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    ASIA unversity > 管理學院 > 經營管理學系  > 期刊論文 >  Item 310904400/115578


    Please use this identifier to cite or link to this item: http://asiair.asia.edu.tw/ir/handle/310904400/115578


    Title: Pretrained Configuration of Power-Quality Grayscale-Image Dataset for Sensor Improvement in Smart-Grid Transmission
    Authors: 陳永欽;CHEN, YEONG-CHIN;Syam, Mariana;Syamsudin, Mariana;Sunneng, Sunneng S. B;Berutu, Sunneng S.
    Contributors: 資訊電機學院資訊工程學系
    Keywords: grayscale PQD image dataset;pretrained methods;sensor network
    Date: 2022-09-01
    Issue Date: 2023-03-29 02:49:49 (UTC+0)
    Publisher: 亞洲大學
    Abstract: The primary source of the various power-quality-disruption (PQD) concerns in smart grids
    is the large number of sensors, intelligent electronic devices (IEDs), remote terminal units, smart
    meters, measurement units, and computers that are linked by a large network. Because real-time data
    exchange via a network of various sensors demands a small file size without an adverse effect on
    the information quality, one measure of the power-quality monitoring in a smart grid is restricted
    by the vast volume of the data collection. In order to provide dependable and bandwidth-friendly
    data transfer, the data-processing techniques’ effectiveness was evaluated for precise power-quality
    monitoring in wireless sensor networks (WSNs) using grayscale PQD image data and employing
    pretrained PQD data with deep-learning techniques, such as ResNet50, MobileNet, and EfficientNetB0.
    The suggested layers, added between the pretrained base model and the classifier, modify the
    pretrained approaches. The result shows that advanced MobileNet is a fairly good-fitting model.
    This model outperforms the other pretraining methods, with 99.32% accuracy, the smallest file size,
    and the fastest computation time. The preprocessed data’s output is anticipated to allow for reliable
    and bandwidth-friendly data-packet transmission in WSNs
    Appears in Collections:[經營管理學系 ] 期刊論文

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