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Deriving representative reservoir operation rules using a hidden Markov-decision tree model

机译:使用隐藏的Markov决策树模型导出代表库操作规则

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摘要

Reservoirs have been widely used to regulate streamflow to meet both human and natural water requirements. This study applies a hidden Markov-decision tree (HM-DT) model to derive representative reservoir operation modules under various operation conditions (i.e., inflow, storage, as well as unknown factors) and their transitions (the dynamic change of operation rules) that reflect the impacts of seasonality, long-term non-stationarity, and extreme events on reservoir operation. The representative operation modules can be applied to reservoirs in the same region that are not observed; the capability for simulating dynamic operation behaviors improves the predictive accuracy as compared to regular decision trees. Using a number of reservoirs located in the same region for training, the HM-DT model can derive a limited number of representative operation modules in the form of decision trees (DT), and the transitions between different operation schemes in response to changing operation conditions. The application of the HM-DT model is demonstrated through a case study of the Upper Colorado River basin, where eight representative operation modules are determined for 50 reservoirs located in the region, and the modules are validated with 11 reservoirs in the same region. The eight operation modules are classified into three types (i.e. nearly constant release, release as a piece-wise function of inflow, and release almost identical to inflow). The identified operation modules and the transition patterns between operation modules can be used to better understand real-world operation behaviors, improve future operations, and build realistic reservoir operation components in basin-scale hydrological models.
机译:储层已被广泛用于调节流流,以满足人类和天然水需求。本研究适用隐藏的马铃志 - 决策树(HM-DT)模型来在各种操作条件下推导代表性储库操作模块(即流入,存储以及未知因素)及其转换(操作规则的动态变化)反映季节性,长期非公平性和极端事件对水库操作的影响。代表操作模块可以应用于未观察到的相同区域的储液器;与常规决策树相比,模拟动态操作行为的能力提高了预测准确性。使用位于同一区域的多个储存器进行训练,HM-DT模型可以以决策树(DT)的形式导出有限数量的代表性操作模块,以及响应于改变操作条件,不同操作方案之间的转换。通过上层河流域的案例研究证明了HM-DT模型的应用,其中确定了位于该区域的50个储存器的八个代表性操作模块,并且模块在同一区域中验证了11个储存器。八种操作模块分为三种类型(即几乎恒定的释放,作为流入的典型功能释放,并且几乎与流入释放)。所识别的操作模块和操作模块之间的过渡模式可用于更好地了解现实世界的操作行为,改善未来的操作,并在盆地水文模型中建立现实的储层运营组件。

著录项

  • 来源
    《Advances in Water Resources》 |2020年第12期|103753.1-103753.15|共15页
  • 作者

    Zhao Qiankun; Cai Ximing;

  • 作者单位

    Univ Illinois Urbana Champaign UIUC Dept Civil & Environm Engn Champaign IL 61820 USA;

    Univ Illinois Urbana Champaign UIUC Dept Civil & Environm Engn Champaign IL 61820 USA;

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  • 正文语种 eng
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