...
首页> 外文期刊>Advances in Water Resources >Rainfall stochastic disaggregation models: Calibration and validation of a multiplicative cascade model
【24h】

Rainfall stochastic disaggregation models: Calibration and validation of a multiplicative cascade model

机译:降雨随机分解模型:乘积级联模型的校准和验证

获取原文
获取原文并翻译 | 示例

摘要

The simulation of long time series of rainfall rates at short time steps remains an important issue for various applications in hydrology. Among the various types of simulation models, random multiplicative cascade models (RMC models) appear as an appealing solution which displays the advantages to be parameter parsimonious and linked to the multifractal theory. This paper deals with the calibration and validation of RMC models. More precisely, it discusses the limits of the scaling exponent function method often used to calibrate RMC models, and presents an hydrological validation of calibrated RMC models. A 8-year time series of 1-min rainfall rates is used for the calibration and the validation of the tested models. The paper is organized in three parts. In the first part, the scaling invariance properties of the studied rainfall series is shown using various methods (q-moments, PDMS, autocovariance structure) and a RMC model is calibrated on the basis of the rainfall data scaling exponent function. A detailed analysis of the obtained results reveals that the shape of the scaling exponent function, and hence the values of the calibrated parameters of the RMC model, are highly sensitive to sampling fluctuation and may also be biased. In the second part, the origin of the sensivity to sampling fluctuation and of the bias is studied in detail and a modified Jackknife estimator is tested to reduce the bias. Finally, two hydrological applications are proposed to validate two candidate RMC models: a canonical model based on a log-Poisson random generator, and a basic micro-canonical model based on a uniform random generator. It is tested in this third part if the models reproduce faithfully the statistical distribution of rainfall characteristics on which they have not been calibrated. The results obtained for two validation tests are relatively satisfactory but also show that the temporal structure of the measured rainfall time series at small time steps is not well reproduced by the two selected simple random cascade models.
机译:对于短时间步长的降雨率的长时间序列模拟,仍然是水文学中各种应用的重要课题。在各种类型的仿真模型中,随机乘法级联模型(RMC模型)似乎是一个吸引人的解决方案,它显示出参数简约且与多重分形理论相关的优势。本文涉及RMC模型的校准和验证。更准确地讲,它讨论了经常用于校准RMC模型的比例指数函数方法的局限性,并提出了已校准RMC模型的水文验证。 1分钟降雨率的8年时间序列用于校准和验证测试模型。本文分为三个部分。在第一部分中,使用各种方法(q矩,PDMS,自协方差结构)显示了所研究降雨序列的尺度不变性,并基于降雨数据尺度指数函数对RMC模型进行了校准。对获得的结果的详细分析表明,缩放指数函数的形状以及RMC模型的校准参数值对采样波动高度敏感,并且也可能存在偏差。在第二部分中,详细研究了对采样波动的敏感性和偏差的成因,并测试了一种改进的Jackknife估计器以减少偏差。最后,提出了两个水文应用程序来验证两个候选RMC模型:基于对数泊松随机生成器的规范模型和基于统一随机生成器的基本微规范模型。在第三部分中进行了测试,如果这些模型能够忠实地再现未经校准的降雨特征的统计分布。通过两个验证测试获得的结果相对令人满意,但也表明,两个选定的简单随机级联模型不能很好地再现在小时间步长处测得的降雨时间序列的时间结构。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号