Stochastic Temporal Data Upscaling Using the Generalized k-Nearest Neighbor Algorithm

J. Mashford
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Abstract

Three methods of temporal data upscaling, which may collectively be called the generalized k-nearest neighbor (GkNN) method, are considered. The accuracy of the GkNN simulation of month by month yield is considered (where the term yield denotes the dependent variable). The notion of an eventually well-distributed time series is introduced and on the basis of this assumption some properties of the average annual yield and its variance for a GkNN simulation are computed. The total yield over a planning period is determined and a general framework for considering the GkNN algorithm based on the notion of stochastically dependent time series is described and it is shown that for a sufficiently large training set the GkNN simulation has the same statistical properties as the training data. An example of the application of the methodology is given in the problem of simulating yield of a rainwater tank given monthly climatic data.
基于广义k-最近邻算法的随机时间数据升级
本文考虑了三种时间数据上尺度的方法,统称为广义k近邻(GkNN)方法。考虑了逐月产量的GkNN模拟的准确性(其中术语产量表示因变量)。引入了最终均匀分布时间序列的概念,并在此假设的基础上计算了GkNN模拟的年平均产量及其方差的一些性质。确定了规划期间的总产量,描述了考虑基于随机依赖时间序列概念的GkNN算法的一般框架,并表明对于足够大的训练集,GkNN模拟具有与训练数据相同的统计特性。给出了在给定月气候数据的情况下模拟雨水池产量问题的一个应用实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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