Long Short-Term Memory Recurrent Neural Network (LSTM-RNN) Power Forecasting

Maha S. Alsabban, Nema Salem, Hebatullah M. Malik
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Abstract

The geographical position of the Kingdom of Saudi Arabia has significant potentials for utilizing renewable energy resources, which aligns with the country's vision for 2030. This paper proposes a solution to achieve energy sustainability by forecasting future load demands through adopting three different scenarios. We used the outsourced Individual Household Electric Power Consumption Dataset, University of California-Irvine repository, for testing our proposed system. We utilized the Long Short-term Memory-Recurrent Neural Network (LSTM-RNN) algorithm to estimate the whole house power consumption for different horizons: every 15 minutes, daily, weekly, and monthly. Next, we evaluated the performance of the system by Mean Absolute Error (MAE), Mean Squared Error (MSE), Root Mean Square Error (RMSE), and $R^{2}$ score metrics. Then, we applied the Mean Absolute Percentage Error (MAPE) to find its accuracy. The results showed that the monthly forecasting interpretation scenario was the best performing model. That scenario used (n-1) months for training and the last month for testing. The scores for that model were 0.034 (MAE), 0.001 (MSE), 0.034 (RMSE), and 97.16% (accuracy). The constructed model successfully achieved its goals of predicting the active power of the household and now can be accommodated on energy applications not only in Saudi Arabia but also in any other country.
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长短期记忆递归神经网络(LSTM-RNN)功率预测
沙特阿拉伯王国的地理位置具有利用可再生能源的巨大潜力,这符合该国2030年的愿景。本文通过采用三种不同的情景来预测未来的负荷需求,提出了实现能源可持续性的解决方案。我们使用外包的个人家庭电力消耗数据集,加州大学欧文分校存储库,来测试我们提出的系统。我们利用长短期记忆-循环神经网络(LSTM-RNN)算法来估计不同时段的全屋耗电量:每15分钟、每天、每周和每月。接下来,我们通过平均绝对误差(MAE)、均方误差(MSE)、均方根误差(RMSE)和$R^{2}$评分指标来评估系统的性能。然后,我们应用平均绝对百分比误差(MAPE)来确定其准确性。结果表明,月度预测解释情景是表现最好的模型。该场景使用(n-1)个月进行培训,最后一个月进行测试。该模型的得分分别为0.034 (MAE)、0.001 (MSE)、0.034 (RMSE)和97.16%(准确率)。构建的模型成功地实现了预测家庭有功功率的目标,现在不仅可以在沙特阿拉伯,而且可以在任何其他国家进行能源应用。
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