气象时间序列单变量预报方法的比较研究

Thi-Thu-Hong Phan, É. Poisson, A. Bigand
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引用次数: 14

摘要

时间序列预测在气象和环境的许多实际应用中具有重要作用,可以理解气候变化等现象并适应监测策略。本文首先构建气象单变量时间序列的预测框架,然后对不同单变量模型在预测任务中的性能进行比较。讨论了六种算法:单指数平滑(SES)、季节性朴素(Snaive)、季节性arima (SARIMA)、前馈神经网络(FFNN)、基于动态时间翘曲的插值(DTWBI)、贝叶斯结构时间序列(BSTS)。使用四种性能指标和各种气象时间序列来确定更定制的预测方法。实验结果表明,FFNN方法在考虑精度指标时对具有季节性和无趋势的气象单变量时间序列的预报具有较好的适应性,而DTWBI方法在考虑预测值的形态和动态时更为适合。
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Comparative Study on Univariate Forecasting Methods for Meteorological Time Series
Time series forecasting has an important role in many real applications in meteorology and environment to understand phenomena as climate change and to adapt monitoring strategy. This paper aims first to build a framework for forecasting meteorological univariate time series and then to carry out a performance comparison of different univariate models for forecasting task. Six algorithms are discussed: Single exponential smoothing (SES), Seasonal-naive (Snaive), Seasonal-ARIMA (SARIMA), Feed-Forward Neural Network (FFNN), Dynamic Time Warping-based Imputation (DTWBI), Bayesian Structural Time Series (BSTS). Four performance measures and various meteorological time series are used to determine a more customized method for forecasting. Through experiments results, FFNN method is well adapted to forecast meteorological univariate time series with seasonality and no trend in consideration of accuracy indices and DTWBI is more suitable as considering the shape and dynamics of forecast values.
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