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Simulation and prediction of hydrological processes based on firefly algorithm with deep learning and support vector for regression

机译:基于萤火虫算法的萤火虫算法对回归的深度学习和支持向量的水文过程模拟与预测

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ABSTRACT Hydrological processes are hard to accurately simulate and predict because of various natural and human influences. In order to improve the simulation and prediction accuracy of the hydrological process, the firefly algorithm with deep learning (DLFA) was used in this study to optimise the parameters of support vector for regression (SVR) automatically, and a prediction model was established based on DLFA and SVR. The hydrological process of Huangfuchuan in Fugu County, Shanxi Province was taken as the research object to verify the performance of the prediction model, and the results were compared with those by the other six prediction models. The experimental results showed that the proposed prediction model achieved improved prediction performance compared with the other six models.
机译:由于各种自然和人类影响,摘要水文过程很难准确地模拟和预测。为了提高水文过程的模拟和预测准确性,在本研究中使用了具有深度学习(DLFA)的萤火虫算法,以便自动优化回归(SVR)的支持载体参数,并且基于以下建立预测模型DLFA和SVR。山西省福建县黄福县的水文过程被视为验证预测模型的性能的研究对象,与其他六个预测模型的结果进行了比较。实验结果表明,与其他六种模型相比,所提出的预测模型实现了改进的预测性能。

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