Improving the Representation of Historical Climate Precipitation Indices Using Optimal Interpolation Methods

IF 1.6 4区 地球科学 Q4 METEOROLOGY & ATMOSPHERIC SCIENCES
Alexis Pérez Bello, A. Mailhot
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引用次数: 0

Abstract

ABSTRACT Defining a reference climate for precipitation is an important requirement in the development of climate change scenarios to support climate adaptation strategies. It is also important for many hydrological and water resource applications. This, however, remains a challenge in regions that are poorly covered by meteorological stations, such as northern Canada or mountainous regions. Reanalyses may represent an interesting option to define a reference climate in such regions. However, these need to be validated and corrected for bias before they can be used. In this paper, two data assimilation methods, Optimal Interpolation (OI) and Ensemble Optimal interpolation (EnOI), were used to combine four reanalysis datasets with observations in order to improve the representation of various precipitation indices across Canada. A total of 986 meteorological stations with minimally 20-year precipitation records over the 30-year reference period (1980–2009) were used. Annual values of ten Climate Precipitations Indices (CPIs) were estimated for each available dataset and were then combined (reanalysis plus observations) using OI and EnOI. A cross-validation strategy was finally applied to assess the relative performance of these datasets. Results suggest that combining reanalysis and observations through OI or EnOI improves CPI estimates at sites where no recorded precipitation is available. The EnOI dataset outperformed OI applied to each reanalysis independently. An evaluation of the gridded interpolated observational dataset from Natural Resources Canada showed it should be used with considerable caution for extreme CPIs because it can underestimate annual maximum 1-day precipitation, as well as overestimate the annual number of wet days.
利用最优插值方法改进历史气候降水指数的表征
定义降水参考气候是制定气候变化情景以支持气候适应战略的重要要求。它对许多水文和水资源应用也很重要。然而,在气象站覆盖不足的地区,如加拿大北部或山区,这仍然是一个挑战。重新分析可能是在这些地区定义参考气候的一个有趣的选择。然而,在使用这些方法之前,需要对其进行验证和纠正偏差。本文采用最优插值(Optimal Interpolation, OI)和集合最优插值(Ensemble Optimal Interpolation, EnOI)两种数据同化方法,将4个再分析数据集与观测数据相结合,以提高加拿大各降水指数的代表性。利用30年参考期(1980-2009年)有最低20年降水记录的986个气象站。对每个可用数据集估计了10个气候降水指数(cpi)的年值,然后使用OI和EnOI进行组合(再分析加观测)。最后应用交叉验证策略来评估这些数据集的相对性能。结果表明,通过OI或EnOI结合再分析和观测可以改善无降水记录站点的CPI估算。EnOI数据集优于独立应用于每次再分析的OI。对来自加拿大自然资源部的网格插值观测数据集的评估表明,对于极端cpi,应该相当谨慎地使用它,因为它可能低估了年最大1天降水量,也可能高估了年湿润日数。
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来源期刊
Atmosphere-Ocean
Atmosphere-Ocean 地学-海洋学
CiteScore
2.50
自引率
16.70%
发文量
33
审稿时长
>12 weeks
期刊介绍: Atmosphere-Ocean is the principal scientific journal of the Canadian Meteorological and Oceanographic Society (CMOS). It contains results of original research, survey articles, notes and comments on published papers in all fields of the atmospheric, oceanographic and hydrological sciences. Arctic, coastal and mid- to high-latitude regions are areas of particular interest. Applied or fundamental research contributions in English or French on the following topics are welcomed: climate and climatology; observation technology, remote sensing; forecasting, modelling, numerical methods; physics, dynamics, chemistry, biogeochemistry; boundary layers, pollution, aerosols; circulation, cloud physics, hydrology, air-sea interactions; waves, ice, energy exchange and related environmental topics.
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