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A Seasonal and Heteroscedastic Gamma Model for Hydrological Time Series: A Bayesian Approach

机译:水文时间序列的季节性和异源型伽马模型:贝叶斯方法

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Time series models are often used in hydrology to model streamflow series in order to forecast and generate synthetic series which are inputs for the analysis of complex water resources systems. In this paper, we introduce a new modeling approach for hydrologic time series assuming a gamma distribution for the data, where both the mean and conditional variance are being modeled. Bayesian methods using standard Markov Chain Monte Carlo Methods (MCMC) and a simulation algorithm introduced by [1] are used to simulate samples of the joint posterior distribution of interest. An example is given with a time series of monthly averages of natural streamflows, measured from 1931 to 2010 in Furnas hydroelectric dam, in southeastern Brazil.
机译:时间序列模型通常用于水文到模型流流量系列,以预测和产生合成系列,这些系列是用于分析复杂水资源系统的输入。在本文中,我们为假设数据的伽马分布介绍了一种新的水文时间序列建模方法,其中均模拟均值和条件方差。使用标准Markov链蒙特卡罗方法(MCMC)的贝叶斯方法和[1]引入的仿真算法用于模拟感兴趣的关节后部分布的样本。一个例子给出了一系列自然流动流量的时间序列,从1931年到2010年在巴西东南部的Furnas水电大坝中测量。

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