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Temperature prediction based on a space-time regression-kriging model

机译:基于时空回归克里格化模型的温度预测

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ABSTRACT Many phenomena exist in the space–time domain, often with a low data sampling rate and sparsely distributed network of observed points. Therefore, spatio-temporal interpolation with high accuracy is necessary. In this paper, a space–time regression-kriging model was introduced and applied to monthly average temperature data. First, a time series decomposition was applied for each station, and a multiple linear regression model was used to fit space–time trends. Second, a valid nonseparable spatio-temporal variogram function was utilized to describe similarities of the residuals in space–time. Finally, space–time kriging was applied to predict monthly air temperature. Jackknife techniques were used to predict the monthly temperature at all stations, with correlation coefficients between predictions and observed data very close to 1. Moreover, to evaluate the advantages of space–time kriging, pure time forecasting also was executed employing an autoregressive integrated moving average (ARIMA) model. The results of these two methods show that both mean absolute error (MAE) and root-mean-square error (RMSE) of space–time prediction are much lower than those of the pure time forecasting. The estimated temperature curves for stations also show that the former present a conspicuous improvement in interpolation accuracy when compared with the latter.
机译:摘要在时空域中存在许多现象,通常具有低数据采样率和观察点的稀疏分布网络。因此,需要高精度的时空插值是必要的。本文介绍了时空回归 - 克里格化模型并应用于月平均气温数据。首先,为每个站应用时间序列分解,并且使用多元线性回归模型来适应空间时间趋势。其次,利用有效的非分子时空变速仪功能来描述在时空中残留物的相似性。最后,应用时空克里格预测每月气温。 Jackknife技术用于预测所有站的每月温度,预测和观察到的数据之间的相关系数非常接近1.此外,为了评估时空克里格的优点,纯粹的时间预测也被执行采用自回归综合移动平均线(阿米巴)模型。这两种方法的结果表明,时空预测的平均绝对误差(MAE)和根均方误差(RMSE)远低于纯时间预测的根本预​​测。与后者相比,该前者的估计温度曲线还表明,前者在与后者相比时具有内插精度的显着改善。

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