Department of Economics, Federal University of Espírito Santo, Vitória, ES, Brazil.
Deparment of Electrical Engineering, Pontifical Catholic University of Rio de Janeiro, Rio de Janeiro, RJ, Brazil.
Environ Monit Assess. 2024 Apr 29;196(5):486. doi: 10.1007/s10661-024-12645-8.
This study evaluates the joint impact of non-linearity and non-Gaussianity on predictive performance in 23 Brazilian monthly streamflow time series from 1931 to 2022. We consider point and interval forecasting, employing a PAR(p) model and comparing it with the periodic vine copula model. Results indicate that the Gaussian hypothesis assumed by PAR(p) is unsuitable; gamma and log-normal distributions prove more appropriate and crucial for constructing accurate confidence intervals. This is primarily due to the assumption of the Gaussian distribution, which can lead to the generation of confidence intervals with negative values. Analyzing the estimated copula models, we observed a prevalence of the bivariate Normal copula, indicating that linear dynamic dependence is frequent, and the Rotated Gumbel 180°, which exhibits lower tail dependence. Overall, the temporal dynamics are predominantly shaped by combining these two types of effects. In point forecasting, both models show similar behavior in the estimation set, with slight advantages for the copula model. The copula model performs better during the out-of-sample analysis, particularly for certain power plants. In interval forecasting, the copula model exhibits pronounced superiority, offering a better estimation of quantiles. Consistently demonstrating proficiency in constructing reliable and accurate intervals, the copula model reveals a notable advantage over the PAR(p) model in interval forecasting.
本研究评估了非线性和非正态性对 23 个来自 1931 年至 2022 年的巴西月流量时间序列的预测性能的联合影响。我们考虑了点预测和区间预测,使用了 PAR(p)模型,并将其与周期 vine Copula 模型进行了比较。结果表明,PAR(p)模型所假设的正态性假设不适用;伽马和对数正态分布对于构建准确的置信区间更为合适和关键。这主要是由于正态分布的假设,这可能导致置信区间产生负值。分析估计的 Copula 模型时,我们观察到二元正态 Copula 的普遍性,表明线性动态依赖性很常见,而旋转的 Gumbel 180°则表现出较低的尾部依赖性。总体而言,时间动态主要由这两种类型的效应组合形成。在点预测中,两个模型在估计集中的表现相似,Copula 模型略有优势。Copula 模型在样本外分析中表现更好,特别是对于某些发电站。在区间预测中,Copula 模型表现出明显的优势,能够更好地估计分位数。Copula 模型在构建可靠和准确的区间方面表现出色,在区间预测方面明显优于 PAR(p)模型。