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首页> 外文期刊>Journal of hydrologic engineering >Multiple Linear Regression and Artificial Neural Networks Models for Generalized Reservoir Storage-Yield-Reliability Function for Reservoir Planning
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Multiple Linear Regression and Artificial Neural Networks Models for Generalized Reservoir Storage-Yield-Reliability Function for Reservoir Planning

机译:广义水库储量-产量-可靠性函数的多元线性回归和人工神经网络模型

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摘要

Generalized models for predicting the storage-yield-reliability functions of surface water reservoirs are developed using multiple linear regression and multilayer perceptron, artificial neural networks (ANNs). Linear regression was used to model the total capacity using the over-year capacity as one of the inputs. However, the ANNs were used to simultaneously model directly the intrinsically nonlinear over-year and total (i.e., within-year+over-year) capacity-yield-reliability functions. The inputs used for the ANNs were basic runoff and systems variables such as the coefficient of variation of annual and monthly runoff, minimum monthly runoff, the demand ratio, and reliability. The results showed that all the models performed well during development and when tested with independent data sets. Both models offer avenues for predicting reservoir capacity at gauged sites without the expense of time-series based simulation alternatives.
机译:使用多元线性回归和多层感知器,人工神经网络(ANN),开发了用于预测地表水储量-储量-可靠性函数的通用模型。使用线性回归以总产能为模型,使用年度产能作为输入之一。但是,人工神经网络被用来直接直接建模内部非线性的年度和总(即年内+年度)容量-产量-可靠性函数。用于人工神经网络的输入是基本径流量和系统变量,例如年径流量和月径流量的变化系数,最小月径流量,需求率和可靠性。结果表明,所有模型在开发过程中以及使用独立数据集进行测试时均表现良好。两种模型都提供了在不消耗基于时间序列的模拟替代方案的情况下预测已测井点储量的途径。

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