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首页> 外文期刊>Journal of Water Resources Planning and Management >Simulating Hydropower Discharge using Multiple Decision Tree Methods and a Dynamical Model Merging Technique
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Simulating Hydropower Discharge using Multiple Decision Tree Methods and a Dynamical Model Merging Technique

机译:使用多决策树方法和动力学模型合并技术模拟水电流量

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摘要

Hydropower release decision making relies on multisource information, such as climate conditions, downstream water quality, inflow and storage, regulation and engineering constraints, and so on. The decision tree (DT) method is one of the commonly used techniques to simulate reservoir operation and release strategies because of its simplicity and effectiveness. However, the performances and simulation accuracy vary among different DT models due to many structures and splitting rules associated with each DT model. In this study, we propose a dynamic merge technique (DMerge), which adopts a concept from particle swarm optimization, to postprocess outputs from different DT models with the purpose of increasing the simulation accuracy and producing a model ensemble with dynamically changing weights throughout the validation phase. A case study of Shasta Lake in northern California is presented, where the daily hydropower releases are predicted and compared using the DMerge, AdaBoost DT, random forest, and extremely randomized trees methods. Results show that the DMerge method has the best statistics compared to other popular DT algorithms. Furthermore, scenario tests were carried out to analyze the sensitivity to model inputs (i.e., hydrological condition, reservoir storage and regulation, climate phenomenon indices, and water quality) with respect to explaining the variability of hydropower releases. According to the results, we found that the hydropower releases are a complex decision-making process and water quality and climate conditions could play an even more significant role than both hydrological forcing and system states in our case study. The proposed DMerge method is a robust and efficient technique in solving water-energy prediction and simulation problems, and it is suitable for joint use with other data-driven approaches.
机译:水电发布决策依赖于多源信息,例如气候条件,下游水质,流入和存储,法规和工程约束等。决策树(DT)方法具有简单性和有效性,是模拟油藏运行和释放策略的常用技术之一。但是,由于与每个DT模型相关的许多结构和划分规则,不同DT模型之间的性能和仿真精度会有所不同。在这项研究中,我们提出了一种动态合并技术(DMerge),该技术采用了粒子群优化的概念,对来自不同DT模型的输出进行后处理,目的是提高仿真精度并在整个验证过程中产生具有动态变化权重的模型集合。相。本文以加利福尼亚北部的沙斯塔湖为例,其中使用DMerge,AdaBoost DT,随机森林和极端随机树木方法对每日水力发电量进行了预测和比较。结果表明,与其他流行的DT算法相比,DMerge方法具有最佳的统计量。此外,还进行了情景测试,以分析模型输入(即水文条件,水库存储和调节,气候现象指数和水质)的敏感性,以解释水电释放的可变性。根据结果​​,我们发现水电释放是一个复杂的决策过程,在我们的案例研究中,水质和气候条件可能比水文强迫和系统状态起更大的作用。所提出的DMerge方法是解决水能预测和模拟问题的可靠而有效的技术,它适合与其他数据驱动方法联合使用。

著录项

  • 来源
    《Journal of Water Resources Planning and Management》 |2020年第2期|04019072.1-04019072.17|共17页
  • 作者单位

    Minist Water Resources Key Lab Soil & Water Loss Proc & Control Loess Pl Yellow River Inst Hydraul Res 12 Chengbei Rd Zhengzhou 450003 Henan Peoples R China|Univ Oklahoma 202 W Boyd St Room 427 Norman OK 73019 USA;

    Chinese Acad Sci Key Lab Water Cycle & Related Land Surface Proc Inst Geog Sci & Nat Resources Res 1 Datun Rd Beijing 100101 Peoples R China;

    Minist Water Resources Key Lab Soil & Water Loss Proc & Control Loess Pl Yellow River Inst Hydraul Res 12 Chengbei Rd Zhengzhou 450003 Henan Peoples R China;

    Calif State Univ Los Angeles Dept Geosci & Environm 5151 State Univ Dr Los Angeles CA 90032 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Hydropower; Environmental impacts; Reservoir operation; Decision tree; Climate change; Artificial intelligence;

    机译:水电;环境影响;水库作业;决策树;气候变化;人工智能;

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