CumInCAD is a Cumulative Index about publications in Computer Aided Architectural Design
supported by the sibling associations ACADIA, CAADRIA, eCAADe, SIGraDi, ASCAAD and CAAD futures

PDF papers
References
id caadria2023_3
authors Wan, Hongyu, Pan, Anqi, Xue, Yanwen and Zheng, Hao
year 2023
title Predicting Amenities Distributions for Workers from the Built Environment Based on Machine Learning
doi https://doi.org/10.52842/conf.caadria.2023.1.019
source Immanuel Koh, Dagmar Reinhardt, Mohammed Makki, Mona Khakhar, Nic Bao (eds.), HUMAN-CENTRIC - Proceedings of the 28th CAADRIA Conference, Ahmedabad, 18-24 March 2023, pp. 19–28
summary The working population has increased in cities with urbanization. Providing a supportive built environment with reasonable amenities distribution for them is becoming more important. Previous GIS-based approaches to urban planning for this issue tend to be subjective with high labour costs. This paper uses the generative adversarial network (GAN) to explore the relationship between amenities distributions and urban morphology, thus effectively predicting and visualizing the ideal amenities distributions in fast-growing cities based on the condition of well-developed megacities. In this research, we take Shanghai, one of the global cities in China with a big labour market, as the research sample. First, we use the Point of Interest (POI) data to draw the heatmap of urban amenities that support workers’ daily life and collect the corresponding city maps. Then, we cut them into hundreds of image pairs as the training set and train a GAN model for predicting the future amenities distributions in other cities. To implement the model, we further collect the city maps of Jiaxing, one of the second-tier cities near Shanghai, as the testing set. Results show that our trained model can accurately predict amenities distributions for its future. The GAN-based prediction could effectively support detailed urban planning.
keywords Machine Learning, Big Data Analysis, Point of interest, Urban Planning, Amenities Distributions
series CAADRIA
email
full text file.pdf (2,600,304 bytes)
references Content-type: text/html Access Temporarily Restricted

Access Temporarily Restricted

Too many requests detected. Please wait 60 seconds or verify that you are a human.

If you are a human user and need immediate access, you can click the button below to continue:

If you continue to experience issues, please open a ticket at papers.cumincad.org/helpdesk

last changed 2023/06/15 23:14
pick and add to favorite papersHOMELOGIN (you are user _anon_637484 from group guest) CUMINCAD Papers Powered by SciX Open Publishing Services 1.002