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Integration of ANN with TOPMODEL in daily stream flow forecasting

机译:ANN与TOPMODEL在日常流流量预测中集成

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Despite the strength and a increasing interest in application of artificial neural networks (ANNs) to rainfall runoff simulating, the deficiencies associated with traditional applications of ANNs in which the networks essentially function as black box models is obvious. The objective of this work is therefore to enhance the ANN-based rainfall runoff models' ability in the description of hydrological processes such as interception, infiltration, surface runoff, sub-surface runoff and evapotranspiration by integrating it with TOPMODEL, which is a simple physically based rainfall-runoff model and has become increasingly popular and widely used in a great number of applications in recent years. A new integrated model named ANN-TOPMODEL is proposed in this study. Baohe River basin (2413 km~2), located at the upper stream of the Hanjiang Catchment in Yangtze River Basin, China, is selected as the study area for testing the new model. The results show that the daily stream flows simulated by the new model are in good agreement with the observed ones, while the daily stream flows simulated by TOPMODEL greatly overestimates or underestimates some peak flows both for calibration period and validation period. Further more, the new model resulted in a Nash and Sutcliffe efficiency coefficient value of 0.905 for validation period, which is significantly larger than TOPMODEL. The results demonstrate that the proposed integrated model based on ANN and TOPMODEL is promising in daily stream flow modeling.
机译:尽管对人工神经网络(ANNS)应用于降雨径流模拟的强度和日益增长的兴趣,但与ANN的传统应用相关的缺陷,其中网络基本上用作黑匣子型号是显而易见的。因此,这项工作的目的是通过将其与TopModel集成,提高水文过程的描述,如拦截,渗透,表面径流,子表面径流和蒸发,以提高基于ANN的降雨径流模型的能力。基于Rainfall-Runoff模型,近年来越来越受广泛的应用,广泛应用于大量应用。本研究提出了一个名为Ann-Topmodel的新集成模型。宝河流域(2413公里〜2),位于中国长江流域汉江集水区的上游,被选为测试新型号的研究区。结果表明,新模型模拟的日常流流与所观察到的日常吻合良好,而TopModel模拟的日常流流量大大高估或低估了校准周期和验证周期的一些峰值流动。此外,新模型导致NASH和SUTCLIFFE效率系数为0.905的验证期,其显着大于TOPMODEL。结果表明,基于ANN和TOPMODEL的拟议综合模型在日常流流程建模中具有很大。

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