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Methods used for the development of neural networks for the prediction of water resource variables in river systems: Current status and future directions

机译:用于预测河流系统水资源变量的神经网络的开发方法:现状和未来方向

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摘要

Over the past 15 years, artificial neural networks (ANNs) have been used increasingly for prediction and forecasting in water resources and environmental engineering. However, despite this high level of research activity, methods for developing ANN models are not yet well established. In this paper, the steps in the development of ANN models are outlined and taxonomies of approaches are introduced for each of these steps. In order to obtain a snapshot of current practice, ANN development methods are assessed based on these taxonomies for 210 journal papers that were published from 1999 to 2007 and focus on the prediction of water resource variables in river systems. The results obtained indicate that the vast majority of studies focus on flow prediction, with very few applications to water quality. Methods used for determining model inputs, appropriate data subsets and the best model structure are generally obtained in an ad-hoc fashion and require further attention. Although multilayer perceptrons are still the most popular model architecture, other model architectures are also used extensively. In relation to model calibration, gradient based methods are used almost exclusively. In conclusion, despite a significant amount of research activity on the use of ANNs for prediction and forecasting of water resources variables in river systems, little of this is focused on methodological issues. Consequently, there is still a need for the development of robust ANN model development approaches.
机译:在过去的15年中,人工神经网络(ANN)越来越多地用于水资源和环境工程的预测和预测。然而,尽管研究活动水平很高,但用于建立ANN模型的方法尚未很好地建立起来。在本文中,概述了ANN模型开发的步骤,并为每个步骤介绍了方法分类法。为了获得当前实践的快照,基于这些分类法,对1999年至2007年发表的210篇期刊论文评估了ANN开发方法,重点是预测河流系统中的水资源变量。获得的结果表明,绝大多数研究都集中在流量预测上,而对水质的应用却很少。用于确定模型输入,合适的数据子集和最佳模型结构的方法通常是临时获得的,需要进一步关注。尽管多层感知器仍然是最流行的模型架构,但其他模型架构也得到了广泛使用。关于模型校准,几乎仅使用基于梯度的方法。总之,尽管在使用人工神经网络进行河流系统水资源变量的预测和预测方面进行了大量的研究活动,但很少有研究集中在方法论问题上。因此,仍然需要开发鲁棒的ANN模型开发方法。

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