基于深度学习的混合智能系统时间序列预测研究

Shang Jin , Wang Weiqing , Shi Bingcun , Xu Xiaobo
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引用次数: 0

摘要

电力预测在智能电网系统运行中起着至关重要的作用,是制定电力系统运行计划、提高经济效益、保证供电质量不可或缺的重要手段。为了提高电力负荷预测的准确性,本文提出了一种混合智能电力负荷预测系统。该系统首先利用萨维茨基-戈莱平滑技术对原始数据进行预处理,以消除噪声,提高数据质量。然后,利用具有注意力机制的长短期记忆网络来增强模型的泛化能力。此外,为了进一步提高预测性能,还集成了改进的遗传算法来优化模型参数。最后,使用一组数据来验证所提出的预测方法。在测试数据集实验的短期预测能力方面,与 LSTM 模型相比,所提出的方法在均方根误差和均值绝对误差指标上表现优异,均方根误差降低了 18.7%,均值绝对误差降低了 26.2%。在测试数据集实验的长期预测能力方面,与 GBRT 模型相比,所提方法的均方根误差和平均绝对误差分别降低了 24.8 % 和 30.7 %。实验结果表明,与现有基准算法相比,所提方法在预测精度的两个关键指标上都有显著提高,证明了其在电力负荷预测中的有效性和优越性。
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Research on time series prediction of hybrid intelligent systems based on deep learning

Power forecasting plays a crucial role in the operation of smart grid system, which is indispensable for making the operation plan of power system, improving economic efficiency and ensuring the quality of power supply. In order to enhance the accuracy of power load forecasting, a hybrid intelligent power load forecasting system is proposed in this paper. The system first preprocesses the raw data using Savitzky-Golay smoothing technology to eliminate noise and improve data quality. Then, a long and short term memory network with attention mechanism is used to enhance the generalization ability of the model. In addition, in order to further improve the prediction performance, an improved genetic algorithm is integrated to optimize the model parameters. Finally, a data set is used to verify the proposed prediction method. In terms of short-term forecasting ability of experiment of the testing data set, compared with LSTM model, the proposed method shows superior performance in root mean square error and mean absolute error indicators, with root mean square error reduced by 18.7 % and mean absolute error reduced by 26.2 %. In terms of long-term prediction ability of experiment of the testing data set, compared with GBRT model, the proposed method reduces root mean square error and mean absolute error by 24.8 % and 30.7 %, respectively. The experimental results show that compared with the existing benchmark algorithm, the proposed method is significantly improved in two key indexes of prediction accuracy, which proves its effectiveness and superiority in power load prediction.

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