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首页> 外文期刊>Journal of Hydrology >Regionalization of precipitation in data sparse areas using large scale atmospheric variables - A fuzzy clustering approach
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Regionalization of precipitation in data sparse areas using large scale atmospheric variables - A fuzzy clustering approach

机译:大型大气变量在数据稀疏区降水分区-一种模糊聚类方法

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Delineation of homogeneous precipitation regions (regionalization) is necessary for investigating frequency and spatial distribution of meteorological droughts. The conventional methods of regionalization use statistics of precipitation as attributes to establish homogeneous regions. Therefore they cannot be used to form regions in ungauged areas, and they may not be useful to form meaningful regions in areas having sparse rain gauge density. Further, validation of the regions for homogeneity in precipitation is not possible, since the use of the precipitation statistics to form regions and subsequently to test the regional homogeneity is not appropriate. To alleviate this problem, an approach based on fuzzy cluster analysis is presented. It allows delineation of homogeneous precipitation regions in data sparse areas using large scale atmospheric variables (LSAV), which influence precipitation in the study area, as attributes. The LSAV, location parameters (latitude, longitude and altitude) and seasonality of precipitation are suggested as features for regionalization. The approach allows independent validation of the identified regions for homogeneity using statistics computed from the observed precipitation. Further it has the ability to form regions even in ungauged areas, owing to the use of attributes that can be reliably estimated even when no at-site precipitation data are available. The approach was applied to delineate homogeneous annual rainfall regions in India, and its effectiveness is illustrated by comparing the results with those obtained using rainfall statistics, regionalization based on hard cluster analysis, and meteorological sub-divisions in India.
机译:为了调查气象干旱的频率和空间分布,有必要划定均匀的降水区域(区域化)。传统的区域化方法使用降水统计作为属性来建立均匀区域。因此,它们不能用于在未覆盖区域中形成区域,并且它们可能对在雨量计密度稀疏的区域中形成有意义的区域无效。此外,不可能进行降水均匀性区域的验证,因为使用降水统计数据来形成区域并随后测试区域均匀性是不合适的。为了缓解这个问题,提出了一种基于模糊聚类分析的方法。它可以使用影响研究区域降水的大规模大气变量(LSAV)来描述数据稀疏区域中的均匀降水区域。 LSAV,位置参数(纬度,经度和海拔)和降水的季节性被建议作为区域化的特征。该方法允许使用根据观测到的降水量计算出的统计数据独立验证所确定区域的均质性。此外,由于使用了即使在没有现场降水数据的情况下也可以可靠地估计的属性,它甚至可以在未覆盖区域形成区域。该方法用于描绘印度的年均降水量区域,并通过将结果与使用降雨统计数据,基于硬聚类分析的区域化以及印度的气象分区所获得的结果进行比较来说明其有效性。

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