Badong National Observation and Research Station of Geohazards, China University of Geosciences, Wuhan 430074, China.
China Communications Construction Company Second Highway Consultants Co., Ltd., Wuhan 430056, China.
Sensors (Basel). 2022 Aug 1;22(15):5742. doi: 10.3390/s22155742.
Improving the temperature prediction accuracy for subgrades in seasonally frozen regions will greatly help improve the understanding of subgrades' thermal states. Due to the nonlinearity and non-stationarity of the temperature time series of subgrades, it is difficult for a single general neural network to accurately capture these two characteristics. Many hybrid models have been proposed to more accurately forecast the temperature time series. Among these hybrid models, the CEEMDAN-LSTM model is promising, thanks to the advantages of the long short-term memory (LSTM) artificial neural network, which is good at handling complex time series data, and its combination with the broad applicability of the complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) in the field of signal decomposition. In this study, by performing empirical mode decomposition (EMD), ensemble empirical mode decomposition (EEMD), and CEEMDAN on temperature time series, respectively, a hybrid dataset is formed with the corresponding time series of volumetric water content and frost heave, and finally, the CEEMDAN-LSTM model is created for prediction purposes. The results of the performance comparisons between multiple models show that the CEEMDAN-LSTM model has the best prediction performance compared to other decomposed LSTM models because the composition of the hybrid dataset improves predictive ability, and thus, it can better handle the nonlinearity and non-stationarity of the temperature time series data.
提高季节性冻土地区路基的温度预测精度将极大地有助于加深对路基热状态的理解。由于路基温度时间序列具有非线性和非平稳性,单个通用神经网络很难准确捕捉到这两个特征。因此,已经提出了许多混合模型来更准确地预测温度时间序列。在这些混合模型中,CEEMDAN-LSTM 模型很有前景,这得益于长短期记忆(LSTM)人工神经网络的优势,该网络善于处理复杂的时间序列数据,以及其与完全集合经验模态分解自适应噪声(CEEMDAN)在信号分解领域的广泛适用性相结合的优势。在这项研究中,通过对温度时间序列分别进行经验模态分解(EMD)、集合经验模态分解(EEMD)和 CEEMDAN 处理,形成具有相应体积含水量和冻胀时间序列的混合数据集,最后,创建 CEEMDAN-LSTM 模型进行预测。多个模型的性能比较结果表明,与其他分解的 LSTM 模型相比,CEEMDAN-LSTM 模型具有最佳的预测性能,因为混合数据集的构成提高了预测能力,从而能够更好地处理温度时间序列数据的非线性和非平稳性。