Creating spatially complete zoning maps using machine learning

被引:1
|
作者
Lawrimore, Margaret A. [1 ]
Sanchez, Georgina M. [1 ]
Cothron, Cayla [2 ]
Tulbure, Mirela G. [1 ,3 ]
Bendor, Todd K. [4 ]
Meentemeyer, Ross K. [1 ,3 ]
机构
[1] North Carolina State Univ, Ctr Geospatial Analyt, Raleigh, NC USA
[2] North Carolina State Univ, North Carolina Sea Grant, Off Res & Innovat, Raleigh, NC USA
[3] North Carolina State Univ, Dept Forestry & Environm Resources, Raleigh, NC USA
[4] Univ North Carolina Chapel Hill, Dept City & Reg Planning, Chapel Hill, NC USA
基金
美国食品与农业研究所;
关键词
Zoning; Random forest; Urban planning; Machine learning; Land use regulation; Land use policy;
D O I
10.1016/j.compenvurbsys.2024.102157
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Zoning regulates land use and intensity of urban development at the county and municipal level in the United States, promoting economic growth, community health, and environmental preservation. However, limited availability of zoning data at scale hinders regional assessments of regulations and coordinated resilience planning efforts. In this study, we developed an open-source, replicable, and transferable framework to predict spatially complete zoning in areas where zoning information is publicly unavailable. We applied a Hierarchical Random Forest algorithm to predict multilevel zoning districts, including three core districts (residential, nonresidential, mixed use) and 13 sub-districts. To mimic real-world data accessibility challenges, we evaluated two models: one filling gaps within a county (within-county) and the other extrapolating for counties with no available data (between-county). We tested our models statewide in North Carolina (NC), USA, and developed the State's first comprehensive zoning map. We found strong predictive performance for our within-county model ( 99% accuracy; macro averaged F1 score of 0.97) irrespective of district breakdown (i.e., core and sub). However, our between-county model performance was lower and varied depending on the training counties sampled and the district breakdown considered (19-90% accuracy; macro averaged F1 score of 0.105-0.451). Our framework provides spatially complete zoning maps for previously inaccessible locations, enabling researchers and planners to conduct large-scale comprehensive zoning assessments.
引用
收藏
页数:15
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