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首页> 外文期刊>Journal of Hydrology >Advances in ungauged streamflow prediction using artificial neural networks
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Advances in ungauged streamflow prediction using artificial neural networks

机译:人工神经网络在无约束流量预测中的进展

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In this work, we develop and test two artificial neural networks (ANNs) to forecast streamflow in ungauged basins. The model inputs include time-lagged records of precipitation and temperature. In addition, recurrent feedback loops allow the ANN streamflow estimates to be used as model inputs. Publically available climate and US Geological Survey streamflow records from sub-basins in Northern Vermont are used to train and test the methods. Time-series analysis of the climate-flow data provides a transferable and systematic methodology to determine the appropriate number of time-lagged input data. To predict streamflow in an ungauged basin, the recurrent ANNs are trained on climate-flow data from one basin and used to forecast streamflow in a nearby basin with different (more representative) climate inputs. One of the key results of this work, and the reason why time-lagged predictions of steamflow improve forecasts, is these recurrent flow predictions are being driven by time-lagged locally-measured climate data. The successful demonstration of these flow prediction methods with publicly available USGS flow and NCDC climate datasets shows that the ANNs, trained on a climate-discharge record from one basin, prove capable of predicting streamflow in a nearby basin as accurately as in the basin on which they were trained. This suggests that the proposed methods are widely applicable, at least in the humid, temperate climate zones shown in this work. A scaling ratio, based on a relationship between bankfull discharge and basin drainage area, accounts for the change in drainage area from one basin to another. Hourly streamflow predictions were superior to those using daily data for the small streams tested due the loss of critical lag times through upscaling. The ANNs selected in this work always converge, avoid stochastic training algorithms, and are applicable in small ungauged basins.
机译:在这项工作中,我们开发并测试了两个人工神经网络(ANN),以预测未充盈盆地的水流。模型输入包括降水和温度的时滞记录。另外,循环反馈回路允许将ANN流量估算值用作模型输入。来自佛蒙特北部子盆地的可公开获得的气候和美国地质调查局流量记录用于训练和测试这些方法。气候流量数据的时间序列分析提供了一种可转移的系统方法,可确定适当数量的时间滞后输入数据。为了预测未开垦盆地的水流,对经常性人工神经网络进行来自一个盆地的气候流数据的训练,并用于预测具有不同(更具代表性)气候输入的附近盆地的水流。这项工作的主要结果之一,是蒸汽流量的时滞预测改进了预报的原因,是这些时滞流量预测是由时滞的局部测量气候数据驱动的。这些流量预测方法在公开的USGS流量和NCDC气候数据集上的成功展示表明,在一个盆地的气候排放记录上训练的人工神经网络证明能够预测附近盆地的水流,就像在该盆地上一样。他们受过训练。这表明,所提出的方法至少在这项工作所示的潮湿,温带气候区中是广泛适用的。基于河岸满溢流量与流域排水面积之间关系的缩放比例可说明流域从一个流域到另一个流域的变化。每小时流量预测优于使用每日数据的小流量预测,这是由于扩大规模导致关键滞后时间的损失。在这项工作中选择的人工神经网络始终会收敛,避免使用随机训练算法,并且适用于小型非测量盆地。

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