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Evaluation of Daily Gridded Meteorological Datasets over the Niger Delta Region of Nigeria and Implication to Water Resources Management

机译:尼日利亚尼日尔三角洲地区每日网格气象数据集的评估及其对水资源管理的启示

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Hydro-climatological study is difficult in most of the developing countries due to the paucity of monitoring stations. Gridded climatological data provides an opportunity to extrapolate climate to areas without monitoring stations based on their ability to replicate the Spatio-temporal distribution and variability of observed datasets. Simple correlation and error analyses are not enough to predict the variability and distribution of precipitation and temperature. In this study, the coefficient of correlation (R2), Root mean square error (RMSE), mean bias error (MBE) and mean wet and dry spell lengths were used to evaluate the performance of three widely used daily gridded precipitation, maximum and minimum temperature datasets from the Climatic Research Unit (CRU), Princeton University Global Meteorological Forcing (PGF) and Climate Forecast System Reanalysis (CFSR) datasets available over the Niger Delta part of Nigeria. The Standardised Precipitation Index was used to assess the confidence of using gridded precipitation products on water resource management. Results of correlation, error, and spell length analysis revealed that the CRU and PGF datasets performed much better than the CFSR datasets. SPI values also indicate a good association between station and CRU precipitation products. The CFSR datasets in comparison with the other data products in many years overestimated and underestimated the SPI. This indicates weak accuracy in predictability, hence not reliable for water resource management in the study area. However, CRU data products were found to perform much better in most of the statistical assessments conducted. This makes the methods used in this study to be useful for the assessment of various gridded datasets in various hydrological and climatic applications.
机译:由于监测站的缺乏,在大多数发展中国家,水文气候学研究很困难。网格化的气候数据提供了将气候推断到没有监测站的地区的机会,这是基于其复制观测数据集的时空分布和变异性的能力。简单的相关性和误差分析不足以预测降水和温度的变化和分布。在这项研究中,使用相关系数(R2),均方根误差(RMSE),平均偏差误差(MBE)和平均湿法和干法术长度来评估三种广泛使用的每日网格降水的性能,最大值和最小值来自尼日利亚尼日尔三角洲地区的气候研究部门(CRU),普林斯顿大学全球气象强迫(PGF)和气候预报系统再分析(CFSR)数据集的温度数据集。标准化降水指数用于评估使用网格化降水产品对水资源管理的信心。相关性,错误和拼写长度分析的结果表明,CRU和PGF数据集的性能比CFSR数据集好得多。 SPI值还表明台站和CRU降水产物之间的良好关联。与其他数据产品相比,CFSR数据集多年来一直高估和低估了SPI。这表明可预测性的准确性较弱,因此对于研究区域的水资源管理而言并不可靠。但是,发现在进行的大多数统计评估中,CRU数据产品的性能要好得多。这使得本研究中使用的方法可用于评估各种水文和气候应用中的各种网格数据集。

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