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首页> 外文期刊>IAENG Internaitonal journal of computer science >A Prediction Model for Ultra-Short-Term Output Power of Wind Farms Based on Deep Learning
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A Prediction Model for Ultra-Short-Term Output Power of Wind Farms Based on Deep Learning

机译:基于深度学习的风电场超短期输出功率预测模型

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The output power prediction of wind farm is the key to effective utilization of wind energy and reduction of wind curtailment. However, the prediction of output power has long been a difficulty faced by both academia and the wind power industry, due to the high stochasticity of wind energy. This paper attempts to improve the ultra-short-term prediction accuracy of output power in wind farm. For this purpose, an output power prediction model was constructed for wind farm based on the time sliding window (TSW) and long short-term memory (LSTM) network. Firstly, the wind power data from multiple sources were fused, and cleaned through operations like dimension reduction and standardization. Then, the cyclic features of the actual output powers were extracted, and used to construct the input dataset by the TSW algorithm. On this basis, the TSW-LSTM prediction model was established to predict the output power of wind farm in ultra-short-term. Next, two regression evaluation metrics were designed to evaluate the prediction accuracy. Finally, the proposed TSW-LSTM model was compared with four other models through experiments on the dataset from an actual wind farm. Our model achieved a super-high prediction accuracy 92.7% as measured by d_MAE, an evidence of its effectiveness. To sum up, this research simplifies the complex prediction features, unifies the evaluation metrics, and provides an accurate prediction model for output power of wind farm with strong generalization ability.
机译:风电场的输出功率预测是有效利用风能和减少风缩小的关键。然而,由于风能的高速度,对学术界和风电业的困难是一种难度。本文试图提高风电场输出功率的超短短期预测准确性。为此目的,基于时间滑动窗口(TSW)和长短期存储器(LSTM)网络为风电场构建输出功率预测模型。首先,来自来自多个来源的风电数据被融合,并通过尺寸减小和标准化等操作清洁。然后,提取实际输出功率的循环特征,并用于通过TSW算法构造输入数据集。在此基础上,建立了TSW-LSTM预测模型,以预测超短期内风电场的输出功率。接下来,旨在评估预测精度的两个回归评估度量。最后,通过实际风电场的数据集的实验将所提出的TSW-LSTM模型与四个其他模型进行比较。我们的模型通过D_MAE测量的超高预测精度为92.7%,证明其有效性。总而言之,该研究简化了复杂的预测特征,统一评估度量,并为风电场输出功率提供了强大的泛化能力。

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