国家互联系统中程流量预测的小波变换

Carlos Eduardo Sousa Lima, Marx Vinicius Maciel da Silva, Cleiton Da Silva Silveira, Francisco das Chagas Vasconcelos Júnior
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引用次数: 1

摘要

本研究旨在分析巴西西河流域年平均流量时间序列的变率,并利用小波变换建立未来3 ~ 10年的径流情景预测模型。采用1931 - 2005年和2006 - 2017年两个时间段的流量时间序列分别进行校准和验证。对年序列进行标准化处理,并通过小波变换将其分解为两个波段,再加上每个Base Posts (BP)的残差,以便后续重建。然后建立了每个波段和残差的自回归模型。投影是通过加入自回归模型得到的。在绩效评价方面,对预测年份的累积概率分布和可能性进行了定性分析。该模型识别了预测年份的概率分布函数,在大多数SIN区域得到了大于1的似然,表明该方法可以捕获中期变率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WAVELET TRANSFORM FOR MEDIUM-RANGE STREAMFLOWS PROJECTIONS IN NATIONAL INTERCONNECTED SYSTEM
This work aims to analyze the variability of average annual streamflow time series of the SIN (Brazil) and create a projection model of future streamflow scenarios from 3 to 10 years using wavelet transform. The streamflow time series were used divided into two periods: 1931 to 2005 and 2006 to 2017, for calibration and verification, respectively. The annual series was standardized, and by the wavelet transform, it was decomposed into two bands plus the residue for each Base Posts (BP) for later reconstruction. Then an autoregressive model per band and residue was made. The projection was obtained by adding the autoregressive models. For performance evaluation, a qualitative analysis of the cumulative probability distribution of the projected years and the likelihood were made. The model identified the probability distribution function of the projected years and obtained likelihood greater than 1 in most of the SIN regions, indicating that this methodology can capture the medium-range variability.
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