Bauer SW, Carriero AE, McDonald K, Lin TH, Wang CY. Advancing Auditory Processing by Detecting Frequency-Following Responses Through a Specialized Machine Learning Model. Percept Mot Skills 2024; 131:417-431. [PMID: 38153030 DOI: 10.1177/00315125231225767] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [MESH Headings] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Indexed: 12/29/2023]
Abstract
In this study, we explore the feasibility and performance of detecting scalp-recorded frequency-following responses (FFRs) with a specialized machine learning (ML) model. By leveraging the strengths of feature extraction of the source separation non-negative matrix factorization (SSNMF) algorithm and its adeptness in handling limited training data, we adapted the SSNMF algorithm into a specialized ML model with a hybrid architecture to enhance FFR detection amidst background noise. We recruited 40 adults with normal hearing and evoked their scalp recorded FFRs using the English vowel/i/with a rising pitch contour. The model was trained on FFR-present and FFR-absent conditions, and its performance was evaluated using sensitivity, specificity, efficiency, false-positive rate, and false-negative rate metrics. This study revealed that the specialized SSNMF model achieved heightened sensitivity, specificity, and efficiency in detecting FFRs as the number of recording sweeps increased. Sensitivity exceeded 80% at 500 sweeps and maintained over 89% from 1000 sweeps onwards. Similarly, specificity and efficiency also improved rapidly with increasing sweeps. The progressively enhanced sensitivity, specificity, and efficiency of this specialized ML model underscore its practicality and potential for broader applications. These findings have immediate implications for FFR research and clinical use, while paving the way for further advancements in the assessment of auditory processing.
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Affiliation(s)
- Fuh-Cherng Jeng
- Communication Sciences and Disorders, Ohio University, Athens, OH, USA
- Communication Sciences and Disorders, Asia University, Taichung, Taiwan
| | - Katie Matzdorf
- Communication Sciences and Disorders, Ohio University, Athens, OH, USA
| | - Kassy L Hickman
- Communication Sciences and Disorders, Ohio University, Athens, OH, USA
| | - Sydney W Bauer
- Communication Sciences and Disorders, Ohio University, Athens, OH, USA
| | - Amanda E Carriero
- Communication Sciences and Disorders, Ohio University, Athens, OH, USA
| | - Kalyn McDonald
- Communication Sciences and Disorders, Ohio University, Athens, OH, USA
| | - Tzu-Hao Lin
- Biodiversity Research Center, Academia Sinica, Taipei, Taiwan
| | - Ching-Yuan Wang
- Department of Otolaryngology-HNS, China Medical University Hospital, Taichung, Taiwan
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Giordano AT, Jeng FC, Black TR, Bauer SW, Carriero AE, McDonald K, Lin TH, Wang CY. Effects of Silent Intervals on the Extraction of Human Frequency-Following Responses Using Non-Negative Matrix Factorization. Percept Mot Skills 2023; 130:1834-1851. [PMID: 37534595 DOI: 10.1177/00315125231191303] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Indexed: 08/04/2023]
Abstract
Source-Separation Non-Negative Matrix Factorization (SSNMF) is a mathematical algorithm recently developed to extract scalp-recorded frequency-following responses (FFRs) from noise. Despite its initial success, the effects of silent intervals on algorithm performance remain undetermined. Our purpose in this study was to determine the effects of silent intervals on the extraction of FFRs, which are electrophysiological responses that are commonly used to evaluate auditory processing and neuroplasticity in the human brain. We used an English vowel /i/ with a rising frequency contour to evoke FFRs in 23 normal-hearing adults. The stimulus had a duration of 150 ms, while the silent interval between the onset of one stimulus and the offset of the next one was also 150 ms. We computed FFR Enhancement and Noise Residue to estimate algorithm performance, while silent intervals were either included (i.e., the WithSI condition) or excluded (i.e., the WithoutSI condition) in our analysis. The FFR Enhancements and Noise Residues obtained in the WithoutSI condition were significantly better (p < .05) than those obtained in the WithSI condition. On average, the exclusion of silent intervals produced a 11.78% increment in FFR Enhancement and a 20.69% decrement in Noise Residue. These results not only quantify the effects of silent intervals on the extraction of human FFRs, but also provide recommendations for designing and improving the SSNMF algorithm in future research.
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Affiliation(s)
- Allison T Giordano
- Communication Sciences and Disorders, Ohio University, Athens, Ohio, USA
| | - Fuh-Cherng Jeng
- Communication Sciences and Disorders, Ohio University, Athens, Ohio, USA
| | - Taylor R Black
- Communication Sciences and Disorders, Ohio University, Athens, Ohio, USA
| | - Sydney W Bauer
- Communication Sciences and Disorders, Ohio University, Athens, Ohio, USA
| | - Amanda E Carriero
- Communication Sciences and Disorders, Ohio University, Athens, Ohio, USA
| | - Kalyn McDonald
- Communication Sciences and Disorders, Ohio University, Athens, Ohio, USA
| | - Tzu-Hao Lin
- Biodiversity Research Center, Academia Sinica, Taipei, Taiwan
| | - Ching-Yuan Wang
- Department of Otolaryngology-HNS, China Medical University Hospital, Taichung, Taiwan
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