首页> 外文期刊>Journal of Agricultural, Biological, and Environmental Statistics >Water flow probabilistic predictions based on a rainfall-runoff simulator: a two-regime model with variable selection
【24h】

Water flow probabilistic predictions based on a rainfall-runoff simulator: a two-regime model with variable selection

机译:基于降雨 - 径流模拟器的水流概率预测:具有变量选择的双政题模型

获取原文
获取原文并翻译 | 示例
       

摘要

Probabilistic forecasting aims at producing a predictive distribution of the quantity of interest instead of a single best guess point-wise estimate. With regard to water flow forecasts, the two main sources of uncertainty stem from unknown future rainfall and temperature (input error, i.e., meteorological uncertainty) and from the inadequacy of the deterministic simulator mimicking the rainfall-runoff (RR) transformation (hydrological uncertainty or RR error). These two sources of uncertainty can be dealt with separately and only the latter will be considered here. Only hydrological uncertainty is at stake when recorded meteorological data (instead of meteorological forecasts) are used as inputs to feed the RR simulator (RRS) for probabilistic predictions. The predictive performance of the RRS may strongly depend on the hydrological regimes: rapid flood variations induce large errors of anticipation but a series of dry events will translate into a much more smoother sequence of river levels due to the easily predictable behavior of the soil reservoir emptying. Consequently, a model with several regimes adapted to different error structures appears as a solution to cope with the issue of unstationary predictive variance. The river regime is modeled as a latent variable, the distribution of which is based on additional outputs of the RRS to be selected. Inference is performed by the EM algorithm with both steps leading to explicit analytic expressions. Asymptotic confidence regions for the estimates are provided within the same EM framework. Model selection is also performed, including the length of the model memory as well as the choice of explanatory variables for the latent regimes. The model is applied to a series of water flow forecasts routinely issued by two hydroelectricity producers in France and in Qu,bec and compared with their present operational forecasting methods.
机译:概率预测旨在产生利益数量的预测分布,而不是单一的最佳猜测点估计。关于水流量预测,两个不确定性的主要来源源于未知的未知降雨和温度(输入误差,即气象不确定性)以及模拟模拟器模仿降雨 - 径流(RR)转型的不足(水文不确定性或RR错误)。这两个不确定性来源可以单独处理,只有后者将在这里考虑。当录制的气象数据(代替气象预测)被用作概率预测的输入时,才有水文不确定性被用作馈送RR模拟器(RRS)的输入。 RRS的预测性能可能很大程度上取决于水文制度:快速洪水变化诱导预期的大误差,但由于土壤储层空间易于预测的行为,一系列干燥的事件将转化为更平滑的河流序列。因此,具有适应不同误差结构的多个制度的模型表现为应对不存在异教性预测方差问题的解决方案。河流制度被建模为潜在变量,其分布基于要选择的RRS的附加输出。推断由EM算法执行,这两个步骤导致显式分析表达式。估计的渐近置信区是在同一EM框架内提供的。还执行模型选择,包括模型存储器的长度以及潜在制度的解释变量的选择。该模型应用于法国两次水力发电生产商的一系列水流量预测,并与其目前的运营预测方法进行比较。

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