利用光 GBM 提高无线输电中的实时故障检测效率

Rajalakshmi D, Rajesh Kambattan K, Sudharson K, Suresh Kumar A, Vanitha R
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引用次数: 0

摘要

本研究介绍了 WirelessGridBoost,这是一个创新框架,旨在通过利用 LightGBM 机器学习算法的强大功能,彻底改变无线电网中的实时故障检测。由于电网运行的复杂性和通信基础设施的局限性,电网中的传统故障检测系统经常面临延迟和可扩展性等挑战。为了克服这些挑战,WirelessGridBoost 将高效梯度提升决策树算法 LightGBM 与无线技术相结合,实现了先进的故障检测能力。经过对历史传感器数据的训练,LightGBM 模型在辨别电网运行中固有的复杂故障模式方面表现出了非凡的能力。WirelessGridBoost 部署在电网中具有战略地位的无线节点上,能够实时迅速地识别异常情况。在实际电网测试平台上进行的大量模拟和实验验证了 WirelessGridBoost 的有效性,与传统方法相比,其故障检测准确率达到 96.80%,延迟时间缩短了 38%。这项研究通过创新的 WirelessGridBoost 框架,为提高无线电网的故障检测效率提供了一条大有可为的途径。
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Advancing Fault Detection Efficiency in Wireless Power Transmission with Light GBM for Real-Time Detection Enhancement
This study introduces WirelessGridBoost, an innovative framework designed to revolutionize real-time fault detection in wireless electrical grids by harnessing the power of the LightGBM machine learning algorithm. Traditional fault detection systems in electrical grids often face challenges such as latency and scalability due to the intricate nature of grid operations and limitations in communication infrastructure. To overcome these challenges, WirelessGridBoost integrates LightGBM, a highly efficient gradient boosting decision tree algorithm, with wireless technology to facilitate advanced fault detection capabilities. Trained on historical sensor data, the LightGBM model demonstrates exceptional proficiency in discerning complex fault patterns inherent in electrical grid operations. Deployed across strategically positioned wireless nodes within the grid, WirelessGridBoost enables prompt identification of anomalies in real-time. Extensive simulations and experiments conducted on a real-world grid testbed validate the effectiveness of WirelessGridBoost, achieving a fault detection accuracy of 96.80% and reducing latency by 38% compared to conventional methods. This research presents a promising avenue for enhancing fault detection efficiency in wireless electrical grids through the innovative WirelessGridBoost framework.
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