Applications of tunable-Q factor wavelet transform and AdaBoost classier for identification of high impedance faults: Towards the reliability of electrical distribution systems

S. Joga, P. Sinha, Vasupalli Manoj, Srinivasa Rao Sura, Vasudeva Naidu Pudi, Nagwa F. Ibrahim, Abdulaziz Alkuhayli, Mahmoud M. Hussein, U. Khaled, Daniel Eutyche Mbadjoun Wapet, A. Beroual, Mohamed Metwally Mahmoud
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Abstract

This study presents a novel approach that employs a mixture of the tunable-Q wavelet transform (TQWT) and enhanced AdaBoost to address the issue of high impedance fault (HIF) recognition in power distribution networks. Traditional overcurrent protection relays frequently have lower fault current levels than normal current, making it exceedingly difficult to detect this HIF problem with the necessity to use a quick and effective approach to find HIF problems. Since the TQWT performs better with signals that exhibit oscillatory behavior, it has been utilized to extract special features for the training of the improved AdaBoost model. The procedure is accelerated by calculating the Kourtosis (K) value for each level and selecting the ideal level of decomposition to minimize computing work. Faulted zones are categorized using an enhanced AdaBoost approach. Under normal, noisy, and unbalanced conditions, the recommended approach is applied to an imbalanced 123-bus test system and an IEEE 33-bus test system. The efficiency of the recommended method is also being assessed for imbalanced distribution networks incorporating dispersed generation into real-time platforms. This procedure is quick compared to previous methods since it uses an upgraded AdaBoost classifier and optimal decomposition level.
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应用可调 Q 因子小波变换和 AdaBoost 分类器识别高阻抗故障:提高配电系统的可靠性
本研究提出了一种混合使用可调 Q 小波变换 (TQWT) 和增强型 AdaBoost 的新方法,以解决配电网络中的高阻抗故障 (HIF) 识别问题。传统的过流保护继电器的故障电流水平往往低于正常电流,这使得检测高阻抗故障(HIF)问题变得异常困难,因此有必要使用一种快速有效的方法来发现高阻抗故障(HIF)问题。由于 TQWT 在处理具有振荡行为的信号时表现更佳,因此我们利用它来提取特殊特征,用于训练改进后的 AdaBoost 模型。通过计算每个级别的 Kourtosis (K) 值,并选择理想的分解级别,以最大限度地减少计算工作量,从而加快了程序。使用增强型 AdaBoost 方法对故障区域进行分类。在正常、有噪声和不平衡的条件下,推荐的方法被应用于不平衡的 123 总线测试系统和 IEEE 33 总线测试系统。推荐方法的效率还被评估用于将分散发电纳入实时平台的不平衡配电网络。由于采用了升级版 AdaBoost 分类器和最佳分解级别,因此该程序与之前的方法相比更加快捷。
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A novel nature-inspired nutcracker optimizer algorithm for congestion control in power system transmission lines Sedimentary evolution and sequence stratigraphic model of Neogene–Quaternary terrestrial foreland basin in Southwest Tarim Applications of tunable-Q factor wavelet transform and AdaBoost classier for identification of high impedance faults: Towards the reliability of electrical distribution systems Research on experiment for operation performance of water pumping and energy storage by photovoltaic pump CORRIGENDUM to “Optimization of Fast-steam-assisted gravity drainage for the energy-efficient operations at a heterogeneous oil-sands reservoir”
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