A Hybrid Wind Speed Prediction Approach Based on Ensemble Empirical Mode Decomposition and BO-LSTM Neural Networks for Digital Twin

Weifei Hu, Yihan He, Zhen-yu Liu, Jianrong Tan, Minglong Yang, Jiancheng Chen
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引用次数: 1

Abstract

Precise time series prediction serves as an important role in constructing a Digital Twin (DT). The various internal and external interferences result in highly non-linear and stochastic time series data sampled from real situations. Although artificial Neural Networks (ANNs) are often used to forecast time series for their strong self-learning and nonlinear fitting capabilities, it is a challenging and time-consuming task to obtain the optimal ANN architecture. This paper proposes a hybrid time series prediction model based on ensemble empirical mode decomposition (EEMD), long short-term memory (LSTM) neural networks, and Bayesian optimization (BO). To improve the predictability of stochastic and nonstationary time series, the EEMD method is implemented to decompose the original time series into several components, each of which is composed of single-frequency and stationary signal, and a residual signal. The decomposed signals are used to train the BO-LSTM neural networks, in which the hyper-parameters of the LSTM neural networks are fine-tuned by the BO algorithm. The following time series data are predicted by summating all the predictions of the decomposed signals based on the trained neural networks. To evaluate the performance of the proposed hybrid method (EEMD-BO-LSTM), this paper conducts a case study of wind speed time series prediction and has a comprehensive comparison between the proposed method and other approaches including the persistence model, ARIMA, LSTM neural networks, B0-LSTM neural networks, and EEMD-LSTM neural networks. Results show an improved prediction accuracy using the EEMD-BO-LSTM method by multiple accuracy metrics.
基于集成经验模态分解和BO-LSTM神经网络的数字孪生模型混合风速预测方法
精确的时间序列预测在构建数字孪生(DT)中起着重要作用。各种内部和外部干扰导致从实际情况中采样的时间序列数据高度非线性和随机。尽管人工神经网络(ANN)由于其强大的自学习能力和非线性拟合能力而经常被用于时间序列的预测,但获得最优的ANN结构是一项具有挑战性和耗时的任务。提出了一种基于集成经验模态分解(EEMD)、长短期记忆(LSTM)神经网络和贝叶斯优化(BO)的混合时间序列预测模型。为了提高随机非平稳时间序列的可预测性,采用EEMD方法将原始时间序列分解为多个分量,每个分量由单频平稳信号和残差信号组成。将分解后的信号用于训练BO-LSTM神经网络,并通过BO算法对LSTM神经网络的超参数进行微调。下面的时间序列数据是在训练好的神经网络的基础上,通过对所有分解信号的预测求和来预测的。为了评估所提出的混合方法(EEMD-BO-LSTM)的性能,本文以风速时间序列预测为例,将所提出的方法与持续模型、ARIMA、LSTM神经网络、B0-LSTM神经网络、EEMD-LSTM神经网络等方法进行了综合比较。结果表明,EEMD-BO-LSTM方法通过多个精度指标提高了预测精度。
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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