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Coupled machine learning and the limits of acceptability approach applied in parameter identification for a distributed hydrological model

机译:耦合机学习与分布水文模型参数识别中的可接受性方法的限制

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Monte Carlo (MC) methods have been widely used in uncertainty analysis and parameter identification for hydrological models. The main challenge with these approaches is, however, the prohibitive number of model runs required to acquire an adequate sample size, which may take from days to months – especially when the simulations are run in distributed mode. In the past, emulators have been used to minimize the computational burden of the MC simulation through direct estimation of the residual-based response surfaces. Here, we apply emulators of an MC simulation in parameter identification for a distributed conceptual hydrological model using two likelihood measures, i.e. the absolute bias of model predictions (Score) and another based on the time-relaxed limits of acceptability concept (pLoA). Three machine-learning models (MLMs) were built using model parameter sets and response surfaces with a limited number of model realizations (4000). The developed MLMs were applied to predict pLoA and Score for a large set of model parameters (95 000). The behavioural parameter sets were identified using a time-relaxed limits of acceptability approach, based on the predicted pLoA values, and applied to estimate the quantile streamflow predictions weighted by their respective Score. The three MLMs were able to adequately mimic the response surfaces directly estimated from MC simulations with an R2 value of 0.7 to 0.92. Similarly, the models identified using the coupled machine-learning (ML) emulators and limits of acceptability approach have performed very well in reproducing the median streamflow prediction during the calibration and validation periods, with an average Nash–Sutcliffe efficiency value of 0.89 and 0.83, respectively.
机译:Monte Carlo(MC)方法已被广泛用于水文模型的不确定分析和参数识别。然而,这些方法的主要挑战是获取足够的样本大小所需的禁止模型运行,这可能需要几天到几个月 - 特别是当模拟以分布式模式运行时。在过去,仿真器已经用于通过直接估计基于残留的响应表面来最小化MC模拟的计算负担。在这里,我们使用两个似然措施的分布式概念水文模型的参数识别中的MC模拟的仿真器,即基于可接受性概念(PLOA)的时间放松限制的模型预测(得分)和另一偏差。使用模型参数集和响应曲面具有有限数量的模型实现(4000),建立了三种机器学习模型(MLMS)。应用了开发的MLMS以预测PLOA和分数,用于大量模型参数(95 000)。基于预测的PLOA值,使用可接受性方法的时间放松限制来识别行为参数集,并应用于估计由它们各自分数加权的分位式流流预测。三个MLMS能够充分模拟直接从MC模拟直接估计的响应表面,R2值为0.7至0.92。类似地,使用耦合的机器学习(ML)仿真器识别的模型以及可接受性方法的限制在再现校准和验证周期期间再现中值流流预测,平均NASH-SUTCLIFFE效率值为0.89和0.83,分别。

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