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Probabilistic Forecasting of Drought Events Using Markov Chain- and Bayesian Network-Based Models: A Case Study of an Andean Regulated River Basin

机译:基于马尔可夫链和贝叶斯网络模型的干旱事件概率预报:以安第斯调节流域为例

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The scarcity of water resources in mountain areas can distort normal water application patterns with among other effects, a negative impact on water supply and river ecosystems. Knowing the probability of droughts might help to optimize a priori the planning and management of the water resources in general and of the Andean watersheds in particular. This study compares Markov chain- (MC) and Bayesian network- (BN) based models in drought forecasting using a recently developed drought index with respect to their capability to characterize different drought severity states. The copula functions were used to solve the BNs and the ranked probability skill score (RPSS) to evaluate the performance of the models. Monthly rainfall and streamflow data of the Chulco River basin, located in Southern Ecuador, were used to assess the performance of both approaches. Global evaluation results revealed that the MC-based models predict better wet and dry periods, and BN-based models generate slightly more accurately forecasts of the most severe droughts. However, evaluation of monthly results reveals that, for each month of the hydrological year, either the MC- or BN-based model provides better forecasts. The presented approach could be of assistance to water managers to ensure that timely decision-making on drought response is undertaken.
机译:山区水资源的匮乏可能扭曲正常的用水模式,并给水供应和河流生态系统带来负面影响。了解干旱的可能性可能有助于优化先验水资源的总体规划,尤其是对安第斯河流域的规划和管理。这项研究比较了基于马尔可夫链(MC)和贝叶斯网络(BN)的模型在干旱预测中的能力,这些模型使用了最近开发的干旱指数来表征不同干旱严重程度的能力。 copula函数用于求解BN和排名概率技能得分(RPSS)以评估模型的性能。位于厄瓜多尔南部的库尔科河流域的月降雨量和流量数据被用来评估两种方法的性能。全球评估结果表明,基于MC的模型可以预测更好的干湿两季,而基于BN的模型可以更准确地预测最严重的干旱。但是,对月度结果的评估显示,对于水文年度的每个月,基于MC或BN的模型都可以提供更好的预测。提出的方法可能有助于水管理者确保及时做出有关干旱应对的决策。

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