全球平均绝对海平面变化的时间序列模拟

Yeong Nain Chi
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引用次数: 0

摘要

本研究旨在证明时间序列模型在模拟1880 - 2014年全球平均绝对海平面变化长期记录方面的有效性。根据Box-Jenkins方法,由于其AIC值最低,具有漂移的ARIMA(0,1,2)模型被确定为时间序列的最佳拟合模型。使用LM算法,结果表明,在非线性自回归神经网络模型中,具有7个隐藏层神经元和7个时滞的NARNN模型表现出最好的性能,其MSE较低。ARIMA模型擅长于时间序列数据中的线性问题建模,而NARNN模型更适合于非线性模式。然而,我们探索了一种混合模型,它结合了ARIMA和NARNN模型的优势,提供了处理时间序列数据的线性和非线性方面的能力。本研究对比分析表明,隐含层6个神经元、7个时延的HYBRID模型优于隐含层7个神经元、7个时延的NARNN模型,也优于本研究中MSE最低的ARIMA(0,1,2)模型。这些发现通过利用统计和机器学习方法的优势,代表了时间序列预测的重要一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time Series Modeling of Global Average Absolute Sea Level Change
This study aimed to demonstrate the effectiveness of time series models in modeling long-term records of global average absolute sea level changes from 1880 to 2014. Following the Box–Jenkins methodology, the ARIMA(0,1,2) model with drift was identified as the best-fit model for the time series due to its lowest AIC value. Using the LM algorithm, the results revealed that the NARNN model with 7 neurons in the hidden layer and 7 time delays exhibited the best performance among the nonlinear autoregressive neural network models, as indicated by its lower MSE. While ARIMA models excel in modeling linear problems within time series data, NARNN models are better suited for nonlinear patterns. However, a HYBRID model was explored, which combines the strengths of both ARIMA and NARNN models, offering the capability to address both linear and nonlinear aspects of time series data. The comparative analysis of this study demonstrated that the HYBRID model, with 6 neurons in the hidden layer and 7 time delays, outperformed the NARNN model with 7 neurons in the hidden layer and 7 time delays, as well as the ARIMA(0,1,2) model, with the lowest MSE in this study. These findings represent a significant step in time series forecasting by leveraging the strengths of both statistical and machine learning methods.
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