Pattern Recognition and Cluster Analysis of Wind and its Structure-Embedded Association with Other Meteorological Characteristics

博士 === 國立成功大學 === 海洋科技與事務研究所 === 104 === As interest in sailing has increased in Taiwan, it has become essential to understand wind patterns in order to better organize sailing events. Penghu began to organize sail regatta in 1999 and extended the scale of their regatta from the national level to th...

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Main Authors: Hsing-TiWu, 吳行悌
Other Authors: Laurence Z.H. Chuang
Format: Others
Language:en_US
Published: 2016
Online Access:http://ndltd.ncl.edu.tw/handle/14888136683750441670
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spelling ndltd-TW-104NCKU52740022017-10-01T04:29:46Z http://ndltd.ncl.edu.tw/handle/14888136683750441670 Pattern Recognition and Cluster Analysis of Wind and its Structure-Embedded Association with Other Meteorological Characteristics 風況之辨識與集群分析及其嵌入結構與其它氣象特徵之關聯性研究 Hsing-TiWu 吳行悌 博士 國立成功大學 海洋科技與事務研究所 104 As interest in sailing has increased in Taiwan, it has become essential to understand wind patterns in order to better organize sailing events. Penghu began to organize sail regatta in 1999 and extended the scale of their regatta from the national level to the international level. Knowledge of both wind speed and wind direction is equally critical to successful regatta management. In this dissertation, wind speed and wind direction observed in 2011 from the Penghu data buoy are used as an example. A simple computational method was developed to summarize 24 hours of observation into a minimum ellipse with only five parameters. This summarized daily ellipse reduces the dimensions of the problem efficiently but still retains hourly information. We demonstrate herein that this minimum ellipse computational method can be applied in at least three ways: (1) tracking the wind pattern trajectory of a typhoon, (2) providing a simple method to distinguish land-and-sea breeze days, and (3) visually exhibiting the global wind pattern for the planning of sailing events. Based on the results of the minimum ellipse, daily wind patterns can be summarized, and cluster analysis on a daily basis can be performed. An important clustering technique, called a data cloud geometry-tree (DCG-tree) is introduced in this dissertation. The DCG-tree clustering method provides better quantification of the multi-scale geometric structures of the data under consideration than the standard Hierarchical Clustering method. This property was verified from real data by clustering daily wind patterns in Penghu. The data mechanics method is another important concept which provides a tree structure-embedded linkage between the daily wind clusters and other meteorological covariates which were also observed from the data buoy in Penghu. The DCG-tree was used again to build the hierarchical structure of the relationships within the covariates which retain the information from daily wind pattern clusters. With the tree structure of these covariates, data mechanics was used to define the pairwise daily similarity from the point of view of the covariates. We then coupled the daily wind cluster with the daily covariate clusters. The coupling results indicated significant associations between these two types of meteorological characteristics. Taking into consideration predictions from the covariates to the wind patterns, the relationship built by the DCG-tree and data mechanics exhibited the same performance as that of the recently popular decision tree method. However, it provided more insight into the system dynamics and avoided the usual overfitting criticism lodged toward decision trees. Laurence Z.H. Chuang 莊士賢 2016 學位論文 ; thesis 80 en_US
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description 博士 === 國立成功大學 === 海洋科技與事務研究所 === 104 === As interest in sailing has increased in Taiwan, it has become essential to understand wind patterns in order to better organize sailing events. Penghu began to organize sail regatta in 1999 and extended the scale of their regatta from the national level to the international level. Knowledge of both wind speed and wind direction is equally critical to successful regatta management. In this dissertation, wind speed and wind direction observed in 2011 from the Penghu data buoy are used as an example. A simple computational method was developed to summarize 24 hours of observation into a minimum ellipse with only five parameters. This summarized daily ellipse reduces the dimensions of the problem efficiently but still retains hourly information. We demonstrate herein that this minimum ellipse computational method can be applied in at least three ways: (1) tracking the wind pattern trajectory of a typhoon, (2) providing a simple method to distinguish land-and-sea breeze days, and (3) visually exhibiting the global wind pattern for the planning of sailing events. Based on the results of the minimum ellipse, daily wind patterns can be summarized, and cluster analysis on a daily basis can be performed. An important clustering technique, called a data cloud geometry-tree (DCG-tree) is introduced in this dissertation. The DCG-tree clustering method provides better quantification of the multi-scale geometric structures of the data under consideration than the standard Hierarchical Clustering method. This property was verified from real data by clustering daily wind patterns in Penghu. The data mechanics method is another important concept which provides a tree structure-embedded linkage between the daily wind clusters and other meteorological covariates which were also observed from the data buoy in Penghu. The DCG-tree was used again to build the hierarchical structure of the relationships within the covariates which retain the information from daily wind pattern clusters. With the tree structure of these covariates, data mechanics was used to define the pairwise daily similarity from the point of view of the covariates. We then coupled the daily wind cluster with the daily covariate clusters. The coupling results indicated significant associations between these two types of meteorological characteristics. Taking into consideration predictions from the covariates to the wind patterns, the relationship built by the DCG-tree and data mechanics exhibited the same performance as that of the recently popular decision tree method. However, it provided more insight into the system dynamics and avoided the usual overfitting criticism lodged toward decision trees.
author2 Laurence Z.H. Chuang
author_facet Laurence Z.H. Chuang
Hsing-TiWu
吳行悌
author Hsing-TiWu
吳行悌
spellingShingle Hsing-TiWu
吳行悌
Pattern Recognition and Cluster Analysis of Wind and its Structure-Embedded Association with Other Meteorological Characteristics
author_sort Hsing-TiWu
title Pattern Recognition and Cluster Analysis of Wind and its Structure-Embedded Association with Other Meteorological Characteristics
title_short Pattern Recognition and Cluster Analysis of Wind and its Structure-Embedded Association with Other Meteorological Characteristics
title_full Pattern Recognition and Cluster Analysis of Wind and its Structure-Embedded Association with Other Meteorological Characteristics
title_fullStr Pattern Recognition and Cluster Analysis of Wind and its Structure-Embedded Association with Other Meteorological Characteristics
title_full_unstemmed Pattern Recognition and Cluster Analysis of Wind and its Structure-Embedded Association with Other Meteorological Characteristics
title_sort pattern recognition and cluster analysis of wind and its structure-embedded association with other meteorological characteristics
publishDate 2016
url http://ndltd.ncl.edu.tw/handle/14888136683750441670
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