利用带优化算法的混合深度学习模型进行实时运行的极短期风力发电预测

Md. Omer Faruque , Md. Alamgir Hossain , Md. Rashidul Islam , S.M. Mahfuz Alam , Ashish Kumar Karmaker
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引用次数: 0

摘要

本文提出了一种新的混合深度学习模型,以提高极短期风力发电量预测的准确性。该模型由卷积层、长短期记忆(LSTM)单元和全连接神经网络组成。卷积层可以从原始输入中自动学习复杂的特征,而长短时记忆层则可以保留有用的信息,梯度信息可通过这些信息在较长时间内流动。为了从预测模型中获得最佳性能,我们开发了一种随机搜索优化技术,用于调整所开发模型的超参数。澳大利亚白石风力发电场的 5 分钟数据集被用于研究拟议模型的有效性,因为风力发电场参与了现货电力市场。为了比较其有效性,将所提出的模型与卷积神经网络 (CNN)、LSTM、门控递归单元 (GRU)、双向 LSTM (BiLSTM)、人工神经网络 (ANN) 和支持向量机 (SVM) 等现有模型进行了比较。采用均方根误差(RMSE)、平均绝对误差(MAE)和 Theil 不等式系数(TIC)来分析和比较预测模型的性能。根据 RMSE 和 MAE,与其他预测方法相比,建议的模型表现出更高的准确率,分别约为 23.79% 和 28.63%。
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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Very short-term wind power forecasting for real-time operation using hybrid deep learning model with optimization algorithm

This paper proposes a new hybrid deep learning model to enhance the accuracy of forecasting very short-term wind power generation. The proposed model comprises a convolutional layer, a long-short-term memory (LSTM) unit, and fully connected neural network. Convolution layer can automatically learn complicated features from the raw input, whereas the LSTM layers can retain useful information through which gradient information may flow over extended periods. To obtain the best performance from the forecasting model, a random search optimization technique has been developed for tuning hyper-parameters of the model developed. The 5 min datasets from the White Rock wind farm, Australia are used to investigate the effectiveness of the proposed model as wind farms are participating in spot electricity market. To compare the effectiveness, the proposed model is compared with the existing models, such as convolution neural network (CNN), LSTM, gated recurrent unit (GRU), bidirectional LSTM (BiLSTM), artificial neural network (ANN), and support vector machine (SVM). The root-mean-square error (RMSE), mean absolute error (MAE), and Theil’s inequality coefficient (TIC) are used to analyze and compare the performances of the predictive models. Based on RMSE and MAE, the proposed model exhibits a higher accuracy of approximately 23.79% and 28.63% compared to other forecasting methods, respectively.

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