Projection of monthly surface flows by an optimized SWAT–MLP: a case study

Gao Furong, Sarmistha Hossain
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Abstract

Abstract Recent investigations have noted that using a hybrid arrangement of Soil and Water Assessment Tool (SWAT) and multi-layer perceptron (MLP) has high efficiency in runoff prediction. In this research, in addition to using the SWAT and MLP models, an optimized algorithm called Mutated SunFlower Optimization (MSFO) algorithm has been proposed to predict better runoff, which improves the results of prediction runoff by decreasing the error percentage in the MLP model. For this purpose, first, runoff modeling is used to assess the efficiency of the SWAT system. The model's verification and calibration have been performed using data from the previous 30 years of statistics. Then, the flow stream simulated by the SWAT method is evaluated with the observational data and applied as the inputs to the MLP model, and finally, runoff is predicted through the MLP model, and MSFO is used in the MLP model to obtain better results for runoff prediction. The results show that the values of statistical indices R2, RMSE, NSE, and RE give satisfying agreement for runoff forecast in the SWAT–MLP/MSFO model with values of 0.83, 1.68, 0.51, and −0.1.
利用优化的SWAT-MLP预测每月地面流量:一个案例研究
摘要近年来的研究表明,利用土壤和水分评估工具(SWAT)和多层感知器(MLP)的混合配置在径流预测中具有很高的效率。本研究在使用SWAT和MLP模型的基础上,提出了一种优化算法——突变向日葵优化算法(MSFO),通过降低MLP模型的误差百分比,提高了径流预测的效果。为此,首先使用径流模型来评估SWAT系统的效率。利用过去30年的统计数据对模型进行了验证和校正。然后,利用观测数据对SWAT方法模拟的径流进行评价,并将其作为MLP模型的输入,最后通过MLP模型对径流进行预测,并将MSFO应用于MLP模型以获得较好的径流预测结果。结果表明,SWAT-MLP /MSFO模型的统计指标R2、RMSE、NSE和RE的预测值分别为0.83、1.68、0.51和- 0.1,具有较好的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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