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Defining Philippine Climate Zones Using Surface and High-Resolution Satellite Data

机译:使用地面和高分辨率卫星数据定义菲律宾气候区

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Philippine climate zones traditionally were classified from a rain-gauge network, using the Modified Coronas Classification (MCC). MCC uses average monthly rainfall totals to define four climate zones: Types I-IV. Types I and III have wet and dry seasons, whereas Types II and IV have wet seasons but no dry seasons. The present study redefines Philippine climate zones by applying cluster analysis to the average monthly rainfall amounts from surface-based rain-gauge observations, and dense, high-resolution satellite data from the Tropical Rainfall Monitoring Mission (TRMM). To determine the optimal number of climate type clusters, both single-linkage hierarchical and K-means cluster analysis algorithms were used, together with known characteristics of Philippine rainfall distributions and attributes. Employing single linkage hierarchical and K-means methods in tandem identified six different Philippine climate types, which is two climate types more than the currently accepted MCC climate classification. Due to the far greater number of TRMM observations compared with the rain gauge network, the study provides more clearly defined cluster characteristics including the spatial and temporal variability of climate divisions. This study uses known meteorological factors contributing to the identification of six distinct climate types. This paper is intended to assist agricultural stakeholders with planning and decision-making.
机译:传统上,菲律宾的气候区是使用改良电晕分类法(MCC)从雨量计网络中分类的。 MCC使用平均每月降雨量总量来定义四个气候区:I-IV型。 I型和III型有湿季和干季,而II型和IV型有湿季,但没有干季。本研究通过对基于地表的雨量计观测和来自热带雨量监测团(TRMM)的密集,高分辨率的卫星数据进行聚类分析,对月平均降雨量进行聚类分析,从而重新定义了菲律宾的气候带。为了确定最佳的气候类型聚类数量,使用了单链层次聚类分析和K-均值聚类分析算法,以及菲律宾降雨分布和属性的已知特征。串联采用单链接分层和K-means方法可确定六种不同的菲律宾气候类型,这比当前接受的MCC气候分类多两种气候类型。由于与雨量计网络相比,TRMM观测的数量要多得多,因此该研究提供了更清晰定义的群集特征,包括气候分区的时空变化。这项研究使用有助于识别六种不同气候类型的已知气象因素。本文旨在协助农业利益相关者进行计划和决策。

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