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A Canadian viewpoint on data, information and uncertainty in the context of prediction in ungauged basins

机译:加拿大关于未充填盆地预测中的数据,信息和不确定性的观点

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The quality (i.e. the degree of uncertainty that results from the interpretation and analysis) of information dictates its value for decision making. There has been much progress towards improving information on the water budgets of ungauged basins by improving knowledge, tools and techniques during the Prediction in Ungauged Basins (PUB) initiative. These improvements, at least in Canada, have come through efforts in both hydrological process and statistical hydrology research. This paper is a review of some recent Canadian PUB efforts to use data to generate information and reduce uncertainty about the hydrological regimes of ungauged basins. The focus is on the Canadian context and the problems it presents, but the lessons learned are applicable to other countries with similar challenges. With a large land mass that is relatively poorly gauged novel approaches have had to be developed to extract the most information from the available data. It can be difficult in Canada to find gauged or research basins sufficiently similar to ungauged sites of interest that contain the data required to force either statistical or deterministic models. Many statistical studies have improved information or at least an understanding of the quality of that information, of ungauged basin streamflow regimes using innovative regression-based approaches and pooled frequency analysis. Hydrological process research has reduced knowledge uncertainty, particularly in regard to cold regions processes, and this situation has led to the development of new algorithms that are reducing predictive uncertainty. There remains much to do. Current progress has created an opportunity to better integrate statistical and deterministic models via data assimilation of regionalization model estimates and those from coupled atmospheric-hydrological models. Aspects of such a modelling system could also provide more robust uncertainty analyses than traditional approaches.
机译:信息的质量(即由解释和分析产生的不确定性程度)决定了其决策的价值。在无塞盆地预报(PUB)计划期间,通过改进知识,工具和技术,在改善无塞盆地水预算信息方面取得了很大进展。这些改进,至少在加拿大,是通过水文过程和统计水文研究的努力而实现的。本文是对加拿大公共事业局最近使用数据来生成信息并减少有关非流域水文状况不确定性的一些努力的回顾。重点是加拿大的情况及其所带来的问题,但所汲取的教训适用于面临类似挑战的其他国家。由于土地面积较大,因此相对较难测量,因此必须开发新方法以从可用数据中提取最多信息。在加拿大,很难找到与未开挖的感兴趣地点足够相似的,有规范的或研究盆地,其中包含强制建立统计模型或确定性模型所需的数据。许多统计研究已经使用基于回归的创新方法和合并频率分析来改善信息,或者至少是对该信息的质量的了解,包括无约束流域水流状况。水文过程研究减少了知识不确定性,特别是在寒冷地区过程方面的知识不确定性,这种情况导致开发了减少预测不确定性的新算法。还有很多事情要做。当前的进展为通过区域化模型估算值和耦合的大气水文模型估算值的数据同化提供了更好地整合统计和确定性模型的机会。与传统方法相比,这种建模系统的各个方面还可以提供更可靠的不确定性分析。

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