孙怀卫, 严 冬, 陈皓锐, 周建中, 张勇传. 参考作物腾发量的GARCH类模型模拟与比较[J]. 农业工程学报, 2015, 31(7): 131-136. DOI: doi:10.3969/j.issn.1002-6819.2015.07.019
    引用本文: 孙怀卫, 严 冬, 陈皓锐, 周建中, 张勇传. 参考作物腾发量的GARCH类模型模拟与比较[J]. 农业工程学报, 2015, 31(7): 131-136. DOI: doi:10.3969/j.issn.1002-6819.2015.07.019
    Sun Huaiwei, Yan Dong, Chen Haorui, Zhou Jianzhong, Zhang Yongchuan. Modeling heteroscedasticity of reference evapotranspiration series with GARCH family models[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2015, 31(7): 131-136. DOI: doi:10.3969/j.issn.1002-6819.2015.07.019
    Citation: Sun Huaiwei, Yan Dong, Chen Haorui, Zhou Jianzhong, Zhang Yongchuan. Modeling heteroscedasticity of reference evapotranspiration series with GARCH family models[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2015, 31(7): 131-136. DOI: doi:10.3969/j.issn.1002-6819.2015.07.019

    参考作物腾发量的GARCH类模型模拟与比较

    Modeling heteroscedasticity of reference evapotranspiration series with GARCH family models

    • 摘要: 由于辐射、气象等复杂因素变化,水文过程时间序列模型的预测和不确定性是当前研究的重要问题。该文以参考作物腾发量为研究对象,运用能够反映时间序列非线性变化的GARCH(generalized autoregressive conditional heteroscedasticity model)类模型,选取湖北省宜昌站1953-2007年实测气象数据进行计算,依次研究其时间序列特性、预测模型、波动特征和最优的误差预测模型。结果表明,季节自回归滑动平均模型(SARMA,seasonal autoregressive moving average model模型)很好地模拟了参考作物腾发量时间序列变化(模型均方根误差为0.089 mm),但Engle拉格朗日乘数检验结果表明参考作物腾发量变化过程存在条件异方差特性;GARCH、TGARCH(threshold GARCH)、EGARCH(exponential GARCH)和PGARCH(power GARCH)模型的应用估计表明,GARCH类模型能够很好刻画时间序列预测模拟中的方差变化特征,相比于传统线性时间序列模型能够更好反应预测中的不确定特性;通过多个误差统计量的比较研究表明,EGARCH模型能够较好地预测参考作物腾发量波动特征,相对于其他GARCH类模型具有较高的精度。该文对参考作物腾发量时间序列条件异方差特性的研究,有利于深度挖掘水文规律,为水资源管理提供理论基础。

       

      Abstract: Abstract: More effective methods are needed to evaluate the water demand to improve water resource management as the population and economy grow leading to water shortage. Time series models are useful tools in the estimation and forecasting of reference evapotranspiration series and their changes. However, due to the dynamic nature of reference evapotranspiration, accurate estimation of variance has been being a challenging task and requires new modelling approaches in application. The Generalized Autoregressive Conditional Heteroscedasticity (GARCH) family models, which provide an appropriate framework for focusing on the conditional variance remaining in the residuals of the time series models, were applied in this study to comply with the estimation. Daily climate data including average air pressure, air temperature, relative humidity, wind speed, and saturation deficit were provided by the Chinese National Climatic Data Center (CDC). The observed meteorology dataset from 1953-2007 in Yichang station in Hubei province in China was chosen as the selected station for its data available. The FAO Penman-Monteith method was applied to obtain the potential reference evaporation series. Then, for deseasonalization of the seasonal variation in the series, a Seasonal Autoregressive Moving Average (SARMA) model was set up to estimate the conditional mean of the potential reference evaporation. Besides, four types of GARCH models (GARCH, Threshold GARCH, Exponential GARCH, and Power GARCH models) were investigated to take the advantages of GARCH family models to simulate the conditional variance of the potential reference evaporation series. Also, six criteria were utilized to compare the model performance. It was shown that the data of potential reference evaporation series in Yichang Station had skewness, and right tail on an annual cycle, indicating the necessary of SARMA model used in this study. The final SARMA model was chosen by the minimum of AIC values. The results of SARMA model showed that it was efficient for modelling the monthly mean total daily reference evaporation series as a small redisudal mean square error (RMSE) between the observed and estimated values (0.089 mm). However, the heteroscedasticity was present in the residuals of SARMA model according to the Engle test, which suggested the necessary of GARCH models used for modeling of reference evaporation series. Results of GARCH models showed its ability to remove the heteroscedasticity from the reference evaporation residuals. The asymmetric effects of solar radiation series were also confirmed by the application of GARCH family models for estimating the residuals of SARMA model. Among the SARMA and GARCH models, the EGARCH model was best to predict the series because the prediction of the EGARCH model had a narrower confidence level. The better interval estimation would provide more useful information for analysis of hydrological processes and was undoubtedly more favorable to further uncertainty analysis in water resource management. The multi-criteria evaluation for model performance also proved that the EGARCH model was best among SARMA and GARCH models, and it was recommended to use the EGARCH model to estimate the potential reference evaporation series in practice. In conclusion, the results indicated that the application of GARCH family models would be a promising alternative over the traditional approaches in the estimation of potential reference evaporation series, and can be a useful tool to existing water resources management. Further studies about the comprehensive application of GARCH models should focus on the model performances with different observed dataset among stations. It also suggests to use more GARCH models to estimate the hydrological series and the results of accuracy estimation should be linked with water risk analysis.

       

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