基于密度的地理空间聚类:方法、应用和未来方向

Richik Kuila, Prathamesh Sengupta, M. Rout, Rabindra Kumar Barik
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引用次数: 1

摘要

自2019年以来,新型冠状病毒病(COVID-19)的出现引起了全世界人民的严重关切。尽管公共和私营医疗机构为此付出了巨大努力,但可以毫不夸张地说,分配的资源不足以同时应对新冠肺炎和非新冠肺炎患者的洪流。由于整个世界都处于封锁状态,人们的出行变得更加困难。这意味着接受新冠肺炎检查相当困难。因此,在城市周围建立许多医院营地变得非常重要。在本文中,分析了布巴内斯瓦尔市及其周围不同的医疗机构和住宅公寓的位置。利用多种基于无监督学习密度的聚类技术从高密度区域生成聚类,并从中选出最佳模型。在Python中使用Folium传单映射来显示由性能最佳的聚类方法创建的聚类。这将使我们能够收集关键信息,确定急需医疗照顾的地区。因此,资源可以在获得信息的人群中平均分配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Density based geospatial clustering: Methods, Applications and Future Directions
The emergence of the novel corona virus disease (COVID-19) since 2019 has been a cause of significant concern for people throughout the world. While tremendous effort has been put in to it by healthcare facilities, both public and private, it would not be a stretch to state that the resources allotted were not enough to handle the floods of covid and the non-covid patients at the same time. As the entire world was under lockdown, it was considerably tougher for people to move around. This meant getting check-ups for covid was fairly tough. Thus, building up many hospital camps around a city became important. In this article, the locations of different healthcare institutions and residential flats in and around the city of Bhubaneswar were analysed. Clusters were generated out of highly dense regions utilising a number of unsupervised learning density based clustering techniques and the best model was picked among them. Folium leaflet maps in Python were used to show the clusters created from the best performing clustering method. This would allow us to collect crucial information identifying areas in severe need of medical attention. Thus, resources can be divided evenly among the population with the information acquired.
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