TOD typology and station area vibrancy: An interpretable machine learning approach
Document Type
Journal Article
Publication Date
2024
Subject Area
place - asia, place - urban, mode - subway/metro, land use - impacts, land use - planning, land use - transit oriented development, land use - urban density, infrastructure - station
Keywords
Transit-oriented development (TOD), metro station areas (MSAs)
Abstract
Transit-oriented development (TOD) has great potential to foster vibrant communities through improved access to activities around station areas. Several studies have investigated station area vibrancy and associations with TOD built environment (BE). However, few have considered the nonlinear impacts and varying relationships across station types. Taking Nanjing, China as a case study, we aim to 1) identify types of metro station areas (MSAs) with a “node-place-functionality” model and 2) unravel the nonlinear BE-vibrancy relationships and variations across MSA types. We find that five types best characterize the TOD built environment and present different levels of vibrancy indicated by the Baidu Heat Index. The GBDT (gradient boosting decision tree) models reveal transit accessibility, intersection density and commercial service density as the top three predictors of daytime and nighttime vibrancy, all presenting nonlinear and threshold effects. We also find the predicting power of BE features differs significantly across MSA types. The nuanced analyses provide context-specific planning guidance.
Rights
Permission to publish the abstract has been given by Elsevier, copyright remains with them.
Recommended Citation
Pan, H., & Huang, Y. (2024). TOD typology and station area vibrancy: An interpretable machine learning approach. Transportation Research Part A: Policy and Practice, 186, 104150.

Comments
Transportation Research Part A Home Page:
http://www.sciencedirect.com/science/journal/09658564