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Comparison of classification and clustering methods in spatial rainfall pattern recognition at Northern Iran

机译:伊朗北部空间降雨模式识别中分类和聚类方法的比较

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摘要

Pattern recognition is the science of data structure and its classification. There are many classification and clustering methods prevalent in pattern recognition area. In this research, rainfall data in a region in Northern Iran are classified with natural breaks classification method and with a revised fuzzy c-means (FCM) algorithm as a clustering approach. To compare these two methods, the results of the FCM method are hardened. Comparison proved overall coincidence of natural breaks classification and FCM clustering methods. The differences arise from nature of these two methods. In the FCM, the boundaries between adjacent clusters are not sharp while they are abrupt in natural breaks method. The sensitivity of both methods with respect to rain gauge density was also analyzed. For each rain gauge density, percentage of boundary region and hardening error are at a minimum in the first cluster while the second cluster has the maximum error. Moreover, the number of clusters was sensitive to the number of stations. Since the optimum number of classes is not apparent in the classification methods and the boundary between adjacent classes is abrupt, use of clustering methods such as the FCM method, overcome such deficiencies. The methods were also applied for mapping an aridity index in the studyrnregion where the results revealed good coincidence between the FCM clustering and natural breaks classification methods.
机译:模式识别是数据结构及其分类的科学。模式识别领域普遍存在许多分类和聚类方法。在这项研究中,伊朗北部地区的降雨数据采用自然中断分类方法进行分类,并使用改进的模糊c均值(FCM)算法进行聚类。为了比较这两种方法,FCM方法的结果得到了强化。比较证明了自然中断分类和FCM聚类方法的总体一致性。差异是由这两种方法的性质引起的。在FCM中,相邻簇之间的边界不那么尖锐,而在自然中断方法中它们却是突变的。还分析了两种方法相对于雨量计密度的敏感性。对于每个雨量计密度,在第一簇中边界区域的百分比和硬化误差最小,而第二簇具有最大误差。此外,集群的数量对站点数量敏感。由于在分类方法中最佳类别的数量并不明显,并且相邻类别之间的边界突然变化,因此使用诸如FCM方法之类的聚类方法可以克服此类缺陷。该方法还用于绘制研究区域的干旱指数,结果表明FCM聚类和自然断裂分类方法之间具有很好的一致性。

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