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首页> 外文期刊>International journal of applied mechanics >Spatially Explicit Mapping of Historical Population Density with Random Forest Regression: A Case Study of Gansu Province, China, in 1820 and 2000
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Spatially Explicit Mapping of Historical Population Density with Random Forest Regression: A Case Study of Gansu Province, China, in 1820 and 2000

机译:随机森林回归历史人口密度的空间上明确映射 - 以1820年至2000年甘肃省案例研究

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摘要

This study established a random forest regression model (RFRM) using terrain factors, climatic and river factors, distances to the capitals of provinces, prefectures (Fu, in Chinese Pinyin), and counties as independent variables to predict the population density. Then, using the RFRM, we explicitly reconstructed the spatial distribution of the population density of Gansu Province, China, in 1820 and 2000, at a resolution of 10 by 10 km. By comparing the explicit reconstruction with census data at the township level from 2000, we found that the RFRM-based approach mostly reproduced the spatial variability in the population density, with a determination coefficient (R-2) of 0.82, a positive reduction of error (RE, 0.72) and a coefficient of efficiency (CE) of 0.65. The RFRM-based reconstructions show that the population of Gansu Province in 1820 was mostly distributed in the Lanzhou, Gongchang, Pingliang, Qinzhou, Qingyang, and Ningxia prefecture. The macro-spatial pattern of the population density in 2000 kept approximately similar with that in 1820. However, fine differences could be found. The 79.92% of the population growth of Gansu Province from 1820 to 2000 occurred in areas lower than 2500 m. As a result, the population weighting in the areas above 2500 m was similar to 9% in 1820 while it was greater than 14% in 2000. Moreover, in comparison to 1820, the population density intensified in Lanzhou, Xining, Yinchuan, Baiyin, Linxia, and Tianshui, while it weakened in Gongchang, Qingyang, Ganzhou, and Suzhou.
机译:本研究建立了一种随机森林回归模型(RFRM)使用地形因素,气候和河流因素,距离省份,县(傅,中国拼音)的距离,以及县作为独立变量,以预测人口密度。然后,使用RFRM,我们明确地重建了中国1820年和2000年甘肃省人口密度的空间分布,分辨率为10公里。通过从2000年的乡镇级别与人口普查数据进行比较,我们发现基于RFRM的方法大多数在人口密度中复制了空间可变性,具有0.82的确定系数(R-2),误差的正减少(RE,0.72)和效率系数(CE)为0.65。基于RFRM的重建表明,甘肃省1820年的人口大多分布在兰州,巩昌,平凉,钦州,清阳和宁夏县。 2000年人口密度的宏观空间模式与1820年保持大致相似。但是,可以找到细差异。从1820年到2000年的甘肃省人口增长的79.92%发生在低于2500米的地区。结果,在2500米以上的地区的群体加权于1820年的9%,而2000年大于14%。此外,与1820年相比,兰州,西宁,银川,白银加剧了人口密度,临夏,天水,而在巩昌,清阳,赣州和苏州削弱。

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