Accurate Smart-Grid Stability Forecasting Based on Deep Learning: Point and Interval Estimation Method

M. Massaoudi, H. Abu-Rub, S. Refaat, I. Chihi, F. Oueslati
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引用次数: 10

Abstract

The power grid stability is highly impacted by the fluctuating nature of renewable energy sources. This paper proposes a deep learning method-based bidirectional gated recurrent unit for smart grid stability prediction. For automatic tuning, this study employs Simulated Annealing algorithm to optimize the selected hyperparameters and enhance the model forecastability. The proposed forecasting model's performance is evaluated using electrical grid stability simulated data set. The proposed method provides an accurate point and interval grid stability prediction. Simulation results are conducted to prove the high performance of the proposed method. Furthermore, comparative analysis is performed to demonstrate the superiority of the proposed strategy over some state-of-the-art available solutions.
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基于深度学习的智能电网稳定性精确预测:点区间估计方法
可再生能源的波动特性对电网的稳定性影响很大。提出了一种基于深度学习方法的双向门控循环单元用于智能电网稳定性预测。在自动调谐方面,本文采用模拟退火算法对所选超参数进行优化,增强模型的可预测性。利用电网稳定性模拟数据集对该预测模型的性能进行了评价。该方法可提供准确的点和区间网格稳定性预测。仿真结果证明了该方法的有效性。此外,还进行了比较分析,以证明所提出的策略优于一些最先进的可用解决方案。
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