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Towards Improving Drought Forecasts Across Different Spatial and Temporal Scales.

机译:努力改善跨不同时空尺度的干旱预报。

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摘要

Recent water scarcities across the southwestern U.S. with severe effects on the living environment inspire the development of new methodologies to achieve reliable drought forecasting in seasonal scale. Reliable forecast of hydrologic variables, in general, is a preliminary requirement for appropriate planning of water resources and developing effective allocation policies. This study aims at developing new techniques with specific probabilistic features to improve the reliability of hydrologic forecasts, particularly the drought forecasts. The drought status in the future is determined by certain hydrologic variables that are basically estimated by the hydrologic models with rather simple to complex structures. Since the predictions of hydrologic models are prone to different sources of uncertainties, there have been several techniques examined during past several years which generally attempt to combine the predictions of single (multiple) hydrologic models to generate an ensemble of hydrologic forecasts addressing the inherent uncertainties. However, the imperfect structure of hydrologic models usually lead to systematic bias of hydrologic predictions that further appears in the forecast ensembles. This study proposes a post-processing method that is applied to the raw forecast of hydrologic variables and can develop the entire distribution of forecast around the initial single-value prediction. To establish the probability density function (PDF) of the forecast, a group of multivariate distribution functions, the so-called copula functions, are incorporated in the post-processing procedure. The performance of the new post-processing technique is tested on 2500 hypothetical case studies and the streamflow forecast of Sprague River Basin in southern Oregon. Verified by some deterministic and probabilistic verification measures, the method of Quantile Mapping as a traditional post-processing technique cannot generate the qualified forecasts as comparing with the copula-based method.;The post-processing technique is then expanded to exclusively study the drought forecasts across the different spatial and temporal scales. In the proposed drought forecasting model, the drought status in the future is evaluated based on the drought status of the past seasons while the correlations between the drought variables of consecutive seasons are preserved by copula functions. The main benefit of the new forecast model is its probabilistic features in analyzing future droughts. It develops conditional probability of drought status in the forecast season and generates the PDF and cumulative distribution function (CDF) of future droughts given the past status. The conditional PDF can return the highest probable drought in the future along with an assessment of the uncertainty around that value. Using the conditional CDF for forecast season, the model can generate the maps of drought status across the basin with particular chance of occurrence in the future. In a different analysis of the conditional CDF developed for the forecast season, the chance of a particular drought in the forecast period can be approximated given the drought status of earlier seasons.;The forecast methodology developed in this study shows promising results in hydrologic forecasts and its particular probabilistic features are inspiring for future studies.
机译:美国西南部最近的水资源短缺对生活环境造成了严重影响,促使人们开发出新的方法来实现季节规模的可靠干旱预报。通常,可靠的水文变量预报是适当规划水资源和制定有效分配政策的初步要求。这项研究旨在开发具有特定概率特征的新技术,以提高水文预报(尤其是干旱预报)的可靠性。未来的干旱状况取决于某些水文变量,这些变量基本上是由水文模型估算的,具有相当简单到复杂的结构。由于水文模型的预测容易产生不同的不确定性来源,因此在过去几年中研究了几种技术,这些技术通常试图结合单个(多个)水文模型的预测来生成针对固有不确定性的水文预测集合。但是,水文模型的不完善结构通常会导致水文预报的系统性偏差,这种偏差会进一步出现在预报集合中。这项研究提出了一种后处理方法,该方法适用于水文变量的原始预测,并且可以围绕初始单值预测发展出整个预测分布。为了建立预测的概率密度函数(PDF),在后处理过程中结合了一组多元分布函数,即所谓的copula函数。在俄勒冈州南部斯普拉格河流域的2500个假设案例研究和流量预测中测试了新后处理技术的性能。经过一些确定性和概率性验证措施的验证,与基于copula的方法相比,作为传统的后处理技术的分位数制图方法无法生成合格的预测。;然后将后处理技术扩展到专门研究干旱预测跨越不同的时空尺度。在提出的干旱预测模型中,基于过去季节的干旱状况评估未来的干旱状况,而连续数干旱变量之间的相关性则由copula函数保留。新的预报模型的主要优点是它在分析未来干旱方面的概率特征。在预测季节中,它会得出干旱状况的条件概率,并根据给定的过去状况,生成未来干旱的PDF和累积分布函数(CDF)。有条件的PDF可以返回将来可能发生的最高干旱,以及对该值附近不确定性的评估。使用预测季节的条件CDF,该模型可以生成整个流域的干旱状况图,特别是将来发生的机会。在针对预测季节开发的有条件CDF的另一项分析中,鉴于早期季节的干旱状况,可以近似地预测出预测期内发生特定干旱的机会。其特殊的概率特征正在激发未来的研究。

著录项

  • 作者

    Madadgar, Shahrbanou.;

  • 作者单位

    Portland State University.;

  • 授予单位 Portland State University.;
  • 学科 Engineering Civil.;Water Resource Management.;Hydrology.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 129 p.
  • 总页数 129
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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