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Smart-Grid Monitoring: Enhanced Machine Learning for Cable Diagnostics

机译:智能电网监控:电缆诊断的增强机学习

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Recent works have shown the viability of reusing power line communication modems present in the distribution network for cable diagnostics. By integrating machine learning (ML) techniques, power line modems (PLMs) are shown to be capable of automatically detecting, locating, and assessing different types of cable degradations and faults by monitoring and analyzing their estimated channel frequency responses. However, a single ML algorithm is not ideal for all different diagnostics tasks. To aid us in choosing the most suitable ML algorithm(s) for each of the tasks and to make our solution layman accessible, we propose the use of automated ML, which automatically constructs the best ML model from various algorithms and preprocessing techniques for any given diagnostics task. Our proposed diagnostics approach accelerates the practical deployment of PLM-based grid monitoring by providing a ready-to-use solution to utilities that can be applied without detailed domain knowledge of ML operations.
机译:最近的作品已经示出了重用电力线通信调制解调器的可行性,该电缆诊断中的配电网络中存在。通过集成机器学习(ML)技术,通过监视和分析其估计的信道频率响应,显示电力线调制解调器(PLMS)能够自动检测,定位,定位和评估不同类型的电缆劣化和故障。但是,单个ML算法对于所有不同的诊断任务都不理想。为了帮助我们为每个任务选择最合适的ML算法,并使我们的解决方案Layman可访问,我们提出了使用自动ML,其自动构建来自各种算法的最佳ML模型和任何给定的预处理技术诊断任务。我们所提出的诊断方法通过为可以在没有详细域的ML操作知识提供的情况下提供即可应用的实用程序,加速了基于PLM的网格监控的实际部署。

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