用于监测加纳人口动态的拟议随机增长模型

IF 2.7 Q2 MULTIDISCIPLINARY SCIENCES
Richel O. Attafuah, Eric Ocran, Enoch Sakyi-Yeboah, Edward Acheampong, Louis Asiedu
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引用次数: 0

摘要

人口规模模型为社会、经济、环境和公共卫生动态提供了重要的洞察力,有助于知情决策和可持续发展工作。在没有合适的人口模型的情况下,有必要进行全面查点(人口普查)以跟踪人口动态。尽管人口普查成本高、耗时长、资源密集,但可能会因统计不足而产生错误的结果。典型的人类人口容易受到出生、死亡、移民和迁出移民的影响。一些学者曾试图根据这些特征建立人口增长模型,但他们中的大多数人都在模型中考虑了部分特征,而不是全部特征。本研究提出了一个随机增长模型来监测人口动态,其中考虑了出生率、死亡率、移民率和迁出率。通过开发的模型,获得了预期的人口规模及其随时间的变化。研究还得出了人口数量的极限分布,并指定了其参数。还推导出了零后代的长期概率(最终灭绝的概率)。研究结果表明,加纳人口零后代的长期概率约为 0.21,每 1000 个加纳人口的净迁移率和内在增长率分别为-0.544 和 22.458,标准误差分别为 0.206 和 0.530。这表明,尽管加纳的平均出生率高于平均死亡率,但平均移民率(个人通过陆地边境、海上或航空港离开人口的比率)相对高于移民率(个人通过陆地边境、海上或航空港进入人口的比率)。在所有引导样本中,估计的人口规模几乎相同。这表明所提出的模型是稳定的。因此,本研究建议使用所提出的随机人口增长模型来监测任何易受出生、死亡、移民和迁出影响的人口。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A proposed stochastic growth model for monitoring the population dynamics in Ghana
Population size modelling offers crucial insights into societal, economic, environmental, and public health dynamics, aiding in informed decision-making and sustainable development efforts. In the absence of suitable population models, complete enumeration (census) would be necessary to track population dynamics. A census may yield erroneous results due to undercounting, even though it is costly, time-consuming, and resource-intensive. A typical human population is susceptible to birth, death, immigration and emigration. Several authors have attempted to model population growth based on these characteristics except that most of them considered some but not all the above characteristics in their models. This study proposed a stochastic growth model to monitor the population dynamics considering; birth, death, immigration and emigration rates. Through the developed model, the expected size of the population and its variability over time was obtained. The study also derived the limiting distribution of the population size and specified its parameters. The long-run probability of zero offspring (probability of ultimate extinction) was also deduced. The results of the study indicates that the long-run probability of zero offspring of the Ghanaian population is approximately 0.21, the net migration and intrinsic growth rates per 1000 Ghanaian population are 0.544 and 22.458 with standard errors of 0.206 and 0.530 respectively. This indicates that although the average birth rate is higher than the average death rate in Ghana, the average emigration rate (rate at which individuals travel out of the population either by the land borders, sea or air ports) is relatively higher than the immigration rate (rate at which individuals come into the population either by the land borders, sea or air ports). The estimated population sizes were almost the same across all bootstrap samples. This indicates that the proposed model is stable. The study therefore recommends the use of the proposed stochastic population growth model to monitor any population that is susceptible to birth, death, immigration and emigration.
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来源期刊
Scientific African
Scientific African Multidisciplinary-Multidisciplinary
CiteScore
5.60
自引率
3.40%
发文量
332
审稿时长
10 weeks
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