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Sliding window-based LightGBM model for electric load forecasting using anomaly repair

机译:基于滑动窗口的灯光模型,用于使用异常修复的电负荷预测

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摘要

Smart grids have attracted much attention recently for their potential to reduce power system operating and management costs. Smart grid core components include energy storage, renewable energy source(s), and smart meters. Smart meters collect diverse data regarding smart grid operation, which can lead to inefficient operation if the meter data are damaged or tampered with during collection or transmission. Therefore, it is important to identify abnormalities in smart grid data and process them accordingly. Various anomaly detection models have been proposed using statistical methods, but they cannot detect some anomaly patterns accurately, and the models generally did not consider repair strategies for the detected anomalies. Anomaly repair should be included with model training to improve forecasting performance. This paper proposes a robust sliding window-based LightGBM model for short-term load forecasting using anomaly detection and repair. We first show how to detect anomalies using a variational autoencoder and then how they can be repaired using a random forest method. Finally, we verify that the proposed sliding window-based LightGBM achieves superior forecasting performance in combination with anomaly detection and repair.
机译:智能电网最近吸引了很多关注,以降低电力系统的运营和管理成本。智能电网核心组件包括储能,可再生能源和智能仪表。智能电表收集有关智能电网操作的不同数据,如果仪表数据在收集或传输期间损坏或篡改,则可能导致效率低下。因此,重要的是识别智能电网数据的异常并相应地处理它们。已经使用统计方法提出了各种异常检测模型,但它们无法准确检测一些异常模式,并且模型通常没有考虑检测到的异常的修复策略。异常修复应包括模型培训,以提高预测性能。本文提出了一种基于稳健的滑动窗口的LightGBM模型,用于使用异常检测和修复的短期负荷预测。我们首先展示如何使用变形Autiachoder检测异常,然后如何使用随机森林方法进行修复。最后,我们验证了所提出的基于滑动窗口的LightGBM与异常检测和修复相结合实现了卓越的预测性能。

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