Deep Learning-Based Approach for Optimizing Urban Commercial Space Expansion Using Artificial Neural Networks

Author:

Yang Dawei1,Zhao Jiahui1,Xu Ping2

Affiliation:

1. Civil &Architecture Engineering, Xi’an Technological University, Xi’an 710021, China

2. Urban Renewal Research Institute, Shaanxi Institute of Urban and Rural Planning and Design, Xi’an 710033, China

Abstract

Amid escalating urbanization, devising rational commercial space layouts is a critical challenge. By leveraging machine learning, this study used a backpropagation (BP) neural network to optimize commercial spaces in Weinan City’s central urban area. The results indicate an increased number of commercial facilities with a trend of multi-centered agglomeration and outward expansion. Based on these findings, we propose a strategic framework for rational commercial space development that emphasizes aggregation centers, development axes, and spatial guidelines. This strategy provides valuable insights for urban planners in small- and medium-sized cities in the Yellow River Basin and metropolitan areas, ultimately showcasing the power of machine learning in enhancing urban planning.

Publisher

MDPI AG

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