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A Novel Hybrid Data-Driven Model for Daily Land Surface Temperature Forecasting Using Long Short-Term Memory Neural Network Based on Ensemble Empirical Mode Decomposition

机译:基于集合经验模式分解的长时程记忆神经网络混合数据驱动的每日地表温度预测模型

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Daily land surface temperature (LST) forecasting is of great significance for application in climate-related, agricultural, eco-environmental, or industrial studies. Hybrid data-driven prediction models using Ensemble Empirical Mode Composition (EEMD) coupled with Machine Learning (ML) algorithms are useful for achieving these purposes because they can reduce the difficulty of modeling, require less history data, are easy to develop, and are less complex than physical models. In this article, a computationally simple, less data-intensive, fast and efficient novel hybrid data-driven model called the EEMD Long Short-Term Memory (LSTM) neural network, namely EEMD-LSTM, is proposed to reduce the difficulty of modeling and to improve prediction accuracy. The daily LST data series from the Mapoling and Zhijaing stations in the Dongting Lake basin, central south China, from 1 January 2014 to 31 December 2016 is used as a case study. The EEMD is firstly employed to decompose the original daily LST data series into many Intrinsic Mode Functions (IMFs) and a single residue item. Then, the Partial Autocorrelation Function (PACF) is used to obtain the number of input data sample points for LSTM models. Next, the LSTM models are constructed to predict the decompositions. All the predicted results of the decompositions are aggregated as the final daily LST. Finally, the prediction performance of the hybrid EEMD-LSTM model is assessed in terms of the Mean Square Error (MSE), Mean Absolute Error (MAE), Mean Absolute Percentage Error (MAPE), Root Mean Square Error (RMSE), Pearson Correlation Coefficient (CC) and Nash-Sutcliffe Coefficient of Efficiency (NSCE). To validate the hybrid data-driven model, the hybrid EEMD-LSTM model is compared with the Recurrent Neural Network (RNN), LSTM and Empirical Mode Decomposition (EMD) coupled with RNN, EMD-LSTM and EEMD-RNN models, and their comparison results demonstrate that the hybrid EEMD-LSTM model performs better than the other five models. The scatterplots of the predicted results of the six models versus the original daily LST data series show that the hybrid EEMD-LSTM model is superior to the other five models. It is concluded that the proposed hybrid EEMD-LSTM model in this study is a suitable tool for temperature forecasting.
机译:每日地表温度(LST)预测对于与气候相关,农业,生态环境或工业研究中的应用具有重要意义。使用Ensemble Empirical Mode Composition(EEMD)和Machine Learning(ML)算法结合的混合数据驱动的预测模型对于实现这些目的很有用,因为它们可以减少建模的难度,需要较少的历史数据,易于开发且体积较小比物理模型复杂。本文提出了一种计算简单,数据量少,快速有效的新型混合数据驱动模型,称为EEMD长短期记忆(LSTM)神经网络,即EEMD-LSTM,以减少建模和建模的难度。提高预测准确性。本文以2014年1月1日至2016年12月31日来自中国中南部洞庭湖流域麻坡岭和志jaing站的每日LST数据序列为例。 EEMD首先用于将原始的每日LST数据序列分解为许多本征函数(IMF)和单个残差项。然后,使用部分自相关函数(PACF)来获取LSTM模型的输入数据采样点数。接下来,构建LSTM模型以预测分解。所有分解的预测结果都将汇总为最终的每日LST。最后,根据均方误差(MSE),均值绝对误差(MAE),均值绝对百分比误差(MAPE),均方根误差(RMSE),皮尔森相关性评估混合EEMD-LSTM模型的预测性能系数(CC)和Nash-Sutcliffe效率系数(NSCE)。为了验证混合数据驱动模型,将混合EEMD-LSTM模型与递归神经网络(RNN),LSTM和经验模式分解(EMD)以及RNN,EMD-LSTM和EEMD-RNN模型进行比较,并进行比较结果表明,混合EEMD-LSTM模型的性能优于其他五个模型。六个模型的预测结果与原始的每日LST数据系列的散点图显示,混合EEMD-LSTM模型优于其他五个模型。结论是,本研究中提出的混合EEMD-LSTM模型是温度预测的合适工具。

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