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Ensemble forecasting of sub-seasonal to seasonal streamflow by a Bayesian joint probability modelling approach

机译:利用贝叶斯联合概率建模方法对亚季节到季节流量的集合预报

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The Bayesian joint probability (BJP) modelling approach is used operationally to produce seasonal (three-month -total) ensemble streamflow forecasts in Australia. However, water resource managers are calling for more informative sub-seasonal forecasts. Taking advantage of BJP's capability of handling multiple predictands, ensemble forecasting of sub-seasonal to seasonal streamflows is investigated for 23 catchments around Australia. Using antecedent streamflow and climate indices as predictors, monthly forecasts are developed for the three-month period ahead. Forecast reliability and skill are evaluated for the period 1982-2011 using a rigorous leave-five-years-out cross validation strategy. BJP ensemble forecasts of monthly streamflow volumes are generally reliable in ensemble spread. Forecast skill, relative to climatology, is positive in 74% of cases in the first month, decreasing to 57% and 46% respectively for streamflow forecasts for the final two months of the season. As forecast skill diminishes with increasing lead time, the monthly forecasts approach climatology. Seasonal forecasts accumulated from monthly forecasts are found to be similarly skilful to forecasts from BJP models based on seasonal totals directly. The BJP modelling approach is demonstrated to be a viable option for producing ensemble time-series sub-seasonal to seasonal streamflow forecasts. Crown Copyright (C) 2016 Published by Elsevier B.V. All rights reserved.
机译:贝叶斯联合概率(BJP)建模方法在操作上用于生成澳大利亚的季节性(总计三个月)总体流量预测。但是,水资源管理人员呼吁提供更多有用的亚季节预报。利用BJP的多种预测能力,对澳大利亚周围23个流域的次季节到季节流量的集合预报进行了调查。使用之前的流量和气候指数作为预测因子,可以对未来三个月的时间进行月度预测。使用严格的“离开五年”交叉验证策略对1982-2011年期间的预测可靠性和技能进行了评估。 BJP集合流对月流量的预测通常在集合传播中是可靠的。相对于气候学,预报技能在第一个月中占74%,在本季节的最后两个月,流量预报分别下降到57%和46%。随着预报技能随着交付时间的增加而减少,每月预报接近气候。从月度预测中累积的季节性预测与直接基于季节性总数的BJP模型的预测相似。事实证明,BJP建模方法是用于生成整体子序列的次季节到季节流量预测的可行选择。官方版权(C)2016,由Elsevier B.V.保留所有权利。

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