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NEAREST NEIGHBOR REGRESSION ESTIMATORS IN RAINFALL-RUNOFF FORECASTING

机译:降雨-径流预报中的最近邻回归估计

摘要

The subject of this study is rainfall-runoff forecasting and flood warning. Denote by (X(t),Y(t)) a sequence of equally spaced bivariate random variables representing rainfall and runoff, respectively. A flood is said to occur at time period (n + 1) if Y(n + 1) > T where T is a fixed number. The main task of flood warning is that of deciding whether or not to issue a flood alarm for the time period n + 1 on the basis of the past observations of rainfall and runoff up to and including time n. With each decision, warning or no warning, there is a certain probability of an error (false alarm or no alarm). Using notions from classical decision theory, the optimal solution is the decision that minimizes Bayes risk. In Chapter 1 a more precise definition of flood warning will be given. A critical review (Chapter 2) of classical methods for forecasting used in hydrology reveals that these methods are not adequate for flood warning and similar types of decision problems unless certain Gaussian assumptions are satisfied. The purpose of this study is to investigate the application of a nonparametric technique referred to as the k-nearest neighbor (k-NN) methods to flood warning and least squares forecasting. The motivation of this method stems from recent results in statistics which extends nonparametric methods for inferring regression functions in a time series setting. Assuming that the rainfall-runoff process can be cast in the framework of Markov processes then, with some additional assumptions, the k-NN technique will provide estimates that converge with an optimal rate to the correct decision function. With this in mind, and assuming that our assumptions are valid, then we can claim that this method will, as the historical record grows, provide the best possible estimate in the sense that no other method can do better. A detailed description of the k-NN estmator is provided along with a scheme for calibration. In the final chapters, the forecasts of this new method are compared with the forecasts of several other methods commonly used in hydrology, on both real and simulated data.
机译:本研究的主题是降雨径流预报和洪水预警。用(X(t),Y(t))表示分别等距表示降雨和径流的等距二元随机变量序列。如果Y(n + 1)> T,则在时间段(n + 1)发生洪灾,其中T为固定数。洪水预警的主要任务是根据对n之前(含)的降雨和径流的过去观测结果,决定是否在n + 1期间发出洪水警报。对于每个决定,警告或不警告,都有一定的可能性发生错误(错误警报或无警报)。使用经典决策理论的概念,最佳解决方案是使贝叶斯风险最小化的决策。在第一章中,将给出更准确的洪水预警定义。对水文经典预报方法的严格审查(第2章)显示,除非满足某些高斯假设,否则这些方法不适用于洪水预警和类似类型的决策问题。本研究的目的是研究称为k最近邻(k-NN)方法的非参数技术在洪水预警和最小二乘预报中的应用。该方法的动机来自统计数据的最新结果,该统计结果扩展了用于推断时间序列设置中回归函数的非参数方法。假设可以在马尔可夫过程的框架内进行降雨径流过程,那么在有一些附加假设的情况下,k-NN技术将提供以最佳速率收敛到正确决策函数的估计值。考虑到这一点,并假设我们的假设是正确的,那么我们可以声称,随着历史记录的增长,这种方法将提供最好的估计,这是没有其他方法可以做得更好的。提供了k-NN估计器的详细说明以及校准方案。在最后几章中,将这种新方法的预测结果与水文中常用的其他几种方法的预测结果进行了比较,包括真实数据和模拟数据。

著录项

  • 作者

    Karlsson Magnus Sven;

  • 作者单位
  • 年度 1985
  • 总页数
  • 原文格式 PDF
  • 正文语种 en_US
  • 中图分类

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