首页> 外文期刊>Nordic hydrology >Absolute and relative measures for evaluating the forecasting performance of time series models for daily streamflows
【24h】

Absolute and relative measures for evaluating the forecasting performance of time series models for daily streamflows

机译:用于评估每日流量的时间序列模型的预测性能的绝对和相对措施

获取原文
获取原文并翻译 | 示例
       

摘要

Root Mean Squared Error (RMSE) and Mean Absolute Error (MAE) are widely used measures for evaluating the forecasting performance of time series models. Although these absolute measures can be used to compare the performance of competing models, one needs a reference to judge the goodness of the forecasts. In this paper, two relative measures, coefficient of efficiency (E) and index of agreement (d), and their modified versions (EM, EMP, dM and dMP) with desired values of closer to one are presented. These measures are illustrated by comparing the modeling ability and validation forecasting performance of a Nonlinear Additive Autoregressive with Exogenous variables (NAARX), Nested Threshold Autoregressive (NeTAR), and Multiple Nonlinear Inputs Transfer Function (MNITF) models developed for the Joekulsa eystri daily streamflow data. The results suggest that NeTAR describes the system best, and gives better 1 - and 2-day ahead validation forecasts. MNITF gives better forecasts for 3-day ahead, and NeTAR and NAARX give comparable performance for 4- and 5-day ahead forecasting. The values of E and d were larger than those of the modified versions, giving a false sense of model performance, and unlike the modified versions, they decreased as forecast lead times increased. Differences among the values of these six relative measures can reveal the sensitiveness of competing models to outliers, and their potential for long-term forecasting. Accordingly, NeTAR was the least sensitive to outliers and NAARX was the most sensitive, with MNITF in between; and NAARX showed the most potential for long-term streamflow forecasting.
机译:均方根误差(RMSE)和均值绝对误差(MAE)是广泛用于评估时间序列模型的预测性能的度量。尽管可以使用这些绝对度量来比较竞争模型的性能,但仍需要参考来判断预测的优劣。在本文中,提出了两个相对的度量,即效率系数(E)和一致性指数(d),以及它们的修改版本(EM,EMP,dM和dMP),其期望值接近一个。通过比较为Joekulsa eystri每日流量数据开发的带有外生变量的非线性加性自回归(NAARX),嵌套阈值自回归(NeTAR)和多个非线性输入传递函数(MNITF)模型的建模能力和验证预测性能来说明这些措施。结果表明,NeTAR可以最好地描述系统,并且可以提前1天和2天进行验证。 MNITF对未来3天的预测提供了更好的预测,而NeTAR和NAARX对4天和5天的预测给出了可比的表现。 E和d的值大于修改后的版本,从而给模型性能带来了误解,并且与修改后的版本不同,它们随着预测交付时间的增加而降低。这六个相对度量的值之间的差异可以揭示竞争模型对异常值的敏感性及其长期预测的潜力。因此,NeTAR对离群值最不敏感,而NAARX对离群值最敏感,中间是MNITF。而NAARX显示了长期流量预测的最大潜力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号