...
首页> 外文期刊>Ocean science >Hybrid improved empirical mode decomposition and BP neural network model for the prediction of sea surface temperature
【24h】

Hybrid improved empirical mode decomposition and BP neural network model for the prediction of sea surface temperature

机译:改进的经验模态分解和BP神经网络混合模型预测海面温度。

获取原文

摘要

Sea surface temperature?(SST) is the major factor that affects the ocean–atmosphere interaction, and in turn the accurate prediction of SST is the key to ocean dynamic prediction. In this paper, an SST-predicting method based on empirical mode decomposition?(EMD) algorithms and back-propagation neural network?(BPNN) is proposed. Two different EMD algorithms have been applied extensively for analyzing time-series SST data and some nonlinear stochastic signals. The ensemble empirical mode decomposition?(EEMD) algorithm and complementary ensemble empirical mode decomposition?(CEEMD) algorithm are two improved algorithms of EMD, which can effectively handle the mode-mixing problem and decompose the original data into more stationary signals with different frequencies. Each intrinsic mode function?(IMF) has been taken as input data to the back-propagation neural network model. The final predicted SST data are obtained by aggregating the predicted data of individual series of IMFs (IMF i ). A case study of the monthly mean SST anomaly?(SSTA) in the northeastern region of the North Pacific shows that the proposed hybrid CEEMD-BPNN model is much more accurate than the hybrid EEMD-BPNN model, and the prediction accuracy based on a BP?neural network is improved by the CEEMD method. Statistical analysis of the case study demonstrates that applying the proposed hybrid CEEMD-BPNN model is effective for the SST prediction. Highlights include the following: Highlights. An SST-predicting method based on the hybrid EMD algorithms and BP neural network method is proposed in this paper. SST prediction results based on the hybrid EEMD-BPNN and CEEMD-BPNN models are compared and discussed. A case study of SST in the North Pacific shows that the proposed hybrid CEEMD-BPNN model can effectively predict the time-series SST.
机译:海表温度(SST)是影响海洋与大气相互作用的主要因素,因此,对SST的准确预测是海洋动态预测的关键。提出了一种基于经验模态分解(EMD)算法和反向传播神经网络(BPNN)的SST预测方法。两种不同的EMD算法已被广泛应用于分析时序SST数据和一些非线性随机信号。集成经验模态分解(EEMD)算法和互补集成经验模态分解(CEEMD)算法是EMD的两种改进算法,可以有效地处理模式混合问题,并将原始数据分解为更稳定的不同频率的信号。每个内在模式函数(IMF)已作为反向传播神经网络模型的输入数据。最终的SST预测数据是通过汇总各个IMF系列(IMF i)的预测数据而获得的。通过对北太平洋东北部地区月平均海温异常(SSTA)的案例研究表明,提出的混合CEEMD-BPNN模型比混合EEMD-BPNN模型更准确,并且基于BP的预测准确性通过CEEMD方法改进了神经网络。案例研究的统计分析表明,将建议的混合CEEMD-BPNN模型应用于SST预测是有效的。重点包括以下内容:重点。提出了一种基于混合EMD算法和BP神经网络方法的SST预测方法。比较并讨论了基于混合EEMD-BPNN和CEEMD-BPNN模型的SST预测结果。对北太平洋海表温度的案例研究表明,提出的混合CEEMD-BPNN模型可以有效地预测时间序列海表温度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号