College of Information and Intelligence, Hunan Agricultural University, Changsha Hunan, PR China.
PLoS One. 2023 Jul 13;18(7):e0288211. doi: 10.1371/journal.pone.0288211. eCollection 2023.
With the continuous decline of water resources due to population growth and rapid economic development, precipitation prediction plays an important role in the rational allocation of global water resources. To address the non-linearity and non-stationarity of monthly precipitation, a combined prediction method based on complementary ensemble empirical mode decomposition (CEEMD) and a modified long short-term memory (LSTM) neural network was proposed. Firstly, the CEEMD method was used to decompose the monthly precipitation series into a set of relatively stationary sub-sequence components, which can better reflect the local characteristics of the sequence and further understand the nonlinear dynamic characteristics of the sequence. Then, improved LSTM neural networks were employed to predict each sub-sequence. The proposed improvement method optimized the hyper-parameters of LSTM neural networks using particle swarm optimization algorithm, which avoided the randomness of artificial parameter selection. Finally, the predicted results of each component were superimposed to obtain the final prediction result. The proposed method was validated by taking the monthly precipitation data from 1961 to 2020 in Changde City, Hunan Province as an example. The results of the case study show that, compared with other traditional prediction methods, the proposed method can better reflect the trend of precipitation changes and has higher prediction accuracy.
随着人口增长和经济快速发展导致的水资源不断减少,降水预测在全球水资源合理配置中起着重要作用。针对月降水量的非线性和非平稳性问题,提出了一种基于互补集合经验模态分解(CEEMD)和改进的长短时记忆(LSTM)神经网络的组合预测方法。首先,利用 CEEMD 方法将月降水量序列分解为一组相对平稳的子序列分量,这可以更好地反映序列的局部特征,进一步了解序列的非线性动态特征。然后,采用改进的 LSTM 神经网络对每个子序列进行预测。所提出的改进方法使用粒子群优化算法对 LSTM 神经网络的超参数进行优化,避免了人工参数选择的随机性。最后,将每个分量的预测结果叠加起来,得到最终的预测结果。以湖南省常德市 1961 年至 2020 年月降水量数据为例对所提出的方法进行验证。案例研究结果表明,与其他传统预测方法相比,所提出的方法能够更好地反映降水变化趋势,具有更高的预测精度。