TY - JOUR
T1 - An ant lion optimizer based cellular automata model considering economic factors for simulating the change of rural settlement
AU - Ding, Yuan
AU - Jin, Fuming
AU - Cao, Kai
AU - Qiao, Weifeng
AU - Yang, Lei
AU - Yang, Yingbao
N1 - Publisher Copyright:
© 2025 Wuhan University. Published by Informa UK Limited, trading as Taylor & Francis Group.
PY - 2025
Y1 - 2025
N2 - Rural settlements play a crucial role in shaping the macro-level dynamics of rural development. To explore these changes within the framework of rural revitalization, this study incorporates a key factor—economics—and develops a cellular automata (CA) model to simulate rural settlement dynamics. This model is based on a novel swarm intelligence algorithm, the ant lion optimizer (ALO). Four experimental groups were designed by combining various economic and other influencing factors. The simulation results indicated that, compared to the total agricultural and industrial output value, the per capita net income of farmers has a more significant impact on the distribution of rural settlements. Integrating relevant economic factors notably enhances the simulation accuracy of the model, with the experimental group incorporating per capita net income achieving the best performance. This group demonstrated an overall accuracy of 96.31%, a rural settlement accuracy of 71.99%, and a Kappa coefficient of 0.7003, along with a Moran’s I value of 0.661. Furthermore, the ALO-CA model exhibited superior training and simulation accuracy when compared to models based on other swarm intelligence algorithms. Specifically, compared to the PSO-CA model, the ALO-CA model achieved improvements of 3.40%, 2.77%, and 4.81% in terms of Kappa coefficient, overall accuracy, and rural settlement accuracy, respectively. Based on the optimal experimental group, this study successfully predicted the spatial distribution of rural settlements in Jintan District for the year 2027. The prediction results indicate a trend toward intensification in the evolution of rural settlements.
AB - Rural settlements play a crucial role in shaping the macro-level dynamics of rural development. To explore these changes within the framework of rural revitalization, this study incorporates a key factor—economics—and develops a cellular automata (CA) model to simulate rural settlement dynamics. This model is based on a novel swarm intelligence algorithm, the ant lion optimizer (ALO). Four experimental groups were designed by combining various economic and other influencing factors. The simulation results indicated that, compared to the total agricultural and industrial output value, the per capita net income of farmers has a more significant impact on the distribution of rural settlements. Integrating relevant economic factors notably enhances the simulation accuracy of the model, with the experimental group incorporating per capita net income achieving the best performance. This group demonstrated an overall accuracy of 96.31%, a rural settlement accuracy of 71.99%, and a Kappa coefficient of 0.7003, along with a Moran’s I value of 0.661. Furthermore, the ALO-CA model exhibited superior training and simulation accuracy when compared to models based on other swarm intelligence algorithms. Specifically, compared to the PSO-CA model, the ALO-CA model achieved improvements of 3.40%, 2.77%, and 4.81% in terms of Kappa coefficient, overall accuracy, and rural settlement accuracy, respectively. Based on the optimal experimental group, this study successfully predicted the spatial distribution of rural settlements in Jintan District for the year 2027. The prediction results indicate a trend toward intensification in the evolution of rural settlements.
KW - ant lion optimizer (ALO)
KW - cellular automata (CA)
KW - change simulation
KW - Rural settlements
KW - sensitivity analysis
UR - https://www.scopus.com/pages/publications/105018816969
U2 - 10.1080/10095020.2025.2568113
DO - 10.1080/10095020.2025.2568113
M3 - 文章
AN - SCOPUS:105018816969
SN - 1009-5020
JO - Geo-Spatial Information Science
JF - Geo-Spatial Information Science
ER -