Resumen:
The objective of this work is the use of artificial neural networks and cellular automata to support urban planning decisions
in Mexico. We propose an automated model that predicts vertical urban growth, using socio-economic and geographic factors.
A multidisciplinary model is presented, which uses artificial neural networks, cellular automata, spatial analysis methods and
image processing. The model allows different scenarios of urban growth to be projected and simulated. All of this is built into
QGIS through the Python programming language. The model is tested in Mexican cities such as Mexico City, Guadalajara and
Monterrey during 2015 to 2020. Reliability ranges from 72% to 76% were obtained and validated by: i) the average number of
projected skyscrapers, ii) Position using the Kappa index, and iii) Value in the image using the Jaccard index. With this we
propose a technique that allows better informed decisions for urban planning and anticipate new infrastructure needs, projections
and regulations.