...
首页> 外文期刊>Hydrology and Earth System Sciences >A virtual hydrological framework for evaluation of stochastic rainfall models
【24h】

A virtual hydrological framework for evaluation of stochastic rainfall models

机译:用于评估随机降雨模型的虚拟水文框架

获取原文
           

摘要

Stochastic rainfall modelling is a commonly used technique for evaluating the impact of flooding, drought, or climate change in a catchment. While considerable attention has been given to the development of stochastic rainfall models (SRMs), significantly less attention has been paid to developing methods to evaluate their performance. Typical evaluation methods employ a wide range of rainfall statistics. However, they give limited understanding about which rainfall statistical characteristics are most important for reliable streamflow prediction. To address this issue a formal evaluation framework is introduced, with three key features: (i)?streamflow-based, to give a direct evaluation of modelled streamflow performance, (ii)?virtual, to avoid the issue of confounding errors in hydrological models or data, and (iii)?targeted, to isolate the source of errors according to specific sites and seasons. The virtual hydrological evaluation framework uses two types of tests, integrated tests and unit tests, to attribute deficiencies that impact on streamflow to their original source in the SRM according to site and season. The framework is applied to a case study of 22 sites in South Australia with a strong seasonal cycle. In this case study, the framework demonstrated the surprising result that apparently “good” modelled rainfall can produce “poor” streamflow predictions, whilst “poor” modelled rainfall may lead to “good” streamflow predictions. This is due to the representation of highly seasonal catchment processes within the hydrological model that can dampen or amplify rainfall errors when converted to streamflow. The framework identified the importance of rainfall in the “wetting-up” months (months where the rainfall is high but streamflow low) of the annual hydrologic cycle (May and June in this case study) for providing reliable predictions of streamflow over the entire year despite their low monthly flow volume. This insight would not have been found using existing methods and highlights the importance of the virtual hydrological evaluation framework for SRM evaluation.
机译:随机降雨建模是一种常用的技术,用于评估集水区中的洪水,干旱或气候变化的影响。虽然已经对随机降雨模型的发展(SRMS)进行了相当大的关注,但在开发绩效的表现方面得到了显着的关注。典型的评估方法采用各种降雨统计。然而,它们的理解有限了解哪些降雨统计特征对于可靠的流流程预测最重要。为了解决这个问题,介绍了一个正式的评估框架,具有三个关键特征:(i)?基于流式流,以便直接评估模型的流式流性能,(ii)?虚拟,以避免水文模型中的混淆错误问题或数据和(iii)?有针对性的,根据特定地点和季节隔离误差源。虚拟水文评估框架使用两种类型的测试,集成测试和单元测试,以根据现场和季节在SRM中对其原始来源影响的缺陷。该框架适用于南澳大利亚22个站点的案例研究,具有强大的季节性周期。在这种情况下,该框架展示了令人惊讶的结果,即显然“良好”建模的降雨可以产生“差”的流流预测,同时“糟糕”的建模降雨可能导致“良好”的流流预测。这是由于在转换为流流时可以抑制或放大降雨误差的水文模型中的高度季节性集水过程的代表性。该框架确定了降雨在年度水文周期(在本案例研究中的降雨量高但流水流量的几个月)中的降雨量,以便在整个年内提供可靠的Stream流程的可靠预测尽管他们的月流量低。使用现有方法无法找到这种洞察力,并突出了SRM评估虚拟水文评估框架的重要性。

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