Abstract
Purpose of the Study: The Verhulst model
is a biological growth model proposed by the German biomathematician Verhulst
in 1837. Population growth will also be limited by environmental and other
development factors and tend to be stable. Its characteristic is that the trend
predicted by the model will tend to a fixed value and reach stability. The gray
Verhulst model combines the characteristics of the gray prediction GM(1,1)
model and the Verhulst model, and adds restrictive development factors to the
gray prediction model to infer the possible stable growth and development of
the population.
Methodology: The research method of this study is the gray Verhulst model, which
combines the characteristics of the gray prediction GM(1,1) model and the
Verhulst model.
Main Findings: Gray prediction is a prediction model that has been widely promoted in
recent years because it often requires only a small number of samples to obtain
high prediction accuracy (more than 90%). This study is based on the population
data of Nantou County, Taiwan from 2003 to 2020, and uses the Gray Fairhast
model to estimate the number of elderly people and the growth of elderly
families in Nantou County, Taiwan. The results show that the number of elderly
households in Nantou County, Taiwan is expected to increase by 313 households
in 2023, bringing the total number of elderly households to 14,853. The elderly
population is expected to increase by 1,881 people, bringing the total number
of elderly people to 93,424.
Applications of this study: This project provides a unique perspective, based on the biological
growth model proposed by German biomathematician Verhulst in 1837. The trend
predicted by the model will tend to a fixed value and reach stable
characteristics, and population growth will also be affected by environmental
and other developments. factors to predict future population development.
Novelty of this Study: The new contribution offered here is a reference for government
departments to propose elderly population policy and investment in public
facilities construction.