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Comparison of BIAS correction techniques for GPCC rainfall data in semi-arid climate

机译:半干旱气候下GPCC降雨数据的BIAS校正技术比较

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摘要

Long-term historical precipitation data are important in developing metrics for studying the impacts of past hydrologic events (e.g., droughts) on water resources management. Many geographical regions around the world often witness lack of long term historical observation and to overcome this challenge, Global Precipitation Climatology Center (GPCC) datasets are found to be useful. However, the GPCC data are available at coarser scale (0.5A degrees resolution), therefore bias correction techniques are often applied to generate local scale information before it can be applied for decision making activities. The objective of this study is to evaluate and compare five different bias correction techniques (BCT's) to correct the GPCC data with respect to rain gauges in Iraq, which is located in a semi-arid climatic zone. The BCT's included in this study are: Mean Bias-remove (B) technique, Multiplicative Shift (M), Standardized-Reconstruction (S), Linear Regression (R), and Quantile Mapping (Q). It was observed that the Performance Index (PI) of BCT's differs in space (i.e., precipitation pattern) and temporal scale (i.e., seasonal and monthly). In general, the PI for the Q and B were better compared to other three (M, S and R) bias correction techniques. Comparatively, Q performs better than B during wet season. However, both these techniques performed equally well during average rainy season. This study suggests that instead of using a single bias correction technique at different climatic regimes, multiple BCT's needs to be evaluated for identifying appropriate methodology that suits local climatology.
机译:长期的历史降水数据对于制定度量标准以研究过去的水文事件(例如干旱)对水资源管理的影响至关重要。全球许多地理区域经常缺乏长期的历史观测资料,为了克服这一挑战,全球降水气候中心(GPCC)数据集被认为是有用的。但是,GPCC数据可用于较粗的尺度(分辨率为0.5A度),因此在将其应用于决策活动之前,通常会应用偏差校正技术来生成局部尺度信息。这项研究的目的是评估和比较五种不同的偏差校正技术(BCT),以校正位于半干旱气候区的伊拉克雨量计的GPCC数据。本研究中包括的BCT是:均值偏倚消除(B)技术,乘法移位(M),标准化重构(S),线性回归(R)和分位数映射(Q)。观察到BCT的性能指数(PI)在空间(即降水模式)和时间尺度(即季节和月度)上有所不同。通常,与其他三种(M,S和R)偏差校正技术相比,Q和B的PI更好。相比之下,在雨季,Q的表现要好于B。但是,这两种技术在平均雨季都表现良好。这项研究表明,需要对多个BCT进行评估,以识别适合当地气候的适当方法,而不是在不同气候条件下使用单一偏差校正技术。

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