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LandUseDecisions

This repository contains python codes and jupyter notebooks of research analyses of published papers:

  1. Calibration of cellular automata urban growth models from urban genesis onwards - a novel application of Markov chain Monte Carlo approximate Bayesian computation https://doi.org/10.1016/j.compenvurbsys.2021.101689
  2. A data-driven framework to manage uncertainty due to limited transferability in urban growth models https://doi.org/10.1016/j.compenvurbsys.2022.101892

The research involves using

  • a constrained cellular automata model CCA to model urban expansion,
  • a Markov chain Monte Carlo Approximate Bayesian Computation to calibration model parameters,
  • clustering of urban growth modes (parameter clusters) from extrapolated parameters,
  • using the urban growth modes (parameter clusters) to classify/characterize urban spatial developments.

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Testing viability of CA-Markov approach

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  • Jupyter Notebook 98.1%
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