Amril Mutoi Siregar
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引用次数: 6

摘要

印度尼西亚是一个位于赤道的国家,拥有美丽的自然风光。它有多山的星座、海滩和比陆地更广阔的海洋,因此与其他国家相比,印尼拥有非凡的自然美景资产。在自然美景的背后,印尼几乎所有省份都有许多潜在的自然灾害,如山体滑坡、地震、海啸、梅勒图斯火山等。问题是,政府必须有准确的数据来应对全省的灾害,灾害数据可以按地区分类或分组,分为非常脆弱、中等和低灾害地区。人们常常发现,当灾难发生时,许多人发现分发的长期援助物资因为易发灾区的库存而无法很好地获得。在这项研究中,将提出使用k-means算法对印度尼西亚全省的易发灾害地区进行分组。预期的结果可以将所有容易发生灾害的地区分组。因此,结果可以是西爪哇省,中爪哇省非常脆弱的类别,亚齐省,北苏门答腊,西苏门答腊,东爪哇省和北苏拉威西省在中等类别,省明古鲁,楠榜,廖内岛,巴别塔,DIY,巴厘岛,西加里曼丹,北加里曼丹,中苏拉威西,西苏拉威西,马鲁古,北马鲁古,巴布亚,西巴布亚包括稀有类别。根据本研究的结果,政府可以快速绘制灾害易发地区的地图,并准备应急援助。为了减少死亡人数,重要的是要改善对灾民的服务。有了准确的数据可以为自然灾害的受害者提供及时和适当的援助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PENERAPAN ALGORITMA K-MEANS UNTUK PENGELOMPOKAN DAERAH RAWAN BENCANA DI INDONESIA
Indonesia is a country located in the equator, which has beautiful natural. It has a mountainous constellation, beaches and wider oceans than land, so that Indonesia has extraordinary natural beauty assets compared to other countries. Behind the beauty of natural it turns out that it has many potential natural disasters in almost all provinces in Indonesia, in the form of landslides, earthquakes, tsunamis, Mount Meletus and others. The problem is that the government must have accurate data to deal with disasters throughout the province, where disaster data can be in categories or groups of regions into very vulnerable, medium, and low disaster areas. It is often found when a disaster occurs, many found that the distribution of long-term assistance because the stock for disaster-prone areas is not well available. In the study, it will be proposed to group disaster-prone areas throughout the province in Indonesia using the k-means algorithm. The expected results can group all regions that are very prone to disasters. Thus, the results can be Province West java, central java very vulnerable categories, provinces Aceh, North Sumatera, West Sumatera, east Java and North Sulawesi in the medium category, provinces Bengkulu, Lampung, Riau Island, Babel, DIY, Bali, West Kalimantan, North Kalimantan, Central Sulawesi, West Sulawesi, Maluku, North Maluku, Papua, west Papua including of rare categories. With the results obtained in this study, the government can map disaster-prone areas as well as prepare emergency response assistance quickly. In order to reduce the death toll and it is important to improve the services of disaster victims. With accurate data can provide prompt and appropriate assistance for victims of natural disasters.
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