...
首页> 外文期刊>Boundary-Layer Meteorology >Analysis of Wind Roses Using Hierarchical Cluster and Multidimensional Scaling Analysis at La Plata, Argentina
【24h】

Analysis of Wind Roses Using Hierarchical Cluster and Multidimensional Scaling Analysis at La Plata, Argentina

机译:使用分层聚类和多维尺度分析的阿根廷拉普拉塔风玫瑰分析

获取原文
获取原文并翻译 | 示例
           

摘要

Knowledge of frequency wind patterns is very important for air pollution modelling, especially in a city like La Plata (approximately 850,000 inhabitants) with high vehicular and industrial activities and no air monitoring network. An hourly wind analysis was carried out on data from two local weather stations (points A and J). An initial result was that, in spite of differences in data quality, the local weather stations observations were consistent with local and regional National Meteorological Service (NMS) monthly based observations. Two non conventional multivariate statistical methods were employed to further analyse hourly data at points A and J. Hierarchical cluster resulted in a good summarising tool to visualise prevailing hourly winds. Resultant vectors emerging from the clustering process showed good similarity between sites and seasons; this allowed a further visualization of the average diurnal wind development. Multidimensional scaling (MDS) permitted a pairwise comparison of a large number of hourly wind roses. These wind roses were more similar to each other in colder seasons and at site A (the one that is closer to the river) than in warmer seasons and at site J. Most of the observed variations regarding seasons and sites revealed by cluster and MDS analysis are explained in terms of the sea-land breeze circulations. The methodology applied proved to be of utility for simplifying the analysis of high dimensional data with numerous observations.
机译:频率风模式的知识对于空气污染建模非常重要,尤其是在像La Plata这样的城市(大约有850,000居民)的城市,其中有大量的车辆和工业活动,没有空气监测网络。对来自两个本地气象站(A点和J点)的数据进行了每小时的风分析。初步结果是,尽管数据质量存在差异,但本地气象站的观测结果与本地和区域国家气象局(NMS)每月的观测值一致。两种非常规的多元统计方法被用来进一步分析A点和J点的每小时数据。层次聚类产生了一个很好的汇总工具,可以直观地看到盛行的每小时风。聚类过程中产生的结果载体在位点和季节之间显示出良好的相似性。这可以进一步可视化平均日风的发展。多维缩放(MDS)允许成对比较大量每小时的风玫瑰。这些风玫瑰在较冷的季节和站点A(更靠近河流的站点)比在较暖的季节和站点J彼此更相似。通过聚类和MDS分析揭示的有关季节和站点的大多数观测变化用海陆风循环来解释。事实证明,所应用的方法对于简化具有大量观察结果的高维数据的分析是有用的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号