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Minimum relative entropy theory for streamflow forecasting with frequency as a random variable

机译:频率作为随机变量的流量预测的最小相对熵理论

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摘要

This paper develops a minimum relative entropy theory with frequency as a random variable, called MREF henceforth, for streamflow forecasting. The MREF theory consists of three main components: (1) determination of spectral density (2) determination of parameters by cepstrum analysis, and (3) extension of autocorrelation function. MREF is robust at determining the main periodicity, and provides higher resolution spectral density. The theory is evaluated using monthly streamflow observed at 20 stations in the Mississippi River basin, where forecasted monthly streamflows show the coefficient of determination (r (2)) of 0.876, which is slightly higher in the Upper Mississippi (r (2) = 0.932) than in the Lower Mississippi (r (2) = 0.806). Comparison of different priors shows that the prior with the background spectral density with a peak at 1/12 frequency provides satisfactory accuracy, and can be used to forecast monthly streamflow with limited information. Four different entropy theories are compared, and it is found that the minimum relative entropy theory has an advantage over maximum entropy (ME) for both spectral estimation and streamflow forecasting, if additional information as a prior is given. Besides, MREF is found to be more convenient to estimate parameters with cepstrum analysis than minimum relative entropy with spectral power as random variable (MRES), and less information is needed to assume the prior. In general, the reliability of monthly streamflow forecasting from the highest to the lowest is for MREF, MRES, configuration entropy (CE), Burg entropy (BE), and then autoregressive method (AR), respectively.
机译:本文提出了一种以频率为随机变量的最小相对熵理论,此后称为MREF,用于流量预测。 MREF理论包括三个主要部分:(1)频谱密度的确定(2)通过倒谱分析确定参数,以及(3)自相关函数的扩展。 MREF在确定主要周期方面具有鲁棒性,并提供更高的分辨率频谱密度。使用在密西西比河流域的20个站点观察到的月流量来评估该理论,预测的月流量显示确定系数(r(2))为0.876,在密西西比河上游(r(2)= 0.932)稍高)比下密西西比州(r(2)= 0.806)高。对不同先验的比较表明,背景频谱密度为1/12频率峰值的先验提供了令人满意的准确性,并且可用于以有限的信息来预测每月流量。对四种不同的熵理论进行了比较,发现如果给出了其他先验信息,则最小相对熵理论在频谱估计和流量预测方面都比最大熵(ME)有优势。此外,发现MREF比以频谱功率为随机变量(MRES)的最小相对熵更容易用倒频谱分析来估计参数,并且需要较少的信息来假设先验。通常,从最高到最低的每月流量预测的可靠性分别针对MREF,MRES,配置熵(CE),Burg熵(BE)和自回归方法(AR)。

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