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Methods used for quantifying the prediction uncertainty of artificial neural network based hydrologic models

机译:基于人工神经网络的水文模型预测不确定性量化方法

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Application of artificial neural network (ANN) models has been reported to solve variety of water resources and environmental related problems including prediction, forecasting and classification, over the last two decades. Though numerous research studies have witnessed the improved estimate of ANN models, the practical applications are sometimes limited. The black box nature of ANN models and their parameters hardly convey the physical meaning of catchment characteristics, which result in lack of transparency. In addition, it is perceived that the point prediction provided by ANN models does not explain any information about the prediction uncertainty, which reduce the reliability. Thus, there is an increasing consensus among researchers for developing methods to quantify the uncertainty of ANN models, and a comprehensive evaluation of uncertainty methods applied in ANN models is an emerging field that calls for further improvements. In this paper, methods used for quantifying the prediction uncertainty of ANN based hydrologic models are reviewed based on the research articles published from the year 2002 to 2015, which focused on modeling streamflow forecast/prediction. While the flood forecasting along with uncertainty quantification has been frequently reported in applications other than ANN in the literature, the uncertainty quantification in ANN model is a recent progress in the field, emerged from the year 2002. Based on the review, it is found that methods for best way of incorporating various aspects of uncertainty in ANN modeling require further investigation. Though model inputs, parameters and structure uncertainty are mainly considered as the source of uncertainty, information of their mutual interaction is still lacking while estimating the total prediction uncertainty. The network topology including number of layers, nodes, activation function and training algorithm has often been optimized for the model accuracy, however not in terms of model uncertainty. Finally, the effective use of various uncertainty evaluation indices should be encouraged for the meaningful quantification of uncertainty. This review article also discusses the effectiveness and drawbacks of each method and suggests recommendations for further improvement.
机译:在过去的二十年中,已经报道了使用人工神经网络(ANN)模型来解决各种水资源和与环境有关的问题,包括预测,预测和分类。尽管许多研究已经见证了人工神经网络模型的改进估计,但实际应用有时受到限制。 ANN模型的黑匣子性质及其参数很难传达流域特征的物理含义,从而导致缺乏透明度。另外,可以感觉到,由ANN模型提供的点预测并不能解释关于预测不确定性的任何信息,从而降低了可靠性。因此,研究人员之间越来越多的共识是要开发量化ANN模型不确定性的方法,而对ANN模型中应用的不确定性方法进行全面评估是一个需要进一步改进的新兴领域。本文在2002年至2015年发表的研究论文的基础上,回顾了用于量化基于ANN的水文模型的预测不确定性的方法,该论文侧重于模拟流量预测/预测。尽管文献中除了ANN之外,在洪水预报和不确定性量化方面也有很多报道,但ANN模型中的不确定性量化是该领域的最新进展,始于2002年。基于该综述,我们发现将不确定性的各个方面纳入ANN建模的最佳方法的方法需要进一步研究。尽管模型输入,参数和结构不确定性主要被认为是不确定性的来源,但是在估计总预测不确定性时仍缺乏相互交互的信息。包括层数,节点数,激活函数和训练算法在内的网络拓扑通常已针对模型准确性进行了优化,但并未针对模型不确定性进行优化。最后,应鼓励有效使用各种不确定性评估指标,以对不确定性进行有意义的量化。这篇评论文章还讨论了每种方法的有效性和缺点,并提出了进一步改进的建议。

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