Development of Long Short-Term Memory (LSTM) Bayesian Network Method for Predicting Wind Power Potential in a Wind Power Plant in Indonesia

D. Sudiana, M. Rizkinia, Nathanael Tristan
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Abstract

The need for renewable energy has increased recently, along with the shortage of non-renewable energy sources such as petroleum, coal, uranium, crude oil, and others. One of the renewable energies whose technology has recently been developing is wind power; however, it still suffers from a drawback due to the fluctuations in energy production. Increasing wind energy potential requires a wind power prediction method that can predict the intermittent patterns of the prediction result from the generated wind power. In dealing with the frequent intermittent patterns that fluctuate frequently and have many variations, the Triple Exponential Smoothing Multiplicative LSTM (TES-MLSTM) model can read them and then predict with a short term few steps ahead. In this paper, LSTM Bayesian Network as another deep learning method is proposed and compared with the TES-MLSTM. This method uses the same LSTM base, enhanced with its hyperparameter tuning and run in a Bayesian Network. The model parameters are learned from the training data, and hyperparameters are tuned to get the best fit. The tuned hyperparameter will be processed using Bayesian Network. In the experiment, we used the 2013 dataset of Pandansimo wind power plant (PLTB) in Indonesia as the input data. The average wind power prediction errors (MSE) using the TES-MLSTM and LSTM Bayesian Network are 0.891 and 0.644, respectively. It can be concluded that the proposed LSTM Bayesian Network method is more accurate in predicting the wind power potential of a wind turbine than the TES-MLSTM method.
长短期记忆(LSTM)贝叶斯网络方法在印尼风电场风势预测中的应用
最近,随着石油、煤炭、铀、原油等不可再生能源的短缺,对可再生能源的需求有所增加。最近发展起来的一种可再生能源是风能;然而,由于能源生产的波动,它仍然有一个缺点。增加风能潜力需要一种风能预测方法,该方法可以预测风力发电预测结果的间歇性模式。在处理波动频繁且变化较多的频繁间歇模式时,三指数平滑乘法LSTM (TES-MLSTM)模型可以读取这些模式,然后提前几步进行短期预测。本文提出了LSTM贝叶斯网络作为另一种深度学习方法,并与es - mlstm进行了比较。该方法使用相同的LSTM基,通过超参数调优得到增强,并在贝叶斯网络中运行。从训练数据中学习模型参数,并调整超参数以获得最佳拟合。调优后的超参数将使用贝叶斯网络进行处理。在实验中,我们使用印度尼西亚Pandansimo风力发电厂(PLTB) 2013年的数据集作为输入数据。es - mlstm和LSTM贝叶斯网络的平均预测误差(MSE)分别为0.891和0.644。可以得出结论,所提出的LSTM贝叶斯网络方法比es - mlstm方法更准确地预测风力机的风力发电潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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