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首页> 外文期刊>Journal of the South African Institution of Civil Engineering >Comparison of two data-driven modelling techniques for long-term streamflow prediction using limited datasets
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Comparison of two data-driven modelling techniques for long-term streamflow prediction using limited datasets

机译:使用有限数据集进行长期流量预测的两种数据驱动建模技术的比较

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摘要

This paper presents an investigation into the efficacy of two data-driven modelling techniques in predicting streamflow response to local meteorological variables on a long-term basis and under limited availability of datasets. Genetic programming (GP), an evolutionary algorithm approach and differential evolution (DE)-trained artificial neural networks (ANNs) were applied for flow prediction in the upper uMkhomazi River, South Africa. Historical records of streamflow, rainfall and temperature for a 19-year period (1994-2012) were used for model design, and also in the selection of predictor variables into the input vector space of the model. In both approaches, individual monthly predictive models were developed for each month of the year using a one-year lead time. The performances of the predictive models were evaluated using three standard model evaluation criteria, namely mean absolute percentage error (MAPE), root mean-square error (RMSE) and coefficient of determination (R2). Results showed better predictive performance by the GP models (MAPE: 3.64%; RMSE: 0.52: R2: 0.99) during the validation phase when compared to the ANNs (MAPE: 93.99%; RMSE: 11.17; R2: 0.35). Generally, the GP models were found to be superior to the ANNs, as they showed better performance based on the three evaluation measures, and were found capable of giving a good representation of non-linear hydro-meteorological variations despite the use of minimal datasets.
机译:本文介绍了两种数据驱动的建模技术在长期和有限数据集可用性下长期预测当地气象变量对径流响应的功效的研究。遗传程序(GP),进化算法方法和差分进化(DE)训练的人工神经网络(ANN)被用于南非uMkhomazi河上游的流量预测。使用19年期间(1994-2012年)的流量,降雨量和温度的历史记录进行模型设计,并在模型的输入向量空间中选择预测变量。两种方法都使用一年的提前期为一年中的每个月开发了单独的每月预测模型。预测模型的性能使用三个标准模型评估标准进行评估,即平均绝对百分比误差(MAPE),均方根误差(RMSE)和确定系数(R2)。与ANN(MAPE:93.99%; RMSE:11.17; R2:0.35)相比,在验证阶段,GP模型(MAPE:3.64%; RMSE:0.52:R2:0.99)的预测性能更好。通常,发现GP模型优于ANN,因为它们基于三种评估方法表现出更好的性能,并且尽管使用了最少的数据集,但它们能够很好地表示非线性水文气象变化。

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