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Quantifying the Uncertainties in Data-Driven Models for Reservoir Inflow Prediction

机译:量化数据驱动模型中储层流入预测的不确定性

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摘要

Reservoir inflow prediction is subject to high uncertainties in data-driven modelling. In this study, a decomposition scheme is proposed to evaluate the individual and combined contributions of uncertainties from input sets and data-driven models to the total predictive uncertainty. Six variables (i.e., inflow (Q), precipitation (P), relative humidity (H), minimum temperature (Tmin), maximum temperature (Tmax) and precipitation forecast (F)), and three data-driven models (i.e., artificial neural network (ANN), support vector machine (SVM), and adaptive neuro fuzzy inference systems (ANFIS)) are used to produce an ensemble of 10-day inflow forecast for Huanren reservoir in China, and the analysis of variance (ANOVA) method is employed to decompose the uncertainty. The ensemble forecast results show that when the three variables, i.e., Q, P and F, are used only, the predictive accuracy of the data-driven models is very high and the addition of the other three variables, i. e., H, Tmin and Tmax, can slightly improve the predictive accuracy. The decomposition results indicate that the input set is the dominant source of uncertainty, the contribution of the data-driven model is limited and has a strong seasonal variation: larger in winter and summer, smaller in spring and autumn. Most importantly, the interactive contribution of the input set and the data-driven model to the total predictive uncertainty is very high and is more significant than the individual contribution from the model itself, implying that the combined effects of the input set and the data-driven model should be carefully considered in the modelling process.
机译:在数据驱动的建模中,储层流入预测存在高度不确定性。在这项研究中,提出了一种分解方案,以评估输入集和数据驱动模型对总预测不确定性的不确定性的单个和组合贡献。六个变量(即流入量(Q),降水量(P),相对湿度(H),最低温度(Tmin),最高温度(Tmax)和降水量预测(F))和三个数据驱动模型(即人工神经网络(ANN),支持向量机(SVM)和自适应神经模糊推理系统(ANFIS))用于对中国Hua仁水库进行为期10天的流量预测预报,并使用方差分析(ANOVA)方法用于分解不确定性。整体预测结果表明,当仅使用三个变量(即Q,P和F)时,数据驱动模型的预测准确性非常高,而其他三个变量(即i)相加。例如,H,Tmin和Tmax可以略微提高预测准确性。分解结果表明,输入集是不确定性的主要来源,数据驱动模型的贡献是有限的,并且具有很强的季节性变化:冬季和夏季较大,春季和秋季较小。最重要的是,输入集和数据驱动模型对总预测不确定性的交互作用非常高,比模型本身的单独贡献更重要,这意味着输入集和数据的组合效应在建模过程中应仔细考虑驱动模型。

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  • 来源
    《Water Resources Management》 |2020年第4期|1479-1493|共15页
  • 作者

  • 作者单位

    North China Univ Water Resources & Elect Power Sch Water Conservancy Zhengzhou Peoples R China;

    Ludong Univ Sch Civil Engn Yantai Peoples R China;

    Nanjing Hydraul Res Inst State Key Lab Hydrol Water Resources & Hydraul En Nanjing Peoples R China|Nanjing Hydraul Res Inst Hydrol & Water Resources Dept Nanjing Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    ANVOA; Data-driven model; Inflow prediction; uncertainty analysis; Sensitivity analysis;

    机译:方差分析;数据驱动模型;流量预测;不确定性分析;敏感性分析;

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